WO2023056135A1 - Réordonnancement de candidats de vecteur de mouvement (mv) - Google Patents

Réordonnancement de candidats de vecteur de mouvement (mv) Download PDF

Info

Publication number
WO2023056135A1
WO2023056135A1 PCT/US2022/075229 US2022075229W WO2023056135A1 WO 2023056135 A1 WO2023056135 A1 WO 2023056135A1 US 2022075229 W US2022075229 W US 2022075229W WO 2023056135 A1 WO2023056135 A1 WO 2023056135A1
Authority
WO
WIPO (PCT)
Prior art keywords
candidate
prediction
candidates
video
merge
Prior art date
Application number
PCT/US2022/075229
Other languages
English (en)
Inventor
Yao-Jen Chang
Han HUANG
Vadim Seregin
Chun-Chi Chen
Marta Karczewicz
Original Assignee
Qualcomm Incorporated
Priority date (The priority date is an assumption and is not a legal conclusion. Google has not performed a legal analysis and makes no representation as to the accuracy of the date listed.)
Filing date
Publication date
Priority claimed from US17/820,863 external-priority patent/US20230103767A1/en
Application filed by Qualcomm Incorporated filed Critical Qualcomm Incorporated
Priority to KR1020247009809A priority Critical patent/KR20240087733A/ko
Priority to CN202280064120.0A priority patent/CN117981314A/zh
Publication of WO2023056135A1 publication Critical patent/WO2023056135A1/fr

Links

Classifications

    • HELECTRICITY
    • H04ELECTRIC COMMUNICATION TECHNIQUE
    • H04NPICTORIAL COMMUNICATION, e.g. TELEVISION
    • H04N19/00Methods or arrangements for coding, decoding, compressing or decompressing digital video signals
    • H04N19/50Methods or arrangements for coding, decoding, compressing or decompressing digital video signals using predictive coding
    • H04N19/503Methods or arrangements for coding, decoding, compressing or decompressing digital video signals using predictive coding involving temporal prediction
    • H04N19/51Motion estimation or motion compensation
    • H04N19/513Processing of motion vectors
    • H04N19/517Processing of motion vectors by encoding
    • H04N19/52Processing of motion vectors by encoding by predictive encoding

