CN108170708A - A kind of vehicle entity recognition method, electronic equipment, storage medium, system - Google Patents

A kind of vehicle entity recognition method, electronic equipment, storage medium, system Download PDF

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Publication number
CN108170708A
CN108170708A CN201711185953.XA CN201711185953A CN108170708A CN 108170708 A CN108170708 A CN 108170708A CN 201711185953 A CN201711185953 A CN 201711185953A CN 108170708 A CN108170708 A CN 108170708A
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vehicle
role
entity
sequence
vehicle entity
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CN108170708B (en
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刘晨晨
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Hangzhou Da Search Car Service Co Ltd
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Hangzhou Da Search Car Service Co Ltd
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    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06FELECTRIC DIGITAL DATA PROCESSING
    • G06F16/00Information retrieval; Database structures therefor; File system structures therefor
    • G06F16/20Information retrieval; Database structures therefor; File system structures therefor of structured data, e.g. relational data
    • G06F16/24Querying
    • G06F16/245Query processing
    • G06F16/2452Query translation
    • G06F16/24522Translation of natural language queries to structured queries
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06FELECTRIC DIGITAL DATA PROCESSING
    • G06F40/00Handling natural language data
    • G06F40/20Natural language analysis
    • G06F40/232Orthographic correction, e.g. spell checking or vowelisation

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  • Theoretical Computer Science (AREA)
  • Physics & Mathematics (AREA)
  • Computational Linguistics (AREA)
  • General Engineering & Computer Science (AREA)
  • General Physics & Mathematics (AREA)
  • Artificial Intelligence (AREA)
  • Audiology, Speech & Language Pathology (AREA)
  • General Health & Medical Sciences (AREA)
  • Health & Medical Sciences (AREA)
  • Data Mining & Analysis (AREA)
  • Databases & Information Systems (AREA)
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  • Character Discrimination (AREA)

Abstract

A kind of vehicle entity recognition method of the present invention, including step generation role's set, role extracts, vehicle Entity recognition, update role's set, is gathered using the vehicle role creation vehicle role of draw standard vehicle library and vehicle corpus, vehicle role's extraction is carried out to original vehicle text according to vehicle role set, it is vehicle role's sequence by original vehicle role mapping, compares the vehicle entity character string of vehicle role's sequence and the vehicle entity in Standard of vehicle library, obtains the highest vehicle entity of similarity;The present invention relates to electronic equipment and readable storage medium storing program for executing, for performing a kind of vehicle entity recognition method;The invention further relates to a kind of vehicle entity recognition systems;The present invention is realized carries out accurate vehicle Entity recognition to original vehicle text input by user, and original vehicle update of role to vehicle role is gathered, greatly reduces the workload manually mapped, without manually formulating a large amount of rules, favorable expandability, accuracy rate is high, good compatibility.

