CN109001757B - Parking space intelligent detection method based on 2D laser radar - Google Patents
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Abstract
The invention discloses a parking space intelligent detection method based on a 2D laser radar, which comprises the following steps: step 1, obtaining environment position information including distance information and angle information; step2, preprocessing the environmental position information acquired in the step 1; step 3, carrying out segmentation clustering on the environment position information preprocessed in the step 2; step 4, extracting the vehicle boundary line segment from the clustering result obtained in the step 3; step 5, extracting a line segment from the vehicle contour obtained in the step 4, establishing a parking space model and obtaining the minimum width of the parking space; and 6, judging whether the parking space size meets the requirement or not according to the minimum width of the parking space. According to the method, the angle and distance information of the 2D laser radar is considered, and a parking space model is established through a clustering analysis and line segment fitting method. On the basis, a multi-input multi-rule fuzzy reasoning system is introduced into parking space detection, so that the parking space detection accuracy and the intelligent level in the parking environment are improved.
Description
Technical Field
The invention belongs to the field of parking space detection of automatic parking and auxiliary parking, and particularly relates to a parking space detection method based on a 2D laser radar in parking space detection.
Background
The parking space detection is a necessary component of an automatic parking and auxiliary parking system, and accurate and effective parking space detection is the basis for realizing automatic parking and auxiliary parking. Modern parking space detection usually depends on collocation of various sensors, and a proper sensor information processing algorithm is selected to sense a scene, so that a corresponding decision is made. For the detection of a parking space for automatic parking, there are three main types from the sensor point of view: the parking space detection method comprises the following steps of parking space detection by utilizing ultrasonic waves, parking space detection by utilizing a laser radar and parking space detection by utilizing multi-sensor fusion such as a camera.
The ultrasonic radar sensor is used for detecting the parking space, the vehicle is required to have a specific initial posture, only regular parking spaces can be detected, and the length and the width of the regular parking spaces are measured. If meet irregular and narrower parking stall, then can not detected by the system, cause the waste of parking stall resource. Utilize vision sensor and ultrasonic sensor to discern the parking stall, need multi-sensor information such as vision sensor, a plurality of ultrasonic sensor, pulse sensor to fuse, the system is complicated, and the cost is expensive, and needs clear car position line and reference thing. In contrast, the lidar sensor has the functions of ranging and environment sensing, has a large detection angle, stable data and good adaptability, and is widely applied to automatic driving, indoor and outdoor positioning and automatic parking.
In recent years, many people have made many relevant researches on the parking space detection using the laser radar, and most of the researches use a method of measuring the parking space width information in the environment to obtain the size of the parking space. Such as: in 2010, the parking space is detected by applying a laser radar by a method similar to an ultrasonic sensor, such as the early morning of the Shanghai university of traffic. The method comprises the steps that an author divides an interest area, analyzes local laser radar data to obtain depth information of a parking space, measures parking space length information by tracking a vehicle boundary so as to identify the parking space, and designs corresponding parking space detection methods for vertical parking and parallel parking respectively; in 2014, the Wangyu and the like of the university at the same Ji have designed a parking space dynamic detection method based on a laser radar, and authors have designed a contour fitting method based on an optimal external rectangle to fit the contour of a vehicle under the conditions that obstacle data points are positioned through corresponding coordinate transformation aiming at parking environments such as parallel parking spaces and the like and the contour of the vehicle is not perfectly fitted in the parking space identification process, so as to realize the dynamic detection of the parallel parking spaces. However, the current research on detecting parking spaces by using laser radar still remains on the basis of detecting parking spaces according to planning rules and parking rules, the detection method refers to the detection method of an ultrasonic sensor, the environment sensing function of the laser radar sensor is not utilized, the detection mode needs to be manually selected and switched according to different parking space types, and the intelligent degree is not high.
Disclosure of Invention
In view of the above, in order to solve the above problems, the invention provides a parking space intelligent detection method based on a 2D laser radar, so as to solve the problems of low accuracy and low intelligence level of parking space detection in the prior art.
In order to achieve the above and other objects, the present invention provides a parking space intelligent detection method based on 2D laser radar, including the following steps:
step2, preprocessing the environmental position information acquired in the step 1;
step 4, extracting the vehicle boundary line segment from the clustering result obtained in the step 3;
step 5, extracting a line segment from the vehicle contour obtained in the step 4, establishing a parking space model and obtaining the minimum width of the parking space;
and 6, judging whether the parking space size meets the requirement or not according to the minimum width of the parking space.