Definitions

  • This application is related to video coding (e.g., encoding and/or decoding of video data). For instance, aspects of the application relate to motion vector (MV) candidate reordering (e.g., for merge modes).
  • MV motion vector
  • Digital video data generally includes large amounts of data to meet the demands of video consumers and providers.
  • consumers of video data desire video of high quality, fidelity, resolution, frame rates, and the like.
  • the large amount of video data that is required to meet these demands places a burden on communication networks and devices that process and store the video data.
  • Video coding techniques can be performed by an encoder-decoder (referred to as a codec) according to one or more video coding standards and/or formats.
  • video coding standards and formats include high-efficiency video coding (HEVC), advanced video coding (AVC), moving picture experts group (MPEG) 2 part 2 coding, VP9, Alliance of Open Media (AOMedia) Video 1 (AVI), Essential Video Coding (EVC), or the like.
  • Video coding generally utilizes prediction methods (e.g., inter-prediction, intra-prediction, or the like) that take advantage of redundancy present in video images or sequences.
  • An important goal of video coding techniques is to compress video data into a form that uses a lower bit rate, while avoiding or minimizing degradations to video quality. With ever-evolving video services becoming available, encoding techniques with improved coding accuracy or efficiency are needed.
  • a system can perform motion vector (MV) candidate reordering (e.g., for merge modes), such as using multiple-stage (e.g., two-stage) adaptive reordering of merge candidates (ARMC) technique.
  • MV motion vector
  • ARMC adaptive reordering of merge candidates
  • an apparatus for processing video data comprising: at least one memory; and at least one processor coupled to the at least one memory, the at least one processor being configured to: obtain a first plurality of prediction candidates associated with video data; determine a first group of prediction candidates at least in part by applying a first grouping method to the first plurality of prediction candidates; reorder the first group of prediction candidates; select a first merge candidate from the reordered first group of prediction candidates; and add the first merge candidate to a candidate list.
  • a method of coding video data comprising: obtaining a first plurality of prediction candidates associated with video data; determining a first group of prediction candidates at least in part by applying a first grouping method to the first plurality of prediction candidates; reordering the first group of prediction candidates; selecting a first merge candidate from the reordered first group of prediction candidates; and adding the first merge candidate to a candidate list.
  • anon-transitory computer-readable medium having stored thereon instructions that, when executed by at least one processor, cause the at least one processor to: obtain a first plurality of prediction candidates associated with video data; determine a first group of prediction candidates at least in part by applying a first grouping method to the first plurality of prediction candidates; reorder the first group of prediction candidates; select a first merge candidate from the reordered first group of prediction candidates; and add the first merge candidate to a candidate list.
  • an apparatus for coding video data including: means for obtaining a first plurality of prediction candidates associated with video data; means for determining a first group of prediction candidates at least in part by applying a first grouping method to the first plurality of prediction candidates; means for reordering the first group of prediction candidates; means for selecting a first merge candidate from the reordered first group of prediction candidates; and means for adding the first merge candidate to a candidate list.
  • the system can be or can be part of a mobile device (e.g., a mobile telephone or so-called “smart phone”, a tablet computer, or other type of mobile device), a network-connected wearable device, an extended reality device (e.g., a virtual reality (VR) device, an augmented reality (AR) device, or a mixed reality (MR) device), a personal computer, a laptop computer, a server computer (e.g., a video server or other server device), a television, a vehicle (or a computing device or system of a vehicle), a camera (e.g., a digital camera, an Internet Protocol (IP) camera, etc.), a multi-camera system, a robotics device or system, an aviation device or system, or other device.
  • a mobile device e.g., a mobile telephone or so-called “smart phone”, a tablet computer, or other type of mobile device
  • a network-connected wearable device e.g., an extended reality device (e.g.
  • the system includes at least one camera for capturing one or more images or video frames.
  • the system can include a camera (e.g., an RGB camera) or multiple cameras for capturing one or more images and/or one or more videos including video frames.
  • the system includes a display for displaying one or more images, videos, notifications, or other displayable data.
  • the system includes a transmitter configured to transmit one or more video frame and/or syntax data over a transmission medium to at least one device.
  • the system described above can include one or more sensors.
  • the processor includes a neural processing unit (NPU), a central processing unit (CPU), a graphics processing unit (GPU), or other processing device or component.
  • NPU neural processing unit
  • CPU central processing unit
  • GPU graphics processing unit
  • FIG. 1 is a block diagram illustrating an encoding device and a decoding device, in accordance with some examples
  • FIG. 2 is a diagram illustrating an example of positions of spatial motion vector (MV) candidates, in accordance with examples described herein;
  • FIG. 3 is a diagram illustrating an example of motion vector scaling for temporal merge candidate, in accordance with examples described herein;
  • FIG. 4 is a diagram illustrating an example of candidate positions for temporal merge candidates, in accordance with examples described herein;
  • FIG. 5 is a diagram illustrating an example of spatial neighboring blocks used to derive spatial merge candidates, in accordance with examples described herein;
  • FIG. 6A is a diagram illustrating an example of spatial neighboring blocks used by subblock-based temporal motion vector prediction (SbTMVP) in VVC, in accordance with examples described herein;
  • SBTMVP subblock-based temporal motion vector prediction
  • FIG. 6B is a diagram illustrating an example of derivation of a sub-coding unit (CU) motion field by applying a motion shift from spatial neighbor and scaling the motion information from the corresponding collocated sub-CUs, in accordance with examples described herein;
  • CU sub-coding unit
  • FIG. 7 is a diagram illustrating an example of locations of candidates position for constructed affine merge mode, in accordance with examples described herein;
  • FIG. 8 is a diagram illustrating an example of template and reference samples of a template in reference pictures, in accordance with examples described herein;
  • FIG. 9 is a diagram illustrating an example of template and reference samples of a template for a block with sub-block motion using motion information of the subblocks of a current block, in accordance with examples described herein;
  • FIG. 10 is a diagram illustrating an example of splitting of a block into two parts by a geometrically located straight line, in accordance with examples described herein;
  • FIG. 11 is a diagram illustrating an example derivation of a uni -prediction candidate list for a geometric partitioning mode (GEO mode), in accordance with examples described herein;
  • GEO mode geometric partitioning mode
  • FIG. 12 is a diagram illustrating an example of positions of temporal motion vector prediction (TMVP) candidates, in accordance with examples described herein;
  • TMVP temporal motion vector prediction
  • FIG. 13 is a diagram illustrating an example of non-adjacent spatial neighboring blocks used to derive non-adjacent (NA) motion vector predictors (MVPs), in accordance with examples described herein;
  • NA non-adjacent
  • MVPs motion vector predictors
  • FIG. 14 is a diagram illustrating an example of TMVPs from non-adjacent collocated blocks (e.g., C2, C3, through Cl 1), in accordance with examples described herein;
  • FIG. 15 is a block diagram illustrating an example of a multi-stage ARMC, in accordance with aspects of the present disclosure
  • FIG. 16 is a flow diagram illustrating a technique for performing bit rate estimation, in accordance with aspects of the present disclosure
  • FIG. 17 is a block diagram illustrating a video encoding device, in accordance with some examples.
  • FIG. 18 is a block diagram illustrating a video decoding device, in accordance with some examples.
  • VVC Versatile Video Coding
  • JVET Joint Video Experts Team
  • VVC specification has been finalized in July 2020 and published by both ITU-T and ISO/IEC.
  • the VVC specification specifies normative bitstream and picture formats, high level syntax (HLS) and coding unit level syntax, and the parsing and decoding process.
  • VVC also specifies profiles/tiers/levels (PTL) restrictions, byte stream format, hypothetical reference decoder and supplemental enhancement information (SEI) in the annex.
  • PTL profiles/tiers/levels
  • SEI supplemental enhancement information
  • Video compression techniques may include applying different prediction modes, including spatial prediction (e.g., intra-frame prediction or intra-prediction), temporal prediction (e.g., inter-frame prediction or inter-prediction), inter-layer prediction (across different layers of video data, and/or other prediction techniques to reduce or remove redundancy inherent in video sequences.
  • a video encoder can partition each picture of an original video sequence into rectangular regions referred to as video blocks or coding units (described in greater detail below). These video blocks may be encoded using a particular prediction mode.
  • Video blocks may be divided in one or more ways into one or more groups of smaller blocks.
  • Blocks can include coding tree blocks, prediction blocks, transform blocks, and/or other suitable blocks. References generally to a “block,” unless otherwise specified, may refer to such video blocks (e.g., coding tree blocks, coding blocks, prediction blocks, transform blocks, or other appropriate blocks or sub-blocks, as would be understood by one of ordinary skill).
  • each of these blocks may also interchangeably be referred to herein as “units” (e.g., coding tree unit (CTU), coding unit, prediction unit (PU), transform unit (TU), or the like).
  • a unit may indicate a coding logical unit that is encoded in a bitstream, while a block may indicate a portion of video frame buffer a process is target to.
  • a video encoder can search for a block similar to the block being encoded in a frame (or picture) located in another temporal location, referred to as a reference frame or a reference picture.
  • the video encoder may restrict the search to a certain spatial displacement from the block to be encoded.
  • a best match may be located using a two-dimensional (2D) motion vector that includes a horizontal displacement component and a vertical displacement component.
  • 2D two-dimensional
  • a video encoder may form the predicted block using spatial prediction techniques based on data from previously encoded neighboring blocks within the same picture.
  • the video encoder may determine a prediction error.
  • the prediction can be determined as the difference between the pixel values in the block being encoded and the predicted block.
  • the prediction error can also be referred to as the residual.
  • the video encoder may also apply a transform to the prediction error using transform coding (e.g., using a form of a discrete cosine transform (DCT), a form of a discrete sine transform (DST), or other suitable transform) to generate transform coefficients.
  • transform coding e.g., using a form of a discrete cosine transform (DCT), a form of a discrete sine transform (DST), or other suitable transform
  • DCT discrete cosine transform
  • DST discrete sine transform
  • the video encoder may quantize the transform coefficients.
  • the quantized transform coefficients and motion vectors may be represented using syntax elements, and, along with control information, form a coded representation of a video sequence.
  • the video encoder may entropy code syntax elements, thereby further
  • a video decoder may, using the syntax elements and control information discussed above, construct predictive data (e.g., a predictive block) for decoding a current frame. For example, the video decoder may add the predicted block and the compressed prediction error. The video decoder may determine the compressed prediction error by weighting the transform basis functions using the quantized coefficients. The difference between the reconstructed frame and the original frame is called reconstruction error.
  • predictive data e.g., a predictive block
  • a video coding device e.g., a video encoder, a video decoder, or a combined encoder-decoder or codec
  • a video coding device can apply one or more merge modes to a current block of video data being coded (e.g., encoded and/or decoded) to inherit information from another block.
  • the video coding device can obtain the same motion vector or vectors, prediction direction, and/or reference picture index or indices from another block (e.g., another inter-predicted PU or other block) for the current block.
  • another block e.g., another inter-predicted PU or other block
  • a multi-stage (e.g., a two-stage) adaptive reordering of merge candidates is provided.
  • a coding device e.g., an encoding device, a decoding device, or a combined encoding-decoding device or codec
  • the coding device may apply reordering within each group (e.g., individually within each group).
  • the coding device can then construct a first merge candidate list in order by the groups that are processed by the first ARMC stage.
  • the coding device can use the first merge candidate list as input to a second ARMC stage.
  • the coding device can use a second grouping method for grouping the candidates.
  • the coding device can apply reordering within each group (e.g., individually within each group) of the candidates generated by the second grouping method.
  • the coding device can then construct a second merge candidate list in order by the groups that are processed by the second ARMC stage. Further aspects are described in detail below.
  • the systems and techniques described herein can be applied to one or more of a variety of block-based video coding techniques in which video is reconstructed on block-by-block basis.
  • the systems and techniques described herein can be applied to any of the existing video codecs (e.g., VVC, HEVC, AVC, or other suitable existing video codec), and/or can be an efficient coding tool for any video coding standards being developed and/or future video coding standards.
  • examples described herein can be performed using video codecs such as VVC, HEVC, AVC, and/or extensions thereof.
  • the techniques and systems described herein may also be applicable to other coding standards, codecs, or formats, such as MPEG, JPEG (or other coding standard for still images), VP9, AVI, extensions thereof, or other suitable coding standards already available or not yet available or developed.
  • the systems and techniques may operate according to a proprietary video codec/format, such as AVI, extensions of AVI, and/or successor versions of AVI (e.g., AV2), or other proprietary formats or industry standards.
  • a proprietary video codec/format such as AVI, extensions of AVI, and/or successor versions of AVI (e.g., AV2), or other proprietary formats or industry standards.
  • FIG. 1 is a block diagram illustrating an example of a system 100 including an encoding device 104 and a decoding device 112 that can perform one or more of the techniques described herein.
  • the encoding device 104 may be part of a source device, and the decoding device 112 may be part of a receiving device.
  • the source device and/or the receiving device may include an electronic device, such as a mobile or stationary telephone handset (e.g., smartphone, cellular telephone, or the like), a desktop computer, a laptop or notebook computer, a tablet computer, a set-top box, a television, a camera, a display device, a digital media player, a video gaming console, a video streaming device, an Internet Protocol (IP) camera, or any other suitable electronic device.
  • IP Internet Protocol
  • the source device and the receiving device may include one or more wireless transceivers for wireless communications.
  • the coding techniques described herein are applicable to video coding in various multimedia applications, including streaming video transmissions (e.g., over the Internet), television broadcasts or transmissions, encoding of digital video for storage on a data storage medium, decoding of digital video stored on a data storage medium, or other applications.
  • the term coding can refer to encoding and/or decoding.
  • the system 100 can support one-way or two-way video transmission to support applications such as video conferencing, video streaming, video playback, video broadcasting, gaming, and/or video telephony.
  • the encoding device 104 can be used to encode video data using a video coding standard, format, codec, or protocol to generate an encoded video bitstream.
  • video coding standards and formats/codecs include ITU-T H.261, ISO/IEC MPEG-1 Visual, ITU- T H.262 or ISO/IEC MPEG-2 Visual, ITU-T H.263, ISO/IEC MPEG-4 Visual, ITU-T H.264 (also known as ISO/IEC MPEG-4 AVC), including its Scalable Video Coding (SVC) and Multiview Video Coding (MVC) extensions, High Efficiency Video Coding (HEVC) or ITU-T H.265, and Versatile Video Coding (VVC) or ITU-T H.266.
  • SVC Scalable Video Coding
  • MVC Multiview Video Coding
  • HEVC High Efficiency Video Coding
  • MV-HEVC multiview extensions
  • SHVC scalable extension
  • JCT-VC Joint Collaboration Team on Video Coding
  • JCT- 3 V Joint Collaboration Team on 3D Video Coding Extension Development
  • VCEG ITU-T Video Coding Experts Group
  • MPEG ISO/IEC Motion Picture Experts Group
  • VP9, AOMedia Video 1 (AVI) developed by the Alliance for Open Media Alliance of Open Media (AOMedia), and Essential Video Coding (EVC) are other video coding standards for which the techniques described herein can be applied.
  • a video source 102 may provide the video data to the encoding device 104.
  • the video source 102 may be part of the source device, or may be part of a device other than the source device.
  • the video source 102 may include a video capture device (e.g., a video camera, a camera phone, a video phone, or the like), a video archive containing stored video, a video server or content provider providing video data, a video feed interface receiving video from a video server or content provider, a computer graphics system for generating computer graphics video data, a combination of such sources, or any other suitable video source.
  • the video data from the video source 102 may include one or more input pictures or frames.
  • a picture or frame is a still image that, in some cases, is part of a video.
  • data from the video source 102 can be a still image that is not a part of a video.
  • a video sequence can include a series of pictures.
  • a picture may include three sample arrays, denoted SL, SCb, and SCr.
  • SL is a two-dimensional array of luma samples
  • SCb is a two-dimensional array of Cb chrominance samples
  • SCr is a two- dimensional array of Cr chrominance samples.
  • Chrominance samples may also be referred to herein as “chroma” samples.
  • a pixel can refer to all three components (luma and chroma samples) for a given location in an array of a picture.
  • a picture may be monochrome and may only include an array of luma samples, in which case the terms pixel and sample can be used interchangeably.
  • the same techniques can be applied to pixels (e.g., all three sample components for a given location in an array of a picture).
  • the same techniques can be applied to individual samples.
  • the encoder engine 106 (or encoder) of the encoding device 104 encodes the video data to generate an encoded video bitstream.
  • an encoded video bitstream (or “video bitstream” or “bitstream”) is a series of one or more coded video sequences.
  • a coded video sequence includes a series of access units (AUs) starting with an AU that has a random access point picture in the base layer and with certain properties up to and not including a next AU that has a random access point picture in the base layer and with certain properties.
  • the certain properties of a random access point picture that starts a CVS may include a RASL flag (e.g., NoRaslOutputFlag) equal to 1.
  • An access unit includes one or more coded pictures and control information corresponding to the coded pictures that share the same output time.
  • Coded slices of pictures are encapsulated in the bitstream level into data units called network abstraction layer (NAU) units.
  • NAU network abstraction layer
  • an HEVC video bitstream may include one or more CVSs including NAL units.
  • Each of the NAL units has a NAL unit header.
  • the header is one-byte for H.264/AVC (except for multi-layer extensions) and two-byte for HEVC.
  • VCL NAL units include one slice or slice segment (described below) of coded picture data
  • non-VCL NAL unit includes control information that relates to one or more coded pictures.
  • a NAL unit can be referred to as a packet.
  • An HEVC AU includes VCL NAL units containing coded picture data and non-VCL NAL units (if any) corresponding to the coded picture data.
  • NAL units may contain a sequence of bits forming a coded representation of the video data (e.g., an encoded video bitstream, a CVS of a bitstream, or the like), such as coded representations of pictures in a video.
  • the encoder engine 106 generates coded representations of pictures by partitioning each picture into multiple slices.
  • a slice is independent of other slices so that information in the slice is coded without dependency on data from other slices within the same picture.
  • a slice includes one or more slice segments including an independent slice segment and, if present, one or more dependent slice segments that depend on previous slice segments.
  • the slices are partitioned into coding tree blocks (CTBs) of luma samples and chroma samples.
  • CTBs coding tree blocks
  • a CTB of luma samples and one or more CTBs of chroma samples, along with syntax for the samples, are referred to as a coding tree unit (CTU).
  • CTU may also be referred to as a “tree block” or a “largest coding unit” (LCU).
  • LCU largest coding unit
  • a CTU is the basic processing unit for HEVC encoding.
  • a CTU can be split into multiple coding units (CUs) of varying sizes.
  • a CU contains luma and chroma sample arrays that are referred to as coding blocks (CBs).
  • the luma and chroma CBs can be further split into prediction blocks (PBs).
  • a PB is a block of samples of the luma component or a chroma component that uses the same motion parameters for inter-prediction or intra-block copy prediction (when available or enabled for use).
  • PU prediction unit
  • a set of motion parameters e.g., one or more motion vectors, reference indices, or the like
  • a CB can also be partitioned into one or more transform blocks (TBs).
  • a TB represents a square block of samples of a color component on which a residual transform (e.g., the same two-dimensional transform in some cases) is applied for coding a prediction residual signal.
  • a transform unit (TU) represents the TBs of luma and chroma samples, and corresponding syntax elements.
  • a size of a CU corresponds to a size of the coding mode and may be square in shape. For example, a size of a CU may be 8 x 8 samples, 16 x 16 samples, 32 x 32 samples, 64 x 64 samples, or any other appropriate size up to the size of the corresponding CTU.
  • N x N is used herein to refer to pixel dimensions of a video block in terms of vertical and horizontal dimensions (e.g., 8 pixels x 8 pixels).
  • the pixels in a block may be arranged in rows and columns. In some examples, blocks may not have the same number of pixels in a horizontal direction as in a vertical direction.
  • Syntax data associated with a CU may describe, for example, partitioning of the CU into one or more PUs. Partitioning modes may differ between whether the CU is intra-prediction mode encoded or inter-prediction mode encoded. PUs may be partitioned to be non-square in shape.
  • Syntax data associated with a CU may also describe, for example, partitioning of the CU into one or more TUs according to a CTU. A TU can be square or non-square in shape.
  • transformations may be performed using transform units (TUs).
  • TUs may vary for different CUs.
  • the TUs may be sized based on the size of PUs within a given CU.
  • the TUs may be the same size or smaller than the PUs.
  • residual samples corresponding to a CU may be subdivided into smaller units using a quadtree structure known as residual quad tree (RQT).
  • Leaf nodes of the RQT may correspond to TUs.
  • Pixel difference values associated with the TUs may be transformed to produce transform coefficients.
  • the transform coefficients may be quantized by the encoder engine 106.
  • the encoder engine 106 predicts each PU using a prediction mode.
  • the prediction unit or prediction block is subtracted from the original video data to get residuals (described below).
  • a prediction mode may be signaled inside the bitstream using syntax data.
  • a prediction mode may include intraprediction (or intra-picture prediction) or inter-prediction (or inter-picture prediction).
  • Intraprediction utilizes the correlation between spatially neighboring samples within a picture.