Description

A kind of vehicle entity recognition method, electronic equipment, storage medium, system
Technical field
The present invention relates to vehicle entity recognition techniques field more particularly to a kind of vehicle entity recognition method, electronic equipment, Storage medium, system.
Background technology
In information of vehicles search, user inputs text message according to personal habits, and text input form is varied, such as This kind of standard vehicle entity of " BMW ", " Audi " also includes input such as " BMW how much ", " Audi's A615 moneys " this kind of search and draws It holds up the text that can not be handled or input includes the information of wrong word, such as " embracing horse ", " Australia's enlightening ";Under this application scenarios, need Vehicle entity can be recognized accurately;But since vehicle entity does not have apparent boundary vocabulary, tradition name Entity recognition is led to The mode of boundary word is over-scanned to trigger, such as name has surname as boundary, place name has the words such as institute, company, county, village work For boundary, therefore traditional entity recognition method is difficult that vehicle entity is effectively identified;Text input by user both included Chinese comes larger interference, existing method comprising english information and number, such as price, configuration of automobiles to vehicle entity extraction belt again Compatibility it is poor.
Invention content
For overcome the deficiencies in the prior art, one of the objects of the present invention is to provide a kind of vehicle entity recognition method, Gathered by extracting a small amount of vehicle role creation vehicle role, role is carried out to original vehicle text according to vehicle role set It extracts, vehicle Entity recognition is carried out, and original vehicle update of role to vehicle role is gathered to the role of extraction, is greatly subtracted The workload of artificial mapping is lacked, without manually formulating a large amount of rules, favorable expandability, accuracy rate is high, good compatibility.
The present invention provides a kind of vehicle entity recognition method, includes the following steps:
Role extracts, and carries out vehicle role's extraction to original vehicle text, several original vehicle roles is obtained, by several institutes Original vehicle role mapping is stated as vehicle role's sequence;
Vehicle Entity recognition obtains the vehicle entity character string of the vehicle role sequence, the vehicle entity word Symbol string and the vehicle entity in Standard of vehicle library, obtain the highest vehicle entity of similarity.
Further, step generation role set and step update role's set are further included, the step generates role set It is combined into the vehicle role creation vehicle role set for extracting the Standard of vehicle library and vehicle corpus;The step more new role Collection, which is combined into, gathers the original vehicle role added to the vehicle role.
Further, step generation role's set includes:Extract the Standard of vehicle library and the vehicle corpus Vehicle entity role, vehicle component role, the role above of vehicle entity, vehicle entity hereafter role, according to institute State vehicle entity role, vehicle component role, the role above of vehicle entity, vehicle entity hereafter role creation described in Vehicle role gathers.
Further, the step role extracts and includes:Word segmentation processing is carried out to the original vehicle text, according to described Vehicle role set word segmentation processing result is carried out vehicle entity role, vehicle component role, vehicle entity angle above Role's extraction result is mapped as the vehicle role sequence by the hereafter role extraction of color, vehicle entity.
Further, the step vehicle Entity recognition includes:Judge whether the vehicle role sequence is real comprising vehicle Body role is the vehicle entity role for extracting the vehicle role sequence, and by the vehicle entity of the vehicle role sequence Role mapping is vehicle entity;Otherwise the vehicle role sequence with vehicle dictionary tree is matched, obtains the vehicle angle The vehicle entity character string maps are vehicle entity text by the vehicle entity character string of color-sequential row, and the vehicle is real Body text and the vehicle entity in the Standard of vehicle library, obtain the highest vehicle entity of similarity.
A kind of electronic equipment, including:Processor;
Memory;And program, wherein described program is stored in the memory, and is configured to by processor It performs, described program includes performing a kind of vehicle entity recognition method.
A kind of computer readable storage medium, is stored thereon with computer program, and the computer program is held by processor A kind of above-mentioned vehicle entity recognition method of row.
A kind of vehicle entity recognition system, including vehicle role abstraction module, vehicle Entity recognition module, the vehicle angle Color abstraction module carries out vehicle role's extraction to original vehicle text, obtains several original vehicle roles, will be several described original Vehicle role mapping is vehicle role's sequence;The vehicle Entity recognition module obtains the vehicle entity of the vehicle role sequence Character string, the vehicle entity character string and the vehicle entity in Standard of vehicle library, obtain the highest vehicle entity of similarity.