Preferably, the specific method for performing segmentation clustering on the environmental location information is as follows:
calculating the Euclidean distance D between two points:
|p n -p n-1 |>D max
wherein, | p n -p n-1 Is the point p n To point p n-1 Of between, euclidean distance D max Is the distance threshold between any adjacent points, if point p n To point p n-1 Has a Euclidean distance smaller than D max If not, the group is set as a breakpoint.
Preferably, the distance threshold D between any adjacent points max The calculating method comprises the following steps:
wherein l n-1 Is a point p n-1 Distance to the lidar, Δ φ is the resolution of the lidar, φ n-1 Is a point p n-1 Polar angle in polar coordinates, λ is the parameter value.
Preferably, the specific calculation method of the parameter value λ is as follows:
set point p n And p n-1 The included angle between the connecting line and the x axis is beta, then:
wherein (x) n ,y n ),(x n-1 ,y n-1 ) Are respectively a data point p n And p n-1 When the incident angle γ is:
γ=90°-(β-φ n-1 )
if the incident angle gamma is larger than K, a larger parameter lambda is corresponded; if the incident angle gamma is less than or equal to K, the smaller parameter lambda is corresponded.
Preferably, said step 4 comprises the following sub-steps:
step 41, segmenting the data point set to obtain breakpoints and primarily distributing the breakpoints;
42, eliminating abnormal data sets from all the segmented data sets;
step 43. Calculate the boundary point p j+1 Performing redistribution and comparing the boundary points p j+1 Distance d from adjacent line segments j By determining the distance d j Whether a given threshold is met to reassign the boundary point;
step 44. Calculate the neighbor set { p (x) i ,y i ) I = c, c +1, \ 8230;, m } and { p (x) i ,y i ) L is the straight line l fitted to i = m +1, \8230;, k } c,m And l m+1,k Angle of (2)And is in conjunction with a threshold value gamma thd In comparison, ifStep 45 is performed, otherwise, the merging of the two straight lines is ended, the next adjacent line segment is traversed, and step 44 is continued until all sets are traversed.
Step 45, set of neighbors { p (x) i ,y i ) I = c, c +1, \ 8230;, m } and { p (x) i ,y i ) I = m +1, \ 8230;, k }, merging, fitting straight line by using least square method, and calculating fitting error square sum E 2 And is in conjunction with a threshold valueBy comparison, ifIf the value is less than the threshold value, the straight line combination is carried out, otherwise, the next adjacent line segment is traversed, and the step 44 is returned.
Preferably, said step 5 comprises the following sub-steps:
step 51, calculating the boundary point of the first vehicle targetAnd boundary points of vehicle object two
Step 52, extracting the minimum width D _ Wide of the parking space min ;
Step 53, calculating the boundary point of the first vehicle targetTo line segmentThe shortest distance D 1t o 2 Boundary point with vehicle object twoTo line segmentThe shortest distance of the parking space is the minimum width D _ Wide of the parking space min =min{D 1t o 2 ,D 2t o 1 }。
Due to the adoption of the technical scheme, the invention has the following advantages:
according to the method, the angle and distance information of the 2D laser radar is considered, and a parking space model is established through a clustering analysis and line segment fitting method. And on the basis, a multi-input multi-rule fuzzy inference system is introduced into parking space detection, so that the parking space detection accuracy and the intelligent level in a parking environment are improved.
Additional advantages, objects, and features of the invention will be set forth in part in the description which follows and in part will become apparent to those having ordinary skill in the art upon examination of the following or may be learned from practice of the invention. The objectives and other advantages of the invention will be realized and attained by the structure particularly pointed out in the written description and claims thereof.
Drawings
In order to make the objects, technical solutions and advantages of the present invention more apparent, the present invention will be further described in detail with reference to the accompanying drawings:
FIG. 1 is a schematic diagram of an improved adaptive threshold algorithm;
FIG. 2 is a schematic diagram of quadratic clustering;
FIG. 3 is a flow chart of a line segment extraction algorithm;
FIG. 4 is a schematic view of a parking space model;
FIG. 5 is a flow chart of the method of the present invention;
FIG. 6 is a diagram of different vectors in the present embodiment.