  • each PU is predicted from neighboring image data in the same picture using, for example, DC prediction to find an average value for the PU, planar prediction to fit a planar surface to the PU, direction prediction to extrapolate from neighboring data, or any other suitable types of prediction.
  • Inter-prediction uses the temporal correlation between pictures in order to derive a motion-compensated prediction for a block of image samples.
  • each PU is predicted using motion compensation prediction from image data in one or more reference pictures (before or after the current picture in output order). The decision whether to code a picture area using inter-picture or intra-picture prediction may be made, for example, at the CU level.
  • the encoder engine 106 and the decoder engine 116 may be configured to operate according to VVC.
  • a video coder (such as the encoder engine 106 and/or the decoder engine 116) partitions a picture into a plurality of coding tree units (CTUs) (where a CTB of luma samples and one or more CTBs of chroma samples, along with syntax for the samples, are referred to as a CTU).
  • the video coder can partition a CTU according to a tree structure, such as a quadtree-binary tree (QTBT) structure or Multi-Type Tree (MTT) structure.
  • QTBT quadtree-binary tree
  • MTT Multi-Type Tree
  • the QTBT structure removes the concepts of multiple partition types, such as the separation between CUs, PUs, and TUs of HEVC.
  • a QTBT structure includes two levels, including a first level partitioned according to quadtree partitioning, and a second level partitioned according to binary tree partitioning.
  • a root node of the QTBT structure corresponds to a CTU.
  • Leaf nodes of the binary trees correspond to coding units (CUs).
  • blocks may be partitioned using a quadtree partition, a binary tree partition, and one or more types of triple tree partitions.
  • a triple tree partition is a partition where a block is split into three sub-blocks.
  • a triple tree partition divides a block into three sub-blocks without dividing the original block through the center.
  • the partitioning types in MTT e.g., quadtree, binary tree, and tripe tree
  • encoding device 104 and decoding device 112 may be configured to code video data in blocks.
  • a superblock can be either 128x128 luma samples or 64x64 luma samples.
  • a superblock may be defined by different (e.g., larger) luma sample sizes.
  • a superblock is the top level of a block quadtree.
  • Encoding device 104 may further partition a superblock into smaller coding blocks.
  • Encoding device 104 may partition a superblock and other coding blocks into smaller blocks using square or non-square partitioning.
  • Non-square blocks may include N/2xN, NxN/2, N/4xN, and NxN/4 blocks.
  • Encoding device 104 and decoding device 112 may perform separate prediction and transform processes on each of the coding blocks.
  • AV 1 also defines a tile of video data.
  • a tile is a rectangular array of superblocks that may be coded independently of other tiles. That is, encoding device 104 and decoding device 112 may encode and decode, respectively, coding blocks within a tile without using video data from other tiles. However, encoding device 104 and decoding device 112 may perform filtering across tile boundaries. Tiles may be uniform or non-uniform in size. Tile-based coding may enables parallel processing and/or multi-threading for encoder and decoder implementations.
  • the encoding device 104 and decoding device 112 can use a single QTBT or MTT structure to represent each of the luminance and chrominance components, while in other examples, the video coder can use two or more QTBT or MTT structures, such as one QTBT or MTT structure for the luminance component and another QTBT or MTT structure for both chrominance components (or two QTBT and/or MTT structures for respective chrominance components).
  • the encoding device 104 and decoding device 112 can be configured to use quadtree partitioning per HEVC, QTBT partitioning, MTT partitioning, or other partitioning structures.
  • the one or more slices of a picture are assigned a slice type.
  • Slice types include an I slice, a P slice, and a B slice.
  • An I slice is a slice of a picture that is only coded by intra-prediction, and therefore is independently decodable since the I slice requires only the data within the frame to predict any prediction unit or prediction block of the slice.
  • a P slice (uni-directional predicted frames) is a slice of a picture that may be coded with intra-prediction and with uni-directional inter-prediction. Each prediction unit or prediction block within a P slice is either coded with intra prediction or inter-prediction.
  • a B slice (bi-directional predictive frames) is a slice of a picture that may be coded with intraprediction and with inter-prediction (e.g., either bi-prediction or uni-prediction).
  • a prediction unit or prediction block of a B slice may be bi-directionally predicted from two reference pictures, where each picture contributes one reference region and sample sets of the two reference regions are weighted (e.g., with equal weights or with different weights) to produce the prediction signal of the bi-directional predicted block.
  • slices of one picture are independently coded. In some cases, a picture can be coded as just one slice.
  • intra-picture prediction utilizes the correlation between spatially neighboring samples within a picture.
  • intra-prediction modes also referred to as “intra modes”.
  • the intra prediction of a luma block includes 35 modes, including the Planar mode, DC mode, and 33 angular modes (e.g., diagonal intra prediction modes and angular modes adjacent to the diagonal intra prediction modes).
  • the 35 modes of the intra prediction are indexed as shown in Table 1 below.
  • more intra modes may be defined including prediction angles that may not already be represented by the 33 angular modes.
  • the prediction angles associated with the angular modes may be different from those used in HEVC.
  • Inter-picture prediction uses the temporal correlation between pictures in order to derive a motion-compensated prediction for a block of image samples.
  • a motion vector (Ax, Ay), with Ax specifying the horizontal displacement and Ay specifying the vertical displacement of the reference block relative to the position of the current block.
  • a motion vector (Ax, Ay) can be in integer sample accuracy (also referred to as integer accuracy), in which case the motion vector points to the integer-pel grid (or integer-pixel sampling grid) of the reference frame.
  • a motion vector (Ax, Ay) can be of fractional sample accuracy (also referred to as fractional-pel accuracy or non-integer accuracy) to more accurately capture the movement of the underlying object, without being restricted to the integer-pel grid of the reference frame.
  • Accuracy of motion vectors may be expressed by the quantization level of the motion vectors.
  • the quantization level may be integer accuracy (e.g., 1-pixel) or fractional-pel accuracy (e.g., ’A-pixel, U-pixel, or other sub-pixel value). Interpolation is applied on reference pictures to derive the prediction signal when the corresponding motion vector has fractional sample accuracy.
  • samples available at integer positions can be filtered (e.g., using one or more interpolation filters) to estimate values at fractional positions.
  • the previously decoded reference picture is indicated by a reference index (refldx) to a reference picture list.
  • the motion vectors and reference indices can be referred to as motion parameters.
  • Two kinds of inter-picture prediction can be performed, including uni-prediction and bi -prediction.
  • bi-prediction also referred to as bi-directional interprediction
  • two sets of motion parameters (Ax 0 , y o , refldx o and Ax x , y ⁇ refldx- ⁇ are used to generate two motion compensated predictions (from the same reference picture or possibly from different reference pictures).
  • each prediction block uses two motion compensated prediction signals, and generates B prediction units.
  • the two motion compensated predictions are combined to get the final motion compensated prediction.
  • the two motion compensated predictions can be combined by averaging.
  • weighted prediction can be used, in which case different weights can be applied to each motion compensated prediction.
  • the reference pictures that can be used in bi-prediction are stored in two separate lists, denoted as list 0 and list 1.
  • Motion parameters can be derived at the encoder using a motion estimation process.
  • inter-prediction using uni-prediction also referred to as uni-directional interprediction
  • one set of motion parameters (Ax 0 , y o , refldx o ) is used to generate a motion compensated prediction from a reference picture.
  • each prediction block uses at most one motion compensated prediction signal, and generates P prediction units.
  • a PU may include the data (e.g., motion parameters or other suitable data) related to the prediction process.
  • the PU may include data describing an intra-prediction mode for the PU.
  • the PU may include data defining a motion vector for the PU.
  • the data defining the motion vector for a PU may describe, for example, a horizontal component of the motion vector (Ax), a vertical component of the motion vector (Ay), a resolution for the motion vector (e.g., integer precision, one-quarter pixel precision or one-eighth pixel precision), a reference picture to which the motion vector points, a reference index, a reference picture list (e.g., List 0, List 1, or List C) for the motion vector, or any combination thereof.
  • AVI includes two general techniques for encoding and decoding a coding block of video data.
  • the two general techniques are intra prediction (e.g., intra frame prediction or spatial prediction) and inter prediction (e.g., inter frame prediction or temporal prediction).
  • encoding device 104 and decoding device 112 do not use video data from other frames of video data.
  • the video encoding device 104 encodes blocks of a current frame based on the difference between sample values in the current block and predicted values generated from reference samples in the same frame.
  • the video encoding device 104 determines predicted values generated from the reference samples based on the intra prediction mode.
  • the encoding device 104 can perform transformation and quantization. For example, following prediction, the encoder engine 106 may calculate residual values corresponding to the PU. Residual values may comprise pixel difference values between the current block of pixels being coded (the PU) and the prediction block used to predict the current block (e.g., the predicted version of the current block). For example, after generating a prediction block (e.g., issuing inter-prediction or intra-prediction), the encoder engine 106 can generate a residual block by subtracting the prediction block produced by a prediction unit from the current block.
  • a prediction block e.g., issuing inter-prediction or intra-prediction
  • the residual block includes a set of pixel difference values that quantify differences between pixel values of the current block and pixel values of the prediction block.
  • the residual block may be represented in a two-dimensional block format (e.g., a two-dimensional matrix or array of pixel values).
  • the residual block is a two-dimensional representation of the pixel values.
  • Any residual data that may be remaining after prediction is performed is transformed using a block transform, which may be based on discrete cosine transform, discrete sine transform, an integer transform, a wavelet transform, other suitable transform function, or any combination thereof.
  • a block transform e.g., sizes 32 x 32, 16 x 16, 8 x 8, 4 x 4, or other suitable size
  • a TU may be used for the transform and quantization processes implemented by the encoder engine 106.
  • a given CU having one or more PUs may also include one or more TUs.
  • the residual values may be transformed into transform coefficients using the block transforms, and may be quantized and scanned using TUs to produce serialized transform coefficients for entropy coding.
  • the encoder engine 106 may calculate residual data for the TUs of the CU.
  • the PUs may comprise pixel data in the spatial domain (or pixel domain).
  • the TUs may comprise coefficients in the transform domain following application of a block transform.
  • the residual data may correspond to pixel difference values between pixels of the unencoded picture and prediction values corresponding to the PUs.
  • the encoder engine 106 may form the TUs including the residual data for the CU, and may transform the TUs to produce transform coefficients for the CU.
  • the encoder engine 106 may perform quantization of the transform coefficients. Quantization provides further compression by quantizing the transform coefficients to reduce the amount of data used to represent the coefficients. For example, quantization may reduce the bit depth associated with some or all of the coefficients. In one example, a coefficient with an n-bit value may be rounded down to an m-bit value during quantization, with n being greater than m.
  • the coded video bitstream includes quantized transform coefficients, prediction information (e.g., prediction modes, motion vectors, block vectors, or the like), partitioning information, and any other suitable data, such as other syntax data.
  • the different elements of the coded video bitstream may be entropy encoded by the encoder engine 106.
  • the encoder engine 106 may utilize a predefined scan order to scan the quantized transform coefficients to produce a serialized vector that can be entropy encoded.
  • the encoder engine 106 may perform an adaptive scan. After scanning the quantized transform coefficients to form a vector (e.g., a one-dimensional vector), the encoder engine 106 may entropy encode the vector.
  • the encoder engine 106 may use context adaptive variable length coding, context adaptive binary arithmetic coding, syntax-based context-adaptive binary arithmetic coding, probability interval partitioning entropy coding, or another suitable entropy encoding technique.
  • the output 110 of the encoding device 104 may send the NAL units making up the encoded video bitstream data over the communication link 120 to the decoding device 112 of the receiving device.
  • the input 114 of the decoding device 112 may receive the NAL units.
  • the communication link 120 may include a channel provided by a wireless network, a wired network, or a combination of a wired and wireless network.
  • a wireless network may include any wireless interface or combination of wireless interfaces and may include any suitable wireless network (e.g., the Internet or other wide area network, a packet-based network, WiFiTM, radio frequency (RF), UWB, WiFi-Direct, cellular, Long-Term Evolution (LTE), WiMaxTM, or the like).
  • a wired network may include any wired interface (e.g., fiber, ethernet, powerline ethemet, ethemet over coaxial cable, digital signal line (DSL), or the like).
  • the wired and/or wireless networks may be implemented using various equipment, such as base stations, routers, access points, bridges, gateways, switches, or the like.
  • the encoded video bitstream data may be modulated according to a communication standard, such as a wireless communication protocol, and transmitted to the receiving device.
  • the encoding device 104 may store encoded video bitstream data in a storage 108.
  • the output 110 may retrieve the encoded video bitstream data from the encoder engine 106 or from the storage 108.
  • the storage 108 may include any of a variety of distributed or locally accessed data storage media.
  • the storage 108 may include a hard drive, a storage disc, flash memory, volatile or non-volatile memory, or any other suitable digital storage media for storing encoded video data.
  • the storage 108 can also include a decoded picture buffer (DPB) for storing reference pictures for use in inter-prediction.
  • the storage 108 can correspond to a file server or another intermediate storage device that may store the encoded video generated by the source device.
  • the receiving device including the decoding device 112 can access stored video data from the storage device via streaming or download.
  • the file server may be any type of server capable of storing encoded video data and transmitting that encoded video data to the receiving device.
  • Example file servers include a web server (e.g., for a website), an FTP server, network attached storage (NAS) devices, or a local disk drive.
  • the receiving device may access the encoded video data through any standard data connection, including an Internet connection, and may include a wireless channel (e.g., a Wi-Fi connection), a wired connection (e.g., DSL, cable modem, etc.), or a combination of both that is suitable for accessing encoded video data stored on a file server.
  • the transmission of encoded video data from the storage 108 may be a streaming transmission, a download transmission, or a combination thereof.
  • the input 114 of the decoding device 112 receives the encoded video bitstream data and may provide the video bitstream data to the decoder engine 116, or to the storage 118 for later use by the decoder engine 116.
  • the storage 118 can include a DPB for storing reference pictures for use in inter-prediction.
  • the receiving device including the decoding device 112 can receive the encoded video data to be decoded via the storage 108.
  • the encoded video data may be modulated according to a communication standard, such as a wireless communication protocol, and transmitted to the receiving device.
  • the communication medium for transmitted the encoded video data can comprise any wireless or wired communication medium, such as a radio frequency (RF) spectrum or one or more physical transmission lines.
  • RF radio frequency
  • the communication medium may form part of a packet-based network, such as a local area network, a wide-area network, or a global network such as the Internet.
  • the communication medium may include routers, switches, base stations, or any other equipment that may be useful to facilitate communication from the source device to the receiving device.
  • the decoder engine 116 may decode the encoded video bitstream data by entropy decoding (e.g., using an entropy decoder) and extracting the elements of one or more coded video sequences making up the encoded video data.
  • the decoder engine 116 may rescale and perform an inverse transform on the encoded video bitstream data. Residual data is passed to a prediction stage of the decoder engine 116.
  • the decoder engine 116 predicts a block of pixels (e.g., a PU). In some examples, the prediction is added to the output of the inverse transform (the residual data).
  • the decoding device 112 may output the decoded video to a video destination device 122, which may include a display or other output device for displaying the decoded video data to a consumer of the content.
  • the video destination device 122 may be part of the receiving device that includes the decoding device 112. In some aspects, the video destination device 122 may be part of a separate device other than the receiving device.
  • the video encoding device 104 and/or the video decoding device 112 may be integrated with an audio encoding device and audio decoding device, respectively.
  • the video encoding device 104 and/or the video decoding device 112 may also include other hardware or software that is necessary to implement the coding techniques described above, such as one or more microprocessors, digital signal processors (DSPs), application specific integrated circuits (ASICs), field programmable gate arrays (FPGAs), discrete logic, software, hardware, firmware or any combinations thereof.
  • DSPs digital signal processors
  • ASICs application specific integrated circuits
  • FPGAs field programmable gate arrays
  • the video encoding device 104 and the video decoding device 112 may be integrated as part of a combined encoder/decoder (codec) in a respective device.
  • codec combined encoder/decoder
  • the example system shown in FIG. 1 is one illustrative example that can be used herein.
  • Techniques for processing video data using the techniques described herein can be performed by any digital video encoding and/or decoding device. Although generally the techniques of this disclosure are performed by a video encoding device or a video decoding device, the techniques may also be performed by a combined video encoder-decoder, typically referred to as a “CODEC.” Moreover, the techniques of this disclosure may also be performed by a video preprocessor.
  • the source device and the receiving device are merely examples of such coding devices in which the source device generates coded video data for transmission to the receiving device.
  • the source and receiving devices may operate in a substantially symmetrical manner such that each of the devices include video encoding and decoding components.
  • example systems may support one-way or two-way video transmission between video devices, e.g., for video streaming, video playback, video broadcasting, or video telephony.
  • Extensions to the HEVC standard include the Multiview Video Coding extension, referred to as MV-HEVC, and the Scalable Video Coding extension, referred to as SHVC.
  • MV-HEVC Multiview Video Coding extension
  • SHVC Scalable Video Coding extension
  • the MV-HEVC and SHVC extensions share the concept of layered coding, with different layers being included in the encoded video bitstream.
  • Each layer in a coded video sequence is addressed by a unique layer identifier (ID).
  • ID may be present in a header of a NAL unit to identify a layer with which the NAL unit is associated.
  • MV-HEVC different layers can represent different views of the same scene in the video bitstream.
  • SHVC different scalable layers are provided that represent the video bitstream in different spatial resolutions (or picture resolution) or in different reconstruction fidelities.
  • the base layer may conform to a profile of the first version of HEVC, and represents the lowest available layer in a bitstream.
  • the enhancement layers have increased spatial resolution, temporal resolution or frame rate, and/or reconstruction fidelity (or quality) as compared to the base layer.
  • the enhancement layers are hierarchically organized and may (or may not) depend on lower layers.
  • the different layers may be coded using a single standard codec (e.g., all layers are encoded using HEVC, SHVC, or other coding standard).
  • different layers may be coded using a multi -standard codec.
  • a base layer may be coded using AVC, while one or more enhancement layers may be coded using SHVC and/or MV-HEVC extensions to the HE VC standard.
  • a layer includes a set of VCL NAL units and a corresponding set of non-VCL NAL units.
  • the NAL units are assigned a particular layer ID value.
  • Layers can be hierarchical in the sense that a layer may depend on a lower layer.
  • a layer set refers to a set of layers represented within a bitstream that are self-contained, meaning that the layers within a layer set can depend on other layers in the layer set in the decoding process, but do not depend on any other layers for decoding. Accordingly, the layers in a layer set can form an independent bitstream that can represent video content.
  • the set of layers in a layer set may be obtained from another bitstream by operation of a sub-bitstream extraction process.
  • a layer set may correspond to the set of layers that is to be decoded when a decoder wants to operate according to certain parameters.
  • an HEVC bitstream includes a group of NAL units, including VCL NAL units and non-VCL NAL units.
  • VCL NAL units include coded picture data forming a coded video bitstream.
  • a sequence of bits forming the coded video bitstream is present in VCL NAL units.
  • Non-VCL NAL units may contain parameter sets with high-level information relating to the encoded video bitstream, in addition to other information.
  • a parameter set may include a video parameter set (VPS), a sequence parameter set (SPS), and a picture parameter set (PPS). Examples of goals of the parameter sets include bit rate efficiency, error resiliency, and providing systems layer interfaces.
  • Each slice references a single active PPS, SPS, and VPS to access information that the decoding device 112 may use for decoding the slice.
  • An identifier may be coded for each parameter set, including a VPS ID, an SPS ID, and a PPS ID.
  • An SPS includes an SPS ID and a VPS ID.
  • a PPS includes a PPS ID and an SPS ID.
  • Each slice header includes a PPS ID. Using the IDs, active parameter sets can be identified for a given slice.
  • a PPS includes information that applies to all slices in a given picture.
  • all slices in a picture refer to the same PPS.
  • Slices in different pictures may also refer to the same PPS.
  • An SPS includes information that applies to all pictures in a same coded video sequence (CVS) or bitstream.
  • CVS coded video sequence
  • a coded video sequence is a series of access units (AUs) that starts with a random access point picture (e.g., an instantaneous decode reference (IDR) picture or broken link access (BLA) picture, or other appropriate random access point picture) in the base layer and with certain properties (described above) up to and not including a next AU that has a random access point picture in the base layer and with certain properties (or the end of the bitstream).
  • IDR instantaneous decode reference
  • BLA broken link access
  • the information in an SPS may not change from picture to picture within a coded video sequence.
  • Pictures in a coded video sequence may use the same SPS.
  • the VPS includes information that applies to all layers within a coded video sequence or bitstream.
  • the VPS includes a syntax structure with syntax elements that apply to entire coded video sequences.
  • the VPS, SPS, or PPS may be transmitted in-band with the encoded bitstream.
  • the VPS, SPS, or PPS may be transmitted out-of-band in a separate transmission than the NAL units containing coded video data.
  • This disclosure may generally refer to “signaling” certain information, such as syntax elements.