Further, it further includes vehicle role set and closes generation module, the vehicle role set is closed described in generation module extraction The vehicle role creation vehicle role of Standard of vehicle library and vehicle corpus gathers;The vehicle Entity recognition module further includes vehicle Role gathers update module, and the vehicle role gathers update module and the original vehicle role is added to the vehicle angle Color set.
Further, the vehicle role set closes generation module and extracts the Standard of vehicle library and the vehicle corpus Vehicle entity role, vehicle component role, the role above of vehicle entity, vehicle entity hereafter role, and according to institute State vehicle entity role, vehicle component role, the role above of vehicle entity, vehicle entity hereafter role creation described in Vehicle role gathers.
Further, the vehicle role abstraction module further includes word-dividing mode, and the word-dividing mode is to the original car Text carries out word segmentation processing, and the vehicle role abstraction module is gathered according to the vehicle role carries out word segmentation processing result Vehicle entity role, the hereafter role extraction of vehicle component role, the role above of vehicle entity, vehicle entity, by angle Color extracts result and is mapped as the vehicle role sequence.
Further, the vehicle role abstraction module further includes vehicle entity character string abstraction module and similarity-rough set Module, the vehicle entity character string abstraction module match the vehicle role sequence with vehicle dictionary tree, obtain institute The vehicle entity character string of vehicle role's sequence is stated, the vehicle entity character string maps are vehicle by the similarity-rough set module Entity text, the vehicle entity text and the vehicle entity in the Standard of vehicle library, obtain the highest vehicle of similarity Entity.
Compared with prior art, the beneficial effects of the present invention are:
The present invention is gathered by the vehicle role creation vehicle role of draw standard vehicle library and vehicle corpus, according to vehicle Role set carries out vehicle role's extraction to original vehicle text, original vehicle role is obtained, by original vehicle role mapping For vehicle role's sequence, the vehicle entity character string of vehicle role's sequence is obtained, compares vehicle entity character string and Standard of vehicle The vehicle entity in library obtains the highest vehicle entity of similarity, original vehicle role is gathered added to vehicle role, greatly Reduce the workload manually mapped, without manually formulating a large amount of rules, favorable expandability, accuracy rate is high, good compatibility.
Above description is only the general introduction of technical solution of the present invention, in order to better understand the technological means of the present invention, And can be implemented in accordance with the contents of the specification, below with presently preferred embodiments of the present invention and after attached drawing is coordinated to be described in detail such as. The specific embodiment of the present invention is shown in detail by following embodiment and its attached drawing.
Description of the drawings
Attached drawing described herein is used to provide further understanding of the present invention, and forms the part of the application, this hair Bright illustrative embodiments and their description do not constitute improper limitations of the present invention for explaining the present invention.In the accompanying drawings:
Fig. 1 is a kind of vehicle entity recognition method flow chart of the present invention;
Fig. 2 is a kind of vehicle entity recognition system structure diagram of the present invention;
Fig. 3 is a kind of vehicle entity recognition system schematic diagram of the present invention.
Specific embodiment
In the following, with reference to attached drawing and specific embodiment, the present invention is described further, it should be noted that not Under the premise of conflicting, new implementation can be formed between various embodiments described below or between each technical characteristic in any combination Example.
A kind of vehicle entity recognition method, as shown in Figure 1, including the following steps:
Generate the vehicle role creation vehicle role set of role's set, draw standard vehicle library and vehicle corpus, mark Quasi- vehicle library storage standard vehicle entity, such as " benz ", " BMW ", " Audi ", vehicle language material library storage user input data, Such as " consideration start with BMW ", " Audi's price ";Preferably, step generation role set includes:Draw standard vehicle library and vehicle The vehicle entity role of corpus, vehicle component role, the role above of vehicle entity, vehicle entity hereafter angle Color, the role above of vehicle entity is the role before vehicle entity in vehicle text, and the hereafter role of vehicle entity is vehicle Role in text after vehicle entity, according to vehicle entity role, vehicle component role, vehicle entity angle above The hereafter role creation vehicle role set of color, vehicle entity, only need to count a small amount of vehicle role, other vehicles in this step Role, which by step updates role's set and extends to role, to be gathered, and the workload manually mapped is greatly reduced, without people Work formulates a large amount of rules, and the vehicle entity in Standard of vehicle library added to role is gathered, improves the knowledge of vehicle entity by favorable expandability Other accuracy rate and recognition efficiency.