Detailed Description
The following embodiments of the present invention are provided by way of specific examples, and other advantages and effects of the present invention will be readily apparent to those skilled in the art from the disclosure herein. The invention is capable of other and different embodiments and of being practiced or of being carried out in various ways, and its several details are capable of modification in various respects, all without departing from the spirit and scope of the present invention.
Please refer to fig. 1 to 6. It should be noted that the drawings provided in the present embodiment are only for illustrating the basic idea of the present invention, and the components related to the present invention are only shown in the drawings rather than drawn according to the number, shape and size of the components in actual implementation, and the type, quantity and proportion of the components in actual implementation may be changed freely, and the layout of the components may be more complicated.
As shown in fig. 5, this embodiment provides a parking space intelligent detection method based on a 2D laser radar, and the method includes the following steps:
step 1: connecting two-dimensional scanning laserThe sensor is used for acquiring environment data and storing the environment data in the computer in an array form, and the acquired environment position information comprises distance information D = { D = { (D) } 1 ,d 2 ,d 3 ,...,d N And angle information S = { a = } 1 ,a 2 ,a 3 ,...,a N }。
Step 2: and (3) preprocessing the environmental position information acquired in the step (1), including removing data points outside an effective range, filtering isolated noise points and compensating defects of a laser radar measuring mechanism.
And 3, step 3: and (3) carrying out segmentation clustering analysis on the environmental position information obtained in the step (2), wherein the specific method is as follows:
the Euclidean distance is used as the basis of clustering, and the formula is as follows:
|p n -p n-1 |>D max
wherein, | p n -p n-1 L is a point p n To point p n-1 European distance between, D max Is the distance threshold between any adjacent points, if point p n To point p n-1 Has a Euclidean distance smaller than D max If not, the group is set as a breakpoint. Wherein D max And also the distance l between the lidar and the point n-1 It is relevant. D max And l n-1 The relationship of (a) to (b) is as follows:
wherein l n And l n-1 Are respectively a point p n And p n-1 Distance to the lidar, Δ φ is the resolution of the lidar, φ n And phi n-1 Are respectively a point p n And p n-1 The polar angle in the polar coordinate, λ, is a parameter value, and its magnitude directly affects the magnitude of the threshold.
In the clustering process, the point p is connected first n And point p n-1 Calculating a point p n-1 When the incident angle γ becomes larger, the parameter λ takes a larger value, and the distance threshold becomes larger. The parameter lambda is set to be constant when the incident angle gamma is continuously reducedThe distance threshold is reduced when the distance threshold is smaller. The specific calculation method of the parameter lambda is as follows:
set point p n And p n-1 The included angle between the connecting line and the x axis is beta, then:
wherein (x) n ,y n ),(x n-1 ,y n-1 ) Are respectively a point p n And p n-1 When the incident angle γ is:
γ=90°-(β-φ n-1 )
if the incident angle gamma is larger than K, a larger parameter lambda is corresponded; if the angle of incidence γ < = K, a smaller parameter λ is corresponded. Due to the fact that the scanning data are due to material reflectivity, partial data are still absent, and secondary clustering is needed according to the vehicle outline characteristics.
As shown in FIG. 2, two points with the closest distance between the adjacent clusters (1) and (2) are searched for and are set as m n-1 And m n Calculating the distance D between two points n =|d n -d n-1 L. the method is used for the preparation of the medicament. If the distance D between two points n And if the distance is exactly equal to the end point of the cluster (1) and the start point of the cluster (2), the two clusters are regrouped into one cluster according to the continuity of the vehicle outline, namely secondary clustering is carried out. Meanwhile, in order to avoid the situation that clustering fails due to excessively large cluster spacing, distance thresholds xi and d need to be set n Less than a quadratic distance threshold ξ, i.e. when | d n -d n-1 |>ξ(d n ) And the cluster is still considered as two clusters, and secondary clustering is not performed any more.
And 4, step 4: and (4) extracting the vehicle boundary line segment from the clustering result obtained in the step (3). Specifically, the segment extraction is divided into a segmentation stage and a merging stage.