  • the term “signaling” may generally refer to the communication of values for syntax elements and/or other data used to decode encoded video data.
  • the video encoding device 104 may signal values for syntax elements in the bitstream.
  • signaling refers to generating a value in the bitstream.
  • video source 102 may transport the bitstream to video destination device 122 substantially in real time, or not in real time, such as might occur when storing syntax elements to storage 108 for later retrieval by the video destination device 122.
  • a video bitstream can also include Supplemental Enhancement Information (SEI) messages.
  • SEI Supplemental Enhancement Information
  • an SEI NAL unit can be part of the video bitstream.
  • an SEI message can contain information that is not needed by the decoding process.
  • the information in an SEI message may not be essential for the decoder to decode the video pictures of the bitstream, but the decoder can be use the information to improve the display or processing of the pictures (e.g., the decoded output).
  • the information in an SEI message can be embedded metadata. In one illustrative example, the information in an SEI message could be used by decoderside entities to improve the viewability of the content.
  • certain application standards may mandate the presence of such SEI messages in the bitstream so that the improvement in quality can be brought to all devices that conform to the application standard (e.g., the carriage of the frame-packing SEI message for frame-compatible piano-stereoscopic 3DTV video format, where the SEI message is carried for every frame of the video, handling of a recovery point SEI message, use of pan-scan scan rectangle SEI message in DVB, in addition to many other examples).
  • a set of motion information (also referred to herein as motion parameters) can be available.
  • a set of motion information can contain motion information for forward and backward prediction directions.
  • forward and backward prediction directions are two prediction directions of a bi-directional prediction mode and the terms “forward” and “backward” do not necessarily have a geometry meaning. Instead, forward and backward can correspond to a reference picture list 0 (RefPicListO) and a reference picture list 1 (RefPicListl) of a current picture, slice, or block.
  • RefPicListO when only one reference picture list is available for a picture, slice, or block, only RefPicListO is available and the motion information of each block of a slice is always forward.
  • RefPicListO includes reference pictures that precede a current picture in time
  • RefPicListl includes reference pictures that follow the current picture in time.
  • a motion vector together with an associated reference index can be used in decoding processes. Such a motion vector with the associated reference index is denoted as a uni -predictive set of motion information.
  • the motion information can contain a reference index and a motion vector.
  • a motion vector can have associated information, from which it can be assumed a way that the motion vector has an associated reference index.
  • a reference index can be used to identify a reference picture in the current reference picture list (RefPicListO or RefPicListl).
  • a motion vector can have a horizontal and a vertical component that provide an offset from the coordinate position in the current picture to the coordinates in the reference picture identified by the reference index.
  • a reference index can indicate a particular reference picture that should be used for a block in a current picture, and the motion vector can indicate where in the reference picture the best-matched block (the block that best matches the current block) is in the reference picture.
  • a picture order count can be used in video coding standards to identify a display order of a picture. Although there are cases for which two pictures within one coded video sequence may have the same POC value, within one coded video sequence two pictures with the same POC value does not occur often. When multiple coded video sequences are present in a bitstream, pictures with a same POC value may be closer to each other in terms of decoding order. POC values of pictures can be used for reference picture list construction, derivation of reference picture set as in HEVC, and/or motion vector scaling, among other things.
  • the encoding device 104 and/or the decoding device 112 can utilize a merge mode that allows a block (e.g., an inter-predicted PU or other block) to inherit the same motion vector or vectors, prediction direction, and/or reference picture index or indices from another block (e.g., another inter-predicted PU or other block).
  • a block e.g., an inter-predicted PU or other block
  • the regular merge candidate list is constructed by including the following six types of candidates in order:
  • Spatial MVP (SMVP) from spatial neighbour CUs A maximum of four merge candidates may be selected among candidates located in the positions depicted in FIG. 2.
  • the order of derivation is Bo, Ao, Bi, Ai, and B2.
  • position B2 is considered only when one or more than one CU of position Bo, Ao, Bi, Ai are not available (e.g., because it belongs to another slice or tile) or is intra coded.
  • Temporal MVP (TMVP) from collocated CUs In some cases, only one TMVP candidate is added to the list. In the derivation of this TMVP candidate, a scaled motion vector is derived based on co-located CU belonging to the collocated reference picture. The reference picture list to be used for derivation of the co-located CU is explicitly signalled in the slice header. The scaled motion vector for TMVP candidate is obtained, as illustrated by the dotted line in FIG.
  • tb is defined to be the POC difference between the reference picture of the current picture and the current picture
  • td is defined to be the POC difference between the reference picture of the co-located picture and the co-located picture. That is, the MV of the currCU (referring to the current CU) equals to the MV of col CU multiplying tb/td.
  • the reference picture index of TMVP candidate is set equal to zero.
  • the position for the temporal candidate is selected between candidates Co and Ci, as depicted in FIG. 4. If CU at position Co is not available, is intra coded, or is outside of the current row of CTUs, position Ci is used. Otherwise, position Co is used in the derivation of the TMVP candidate.
  • Non-adjacent spatial MVP from spatially non-adjacent neighbour CUs:
  • the non-adjacent spatial merge candidates (e.g., as described in JVET- L0399, which is incorporated herein by reference in its entirety and for all purposes) are inserted after the TMVP in the regular merge candidate list.
  • An example of a pattern of the spatial merge candidates is shown in FIG. 5, where blocks 1 to 5 are used for SMVP, and blocks 6 to 23 are used for NA-SMVP.
  • the distances between the non-adjacent spatial candidates and the current coding block are based on the width and height of the current coding block.
  • History-based MVP (HMVP) from a FIFO table The motion information of a previously coded block is stored in a table and used as HMVP for the current CU.
  • the table with multiple HMVP candidates is maintained during the encoding and/or decoding process.
  • the associated motion information is added to the last entry of the table as a new HMVP candidate.
  • the HMVP table size is set to be 6, which indicates up to 6 HMVP candidates may be added to the table.
  • a constrained first-in-first-out (FIFO) rule is utilized wherein redundancy check is firstly applied to find whether there is an identical HMVP in the table.
  • Pairwise average MVP Pairwise average candidates are generated by averaging predefined pairs of candidates in the existing merge candidate list, and the predefined pairs are defined as ⁇ (0, 1), (0, 2), (1, 2), (0, 3), (1, 3), (2, 3) ⁇ , where the numbers denote the merge indices to the merge candidate list.
  • the averaged motion vectors are calculated separately for each reference list. If both motion vectors are available in one list, these two motion vectors are averaged even when they point to different reference pictures; if only one motion vector is available, use the one directly; if no motion vector is available, keep this list invalid.
  • Zero MVs When the merge list is not full after pair- wise average merge candidates are added, the zero MVPs are inserted in the end until the maximum merge candidate number is encountered.
  • the encoding device 104 and/or the decoding device 112 can construct a template matching (TM) merge candidate list.
  • TM template matching
  • the TM merge candidate list is constructed based on the same six types of candidates in order as used in regular merge candidate list described above.
  • TM is a decoder-side MV derivation method to refine the MV information of each candidate in the TM merge candidate list by finding the closest match between a template in the current picture and a block with the same size to the template in a reference picture.
  • TM may work with block-based and subblock-based bilateral matching (BM) methods depending on whether BM can be enabled or not according to its enabling condition checks.
  • BM and TM are both enabled for a CU, the search process of TM stops at half-pel MVD precision and the resulted MVs are further refined by using the same model -based MVD derivation method as in DMVR.
  • the encoding device 104 and/or the decoding device 112 can perform subblock-based temporal motion vector prediction (SbTMVP).
  • SbTMVP can be used to predict the motion vectors of the sub-CUs within the current CU in two steps, for example as illustrated in FIG. 6A and FIG. 6B.
  • the spatial neighbor Al in FIG. 6A is examined. If Al has a motion vector that uses the collocated picture as its reference picture, this motion vector is selected to be the motion shift to be applied. If no such motion is identified, then the motion shift is set to (0, 0).
  • the motion shift identified in Step 1 is added to the current block’s coordinates to obtain sub-CU-level motion information (motion vectors and reference indices) from the collocated picture as shown in FIG. 6B.
  • the example in FIG. 6B assumes the motion shift is set to block Al’s motion.
  • the motion information of the collocated sub-CU is identified, it is converted to the motion vectors and reference indices of the current sub-CU in a similar way as the TMVP process of VVC, where temporal motion scaling is applied to align the reference pictures of the temporal motion vectors to those of the current CU.
  • the SbTMVP predictor is added as the first entry of the list of subblock based merge candidates, and followed by the affine merge candidates.
  • SbTMVP differs from TMVP in at least the following aspects:
  • TMVP predicts motion at CU level but SbTMVP predicts motion at sub-CU level; [0098] Whereas TMVP fetches the temporal motion vectors from the collocated block in the collocated picture (the collocated block is the bottom-right or center block relative to the current CU), SbTMVP applies a motion shift before fetching the temporal motion information from the collocated picture, where the motion shift is obtained from the motion vector from one of the spatial neighboring blocks of the current CU.
  • the encoding device 104 and/or the decoding device 112 can construct a subblock merge candidate list.
  • the following four types of subblock merge candidates can be used in order to construct the subblock merge candidate list (e.g., the first entry of the subblock merge candidate list is SbTMVP, and the other entries are Affine merge candidates):
  • SbTMVP the sbTMVP predictors are added as described above (e.g., an SbTMVP predictor is added as the first entry of the list of subblock based merge candidates, and followed by the affine merge candidates).
  • Inherited affine merge candidates that extrapolated from the CPMVs of the neighbour CUs: There are a maximum of two inherited affine candidates, which are derived from affine motion model of the neighboring blocks, one from left neighboring CUs and one from above neighboring CUs. The candidate blocks are shown in FIG. 2. For the left predictor, the scan order is A0->Al, and for the above predictor, the scan order is BO->B1->B2. Only the first inherited candidate from each side is selected. No pruning check is performed between two inherited candidates. When a neighboring affine CU is identified, its control point motion vectors are used to derive the CPMVs of an affine merge candidate of the current CU.
  • Constructed affine merge candidates that are derived using the translational MVs of the neighbour CUs:
  • a constructed affine candidate means the candidate is constructed by combining the neighbor translational motion information of each control point.
  • the motion information for the control points is derived from the specified spatial neighbors and temporal neighbor shown in FIG. 7.
  • CPMVi the B2->B3->A2 blocks are checked and the MV of the first available block is used.
  • CPMV2 the Bl->B0 blocks are checked and for CPMV3, the Al->A0 blocks are checked.
  • TMVP is used as CPMV4 if it is available.
  • control point MVs are used to construct in order: ⁇ CPMVi, CPMV2, CPMV3 ⁇ , ⁇ CPMVI, CPMV2, CPMV 4 ⁇ , ⁇ CPMVi, CPMV3, CPMV 4 ⁇ , ⁇ CPMV2, CPMV3, CPMV 4 ⁇ , ⁇ CPMV2, CPMV3, CPMV 4 ⁇ , ⁇ CPMVi, CPMV2 ⁇ , ⁇ CPMVi, CPMV3 ⁇ .
  • the combination of 3 CPMVs constructs a 6-parameter affine merge candidate and the combination of 2 CPMVs constructs a 4-parameter affine merge candidate. To avoid motion scaling process, if the reference indices of control points are different, the related combination of control point MVs is discarded.
  • Zero MVs After inherited affine merge candidates and constructed affine merge candidate are checked, if the list is still not full, zero MVs are inserted to the end of the list.
  • the encoding device 104 and/or the decoding device 112 can perform adaptive reordering of merge candidates (ARMC), referred to as ECM ARMC.
  • ECM merge candidates
  • the merge candidates are adaptively reordered with TM.
  • the reordering method can be applied to a regular merge candidate list, a TM merge candidate list, and/or an affine merge candidate list (the subblock merge candidate list excluding the SbTMVP candidate).
  • merge candidates are reordered before the TM refinement process.
  • merge candidates are divided into several subgroups.
  • the subgroup size is set to 5 for regular merge mode and TM merge mode.
  • the subgroup size is set to 3 for affine merge mode.
  • Merge candidates in each subgroup are reordered ascendingly according to cost values based on TM. In some examples, for simplification, merge candidates in the last but not the first subgroup are not reordered.
  • the TM cost of a merge candidate can be measured by the sum of absolute differences (SAD) (or other measurement) between samples of a template of the current block and their corresponding reference samples.
  • the template comprises a set of reconstructed samples neighboring to the current block. Reference samples of the template are located by the motion information of the merge candidate.
  • the reference samples of the template of the merge candidate are also generated by bi-prediction as shown in FIG. 8.
  • the above template comprises several sub-templates with the size of Wsub x 1
  • the left template comprises several sub-templates with the size of 1 x Hsub.
  • the motion information of the subblocks in the first row and the first column of current block is used to derive the reference samples of each sub-template.
  • the encoding device 104 and/or the decoding device 112 can generate a merge candidate list (e.g., a uni-prediction merge candidate list) for a geometric partitioning mode.
  • a geometric partitioning mode (which can be referred to as GEO mode) is supported for inter prediction.
  • GEO mode When GEO mode is used, a CU or other block can be split into two parts by a geometrically located straight line, such as shown in FIG. 10.
  • the location of the splitting line can be mathematically derived from the angle and offset parameters of a specific partition.
  • Each part of a geometric partition in the CU is inter-predicted using its own motion; in some cases, only uni -prediction is allowed for each partition, in which case each part has one motion vector and one reference index.
  • the encoding device 104 and/or the decoding device 112 can derive the uni -prediction candidate list for GEO mode directly from the regular merge candidate list, as illustrated in FIG. 11.
  • the LX motion vector of the n-th merge candidate with X equal to the parity (even or odd) of n, is used as the n-th uni -prediction motion vector for geometric partitioning mode.
  • These motion vectors are marked with “x” FIG. 11.
  • the L(1 - X) motion vector of the same candidate is used instead as the uni -prediction motion vector for geometric partitioning mode.
  • the systems and techniques described herein can use a multi-stage ARMC (e.g., a two-stage ARMC) technique.
  • a multi-stage ARMC e.g., a two-stage ARMC
  • the encoding device 104 and/or the decoding device 112 can use a first grouping method for grouping the available candidates, and reordering may be applied within each group (e.g., reordering individually within each group).
  • the encoding device 104 and/or the decoding device 112 can then construct a first merge candidate list in order by the groups that are processed by the first ARMC.
  • the input to the second ARMC stage can include the first merge candidate list.
  • the encoding device 104 and/or the decoding device 112 can use a second grouping method for grouping the candidates (e.g., from first merge candidate list).
  • the encoding device 104 and/or the decoding device 112 can apply reordering within each group (e.g., reordering individually within each group) of the candidates generated by the second grouping method.
  • the encoding device 104 and/or the decoding device 112 can then construct a second merge candidate list in order by the groups that are processed by the second ARMC.
  • the systems and techniques described herein can be applied individually or in any combination.
  • the last X number of candidates within each group (e.g., the last three candidates, the last two candidates, the last candidate, or other number of candidates) after reordering may be discarded to reduce the number of candidates when adding candidates to the first merge candidate list.
  • the first grouping method may be different from the second grouping method or may be the same grouping method.
  • the reordering criterion in the first ARMC may also be different from that in the second ARMC or may be the same reordering.
  • the first grouping method in the first ARMC is based on the candidate types (e.g, SMVP, TMVP, NA-TMVP, HMVP, SbTMVP, I-AffineMVP, and/or C- AffineMVP candidate types).
  • candidates in each type are reordered separately.
  • a first merge candidate list can then be constructed (e.g., by the encoding device 104 and/or the decoding device 112) in a predefined order of candidate types. After the first merge candidate list is constructed, the encoding device 104 and/or the decoding device 112 can apply the second ARMC to the first merge candidate list to further group the candidates of the first merge candidate list.
  • the candidates in each group may then be reordered.
  • the encoding device 104 and/or the decoding device 112 can construct a second merge candidate list, as described above.
  • the second merge candidate list is the final candidate list for a specific merge mode.
  • the second grouping method in the second ARMC is based on the candidate index.
  • One illustrative example of the second ARMC is the ARMC currently used in ECM, such as the ECM ARMC described above.
  • the first ARMC and the second ARMC may reorder the merge candidates according to the TM cost values, as described above with respect to the ECM ARMC.
  • the first ARMC and the second ARMC are implemented after a merge candidate list is constructed.
  • the first ARMC can include grouping the candidates based on the candidate types, and reordering the candidates in each candidate type.
  • the merge candidate list reordered according to the first ARMC can be further grouped and reordered according to the second ARMC.
  • multi-stage ARMCs where the grouping and reordering methods could be different in at least two of stages.
  • the proposed two-stage ARMC or multi-stage ARMC can be applied to the merge candidate list constructions in any merge mode, e.g., regular merge list, TM merge list, MMVD merge list, CUP merge list, GPM merge list, subblock merge list, etc.
  • FIG. 15 is a block diagram illustrating an example of a multi-stage ARMC 1500, in accordance with aspects of the present disclosure.
  • the encoding device 104 and/or the decoding device 112 can utilize a merge mode that allows a block (e.g., an inter-predicted PU or other block) to inherit the same motion vector or vectors, prediction direction, and/or reference picture index or indices from another block (e.g., another interpredicted PU or other block).
  • This merge mode may be based on a merge candidate list.
  • a multi-stage ARMC such as multi-stage ARMC 1500, may be used to select merge candidates for the merge candidate list.
  • one or more grouping techniques may be applied to a set of prediction candidates (e.g., another inter-predicted PU or other block) to generate a group of prediction candidates 1502.
  • TMVP as discussed below in detail
  • NA-SMVP as discussed below in detail
  • NA-SMVP may be applied to a set of up to 80 NA-SMVP prediction candidates to determine a group of 18 prediction candidates (such as the group of prediction candidates 1502).
  • the group of prediction candidates 1502 may be reordered 1504 as a reordered group of prediction candidates 1506. In some cases, the group of prediction candidates 1502 may be reordered 1504 based on ARMC TM cost values for prediction candidates of the group of prediction candidates 1502. From the reordered group of prediction candidates 1506, a merge candidate 1510 may be selected 1508. For example, a first prediction candidate from the reordered group of prediction candidates 1506 may be selected 1508 as the merge candidate 1510. This merge candidate 1510 may be added to a merge candidate list 1512 (e.g., second candidate list). In some cases, the merge candidate list 1512 may be a TM merge candidate list.
  • a merge candidate list 1512 e.g., second candidate list.
  • the merge candidate list 1512 may be a TM merge candidate list.
  • the merge candidate list 1512 may include other merge candidates 1514.
  • the other merge candidates 1514 may be added to the merge candidate list 1512 via other grouping methods, such as SMVP.
  • the merge candidate list 1512 may include I number of merge candidates which are added to the merge candidate list 1512 via a grouping method such as the various candidate types discussed below. In some cases, the I may be 10.
  • the merge candidate 1510 may be checked against other merge candidates 1514 already in the merge candidate list 1512, and the merge candidate 1510 added if the merge candidate 1510 is not already in the merge candidate list 1512. If the merge candidate 1510 is already in the merge candidate list 1512, the merge candidate 1510 may be dropped and the merge candidate list 1512 zero padded.
  • a second reordering method 1516 may be applied to the merge candidate list 1512 to generate a reordered merge candidate list 1518.
  • the merge candidate list 1512 may be reordered 1516 based on ARMC TM cost values for merge candidates of the merge candidate list 1512.
  • a merge block 1522 may then be selected 1520 from the reordered merge candidate list 1518.
  • a first merge candidate may be selected from the reordered merge candidate list 1518.
  • the first ARMC of the two-stage ARMC described herein groups candidates into multiple groups, and reorders N candidates in a group based on a cost criterion.
  • M candidates are selected out of N candidates, where M and N are positive integers and M ⁇ N.
  • a first merge candidate list is constructed in a predefined order of the groups.
  • the first ARMC groups the candidates with the same candidate type in one group. For example, in regular merge mode, SMVP candidates are grouped into one group and three other candidate types (e.g., TMVP candidates, NA-TMVP candidates, and HMVP candidates) are separately grouped into three different groups.
  • the values of M and N may be different in different groups. In some cases, at least one of M and N may be different for difference CU sizes. For instance, for larger CU sizes there can be larger numbers of M or N. In some examples, N is the number of all candidates in the candidate type.
  • TMVP reordering For instance, Ml TMVP candidates can be selected out of reordered N 1 TMVP candidates based on ARMC TM cost values, where Ml ⁇ Nl. In some cases, 1 TMVP candidate may be selected out of a reordered 9 TMVP candidates. Denoting the i-th TMVP candidate as TMVPi, the Nl TMVP candidates are composed of the different positions in the collocated picture. Referring to FIG. 12 as an illustrative example, TMVPi derives the TMVP from the position Ci, and TMVPj derives the TMVP from the position Cj. Ci and Cj can be any positions adjacent to the current CU.
  • the Nl TMVP candidates are composed of the different pairs of positions in the collocated picture; an example is TMVPi derives the TMVP from the pair of C2 and C3 and TMVPj derives the TMVP from the pair of Ci and Cj, where for a prediction list LX (e.g., X is equal to 0 or 1), if C2 in LX is available, then TMVPi in LX is derived from C2, otherwise, TMVPi in LX is derived from C3 if C3 in LX is available. If Ci in LX is available, then TMVPj in LX is derived from Ci, otherwise, TMVPj in LX is derived from Cj if Cj in LX is available.
  • LX e.g., X is equal to 0 or 1
  • the Nl TMVP candidates are composed of the same positions in different collocated pictures.
  • TMVPi can be derived from a position Ci in collocated picture A
  • TMVPj can be derived from the same position in collocated picture B.
  • the Nl TMVP candidates include the same positions using different prediction lists.