In one embodiment, the vehicle entity role of extraction is encoded to " C ", such as benz, BMW, Audi, vehicle composition member Plain role is encoded to " D ", such as run quickly, enlightening, Austria, the role above of vehicle entity is encoded to " K ", such as consider, displacement, inquiry, vehicle The hereafter role of entity is encoded to " L ", and such as price is stated a price, other roles other than above-mentioned role are encoded to " A ".
Role extracts, and carries out vehicle role's extraction to original vehicle text according to vehicle role set, obtains several original Several original vehicle role mappings are vehicle role's sequence by vehicle role;Preferably, step role extracts and includes:To original Vehicle text carries out word segmentation processing, carries out vehicle entity role to word segmentation processing result according to vehicle role set, vehicle forms Role's extraction result is mapped as vehicle angle by element role, the hereafter role extraction of the role above of vehicle entity, vehicle entity Color-sequential arranges.
Vehicle Entity recognition obtains the vehicle entity character string of vehicle role's sequence, compares vehicle entity character string and mark The vehicle entity in quasi- vehicle library obtains the highest vehicle entity of similarity;Preferably, step vehicle Entity recognition includes:Judge Whether vehicle role sequence is the vehicle entity role for extracting vehicle role's sequence comprising vehicle entity role, and by vehicle The vehicle entity role of role's sequence is mapped as vehicle entity;Otherwise by the vehicle role sequence and the progress of vehicle dictionary tree Match, obtain the vehicle entity character string of vehicle role's sequence, be vehicle entity text by vehicle entity character string maps, compare vehicle Entity text and the vehicle entity in Standard of vehicle library, obtain the highest vehicle entity of similarity.
Role's set is updated, original vehicle role is gathered added to vehicle role, when vehicle role sequence includes vehicle During entity role, the role above of vehicle entity and the hereafter role of vehicle entity are gathered added to vehicle role;Work as vehicle When role's sequence does not include vehicle entity role, original vehicle role added to vehicle role is gathered, only need to count a small amount of Vehicle role creation vehicle role gathers, and constantly gathers new vehicle role added to vehicle role, realizes vehicle role The extension of set obtains the vehicle role set of high quality, greatly reduces human cost.
In one embodiment, the vehicle entity role " BMW " of vehicle entity " BMW " and vehicle in draw standard vehicle library Component role " treasured " and " horse " are gathered added to vehicle role, and vehicle entity role " BMW " is encoded to " C ", vehicle composition Element role " treasured " and " horse " are encoded to " D ", and original vehicle text input by user is " consulting BMW price ", to " consulting BMW price " carry out word segmentation processing be " consulting/BMW/price ", according to vehicle role set to " consulting/BMW/price " into Row role extracts, and role's extraction result is mapped as vehicle role's sequence, vehicle role sequence is classified as " ACA ", because of vehicle role sequence It arranges in " ACA " comprising vehicle entity role " C ", extracts the vehicle entity role " C " of vehicle role sequence " ACA ", and by vehicle The vehicle entity role " C " of role's sequence " ACA " is mapped as vehicle entity " BMW ";By the role above " consulting " of vehicle entity Vehicle entity is upper in gathering with the hereafter role " price " of vehicle entity added to vehicle role set, and calculating vehicle role Literary role and the frequency of use of the hereafter role of vehicle entity, role's frequency of use are used for the vehicle entity that filtering is of little use Literary role and the hereafter role of vehicle entity.
In one embodiment, original vehicle text input by user is " considering to embrace horse 300,000 ", to " considering to embrace horse 300,000 " Word segmentation processing is carried out as " considering/embrace/horse/3,0/0,000 ", role is carried out to " considering/embrace/horse/3,0/0,000 " according to vehicle role set It extracts, role's extraction result is mapped as vehicle role's sequence, vehicle role sequence is classified as " KADAA ", and vehicle role's sequence is not wrapped The role of entity containing vehicle carries out max model matching, specially using trie by existing entity word dictionary to sequence " KADAA " Content is built into vehicle dictionary tree, and sequence " KADAA " is matched with vehicle dictionary tree, obtains vehicle entity character string Vehicle entity character string " KAD " is mapped as vehicle entity text " considering to embrace horse ", vehicle entity text " is considered to embrace by " KAD " Horse " and the vehicle entity in Standard of vehicle library do similarity calculation, and similarity is defeated more than the vehicle entity headed by threshold value and ranking Go out, similarity highest of the result for vehicle entity text " considering to embrace horse " and the vehicle entity " BMW " in Standard of vehicle library, vehicle Entity recognition result is " BMW ", by new vehicle component role " embracing " added to vehicle role set, when there is new original Beginning vehicle text, if user is accidentally defeated into " embrace and " by " Bora ", system can automatically identify vehicle entity as " Bora ", vehicle The update of role's set greatly reduces the workload manually mapped, favorable expandability, good compatibility.