(1) Segmentation stage
Step 1: according to the IEPF algorithm principle, a set of connected data points { p (x) i ,y i ) A starting point p of | i =1,2, \8230;, n } 1 And end point p n At this point, traverse the data set { p (x) i ,y i ) I =1,2, \ 8230;, n }, finding the largest distancePoint p m If point p m To a straight lineDistance d of m Greater than a given thresholdThen point p will be reached m Set as a break point and divide the break point into p (x) i ,y i )|i=1,2,…,m-1},{p(x i ,y i ) I = m +1, \8230 |, n } two sets of points. And by the formula:
determining a breakpoint p m To which data set it belongs. The entire data set is then recursively traversed until all data points satisfy the requirements. f is a preset constant.
Step 2: and removing abnormal data sets from all the segmented data sets, wherein the abnormal data sets comprise repeated data sets and data sets only containing one point.
Step 3: according to the LT algorithm idea, a set of adjacent data points { p (x) i ,y i )|i=k,…,j},{p(x i ,y i ) Boundary point p of | i = j +1, \8230;, q } j+1 And carrying out redistribution. Decision point p j+1 And set of data points { p (x) } i ,y i ) Distance d of the straight line fitted with i = k, \8230;, j } j Whether a threshold range is met. If yes, point p is added j+1 Add into data Point set { p (x) } i ,y i ) I = k, \ 8230;, j }, and is in { p (x) i ,y i ) I = j +1, \8230;, q } is deleted. All data sets are traversed and updated in this way.
Step 4: and repeating the Step 3 operation.
(2) Merging phases
Step 1: first calculate the neighbor set { p (x) i ,y i ) I = c, c +1, \ 8230;, m } and { p (x) i ,y i )| i Linear line l fitting (k) = m +1, \8230;, k } c , m And l m+1,k Angle of (2)And is in conjunction with a threshold value gamma thd In comparison, ifAnd Step2 is carried out, otherwise, the two straight lines are merged, the next adjacent line segment is traversed, and Step 1 is continued until all the sets are traversed.
Step 2: set adjacent data { p (x) i ,y i ) I = c, c +1, \ 8230;, m } and { p (x) i ,y i ) I = m +1, \ 8230;, k }, merging, fitting straight line by using least square method, and calculating fitting error square sum E 2 And is in conjunction with a threshold valueAnd comparing, if the sum is less than the threshold value, performing straight line combination. Otherwise, the next adjacent line segment is traversed and the Step 1 is returned.
And 5: and (4) extracting a line segment from the vehicle contour obtained in the step (4), establishing a parking space model and obtaining the minimum width of the parking space.
Specifically, boundary points of a vehicle object one are calculatedAnd boundary points of vehicle object twoAnd vehicle body attitude angleThen extracting the minimum width D _ Wide of the parking space min 。
Minimum width D _ Wide for parking space min Firstly, the boundary point of a vehicle object I is calculatedTo line segmentThe vector algorithm has directivity and is simple to calculate, so that the shortest distance between a point and a line segment is calculated by adopting the vector algorithm.
According to the vector calculation method, there are:
then:
order toBecause the vectors have directionality, there are: if the case of FIG. 6 (a) is true, 0 < r < 1; if the case is shown in FIG. 6 (b), r.gtoreq.1; in the case of FIG. 6 (c), r.ltoreq.0.
similarly, the boundary point of the vehicle target two can be obtainedTo line segmentThe shortest distance of (c) is:
wherein m isOn line segmentThe projection on the parking space is the minimum width D _ Wide of the parking space min =min{D 1to2 ,D 2to1 }。
Step 6: judging whether the parking space size meets the requirement according to the minimum width of the parking space, and when the parking space size meets the requirement, judging whether the parking space size meets the requirement according to the minimum width of the parking space min And D _ car + delta D, the parking condition is satisfied.
Where Δ D is the minimum width of the extra vehicle body required for parking of the vehicle, and D _ car represents the width of the vehicle body. Finally, the above embodiments are only for illustrating the technical solutions of the present invention and not for limiting, although the present invention has been described in detail with reference to the preferred embodiments, it should be understood by those skilled in the art that modifications or equivalent substitutions may be made on the technical solutions of the present invention without departing from the spirit and scope of the technical solutions, and all of them should be covered in the protection scope of the present invention.