  • TMVP0 derives the TMVP from the pair of Ci and Cj, where for a prediction list LX (X is equal to 0 or 1), if Ci in LX is available, then TMVPO in LX is derived from Ci; otherwise, TMVPO in LX is derived from Cj if Cj in LX is available.
  • TMVP1 uses the prediction list 0 (L0), such as by deriving TMVP1 equal to the TMVPO using L0 only (e.g., TMVPO without LI).
  • TMVP2 uses the prediction list 1 (LI), such as by deriving TMVP2 equal to the TMVPO using LI only (e.g., TMVPO without LO).
  • a TMVP candidate may be constructed using a bi-prediction location where two motion vectors are used or uni -prediction location with a single motion vector is used.
  • the location Ci may be checked and then the location Cj may be checked.
  • Each of Ci and Cj may be bi-prediction or uniprediction. If a MV prediction in a location is bi-prediction, there are two motion vectors in the location, one from LO and one from LI . Similarly, if MV prediction is uni-prediction, there is one motion vector, either from LO or from LI.
  • 10 TMVP candidates may be constructed from 10 pairs of locations and these 10 TMVP candidates may be bi-prediction and/or uni -prediction candidates.
  • the TMVP candidates can be used to generate another set of TMVP candidates from L0 and another set of TMVP candidates from LI.
  • the 10 TMVP candidates can be used to generate another 10 TMVP candidates from L0 and another 10 TMVP candidates from LI for a total of 30 possible prediction candidates.
  • the first 9 positions may be used for the group of prediction candidates (such as the group of prediction candidates 1502).
  • the N1 TMVP candidates include the same positions using different scaling factors (e.g., a x tb / td), where a can be any non-zero values.
  • TMVPO derives the TMVP from the pair of Ci and Cj as described above using the scaling factor tb/td (a set as 1).
  • TMVP1 derives the TMVP from the pair of Ci and Cj as described above using the scaling factor (9/8) x (tb/td) (a set as 9/8).
  • TMVP2 derives the TMVP from the pair of Ci and Cj as described above using the scaling factor (1/8) x (tb/td) (a set as 1/8).
  • the above TMVP examples can be used individually or combined together in any form.
  • the N1 TMVP candidates include different pairs of positions while using different prediction lists. For instance, in such an example, TMVPO derives the TMVP from the pair of CO and Cl, where for a prediction list LX (X is equal to 0 or 1), if CO in LX is available, then TMVPO in LX is derived from CO; otherwise, TMVPO in LX is derived from Cl if Cl in LX is available.
  • TMVP1 uses the prediction list 0 (L0), such as by deriving TMVP1 equal to the TMVPO using L0 only (e.g., TMVPO withoutLl).
  • TMVP2 uses the prediction list 1 (LI), such as by deriving TMVP2 equal to the TMVPO using LI only (e.g., TMVPO without L0).
  • TMVP3 derives the TMVP from the pair of Ci and Cj, where for a prediction list LX (X is equal to 0 or 1), if Ci in LX is available, then TMVP3 in LX is derived from Ci; otherwise, TMVP3 in LX is derived from Cj if Cj in LX is available.
  • TMVP4 uses the prediction list 0 (L0), such as by deriving TMVP4 equal to the TMVP3 using L0 only (e.g., TMVP3 without LI).
  • TMVP5 uses the prediction list 1 (LI), such as by deriving TMVP5 equal to the TMVP3 using LI only (e.g., TMVP3 without L0).
  • the N1 TMVP candidates include different pairs of positions while using different prediction lists and different scaling factors a x tb / td.
  • NA-SMVP reordering also sometimes referred to as non-adjacent MVP:
  • M2 NA-SMVP candidates can be selected out of reordered N2 NA-SMVP candidates based on ARMC TM cost values, where M2 ⁇ N2.
  • N2 NA-SMVP candidates are composed of the MVs from spatially different neighboring blocks as shown in FIG. 5.
  • neighboring blocks are composed of different position types. In one example, the type may be based on the geometric direction. For instance, referring to FIG.
  • blocks 53, 57, 61, 65, 69, 73 are in one direction, and blocks 51, 55, 59 63, 67, 71 are in another one direction.
  • the type may be based on a geometric layer. Referring again to FIG. 13 as an illustrative example, blocks 47, 49, 42, 71, 45, 73, 46, 74, 44, 72, 43, 50, 48 are in one layer, and blocks 38, 40, 33, 67, 36, 69, 37, 70, 35, 68, 34, 41, 39 are in another one layer.
  • the type may be based on any combination geometric direction, geometric layer, and/or other factors associated with the blocks.
  • the positions are categorized into gl groups based on a first position type, where gl is a positive integer, and is larger than or equal to 2.
  • each group may be further categorized into g2 subgroups based on a second position type, where g2 is a positive integer, and is larger than or equal to 2.
  • N2 NA-SMVP candidates may then be constructed in the order of group 1, group 2, through the final group gl, and in each group i, NA-SMVP candidates are constructed in the order of subgroup 1, subgroup 2, through the final subgroup g2.
  • group 1 includes 1, 4, 5, 3, and 2
  • subgroup 2 includes 11, 13, 6, 9, 10, 8, 7, 14, and 12
  • subgroup 3 includes 20, 22, 15, 18, 19, 17, 16, 23, and 21, and so on.
  • N2 NA-SMVP candidates are first constructed from the blocks in group 1. If N2 is not reached, the candidates from the blocks in group 2 are further added into the NA-SMVP candidates until N2 is reached.
  • the NA-SMVP candidates are constructed in the order of subgroup 1, subgroup 2, through, subgroup 7, until N2 candidates are added into NA-SMVP list. In some cases, N2 may be 18 candidates.
  • SbTMVP reordering For instance, M3 SbTMVP candidates can be selected out of reordered N3 SbTMVP candidates based on ARMC TM cost values, where M3 ⁇ N3. Denoting the i-th SbTMVP candidate as SbTMVPi, the N3 SbTMVP candidates are composed of the different motion shifts applied to the collocated picture.
  • SbTMVPi applies the MV information of neighbouring block Al in FIG. 6A to the current block’s coordinates to obtain sub-CU-level motion information from the collocated picture
  • SbTMVPj applies the MV information of neighbouring block Bl in FIG.
  • the N3 SbTMVP candidates can be composed of the different motion shifts which are derived from the regular merge list, where regular merge list has been reordered by ARMC.
  • SbTMVPi first performs SMVP reordering, where M3 SMVP candidates are selected out of reordered N10 SMVP candidates based on ARMC TM cost values, with M3 ⁇ N10.
  • the i-th SMVP candidate(s) is/are composed of the MVs from different spatially neighboring blocks, such as shown in FIG. 2.
  • the selected M3 SMVPs are then used to shift the collocated block in the current CU while performing SbTMVP.
  • M3 1, indicating that one SMVP is selected out of the reordered N10 SMVP candidates.
  • the same reordering method can be applied to SMVP, PA-MVP, I- AffineMVP, and C-AffineMVP to get a pre-defined number of candidates out of reordered candidates in a merge candidate type.
  • N4 TM merge candidates can be derived first, where M4 ⁇ N4, and then N4 TM merge candidates are reordered by the second ARMC.
  • M4 TM merge candidates are selected out of N4 reordered TM merge candidates.
  • some candidate types such as HMVP and SMVP
  • some candidate types, such as TMVP are reordered by the first ARMC in one merge list, such as regular merge list, but not reordered by the first ARMC in the other one merge list, such as TM merge list.
  • the first grouping method in the first ARMC is to group at least two of candidate types into one group.
  • the encoding device 104 and/or the decoding device 112 can group HMVP and PA-MVP into one group. For instance, assuming there are XI and X2 candidates in HMVP and PA-MVP, then XI + X2 candidates out of HMVP and PA-MVP are reordered by ARMC TM costs, and Y candidates are selected out of X1+X2 candidates, where Y ⁇ X1+X2.
  • Another one example is to group SMVP and PA-MVP into one group. Suppose there are XI and X2 candidates in SMVP and PA-MVP.
  • XI + X2 candidates out of SMVP and PA-MVP are reordered by ARMC TM costs, and Y candidates are selected out of X1+X2 candidates, where Y ⁇ X1+X2.
  • only the best one PA-MVP candidate is selected out of X2 PA-MVP candidates reordered by the first ARMC, and this one PA-MVP candidate and XI SMVP candidates are further reordered by the first ARMC.
  • only the best one SMVP candidate is selected out of XI SMVP candidates by the ARMC TM cost values
  • only the best one PA-MVP candidate is selected out of X2 PA- MVP candidates by the ARMC TM cost values
  • the best SMVP candidate and the best PA-MVP candidate are further compared by the ARMC TM cost value as follows: If TM cost value of the best PA-MVP candidate is smaller than the TM cost value of the best SMVP candidate, the candidate type order is ⁇ the best PA-MVP candidate, SMVP candidates ⁇ ; otherwise, ⁇ SMVP candidates, the best PA-MVP candidate ⁇ .
  • N9 PA- MVP candidates are constructed and added to the merge candidate list.
  • N9 PA-MVP candidates can be reordered by the first ARMC, and M9 candidates are selected out of N9 PA-MVP candidates, where M9 ⁇ N9.
  • an i-th merge candidate mergeCand i in at least one of the candidate types in the first ARMC, and/or the non-reordered group in the second ARMC, is replaced with a PA-MVP by averaging the best PA-MVP candidate and this candidate mergeCand i, e.g., pairwiseAverage(mergeCand_i, the best PA-MVP candidate), where pairwise Average is operated as the same as the PA-MVP in current ECM.
  • the MV information of an i-th merge candidate mergeCand i in at least one of the candidate types in the first ARMC and/or the non-reordered group in the second ARMC are replaced with a PA-MVP by averaging the first SMVP candidate, the second SMVP candidate and this candidate mergeCand i, e.g., pairwise Average(mergeCand_i, the first SMVP candidate, the second SMVP candidate), where the averaged motion vectors are calculated separately for each reference list, and the averaging is performed as long as at least two of MVs out of mergeCand i, the first SMVP candidate, and the second SMVP candidate are available for this reference list.
  • averaging is performed as long as at least two of MVs out of mergeCand i, the first SMVP candidate, and the second SMVP candidate are available for this reference list.
  • a pruning scheme or process can be applied to at least one candidate list in various candidate groups (e.g. TMVP, NA-SMVP, etc.) to remove redundant candidates.
  • a pruning process may be applied while constructing a NA-SMVP candidate list with list size equal to N2.
  • the comparison can be performed for a candidate to be added to the NA-SMVP candidate list with the candidates already added to the NA-SMVP list.
  • the considered candidate may not be added to the NA-SMVP list. For instance, if the following conditions are true in at least one of the j-th candidates of a candidate list for a candidate group, e.g. NA-SMVP candidate list with the list size of N2, the i-th candidate is not added into the list: 1. If the same reference picture list (e.g., either LO or LI) is used by the i-th candidate and the j-th candidate.
  • the same reference picture list e.g., either LO or LI
  • Tx LO MVs and LI MVs are checked
  • Tx and Ty can be any positive pre-assigned value, such as 1/4, 1/2, 1, and/or other value.
  • the Tx and Ty values may be equal.
  • Tx and Ty are mode dependent.
  • Txl and Tyl for one merge mode and Tx2 and Ty2 for the other one merge mode are different while constructing an NA-SMVP list, where Txl is not equal to Tx2, and Tyl is not equal to Tx2.
  • a first merge candidate list is constructed, and there is no second ARMC applied to the first merge candidate list.
  • the first merge candidate list is the final merge candidate list for the merge mode.
  • the systems and techniques described herein include non- Adjacent TMVP.
  • the encoding device 104 and/or the decoding device 112 can derive TMVPs from non-adjacent collocated blocks, and can add the TMVPs into the merge lists, such as a regular merge list and/or a TM merge list.
  • FIG. 14 shows an example where block 1 to block 5 are used for SMVP, block 6 to block 23 are used for NA-SMVP, block CO and block C 1 are used for TMVP, and block C2 to block Cl 1 are used for the proposed non-adjacent TMVP (NA-TMVP). Note that the pattern is not limited to be those as depicted in FIG. 14.
  • One NA-TMVP candidate can use a block which is located at any position non-adjacent to the current CU.
  • the encoding device 104 and/or the decoding device 112 can insert NA-TMVP candidate type into the merge lists between NA-SMVP candidate type and HMVP candidate type.
  • the encoding device 104 and/or the decoding device 112 can insert NA-TMVP candidates into NA- SMVP candidates based on the distance to the current CU. For instance, NA-SMVP candidates and NA-TMVP candidates with the similar distance to the current CU are grouped together, and the group with shorter distances are ranked in higher priority to be inserted into a merge candidate list. Referring to FIG.
  • blocks 6, 7, 8 and C2 are in the first group
  • blocks 9, 10, 11, 12, 13, C3, C4, C5 are in the second group
  • blocks 14, 15, 16, 17, 18, C6, C7, C8 are in the third group
  • blocks 19, 20, 21, 22, 23, C9, CIO, Cl 1 are in the fourth group.
  • the order of insertion into a merge candidate list is 1st group, 2nd group, 3rd group, and 4th group
  • NA-SMVPs have higher priority than NA-TMVPs in a group.
  • NA-TMVPi is derived from the position Ci.
  • NA-TMVPi is derived from a pair of positions Cj and Ck. For instance, for a prediction list LX, if Cj in LX is available, then NA-TMVPi in LX is derived from Cj; otherwise, NA-TMVPi in LX is derived from Ck if Ck in LX is available.
  • the first ARMC stage described above can be applied to NA-TMVP.
  • M5 NA-TMVP candidates may be selected out of reordered N5 NA-TMVP candidates based on ARMC TM cost values, where M5 ⁇ N5.
  • NA-SMVP candidates and NA-TMVP candidates with the similar distance to the current CU are grouped into one group. For instance, assuming there are N6 candidates in this group, M6 candidates with M6 ⁇ N6 are selected out of reordered N6 candidates based on ARMC TM cost values.
  • NA-TMVP candidates can be inserted between TMVP candidates and NA-SMVP candidates.
  • TMVPs and NA-TMVPs can be grouped together and reordered together by the first ARMC stage.
  • the candidates in a candidate group when the candidates in a candidate group are from different distances, the candidates can be added into the list from near to far until the list is full.
  • the candidates in NA-SMVP candidate group are from different distances (e.g., from any one or more of the blocks 6, 7, through 23 in FIG. 14).
  • the blocks 6, 7, and 8 are on the same distance level 1
  • blocks 9, 10, 11, 12, and 13 are on the same distance level 2
  • blocks 14, 15, 16, 17, and 18 are on the same distance level 3
  • blocks 19, 20, 21, 22, and 23 are on the same distance level 4.
  • N2 is set as 18. In other examples, N2 can be set to any other suitable value.
  • N2 is the NA-SMVP list size
  • N2 candidates in NA-SMVP list size will be reordered
  • M2 NA-SMVP candidates with lowest TM costs will be selected out of the N2 candidates and added into the merge list.
  • the candidates in each distance level are further divided into QI subgroups, and the candidates are added into the list from near to far and from subgroup 1 to subgroup QI until the list is full.
  • the blocks 6 and 7 are set to be subgroup 1 on distance level 1
  • the block 8 is set to be subgroup 2 on distance level 1
  • the blocks 9, 10, 11, and 12 are set to be subgroup 1 on distance level 2
  • the block 13 is set to be subgroup 2 on distance level 2
  • the blocks 14, 15, 16, and 17 are set to be subgroup 1 on distance level 3
  • the block 18 is set to be subgroup 2 on distance level 3
  • the blocks 19, 20, 21, and 22 are set to be subgroup 1 on distance level 4
  • the block 23 is set to be subgroup 2 on distance level 4.
  • the encoding device 104 and/or the decoding device 112 can reorder the candidates of a GEO merge candidate list. For instance, the encoding device 104 and/or the decoding device 112 can construct a GEO merge candidate list independently from the regular merge candidate list. In one example, the encoding device 104 and/or the decoding device 112 can construct the GEO merge candidate list from at least one of the following candidate types: SMVP, TMVP, NA-SMVP, NA-TMVP, HMVP, and PA-MVP. In some cases, if a candidate is a biprediction candidate (generated based on bi-prediction), then the bi-prediction candidate is split into two uni-prediction candidates.
  • an ARMC is applied to reorder the candidates in the candidate type based on the TM cost values.
  • SMVP candidate type in FIG. 2 there are 5 blocks (including blocks B0, A0, Bl, Al, and B2). If B0 is a biprediction candidate, then it is split into two SMVP candidates, one is SMVP0 which uses the MV information in prediction list 0 of block B0, and the other is SMVP1 which uses the MV information in prediction list 1 of block B0. If A0 is a uni -prediction candidate, then SMVP2 uses the MV information of block A0.
  • M7 with M7 ⁇ N7 are selected out of reordered N7 candidates based on TM costs.
  • the same method can be applied to TMVP, NA-SMVP, NA-TMVP and HMVP.
  • the list construction and ARMC can be applied to both lists.
  • there are multiple independent GEO merge candidate lists where a GEO merge candidate list corresponds to a specific geometric partition angle and specific geometric partition index.
  • ARMC is applied to a GEO merge list, the TM cost can be calculated based on the templates which are predefined by an TM look-up table. Table 1 below shows an example of the TM look-up table, where only above template of the current CU in FIG.
  • TM cost for the GEO merge list corresponding to the partition angle index 0 and the 1 st partition is used to calculate the TM cost for the GEO merge list corresponding to the partition angle index 0 and the 2 nd partition.
  • Table 1 A TM look-up table to calculate the TM cost for a GEO merge candidate list
  • a GEO merge candidate list is constructed dependently from the regular merge candidate list, as described above with respect to the construction of a uni -prediction GEO merge candidate list. For instance, if a candidate in the regular merge list is bi-prediction, then the encoding device 104 and/or the decoding device 112 can split one bi-prediction candidate into two uni-prediction candidates, and an ARMC can be applied to select the one uni-prediction candidate out of these two uni-prediction candidates based on the ARMC TM cost values.
  • FIG. 16 is a flow diagram illustrating a process 1600 for performing bit rate estimation 1600, in accordance with aspects of the present disclosure.
  • the process 1600 includes obtaining a first plurality of prediction candidates associated with video data.
  • at least one camera configured to capture one or more frames associated with the video data.
  • the process 1600 includes determining a first group of prediction candidates at least in part by applying a first grouping method to the first plurality of prediction candidates.
  • the first grouping method is based on a plurality of candidate types associated with the first plurality of prediction candidates.
  • the candidate list includes the first merge candidate in a predefined order based on the plurality of candidate types.
  • the the plurality of candidate types include at least one of a spatial motion vector predictor (SMVP) type, a temporal motion vector predictor (TMVP) type, a non-adjacent temporal motion vector predictor (NA-TMVP) candidate, a history-based motion vector predictor (HMVP) candidate, a subblockbased temporal motion vector prediction (SbTMVP) candidate, an inherited affine merge (I- AffineMVP) candidate, or a constructed affine merge (C-AffineMVP) candidate.
  • the first grouping method is one of a temporal motion vector predictor (TMVP) or a non-adjacent temporal motion vector predictor (NA-TMVP).
  • the first group of prediction candidates includes fewer prediction candidates than the first plurality of prediction candidates.
  • the process 1600 includes reordering the first group of prediction candidates. In some cases, the process 1600 includes reordering the first group of prediction candidates based on cost values. In some cases, the process 1600 includes reordering the first group of prediction candidates in ascending order based on the cost values. In some cases, the cost values are based on template matching. In some cases, the process 1600 includes discarding at least one candidate from the reordered first group of prediction candidates prior to adding the first merge candidate to the candidate list.
  • the process 1600 includes selecting a first merge candidate from the reordered first group of prediction candidates.
  • the technique 1600 includes adding the first merge candidate to a candidate list.
  • the candidate list is a merge candidate list used for a merge mode.
  • the process 1600 includes determining a second group of prediction candidates at least in part by applying a second grouping method to the candidate list.
  • the process 1600 includes: reordering the second group of prediction candidates; selecting a second merge candidate from the reordered second group of prediction candidates; and adding the second merge candidate to the candidate list.
  • the process 1600 includes determining that the first merge candidate is not in the candidate list; and adding the first merge candidate to the candidate list based on the determination that the first merge candidate is not in the candidate list.
  • the process 1600 includes generating a prediction for a current block of the video data based on the candidate list. In some cases, the process 1600 includes decoding the current block of the video data based on the prediction. In some cases, the process 1600 includes encoding the current block of the video data based on the prediction. In some cases, the process 1600 includes displaying images from the video data.
  • the processes described herein may be performed by a computing device or an apparatus, such as the encoding device 104, the decoding device 112, and/or any other computing device.
  • the computing device or apparatus may include a processor, microprocessor, microcomputer, or other component of a device that is configured to carry out the steps of processes described herein.
  • the computing device or apparatus may include a camera configured to capture video data (e.g., a video sequence) including video frames.
  • the computing device may include a camera device, which may or may not include a video codec.
  • the computing device may include a mobile device with a camera (e.g., a camera device such as a digital camera, an IP camera or the like, a mobile phone or tablet including a camera, or other type of device with a camera).
  • the computing device may include a display for displaying images.
  • a camera or other capture device that captures the video data is separate from the computing device, in which case the computing device receives the captured video data.
  • the computing device may further include a network interface, transceiver, and/or transmitter configured to communicate the video data.
  • the network interface, transceiver, and/or transmitter may be configured to communicate Internet Protocol (IP) based data or other network data.
  • IP Internet Protocol
  • the processes described herein can be implemented in hardware, computer instructions, or a combination thereof.
  • the operations represent computer-executable instructions stored on one or more computer-readable storage media that, when executed by one or more processors, perform the recited operations.
  • computerexecutable instructions include routines, programs, objects, components, data structures, and the like that perform particular functions or implement particular data types.
  • the order in which the operations are described is not intended to be construed as a limitation, and any number of the described operations can be combined in any order and/or in parallel to implement the processes.
  • the processes described herein may be performed under the control of one or more computer systems configured with executable instructions and may be implemented as code (e.g., executable instructions, one or more computer programs, or one or more applications) executing collectively on one or more processors, by hardware, or combinations thereof.
  • code e.g., executable instructions, one or more computer programs, or one or more applications
  • the code may be stored on a computer-readable or machine-readable storage medium, for example, in the form of a computer program comprising a plurality of instructions executable by one or more processors.
  • the computer-readable or machine-readable storage medium may be non- transitory.
  • a system includes a source device that provides encoded video data to be decoded at a later time by a destination device.
  • the source device provides the video data to destination device via a computer-readable medium.
  • the source device and the destination device may comprise any of a wide range of devices, including desktop computers, notebook (i.e., laptop) computers, tablet computers, set-top boxes, telephone handsets such as so-called “smart” phones, so-called “smart” pads, televisions, cameras, display devices, digital media players, video gaming consoles, video streaming device, or the like.
  • the source device and the destination device may be equipped for wireless communication.
  • the destination device may receive the encoded video data to be decoded via the computer-readable medium.
  • the computer-readable medium may comprise any type of medium or device capable of moving the encoded video data from source device to destination device.
  • computer-readable medium may comprise a communication medium to enable source device to transmit encoded video data directly to destination device in real-time.
  • the encoded video data may be modulated according to a communication standard, such as a wireless communication protocol, and transmitted to destination device.
  • the communication medium may comprise any wireless or wired communication medium, such as a radio frequency (RF) spectrum or one or more physical transmission lines.