A kind of electronic equipment, including:Processor;Memory;And program, Program are stored in memory, and And be configured to be performed by processor, program includes performing a kind of vehicle entity recognition method;One kind is computer-readable to deposit Storage media is stored thereon with computer program, it is characterised in that:Computer program is executed by processor a kind of above-mentioned vehicle entity Recognition methods.
A kind of vehicle entity recognition system, as shown in Fig. 2, including vehicle role abstraction module, vehicle Entity recognition module, Vehicle role abstraction module carries out vehicle role's extraction to original vehicle text, several original vehicle roles is obtained, by several originals Beginning vehicle role mapping is vehicle role's sequence;Vehicle Entity recognition module obtains the vehicle entity character of vehicle role's sequence String compares the vehicle entity of vehicle entity character string and Standard of vehicle library, obtains the highest vehicle entity of similarity.
In one embodiment, as shown in Fig. 2-Fig. 3, it is preferable that further include vehicle role set and close generation module, vehicle role Gather the vehicle role creation vehicle role set of generation module draw standard vehicle library and vehicle corpus;Vehicle Entity recognition Module further includes vehicle role and gathers update module, and vehicle role gathers update module and original vehicle role is added to vehicle angle Color set.
In one embodiment, it is preferable that vehicle role set closes generation module draw standard vehicle library and vehicle corpus Vehicle entity role, vehicle component role, the role above of vehicle entity, vehicle entity hereafter role, and according to vehicle Entity role, vehicle component role, the role above of vehicle entity, vehicle entity hereafter role creation vehicle role Set.
In one embodiment, as shown in Fig. 2-Fig. 3, it is preferable that vehicle role's abstraction module further includes word-dividing mode, participle Module carries out original vehicle text word segmentation processing, and vehicle role abstraction module is gathered according to vehicle role to word segmentation processing result The hereafter role extraction of vehicle entity role, vehicle component role, the role above of vehicle entity, vehicle entity are carried out, Role's extraction result is mapped as vehicle role's sequence.
In one embodiment, as shown in Fig. 2-Fig. 3, it is preferable that vehicle role's abstraction module further includes vehicle entity character Go here and there abstraction module and similarity-rough set module, vehicle entity character string abstraction module by vehicle role sequence and vehicle dictionary tree into Row matching, obtains the vehicle entity character string of vehicle role's sequence, and vehicle entity character string maps are by similarity-rough set module Vehicle entity text compares the vehicle entity of vehicle entity text and Standard of vehicle library, obtains the highest vehicle entity of similarity.
In one embodiment, when vehicle role sequence includes vehicle entity role, role gathers update module by vehicle The role above of entity and the hereafter role of vehicle entity gather added to vehicle role;When vehicle role sequence does not include vehicle During entity role, role gathers update module and gathers original vehicle role added to vehicle role.
The present invention is gathered by the vehicle role creation vehicle role of draw standard vehicle library and vehicle corpus, according to vehicle Role set carries out vehicle role's extraction to original vehicle text, original vehicle role is obtained, by original vehicle role mapping For vehicle role's sequence, the vehicle entity character string of vehicle role's sequence is obtained, compares vehicle entity character string and Standard of vehicle The vehicle entity in library obtains the highest vehicle entity of similarity, original vehicle role is gathered added to vehicle role, greatly Reduce the workload manually mapped, without manually formulating a large amount of rules, favorable expandability, accuracy rate is high, good compatibility.
More than, only presently preferred embodiments of the present invention not makees the present invention limitation in any form;All one's own professions The those of ordinary skill of industry can swimmingly implement the present invention shown in by specification attached drawing and above;But all to be familiar with sheet special The technical staff of industry without departing from the scope of the present invention, is made a little using disclosed above technology contents The equivalent variations of variation, modification and evolution are the equivalent embodiment of the present invention;Meanwhile all substantial technologicals according to the present invention Variation, modification and evolution of any equivalent variations made to above example etc., still fall within technical scheme of the present invention Within protection domain.