Claims (2)
1. The parking space intelligent detection method based on the 2D laser radar is characterized by comprising the following steps:
step 1, obtaining environment position information including distance information and angle information;
step2, preprocessing the environmental position information acquired in the step 1, including removing data points outside an effective range, filtering isolated noise points and compensating defects of a laser radar measuring mechanism;
and 3, carrying out segmentation clustering on the environmental position information preprocessed in the step2, wherein the specific method for segmentation clustering comprises the following steps:
calculating the Euclidean distance between two points:
|p n -p n-1 |>D max
wherein, | p n -p n-1 Is the point p n To point p n-1 European distance between, D max Is the distance threshold between any adjacent points, if point p n To point p n-1 Has a Euclidean distance smaller than D max If the current is not the same as the current, the current is collected as a group, otherwise, the current is set as a breakpoint;
distance threshold D between any adjacent points max The calculation method comprises the following steps:
wherein l n-1 Is a point p n-1 Distance to the lidar, Δ φ is the resolution of the lidar, φ n-1 Is a point p n-1 Polar angle in polar coordinates, lambda is a parameter value, delta represents a Gaussian random noise parameter, and delta is a standard deviation;
the specific calculation method of the parameter value lambda is as follows:
set point p n And p n-1 The included angle between the connecting line and the x axis is beta, then:
wherein (x) n ,y n ),(x n-1 ,y n-1 ) Are respectively data points p n And p n-1 When the incident angle γ is:
γ=90°-(β-φ n-1 )
then, a value lambda is obtained through gamma calculation;
and 4, extracting the vehicle boundary line segment from the clustering result obtained in the step 3, and extracting the vehicle boundary line segment:
step 41, segmenting the data point set to obtain breakpoints and primarily distributing the breakpoints;
42, eliminating abnormal data sets from all the segmented data sets;
step 43. Calculate the boundary point p j+1 Performing reallocation, comparing boundary points p j+1 Distance d from adjacent line segments j By determining the distance d j Whether a given threshold is met to reassign the boundary point;
step 44. Calculate the neighbor set { p (x) i ,y i ) I = c, c +1, \ 8230;, m } and { p (x) i ,y i ) L is the straight line l fitted to i = m +1, \8230;, k } c,m And l m+1,k Angle of (2)And is in conjunction with a threshold value gamma thd In comparison, ifStep 45 is carried out, otherwise, the combination of the two straight lines is ended, the next adjacent line segment is traversed, and step 44 is continued until the traversal of all the sets is ended;
step 45, set of neighbors { p (x) i ,y i ) I = c, c +1, \ 8230;, m } and { p (x) i ,y i ) I = m +1, \ 8230;, k }, merging, fitting straight line by using least square method, and calculating fitting error square sum E 2 And is in conjunction with a threshold valueComparing, if the value is less than the threshold value, performing straight line merging, otherwise traversing the next adjacent line segment, and returning to the step 44;
step 5, extracting a line segment from the vehicle contour obtained in the step 4, restoring the position and the attitude of the vehicle, establishing a parking space model and obtaining the minimum width of the parking space;
and 6, judging whether the parking space size meets the requirement or not according to the minimum width of the parking space.
2. The method for intelligently detecting the parking space based on the 2D laser radar as claimed in claim 1, wherein the step 5 comprises the following substeps:
step 51, calculating the boundary point of the first vehicle targetAnd boundary points of vehicle object two
Step 52, extracting the minimum width D _ Wide of the parking space min ;
Step 53, calculating the boundary point of the first vehicle targetTo line segmentThe shortest distance D 1to2 Boundary point with vehicle object twoTo line segmentThe shortest distance of the parking space is the minimum width D _ Wide of the parking space min =min{D 1to2 ,D 2to1 },D 1to2 Right boundary vertex representing vehicle object oneTo line segmentThe shortest distance of (a); d 2to1 Left boundary vertex representing similarly available vehicle object twoTo line segmentThe shortest distance of (c).
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CN109799513B (en) * | 2019-01-04 | 2023-06-23 | 广西大学 | Indoor unknown environment positioning method based on linear characteristics in two-dimensional laser radar data |
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CN112776797A (en) * | 2021-02-27 | 2021-05-11 | 重庆长安汽车股份有限公司 | Original parking space parking establishment method and system, vehicle and storage medium |
CN112799096B (en) * | 2021-04-08 | 2021-07-13 | 西南交通大学 | Map construction method based on low-cost vehicle-mounted two-dimensional laser radar |
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