  • the communication medium may form part of a packetbased network, such as a local area network, a wide-area network, or a global network such as the Internet.
  • the communication medium may include routers, switches, base stations, or any other equipment that may be useful to facilitate communication from source device to destination device.
  • encoded data may be output from output interface to a storage device.
  • encoded data may be accessed from the storage device by input interface.
  • the storage device may include any of a variety of distributed or locally accessed data storage media such as a hard drive, Blu-ray discs, DVDs, CD-ROMs, flash memory, volatile or non-volatile memory, or any other suitable digital storage media for storing encoded video data.
  • the storage device may correspond to a file server or another intermediate storage device that may store the encoded video generated by source device. Destination device may access stored video data from the storage device via streaming or download.
  • the file server may be any type of server capable of storing encoded video data and transmitting that encoded video data to the destination device.
  • Example file servers include a web server (e.g., for a website), an FTP server, network attached storage (NAS) devices, or a local disk drive.
  • Destination device may access the encoded video data through any standard data connection, including an Internet connection.
  • the connection may include a wireless channel (e.g., a Wi-Fi connection), a wired connection (e.g., DSL, cable modem, etc.), or a combination of both that is suitable for accessing encoded video data stored on a file server.
  • the transmission of encoded video data from the storage device may be a streaming transmission, a download transmission, or a combination thereof.
  • the techniques of the disclosure are not necessarily limited to wireless applications or settings.
  • the techniques may be applied to video coding in support of any of a variety of multimedia applications, such as over-the-air television broadcasts, cable television transmissions, satellite television transmissions, Internet streaming video transmissions, such as dynamic adaptive streaming over HTTP (DASH), digital video that is encoded onto a data storage medium, decoding of digital video stored on a data storage medium, or other applications.
  • system may be configured to support one-way or two-way video transmission to support applications such as video streaming, video playback, video broadcasting, and/or video telephony.
  • the source device includes a video source, a video encoder, and a output interface.
  • the destination device may include an input interface, a video decoder, and a display device.
  • the video encoder of source device may be configured to apply the techniques disclosed herein.
  • a source device and a destination device may include other components or arrangements.
  • the source device may receive video data from an external video source, such as an external camera.
  • the destination device may interface with an external display device, rather than including an integrated display device.
  • the example system above is merely one example.
  • Techniques for processing video data in parallel may be performed by any digital video encoding and/or decoding device.
  • the techniques of the disclosure are performed by a video encoding device, the techniques may also be performed by a video encoder/decoder, typically referred to as a “CODEC.”
  • the techniques of the disclosure may also be performed by a video preprocessor.
  • Source device and destination device are merely examples of such coding devices in which source device generates coded video data for transmission to destination device.
  • the source and destination devices may operate in a substantially symmetrical manner such that each of the devices includes video encoding and decoding components.
  • example systems may support one-way or two-way video transmission between video devices, e.g., for video streaming, video playback, video broadcasting, or video telephony.
  • the video source may include a video capture device, such as a video camera, a video archive containing previously captured video, and/or a video feed interface to receive video from a video content provider.
  • the video source may generate computer graphics-based data as the source video, or a combination of live video, archived video, and computer generated video.
  • source device and destination device may form so-called camera phones or video phones.
  • the techniques described in the disclosure may be applicable to video coding in general, and may be applied to wireless and/or wired applications.
  • the captured, pre-captured, or computer-generated video may be encoded by the video encoder.
  • the encoded video information may be output by an output interface onto the computer-readable medium.
  • the computer-readable medium may include transient media, such as a wireless broadcast or wired network transmission, or storage media (that is, non-transitory storage media), such as a hard disk, flash drive, compact disc, digital video disc, Blu-ray disc, or other computer- readable media.
  • a network server (not shown) may receive encoded video data from the source device and provide the encoded video data to the destination device, e.g., via network transmission.
  • a computing device of a medium production facility such as a disc stamping facility, may receive encoded video data from the source device and produce a disc containing the encoded video data. Therefore, the computer-readable medium may be understood to include one or more computer-readable media of various forms, in various examples.
  • the input interface of the destination device receives information from the computer- readable medium.
  • the information of the computer-readable medium may include syntax information defined by the video encoder, which is also used by the video decoder, that includes syntax elements that describe characteristics and/or processing of blocks and other coded units, e.g., group of pictures (GOP).
  • a display device displays the decoded video data to a user, and may comprise any of a variety of display devices such as a cathode ray tube (CRT), a liquid crystal display (LCD), a plasma display, an organic light emitting diode (OLED) display, or another type of display device.
  • CTR cathode ray tube
  • LCD liquid crystal display
  • plasma display e.g., a plasma display
  • OLED organic light emitting diode
  • FIG. 17 is a block diagram illustrating an example encoding device 104 that may implement one or more of the techniques described in the disclosure.
  • Encoding device 104 may, for example, generate the syntax structures described herein (e.g., the syntax structures of a VPS, SPS, PPS, or other syntax elements).
  • Encoding device 104 may perform intra-prediction and inter-prediction coding of video blocks within video slices. As previously described, intra-coding relies, at least in part, on spatial prediction to reduce or remove spatial redundancy within a given video frame or picture.
  • Inter-coding relies, at least in part, on temporal prediction to reduce or remove temporal redundancy within adjacent or surrounding frames of a video sequence.
  • Intra-mode may refer to any of several spatial based compression modes.
  • Inter-modes such as uni-directional prediction (P mode) or bi-prediction (B mode), may refer to any of several temporal-based compression modes.
  • the encoding device 104 includes a partitioning unit 35, prediction processing unit 41, filter unit 63, picture memory 64, summer 50, transform processing unit 52, quantization unit 54, and entropy encoding unit 56.
  • Prediction processing unit 41 includes motion estimation unit 42, motion compensation unit 44, and intra-prediction processing unit 46.
  • encoding device 104 also includes inverse quantization unit 58, inverse transform processing unit 60, and summer 62.
  • Filter unit 63 is intended to represent one or more loop filters such as a deblocking filter, an adaptive loop filter (ALF), and a sample adaptive offset (SAO) filter. Although filter unit 63 is shown in FIG.
  • filter unit 63 may be implemented as a post loop filter.
  • a post processing device 57 may perform additional processing on encoded video data generated by the encoding device 104.
  • the techniques of the disclosure may in some instances be implemented by the encoding device 104. In other instances, however, one or more of the techniques of the disclosure may be implemented by post processing device 57.
  • the encoding device 104 receives video data, and partitioning unit 35 partitions the data into video blocks.
  • the partitioning may also include partitioning into slices, slice segments, tiles, or other larger units, as wells as video block partitioning, e.g., according to a quadtree structure of LCUs and CUs.
  • the encoding device 104 generally illustrates the components that encode video blocks within a video slice to be encoded.
  • the slice may be divided into multiple video blocks (and possibly into sets of video blocks referred to as tiles).
  • Prediction processing unit 41 may select one of a plurality of possible coding modes, such as one of a plurality of intra-prediction coding modes or one of a plurality of inter-prediction coding modes, for the current video block based on error results (e.g., coding rate and the level of distortion, or the like).
  • Prediction processing unit 41 may provide the resulting intra- or inter-coded block to summer 50 to generate residual block data and to summer 62 to reconstruct the encoded block for use as a reference picture.
  • Intra-prediction processing unit 46 within prediction processing unit 41 may perform intra-prediction coding of the current video block relative to one or more neighboring blocks in the same frame or slice as the current block to be coded to provide spatial compression.
  • Motion estimation unit 42 and motion compensation unit 44 within prediction processing unit 41 perform inter-predictive coding of the current video block relative to one or more predictive blocks in one or more reference pictures to provide temporal compression.
  • Motion estimation unit 42 may be configured to determine the inter-prediction mode for a video slice according to a predetermined pattern for a video sequence.
  • the predetermined pattern may designate video slices in the sequence as P slices, B slices, or GPB slices.
  • Motion estimation unit 42 and motion compensation unit 44 may be highly integrated, but are illustrated separately for conceptual purposes.
  • Motion estimation, performed by motion estimation unit 42 is the process of generating motion vectors, which estimate motion for video blocks.
  • a motion vector for example, may indicate the displacement of a prediction unit (PU) of a video block within a current video frame or picture relative to a predictive block within a reference picture.
  • PU prediction unit
  • a predictive block is a block that is found to closely match the PU of the video block to be coded in terms of pixel difference, which may be determined by sum of absolute difference (SAD), sum of square difference (SSD), or other difference metrics.
  • the encoding device 104 may calculate values for sub-integer pixel positions of reference pictures stored in picture memory 64. For example, the encoding device 104 may interpolate values of one- quarter pixel positions, one-eighth pixel positions, or other fractional pixel positions of the reference picture. Therefore, motion estimation unit 42 may perform a motion search relative to the full pixel positions and fractional pixel positions and output a motion vector with fractional pixel precision.
  • Motion estimation unit 42 calculates a motion vector for a PU of a video block in an inter-coded slice by comparing the position of the PU to the position of a predictive block of a reference picture.
  • the reference picture may be selected from a first reference picture list (List 0) or a second reference picture list (List 1), each of which identify one or more reference pictures stored in picture memory 64.
  • Motion estimation unit 42 sends the calculated motion vector to entropy encoding unit 56 and motion compensation unit 44.
  • Motion compensation performed by motion compensation unit 44, may involve fetching or generating the predictive block based on the motion vector determined by motion estimation, possibly performing interpolations to sub-pixel precision.
  • motion compensation unit 44 may locate the predictive block to which the motion vector points in a reference picture list.
  • the encoding device 104 forms a residual video block by subtracting pixel values of the predictive block from the pixel values of the current video block being coded, forming pixel difference values.
  • the pixel difference values form residual data for the block, and may include both luma and chroma difference components.
  • Summer 50 represents the component or components that perform the subtraction operation.
  • Motion compensation unit 44 may also generate syntax elements associated with the video blocks and the video slice for use by the decoding device 112 in decoding the video blocks of the video slice.
  • Intra-prediction processing unit 46 may intra-predict a current block, as an alternative to the inter-prediction performed by motion estimation unit 42 and motion compensation unit 44, as described above. In particular, intra-prediction processing unit 46 may determine an intraprediction mode to use to encode a current block. In some examples, intra-prediction processing unit 46 may encode a current block using various intra-prediction modes, e.g., during separate encoding passes, and intra-prediction processing unit 46 may select an appropriate intra-prediction mode to use from the tested modes.
  • intra-prediction processing unit 46 may calculate rate-distortion values using a rate-distortion analysis for the various tested intra-prediction modes, and may select the intra-prediction mode having the best rate-distortion characteristics among the tested modes.
  • Rate-distortion analysis generally determines an amount of distortion (or error) between an encoded block and an original, unencoded block that was encoded to produce the encoded block, as well as a bit rate (that is, a number of bits) used to produce the encoded block.
  • Intra-prediction processing unit 46 may calculate ratios from the distortions and rates for the various encoded blocks to determine which intra-prediction mode exhibits the best rate-distortion value for the block.
  • intra-prediction processing unit 46 may provide information indicative of the selected intra-prediction mode for the block to entropy encoding unit 56.
  • Entropy encoding unit 56 may encode the information indicating the selected intra-prediction mode.
  • the encoding device 104 may include in the transmitted bitstream configuration data definitions of encoding contexts for various blocks as well as indications of a most probable intra-prediction mode, an intra-prediction mode index table, and a modified intra-prediction mode index table to use for each of the contexts.
  • the bitstream configuration data may include a plurality of intra-prediction mode index tables and a plurality of modified intra-prediction mode index tables (also referred to as codeword mapping tables).
  • the encoding device 104 forms a residual video block by subtracting the predictive block from the current video block.
  • the residual video data in the residual block may be included in one or more TUs and applied to transform processing unit 52.
  • Transform processing unit 52 transforms the residual video data into residual transform coefficients using a transform, such as a discrete cosine transform (DCT) or a conceptually similar transform.
  • Transform processing unit 52 may convert the residual video data from a pixel domain to a transform domain, such as a frequency domain.
  • Transform processing unit 52 may send the resulting transform coefficients to quantization unit 54.
  • Quantization unit 54 quantizes the transform coefficients to further reduce bit rate. The quantization process may reduce the bit depth associated with some or all of the coefficients. The degree of quantization may be modified by adjusting a quantization parameter.
  • quantization unit 54 may perform a scan of the matrix including the quantized transform coefficients.
  • entropy encoding unit 56 may perform the scan.
  • entropy encoding unit 56 entropy encodes the quantized transform coefficients.
  • entropy encoding unit 56 may perform context adaptive variable length coding (CAVLC), context adaptive binary arithmetic coding (CABAC), syntaxbased context-adaptive binary arithmetic coding (SB AC), probability interval partitioning entropy (PIPE) coding or another entropy encoding technique.
  • CAVLC context adaptive variable length coding
  • CABAC context adaptive binary arithmetic coding
  • SB AC syntaxbased context-adaptive binary arithmetic coding
  • PIPE probability interval partitioning entropy
  • the encoded bitstream may be transmitted to the decoding device 112, or archived for later transmission or retrieval by the decoding device 112.
  • Entropy encoding unit 56 may also entropy encode the motion vectors and the other syntax elements for the current video slice being coded.
  • Inverse quantization unit 58 and inverse transform processing unit 60 apply inverse quantization and inverse transformation, respectively, to reconstruct the residual block in the pixel domain for later use as a reference block of a reference picture.
  • Motion compensation unit 44 may calculate a reference block by adding the residual block to a predictive block of one of the reference pictures within a reference picture list. Motion compensation unit 44 may also apply one or more interpolation filters to the reconstructed residual block to calculate sub-integer pixel values for use in motion estimation.
  • Summer 62 adds the reconstructed residual block to the motion compensated prediction block produced by motion compensation unit 44 to produce a reference block for storage in picture memory 64.
  • the reference block may be used by motion estimation unit 42 and motion compensation unit 44 as a reference block to inter-predict a block in a subsequent video frame or picture.
  • the encoding device 104 may perform any of the techniques described herein. Some techniques of the disclosure have generally been described with respect to the encoding device 104, but as mentioned above, some of the techniques of the disclosure may also be implemented by post processing device 57.
  • the encoding device 104 of FIG. 17 represents an example of a video encoder configured to perform one or more of the transform coding techniques described herein.
  • the encoding device 104 may perform any of the techniques described herein, including the processes described above with respect to FIG. 18.
  • FIG. 18 is a block diagram illustrating an example decoding device 112.
  • the decoding device 112 includes an entropy decoding unit 80, prediction processing unit 81, inverse quantization unit 86, inverse transform processing unit 88, summer 90, filter unit 91, and picture memory 92.
  • Prediction processing unit 81 includes motion compensation unit 82 and intra prediction processing unit 84.
  • the decoding device 112 may, in some examples, perform a decoding pass generally reciprocal to the encoding pass described with respect to the encoding device 104 from FIG. 17.
  • the decoding device 112 receives an encoded video bitstream that represents video blocks of an encoded video slice and associated syntax elements sent by the encoding device 104.
  • the decoding device 112 may receive the encoded video bitstream from the encoding device 104.
  • the decoding device 112 may receive the encoded video bitstream from a network entity 79, such as a server, a media- aware network element (MANE), a video editor/splicer, or other such device configured to implement one or more of the techniques described above.
  • Network entity 79 may or may not include the encoding device 104.
  • network entity 79 may be implemented by network entity 79 prior to network entity 79 transmitting the encoded video bitstream to the decoding device 112.
  • network entity 79 and the decoding device 112 may be parts of separate devices, while in other instances, the functionality described with respect to network entity 79 may be performed by the same device that comprises the decoding device 112.
  • the entropy decoding unit 80 of the decoding device 112 entropy decodes the bitstream to generate quantized coefficients, motion vectors, and other syntax elements. Entropy decoding unit 80 forwards the motion vectors and other syntax elements to prediction processing unit 81.
  • the decoding device 112 may receive the syntax elements at the video slice level and/or the video block level. Entropy decoding unit 80 may process and parse both fixed-length syntax elements and variable-length syntax elements in or more parameter sets, such as a VPS, SPS, and PPS.
  • intra prediction processing unit 84 of prediction processing unit 81 may generate prediction data for a video block of the current video slice based on a signaled intra-prediction mode and data from previously decoded blocks of the current frame or picture.
  • motion compensation unit 82 of prediction processing unit 81 produces predictive blocks for a video block of the current video slice based on the motion vectors and other syntax elements received from entropy decoding unit 80.
  • the predictive blocks may be produced from one of the reference pictures within a reference picture list.
  • the decoding device 112 may construct the reference frame lists, List 0 and List 1, using default construction techniques based on reference pictures stored in picture memory 92.
  • Motion compensation unit 82 determines prediction information for a video block of the current video slice by parsing the motion vectors and other syntax elements, and uses the prediction information to produce the predictive blocks for the current video block being decoded. For example, motion compensation unit 82 may use one or more syntax elements in a parameter set to determine a prediction mode (e.g., intra- or inter-prediction) used to code the video blocks of the video slice, an inter-prediction slice type (e.g., B slice, P slice, or GPB slice), construction information for one or more reference picture lists for the slice, motion vectors for each interencoded video block of the slice, inter-prediction status for each inter-coded video block of the slice, and other information to decode the video blocks in the current video slice.
  • a prediction mode e.g., intra- or inter-prediction
  • an inter-prediction slice type e.g., B slice, P slice, or GPB slice
  • construction information for one or more reference picture lists for the slice motion vectors for each interencoded
  • Motion compensation unit 82 may also perform interpolation based on interpolation filters. Motion compensation unit 82 may use interpolation filters as used by the encoding device 104 during encoding of the video blocks to calculate interpolated values for sub-integer pixels of reference blocks. In the above case, motion compensation unit 82 may determine the interpolation filters used by the encoding device 104 from the received syntax elements, and may use the interpolation filters to produce predictive blocks.
  • Inverse quantization unit 86 inverse quantizes, or de-quantizes, the quantized transform coefficients provided in the bitstream and decoded by entropy decoding unit 80.
  • the inverse quantization process may include use of a quantization parameter calculated by the encoding device 104 for each video block in the video slice to determine a degree of quantization and, likewise, a degree of inverse quantization that should be applied.
  • Inverse transform processing unit 88 applies an inverse transform (e.g., an inverse DCT or other suitable inverse transform), an inverse integer transform, or a conceptually similar inverse transform process, to the transform coefficients in order to produce residual blocks in the pixel domain.
  • the decoding device 112 forms a decoded video block by summing the residual blocks from inverse transform processing unit 88 with the corresponding predictive blocks generated by motion compensation unit 82.
  • Summer 90 represents the component or components that perform the summation operation.
  • loop filters may also be used to smooth pixel transitions, or to otherwise improve the video quality.
  • Filter unit 91 is intended to represent one or more loop filters such as a deblocking filter, an adaptive loop filter (ALF), and a sample adaptive offset (SAO) filter. Although filter unit 91 is shown in FIG.
  • filter unit 91 may be implemented as a post loop filter.
  • the decoded video blocks in a given frame or picture are stored in picture memory 92, which stores reference pictures used for subsequent motion compensation.
  • Picture memory 92 also stores decoded video for later presentation on a display device, such as video destination device 122 shown in FIG. 1.
  • the decoding device 112 of FIG. 18 represents an example of a video decoder configured to perform one or more of the transform coding techniques described herein.
  • the decoding device 112 may perform any of the techniques described herein, including the process 1900 described above with respect to FIG. 18.
  • Such configuration can be accomplished, for example, by designing electronic circuits or other hardware to perform the operation, by programming programmable electronic circuits (e.g., microprocessors, or other suitable electronic circuits) to perform the operation, or any combination thereof.
  • programmable electronic circuits e.g., microprocessors, or other suitable electronic circuits
  • Claim language or other language reciting “at least one of’ a set and/or “one or more” of a set indicates that one member of the set or multiple members of the set (in any combination) satisfy the claim.
  • claim language reciting “at least one of A and B” means A, B, or A and B.
  • claim language reciting “at least one of A, B, and C” means A, B, C, or A and B, or A and C, or B and C, or A and B and C.