Claims (12)

1. a kind of vehicle entity recognition method, it is characterised in that include the following steps:
Role extracts, and carries out vehicle role's extraction to original vehicle text, several original vehicle roles is obtained, by several originals Beginning vehicle role mapping is vehicle role's sequence;
Vehicle Entity recognition obtains the vehicle entity character string of the vehicle role sequence, the vehicle entity character string With the vehicle entity in Standard of vehicle library, the highest vehicle entity of similarity is obtained.
2. a kind of vehicle entity recognition method as described in claim 1, it is characterised in that:Further include step generation role's set With step update role's set, the step generation role set is combined into the vehicle for extracting the Standard of vehicle library and vehicle corpus Role creation vehicle role gathers;The step update role set is combined into is added to the vehicle angle by the original vehicle role Color set.
3. a kind of vehicle entity recognition method as claimed in claim 2, which is characterized in that the step generation role gathers packet It includes:Extract the vehicle entity role, vehicle component role, vehicle entity in the Standard of vehicle library and the vehicle corpus Role above, vehicle entity hereafter role, according to the vehicle entity role, vehicle component role, vehicle entity Role above, vehicle entity hereafter role creation described in vehicle role set.
4. a kind of vehicle entity recognition method as claimed in claim 3, which is characterized in that the step role, which extracts, to be included: Word segmentation processing is carried out to the original vehicle text, vehicle entity is carried out to word segmentation processing result according to vehicle role set Role, the hereafter role extraction of vehicle component role, the role above of vehicle entity, vehicle entity, role is extracted and is tied Fruit is mapped as the vehicle role sequence.
A kind of 5. vehicle entity recognition method as claimed in claim 4, which is characterized in that the step vehicle Entity recognition packet It includes:Judge that the vehicle role sequence is the vehicle reality for extracting the vehicle role sequence whether comprising vehicle entity role Body role, and the vehicle entity role of the vehicle role sequence is mapped as vehicle entity;Otherwise by the vehicle role sequence Row are matched with vehicle dictionary tree, the vehicle entity character string of the vehicle role sequence are obtained, by the vehicle entity word Symbol string is mapped as vehicle entity text, the vehicle entity text and the vehicle entity in the Standard of vehicle library, obtains phase Like the highest vehicle entity of degree.
6. a kind of electronic equipment, it is characterised in that including:Processor;
Memory;And program, wherein described program is stored in the memory, and is configured to be held by processor Row, described program include the method for performing as described in claim 1-5 any one.
7. a kind of computer readable storage medium, is stored thereon with computer program, it is characterised in that:The computer program quilt Processor performs the method as described in claim 1-5 any one.
8. a kind of vehicle entity recognition system, it is characterised in that:Including vehicle role abstraction module, vehicle Entity recognition module, The vehicle role abstraction module carries out vehicle role's extraction to original vehicle text, obtains several original vehicle roles, if will It is vehicle role's sequence to do the original vehicle role mapping;The vehicle Entity recognition module obtains the vehicle role sequence Vehicle entity character string, the vehicle entity in the vehicle entity character string and Standard of vehicle library obtains similarity highest Vehicle entity.
9. a kind of vehicle entity recognition system as claimed in claim 8, it is characterised in that:Further include the symphysis of vehicle role set into Module, the vehicle role set close the vehicle role creation vehicle that generation module extracts the Standard of vehicle library and vehicle corpus Role gathers;The vehicle Entity recognition module further includes vehicle role and gathers update module, and the vehicle role gathers update Module gathers the original vehicle role added to the vehicle role.
10. a kind of vehicle entity recognition system as claimed in claim 9, it is characterised in that:The vehicle role set symphysis into The vehicle entity role, vehicle component role, vehicle that module extracts the Standard of vehicle library and the vehicle corpus are real The role above of body, the hereafter role of vehicle entity, and according to the vehicle entity role, vehicle component role, vehicle Vehicle role described in the role above of entity, the hereafter role creation of vehicle entity gathers.
11. a kind of vehicle entity recognition system as claimed in claim 10, it is characterised in that:The vehicle role abstraction module Word-dividing mode is further included, the word-dividing mode carries out the original vehicle text word segmentation processing, and the vehicle role extracts mould Root tuber is gathered according to the vehicle role carries out word segmentation processing result vehicle entity role, vehicle component role, vehicle reality The role above of body, the hereafter role of vehicle entity extract, and role's extraction result is mapped as the vehicle role sequence.
12. a kind of vehicle entity recognition system as claimed in claim 11, it is characterised in that:The vehicle role abstraction module Vehicle entity character string abstraction module and similarity-rough set module are further included, the vehicle entity character string abstraction module is by described in Vehicle role sequence is matched with vehicle dictionary tree, obtains the vehicle entity character string of the vehicle role sequence, the phase Like degree comparison module by the vehicle entity character string maps be vehicle entity text, the vehicle entity text with it is described The vehicle entity in Standard of vehicle library obtains the highest vehicle entity of similarity.
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CN109389064A (en) * 2018-09-27 2019-02-26 东软睿驰汽车技术(沈阳)有限公司 A kind of vehicle characteristics acquisition methods and device
CN111612015A (en) * 2020-05-26 2020-09-01 创新奇智(西安)科技有限公司 Vehicle identification method and device and electronic equipment
CN111930775A (en) * 2020-08-26 2020-11-13 明觉科技(北京)有限公司 Vehicle information identification method, device, terminal and computer readable storage medium
CN115759097A (en) * 2022-11-08 2023-03-07 广东数鼎科技有限公司 Vehicle type name recognition method

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Publication number Priority date Publication date Assignee Title
CN109389064A (en) * 2018-09-27 2019-02-26 东软睿驰汽车技术(沈阳)有限公司 A kind of vehicle characteristics acquisition methods and device
CN111612015A (en) * 2020-05-26 2020-09-01 创新奇智(西安)科技有限公司 Vehicle identification method and device and electronic equipment
CN111612015B (en) * 2020-05-26 2023-10-31 创新奇智(西安)科技有限公司 Vehicle identification method and device and electronic equipment
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CN115759097A (en) * 2022-11-08 2023-03-07 广东数鼎科技有限公司 Vehicle type name recognition method

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