  • the language “at least one of’ a set and/or “one or more” of a set does not limit the set to the items listed in the set.
  • claim language reciting “at least one of A and B” can mean A, B, or A and B, and can additionally include items not listed in the set of A and B.
  • the techniques described herein may also be implemented in electronic hardware, computer software, firmware, or any combination thereof. Such techniques may be implemented in any of a variety of devices such as general purposes computers, wireless communication device handsets, or integrated circuit devices having multiple uses including application in wireless communication device handsets and other devices. Any features described as modules or components may be implemented together in an integrated logic device or separately as discrete but interoperable logic devices. If implemented in software, the techniques may be realized at least in part by a computer-readable data storage medium comprising program code including instructions that, when executed, performs one or more of the methods described above.
  • the computer-readable data storage medium may form part of a computer program product, which may include packaging materials.
  • the computer-readable medium may comprise memory or data storage media, such as random access memory (RAM) such as synchronous dynamic random access memory (SDRAM), read-only memory (ROM), non-volatile random access memory (NVRAM), electrically erasable programmable read-only memory (EEPROM), FLASH memory, magnetic or optical data storage media, and the like.
  • RAM random access memory
  • SDRAM synchronous dynamic random access memory
  • ROM read-only memory
  • NVRAM non-volatile random access memory
  • EEPROM electrically erasable programmable read-only memory
  • FLASH memory magnetic or optical data storage media, and the like.
  • the techniques additionally, or alternatively, may be realized at least in part by a computer-readable communication medium that carries or communicates program code in the form of instructions or data structures and that can be accessed, read, and/or executed by a computer, such as propagated signals or waves.
  • the program code may be executed by a processor, which may include one or more processors, such as one or more digital signal processors (DSPs), general purpose microprocessors, an application specific integrated circuits (ASICs), field programmable logic arrays (FPGAs), or other equivalent integrated or discrete logic circuitry.
  • DSPs digital signal processors
  • ASICs application specific integrated circuits
  • FPGAs field programmable logic arrays
  • a general purpose processor may be a microprocessor; but in the alternative, the processor may be any conventional processor, controller, microcontroller, or state machine.
  • a processor may also be implemented as a combination of computing devices, e.g., a combination of a DSP and a microprocessor, a plurality of microprocessors, one or more microprocessors in conjunction with a DSP core, or any other such configuration.
  • processor may refer to any of the foregoing structure, any combination of the foregoing structure, or any other structure or apparatus suitable for implementation of the techniques described herein.
  • functionality described herein may be provided within dedicated software modules or hardware modules configured for encoding and decoding, or incorporated in a combined video encoderdecoder (CODEC).
  • CODEC combined video encoderdecoder
  • Aspect 1 An apparatus for processing video data, the apparatus comprising: at least one memory; and at least one processor coupled to the at least one memory, the at least one processor being configured to: obtain a first plurality of prediction candidates associated with video data; generate one or more first groups of prediction candidates at least in part by applying a first grouping method to the first plurality of prediction candidates; reorder the one or more first groups of prediction candidates; generate a first candidate list based on the reordered one or more first groups of prediction candidates; and generate one or more second groups of prediction candidates at least in part by applying a second grouping method to the first candidate list.
  • Aspect 2 The apparatus of Aspect 1, wherein the at least one processor is configured to: reorder the one or more second groups of prediction candidates; and generate a second candidate list based on the reordered one or more second groups of prediction candidates.
  • Aspect 3 The apparatus of any of Aspects 1 or 2, wherein the second candidate list is a merge candidate list used for a merge mode.
  • Aspect 4 The apparatus of any of Aspects 1 to 3, wherein the first grouping method is based on a plurality of candidate types associated with the first plurality of prediction candidates.
  • Aspect 5 Aspect The apparatus of Aspect 4, wherein, to generate the first candidate list, the at least one processor is configured to include in the first candidate list the reordered one or more first groups of prediction candidates in a predefined order based on the plurality of candidate types.
  • Aspect 6 The apparatus of any of Aspects 4 or 5, wherein the plurality of candidate types include at least one of a spatial motion vector predictor (SMVP) type, a temporal motion vector predictor (TMVP) type, a non-adjacent temporal motion vector predictor (NA-TMVP) candidate, a history-based motion vector predictor (HMVP) candidate, a subblock-based temporal motion vector prediction (SbTMVP) candidate, an inherited affine merge (I-AffineMVP) candidate, and a constructed affine merge (C-AffineMVP) candidate.
  • SMVP spatial motion vector predictor
  • TMVP temporal motion vector predictor
  • NA-TMVP non-adjacent temporal motion vector predictor
  • HMVP history-based motion vector predictor
  • SBTMVP subblock-based temporal motion vector prediction
  • I-AffineMVP inherited affine merge
  • C-AffineMVP constructed affine merge
  • Aspect 7 The apparatus of any of Aspects 2 to 6, wherein the second grouping method is based on a candidate index.
  • Aspect 8 The apparatus of any of Aspects 1 to 7, wherein the at least one processor is configured to reorder the one or more first groups of prediction candidates based on cost values.
  • Aspect 9 The apparatus of Aspect 8, wherein the at least one processor is configured to reorder the one or more first groups of prediction candidates in ascending order based on the cost values.
  • Aspect 10 The apparatus of any of Aspects 8 or 9, wherein the cost values are based on template matching.
  • Aspect 11 The apparatus of any of Aspects 1 to 10, wherein the at least one processor is configured to: discard at least candidate from the reordered one or more first groups of prediction candidates prior to generating the first candidate list.
  • Aspect 12 The apparatus of any of Aspects 2 to 11, wherein the at least one processor is configured to: generate a prediction for a current block of the video data based on the second candidate list.
  • Aspect 13 The apparatus of Aspect 12, wherein the at least one processor is configured to: decode the current block of the video data based on the prediction.
  • Aspect 14 The apparatus of Aspect 12, wherein the at least one processor is configured to: encode the current block of the video data based on the prediction.
  • Aspect 15 The apparatus of any of Aspects 1 to 14, further comprising: a display device coupled to the at least one processor and configured to display images from the video data.
  • Aspect 16 The apparatus of any of Aspects 1 to 15, further comprising: one or more wireless interfaces coupled to the at least one processor, the one or more wireless interfaces comprising one or more baseband processors and one or more transceivers.
  • Aspect 17 The apparatus of any of Aspects 1 to 16, further comprising: at least one camera configured to capture one or more frames associated with the video data.
  • a method of coding video data comprising: obtaining a first plurality of prediction candidates associated with video data; generating one or more first groups of prediction candidates at least in part by applying a first grouping method to the first plurality of prediction candidates; reordering the one or more first groups of prediction candidates; generating a first candidate list based on the reordered one or more first groups of prediction candidates; and generating one or more second groups of prediction candidates at least in part by applying a second grouping method to the first candidate list.
  • Aspect 19 The method of Aspect 18, further comprising: reordering the one or more second groups of prediction candidates; and generating a second candidate list based on the reordered one or more second groups of prediction candidates.
  • Aspect 20 The method of any of Aspects 18 or 19, wherein the second candidate list is a merge candidate list used for a merge mode.
  • Aspect 21 The method of any of Aspects 18 to 20, wherein the first grouping method is based on a plurality of candidate types associated with the first plurality of prediction candidates.
  • Aspect 22 The method of Aspect 21, wherein generating the first candidate list includes adding to the first candidate list the reordered one or more first groups of prediction candidates in a predefined order based on the plurality of candidate types.
  • Aspect 23 The method of any of Aspects 21 or 22, wherein the plurality of candidate types include at least one of a spatial motion vector predictor (SMVP) type, a temporal motion vector predictor (TMVP) type, a non-adjacent temporal motion vector predictor (NA-TMVP) candidate, a history-based motion vector predictor (HMVP) candidate, a subblock-based temporal motion vector prediction (SbTMVP) candidate, an inherited affine merge (I-AffineMVP) candidate, and a constructed affine merge (C-AffineMVP) candidate.
  • SMVP spatial motion vector predictor
  • TMVP temporal motion vector predictor
  • NA-TMVP non-adjacent temporal motion vector predictor
  • HMVP history-based motion vector predictor
  • SBTMVP subblock-based temporal motion vector prediction
  • I-AffineMVP inherited affine merge
  • C-AffineMVP constructed affine merge
  • Aspect 24 The method of any of Aspects 19 to 23, wherein the second grouping method is based on a candidate index.
  • Aspect 25 The method of any of Aspects 18 to 24, wherein the one or more first groups of prediction candidates are reordered based on cost values.
  • Aspect 26 The method of Aspect 25, wherein the one or more first groups of prediction candidates are reordered in ascending order based on the cost values.
  • Aspect 27 The method of any of Aspects 25 or 26, wherein the cost values are based on template matching.
  • Aspect 28 The method of any of Aspects 18 to 27, further comprising: discarding at least candidate from the reordered one or more first groups of prediction candidates prior to generating the first candidate list.
  • Aspect 29 The method of any of Aspects 19 to 28, further comprising: generating a prediction for a current block of the video data based on the second candidate list.
  • Aspect 30 The method of Aspect 29, further comprising: decoding the current block of the video data based on the prediction.
  • Aspect 31 The method of Aspect 29, further comprising: encoding the current block of the video data based on the prediction.
  • Aspect 32 A non-transitory computer-readable storage medium comprising instructions stored thereon which, when executed by one or more processors, cause the one or more processors to perform operations according to any of Aspects 1 to 31.
  • Aspect 33 An apparatus for processing video data, comprising one or more means for performing operations according to any of Aspects 1 to 31.
  • Aspect 32 A non-transitory computer-readable storage medium comprising instructions stored thereon which, when executed by one or more processors, cause the one or more processors to perform operations according to any of Aspects 1 to 31.
  • Aspect 33 An apparatus for processing video data, comprising one or more means for performing operations according to any of Aspects 1 to 31.
  • Aspect 34 An apparatus for processing video data, the apparatus comprising: at least one memory; and at least one processor coupled to the at least one memory, the at least one processor being configured to: obtain a first plurality of prediction candidates associated with video data; determine a first group of prediction candidates at least in part by applying a first grouping method to the first plurality of prediction candidates; reorder the first group of prediction candidates; select a first merge candidate from the reordered first group of prediction candidates; and add the first merge candidate to a candidate list.
  • Aspect 35 The apparatus of claim 34, wherein the at least one processor is configured to determine a second group of prediction candidates at least in part by applying a second grouping method to the candidate list.
  • Aspect 36 The apparatus of claim 35, wherein the at least one processor is configured to: reorder the second group of prediction candidates; select a second merge candidate from the reordered second group of prediction candidates; and add the second merge candidate to the candidate list.
  • Aspect 37 The apparatus of claim 34, wherein the candidate list is a merge candidate list used for a merge mode.
  • Aspect 38 The apparatus of claim 34, wherein the at least one processor is configured to: determine that the first merge candidate is not in the candidate list; and add the first merge candidate to the candidate list based on the determination that the first merge candidate is not in the candidate list.
  • Aspect 39 The apparatus of claim 34, wherein the first grouping method is based on a plurality of candidate types associated with the first plurality of prediction candidates.
  • Aspect 40 The apparatus of claim 39, wherein the candidate list includes the first merge candidate in a predefined order based on the plurality of candidate types.
  • Aspect 41 The apparatus of claim 40, wherein the plurality of candidate types include at least one of a spatial motion vector predictor (SMVP) type, a temporal motion vector predictor (TMVP) type, a non-adjacent temporal motion vector predictor (NA-TMVP) candidate, a historybased motion vector predictor (HMVP) candidate, a subblock-based temporal motion vector prediction (SbTMVP) candidate, an inherited affine merge (I-AffineMVP) candidate, or a constructed affine merge (C-AffineMVP) candidate.
  • SMVP spatial motion vector predictor
  • TMVP temporal motion vector predictor
  • NA-TMVP non-adjacent temporal motion vector predictor
  • HMVP historybased motion vector predictor
  • SBTMVP subblock-based temporal motion vector prediction
  • I-AffineMVP inherited affine merge
  • C-AffineMVP constructed affine merge
  • Aspect 42 The apparatus of claim 34, wherein the first grouping method is one of a temporal motion vector predictor (TMVP) or a non-adjacent temporal motion vector predictor (NA-TMVP).
  • TMVP temporal motion vector predictor
  • NA-TMVP non-adjacent temporal motion vector predictor
  • Aspect 43 The apparatus of claim 34, wherein the at least one processor is configured to reorder the first group of prediction candidates based on cost values.
  • Aspect 44 The apparatus of claim 43, wherein the at least one processor is configured to reorder the first group of prediction candidates in ascending order based on the cost values.
  • Aspect 45 The apparatus of claim 43, wherein the cost values are based on template matching.
  • Aspect 46 The apparatus of claim 34, wherein the at least one processor is configured to discard at least one candidate from the reordered first group of prediction candidates prior to adding the first merge candidate to the candidate list.
  • Aspect 47 The apparatus of claim 34, wherein the at least one processor is configured to: generate a prediction for a current block of the video data based on the candidate list.
  • Aspect 48 The apparatus of claim 47, wherein the at least one processor is configured to: decode the current block of the video data based on the prediction.
  • Aspect 49 The apparatus of claim 47, wherein the at least one processor is configured to: encode the current block of the video data based on the prediction.
  • Aspect 50 The apparatus of claim 34, further comprising: a display device coupled to the at least one processor and configured to display images from the video data.
  • Aspect 51 The apparatus of claim 34, further comprising: one or more wireless interfaces coupled to the at least one processor, the one or more wireless interfaces comprising one or more baseband processors and one or more transceivers.
  • Aspect 52 The apparatus of claim 34, further comprising: at least one camera configured to capture one or more frames associated with the video data.
  • Aspect 53 The apparatus of claim 34, wherein the first group of prediction candidates includes fewer prediction candidates than the first plurality of prediction candidates.
  • a method of coding video data comprising: obtaining a first plurality of prediction candidates associated with video data; determining a first group of prediction candidates at least in part by applying a first grouping method to the first plurality of prediction candidates; reordering the first group of prediction candidates; selecting a first merge candidate from the reordered first group of prediction candidates; and adding the first merge candidate to a candidate list.
  • Aspect 55 The method of claim 54, further comprising determining a second group of prediction candidates at least in part by applying a second grouping method to the candidate list.
  • Aspect 56 The method of claim 55, further comprising: reordering the second group of prediction candidates; selecting a second merge candidate from the reordered second group of prediction candidates; and adding the second merge candidate to the candidate list.
  • Aspect 57 The method of claim 54, wherein the candidate list is a merge candidate list used for a merge mode.
  • Aspect 58 The method of claim 54, further comprising: determining that the first merge candidate is not in the candidate list; and adding the first merge candidate to the candidate list based on the determination that the first merge candidate is not in the candidate list.
  • Aspect 59 The method of claim 54, wherein the first grouping method is based on a plurality of candidate types associated with the first plurality of prediction candidates.
  • Aspect 60 The method of claim 59, wherein the candidate list includes the first merge candidate in a predefined order based on the plurality of candidate types.
  • Aspect 61 The method of claim 60, wherein the plurality of candidate types include at least one of a spatial motion vector predictor (SMVP) type, a temporal motion vector predictor (TMVP) type, a non-adjacent temporal motion vector predictor (NA-TMVP) candidate, a historybased motion vector predictor (HMVP) candidate, a subblock-based temporal motion vector prediction (SbTMVP) candidate, an inherited affine merge (I-AffineMVP) candidate, or a constructed affine merge (C-AffineMVP) candidate.
  • SMVP spatial motion vector predictor
  • TMVP temporal motion vector predictor
  • NA-TMVP non-adjacent temporal motion vector predictor
  • HMVP historybased motion vector predictor
  • SBTMVP subblock-based temporal motion vector prediction
  • I-AffineMVP inherited affine merge
  • C-AffineMVP constructed affine merge
  • Aspect 62 The method of claim 54, further comprising reordering the first group of prediction candidates based on cost values.
  • Aspect 63 The method of claim 62, wherein the at least one processor is configured to reorder the first group of prediction candidates in ascending order based on the cost values.
  • Aspect 64 The method of claim 62, wherein the cost values are based on template matching
  • Aspect 65 The method of claim 54, further comprising discarding at least one candidate from the reordered first group of prediction candidates prior to adding the first merge candidate to the candidate list.
  • Aspect 66 The method of claim 54, further comprising generating a prediction for a current block of the video data based on the candidate list.
  • Aspect 67 The method of claim 66, wherein the at least one processor is configured to: decode the current block of the video data based on the prediction.
  • Aspect 68 The method of claim 66, wherein the at least one processor is configured to: encode the current block of the video data based on the prediction.
  • Aspect 69 The method of claim 54, further comprising displaying images from the video data.
  • Aspect 70 The method of claim 54, further comprising capturing one or more frames associated with the video data.
  • Aspect 71 The method of claim 54, wherein the first group of prediction candidates includes fewer prediction candidates than the first plurality of prediction candidates.
  • Aspect 72 A non-transitory computer-readable medium having stored thereon instructions that, when executed by at least one processor, cause the at least one processor to: obtain a first plurality of prediction candidates associated with video data; determine a first group of prediction candidates at least in part by applying a first grouping method to the first plurality of prediction candidates; reorder the first group of prediction candidates; select a first merge candidate from the reordered first group of prediction candidates; and add the first merge candidate to a candidate list.
  • Aspect 73 The non-transitory computer-readable medium of claim 72, wherein the instructions further cause the at least one processor to determine a second group of prediction candidates at least in part by applying a second grouping method to the candidate list.
  • Aspect 74 The non-transitory computer-readable medium of claim 73, wherein the instructions further cause the at least one processor to: reorder the second group of prediction candidates; select a second merge candidate from the reordered second group of prediction candidates; and add the second merge candidate to the candidate list.
  • Aspect 75 The non-transitory computer-readable medium of claim 72, wherein the candidate list is a merge candidate list used for a merge mode.
  • Aspect 76 The non-transitory computer-readable medium of claim 72, wherein the instructions further cause the at least one processor to: determine that the first merge candidate is not in the candidate list; and add the first merge candidate to the candidate list based on the determination that the first merge candidate is not in the candidate list.
  • Aspect 77 The non-transitory computer-readable medium of claim 72, wherein the first grouping method is based on a plurality of candidate types associated with the first plurality of prediction candidates.
  • Aspect 78 The non-transitory computer-readable medium of claim 77, wherein the candidate list includes the first merge candidate in a predefined order based on the plurality of candidate types.
  • the plurality of candidate types include at least one of a spatial motion vector predictor (SMVP) type, a temporal motion vector predictor (TMVP) type, a non-adjacent temporal motion vector predictor (NA- TMVP) candidate, a history-based motion vector predictor (HMVP) candidate, a subblock-based temporal motion vector prediction (Sb TMVP) candidate, an inherited affine merge (I-AffineMVP) candidate, or a constructed affine merge (C-AffineMVP) candidate.
  • SMVP spatial motion vector predictor
  • TMVP temporal motion vector predictor
  • NA- TMVP non-adjacent temporal motion vector predictor
  • HMVP history-based motion vector predictor
  • SB TMVP subblock-based temporal motion vector prediction
  • I-AffineMVP inherited affine merge
  • C-AffineMVP constructed affine merge
  • Aspect 80 The non-transitory computer-readable medium of claim 72, wherein the first grouping method is one of a temporal motion vector predictor (TMVP) or a non-adjacent temporal motion vector predictor (NA-TMVP).
  • TMVP temporal motion vector predictor
  • NA-TMVP non-adjacent temporal motion vector predictor
  • Aspect 81 The non-transitory computer-readable medium of claim 72, wherein the instructions further cause the at least one processor to reorder the first group of prediction candidates based on cost values.
  • Aspect 82 The non-transitory computer-readable medium of claim 81, wherein the instructions further cause the at least one processor to reorder the first group of prediction candidates based on cost values.
  • Aspect 83 The non-transitory computer-readable medium of claim 81, wherein the instructions further cause the at least one processor to reorder the first group of prediction candidates in ascending order based on the cost values.
  • Aspect 84 The non-transitory computer-readable medium of claim 72, wherein the instructions further cause the at least one processor to discard at least one candidate from the reordered first group of prediction candidates prior to adding the first merge candidate to the candidate list.
  • Aspect 85 The non-transitory computer-readable medium of claim 72, wherein the instructions further cause the at least one processor to generate a prediction for a current block of the video data based on the candidate list.
  • Aspect 86 The non-transitory computer-readable medium of claim 86, wherein the instructions further cause the at least one processor to decode the current block of the video data based on the prediction.
  • Aspect 87 The non-transitory computer-readable medium of claim 86, wherein the instructions further cause the at least one processor to encode the current block of the video data based on the prediction.
  • Aspect 88 The non-transitory computer-readable medium of claim 72, wherein the instructions further cause the at least one processor to display images from the video data.
  • Aspect 89 The non-transitory computer-readable medium of claim 72, wherein the instructions further cause the at least one processor to capture one or more frames associated with the video data.
  • Aspect 90 The non-transitory computer-readable medium of claim 72, wherein the first group of prediction candidates includes fewer prediction candidates than the first plurality of prediction candidates.

Landscapes

  • Engineering & Computer Science (AREA)
  • Multimedia (AREA)
  • Signal Processing (AREA)
  • Compression Or Coding Systems Of Tv Signals (AREA)

Abstract

L'invention concerne des systèmes et des techniques de codage de données vidéo. Dans certains exemples, un procédé peut consister à obtenir une première pluralité de candidats de prédiction associés à des données vidéo. Le procédé peut en outre consister à déterminer un premier groupe de candidats de prédiction au moins en partie par l'application d'un premier procédé de regroupement à la première pluralité de candidats de prédiction. Le procédé peut consister à réordonnancer le premier groupe de candidats de prédiction et à sélectionner un premier candidat de fusion à partir du premier groupe de candidats de prédiction réordonné. Le procédé peut en outre consister à ajouter le premier candidat de fusion à une liste de candidats.
PCT/US2022/075229 2021-09-29 2022-08-19 Réordonnancement de candidats de vecteur de mouvement (mv) WO2023056135A1 (fr)

Priority Applications (2)

Application Number Priority Date Filing Date Title
KR1020247009809A KR20240087733A (ko) 2021-09-29 2022-08-19 모션 벡터 (mv) 후보 재정렬
CN202280064120.0A CN117981314A (zh) 2021-09-29 2022-08-19 运动矢量(mv)候选重排序

Applications Claiming Priority (10)

Application Number Priority Date Filing Date Title
US202163250134P 2021-09-29 2021-09-29
US63/250,134 2021-09-29
US202163252094P 2021-10-04 2021-10-04
US63/252,094 2021-10-04
US202163264342P 2021-11-19 2021-11-19
US63/264,342 2021-11-19
US202163265490P 2021-12-15 2021-12-15
US63/265,490 2021-12-15
US17/820,863 2022-08-18
US17/820,863 US20230103767A1 (en) 2021-09-29 2022-08-18 Motion vector (mv) candidate reordering

Publications (1)

Publication Number Publication Date
WO2023056135A1 true WO2023056135A1 (fr) 2023-04-06

Family

ID=83228785

Family Applications (1)

Application Number Title Priority Date Filing Date
PCT/US2022/075229 WO2023056135A1 (fr) 2021-09-29 2022-08-19 Réordonnancement de candidats de vecteur de mouvement (mv)

Country Status (1)

Country Link
WO (1) WO2023056135A1 (fr)

Cited By (2)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
WO2023194558A1 (fr) * 2022-04-08 2023-10-12 Interdigital Ce Patent Holdings, Sas Prédiction améliorée de vecteur de mouvement basée sur un sous-bloc (sbtmvp)
WO2024133007A1 (fr) * 2022-12-22 2024-06-27 Interdigital Ce Patent Holdings, Sas Réordonnancement de candidats de hmvp

Citations (1)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
WO2018205914A1 (fr) * 2017-05-10 2018-11-15 Mediatek Inc. Procédé et appareil de réordonnancement d'ensemble candidat de prédiction de vecteur de mouvement destiné à un codage vidéo

Patent Citations (1)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
WO2018205914A1 (fr) * 2017-05-10 2018-11-15 Mediatek Inc. Procédé et appareil de réordonnancement d'ensemble candidat de prédiction de vecteur de mouvement destiné à un codage vidéo

Non-Patent Citations (4)

* Cited by examiner, † Cited by third party
Title
COBAN M ET AL: "Algorithm description of Enhanced Compression Model 2 (ECM 2)", no. m57745 ; JVET-W2025, 1 September 2021 (2021-09-01), XP030297803, Retrieved from the Internet <URL:https://dms.mpeg.expert/doc_end_user/documents/135_Teleconference/wg11/m57745-JVET-W2025-v1-JVET-W2025.zip JVET-W2025.docx> [retrieved on 20210901] *
Y-J CHANG (QUALCOMM) ET AL: "EE2-related: MV candidate type-based ARMC", no. JVET-X0133 ; m57934, 8 October 2021 (2021-10-08), XP030298037, Retrieved from the Internet <URL:https://jvet-experts.org/doc_end_user/documents/24_Teleconference/wg11/JVET-X0133-v4.zip JVET-X0133-v4/JVET-X0133r1.docx> [retrieved on 20211008] *
Y-J CHANG (QUALCOMM) ET AL: "Non-EE2: MV candidate type-based ARMC", no. m57934 ; JVET-X0133, 30 September 2021 (2021-09-30), XP030297729, Retrieved from the Internet <URL:https://dms.mpeg.expert/doc_end_user/documents/136_Teleconference/wg11/m57934-JVET-X0133-v1-JVET-X0133-v1.zip JVET-X0133-v1/JVET-X0133.docx> [retrieved on 20210930] *
ZHANG (BYTEDANCE) N ET AL: "EE2-3.1/EE2-3.2: Adaptive Reordering of Merge Candidates with Template/Bilateral Matching", no. JVET-W0090 ; m57205, 5 July 2021 (2021-07-05), XP030295994, Retrieved from the Internet <URL:https://jvet-experts.org/doc_end_user/documents/23_Teleconference/wg11/JVET-W0090-v2.zip JVET-W0090_r1.docx> [retrieved on 20210705] *

Cited By (2)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
WO2023194558A1 (fr) * 2022-04-08 2023-10-12 Interdigital Ce Patent Holdings, Sas Prédiction améliorée de vecteur de mouvement basée sur un sous-bloc (sbtmvp)
WO2024133007A1 (fr) * 2022-12-22 2024-06-27 Interdigital Ce Patent Holdings, Sas Réordonnancement de candidats de hmvp

Similar Documents

Publication Publication Date Title
AU2019356483B2 (en) Improvements on history-based motion vector predictor
US11659201B2 (en) Systems and methods for generating scaling ratios and full resolution pictures
EP3523962A1 (fr) Systèmes et procédés de détermination adaptative de la taille d&#39;un modèle pour une compensation d&#39;éclairage
US20210014478A1 (en) Reference picture resampling with switchable filters
US11172195B2 (en) Excluding intra coded reference samples from local illumination compensation parameter derivation
EP3906674A1 (fr) Restriction de taille de blocs pour compensation d&#39;éclairage
US11917174B2 (en) Decoded picture buffer (DPB) operations and access unit delimiter (AUD)
WO2023056135A1 (fr) Réordonnancement de candidats de vecteur de mouvement (mv)
US11356707B2 (en) Signaling filters for video processing
US11388394B2 (en) Local illumination compensation (LIC) for virtual pipeline data units (VPDUS)
US20230103767A1 (en) Motion vector (mv) candidate reordering
AU2022303514A1 (en) Adaptive bilateral matching for decoder side motion vector refinement
US20230124010A1 (en) Histogram of gradient generation
US20240015326A1 (en) Non-separable transform for inter-coded blocks
WO2024011065A1 (fr) Transformée non séparable pour blocs à codage inter
CN118216139A (zh) 梯度直方图生成
WO2023056159A1 (fr) Décalage de bord pour filtre à décalage adaptatif d&#39;échantillon à composante transversale (ccsao)

Legal Events

Date Code Title Description
121 Ep: the epo has been informed by wipo that ep was designated in this application

Ref document number: 22765729

Country of ref document: EP

Kind code of ref document: A1

WWE Wipo information: entry into national phase

Ref document number: 202447004651

Country of ref document: IN

WWE Wipo information: entry into national phase

Ref document number: 202280064120.0

Country of ref document: CN

REG Reference to national code

Ref country code: BR

Ref legal event code: B01A

Ref document number: 112024005344

Country of ref document: BR

NENP Non-entry into the national phase

Ref country code: DE

ENP Entry into the national phase

Ref document number: 2022765729

Country of ref document: EP

Effective date: 20240429

ENP Entry into the national phase

Ref document number: 112024005344

Country of ref document: BR

Kind code of ref document: A2

Effective date: 20240318