CN101872416B - Vehicle license plate recognition method and system of road image - Google Patents

Vehicle license plate recognition method and system of road image Download PDF

Info

Publication number
CN101872416B
CN101872416B CN 201010166981 CN201010166981A CN101872416B CN 101872416 B CN101872416 B CN 101872416B CN 201010166981 CN201010166981 CN 201010166981 CN 201010166981 A CN201010166981 A CN 201010166981A CN 101872416 B CN101872416 B CN 101872416B
Authority
CN
China
Prior art keywords
character
car plate
plate
car
license plate
Prior art date
Legal status (The legal status 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 status listed.)
Expired - Fee Related
Application number
CN 201010166981
Other languages
Chinese (zh)
Other versions
CN101872416A (en
Inventor
金城
王琰滨
冯瑞
薛向阳
Current Assignee (The listed assignees may be inaccurate. Google has not performed a legal analysis and makes no representation or warranty as to the accuracy of the list.)
Fudan University
Original Assignee
Fudan University
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
Application filed by Fudan University filed Critical Fudan University
Priority to CN 201010166981 priority Critical patent/CN101872416B/en
Publication of CN101872416A publication Critical patent/CN101872416A/en
Application granted granted Critical
Publication of CN101872416B publication Critical patent/CN101872416B/en
Expired - Fee Related legal-status Critical Current
Anticipated expiration legal-status Critical

Links

Images

Landscapes

  • Character Input (AREA)
  • Character Discrimination (AREA)

Abstract

The invention relates to a method and a system for recognizing a vehicle license plate. The method can provide support to an intelligent traffic system and can be widely applied to aspects of parking lots, charging bayonet, criminal apprehend and the like. The method mainly comprises three phases of locating, character segmentation and character recognition, has higher recognition rate, can cope with complex environment and can satisfy the requirement of real-time treatment. The system packages the method, provides different parameters, can be flexibly used and is convenient to distribute and process data in batch.

Description

Road image is carried out the method and system of car plate identification
Technical field
The invention belongs to Digital Image Processing and mode identification technology, be specifically related to a kind of method and system that road image is carried out car plate identification.
Background technology
In recent years, develop rapidly along with computing machine and Internet technology, the rapid growth of various vehicles numbers, various information comprises that the information relevant with traffic presents the situation of explosive growth, in order to manage safer, efficiently these information, intelligent transportation system (Intelligence Transportation System) is arisen at the historic moment.Intelligent transportation system can be at the charge bayonet socket, the parking lot, and the aspects such as criminal tracking show powerful effect, and are its most ingredients of core to the detection and Identification of car plate.
At present, although a lot of relatively ripe car plates identification products have been arranged now, higher accuracy rate, still less consuming time still attracting people to go constantly to study.In fact, along with the new development of association area, for example invention of new low-level image feature, the proposition of better sorting algorithm etc., all the improvement for Recognition Algorithm of License Plate provides new chance.In addition, commercial Vehicle License Plate Recognition System is mostly only to there being reasonable effect under the specific condition now, for example specific illumination, distance, angle, which system is car plate standard (comprising color, form, literal), and the accuracy rate of system may reduce even lose efficacy greatly under the environment that has changed also do not have to accomplish healthy and strong stable (identify the ability of car plate also there is a big difference with the people) under various condition.Third part at this paper can be discussed specially to one piece of article about this respect.Have, for picture and video that natural conditions are taken, for example hand-held or vehicle mounted camera shooting gets off again, and carrying out the car plate detection also is a direction that is worth research with identification.
In some license plate recognition technologies that exist at present, mostly whole identification is divided into three processes, as shown in Figure 1, is b car plate location, c License Plate Character Segmentation, d Recognition of License Plate Characters.
Wherein for b, the technology of use is of a great variety, although can be divided into several classes, the boundary between the class is not clearly.The following method is roughly arranged: binaryzation after the A rim detection, this is maximum a kind of method of using, it just can access reasonable just result after Mathematical Morphology Method is combined.An edge detection operator that is in daily use is vertical sobel operator.Its calculating formula is
Figure GSA00000111733300011
And longitudinal edge detects compared to laterally, and its advantage, and longitudinal edge detects compared to laterally, its advantage are that the transverse edge of car in the image that contains car plate is more, and the longitudinal edge of character is more on the car plate.This method is calculated fast, effect is better, but very large shortcoming is exactly to be difficult to process complicated image, how effectively to remove incoherent marginal information, (vehicle intake mouth for example, the light zone, trees on every side, coarse ground etc.), be a very crucial problem .B mathematical morphology operation, mainly be that burn into expands opening and closing operation etc.C connected component analysis (CCA), most typical is four connected sums, eight connection methods and various clustering method, identical with the connected region purpose, tells some candidate regions.The D block analysis.Image is divided into some, calculates respectively the features such as its average, variance, marginal information.Moving window.Similar with section thinking, but be the node-by-node algorithm feature.The E Color Image Processing is according to the RGB colouring information.The various sorters of F comprise Ada-Boost, SVM, ANN, GP, GA etc.
For c, present technology is divided into following a few class.A binary Images Processing projecting method.Be maximum a kind of technology of using in the current various document, common way is to carry out first transverse projection, cuts off up and down zone; Then carry out longitudinal projection, be syncopated as each character.B local auto-adaptive binaryzation.Local auto-adaptive binaryzation or similar method in a lot of articles, it calculates average in a certain zone by piecemeal, pointwise or minute character, and then the features such as contrast carry out respectively binaryzation.Go out the C sloped correcting method.Kind is many, have to utilize HT positioning licence plate frame, also have to use colouring information, also has histogram analysis.The D level is cut apart and merging, splitting method.The E mathematical morphology, the burn into dilation operation.This step of License Plate Character Segmentation in fact difficulty be larger, because if cut apart the error or the two-value effect bad, the character recognition of back probably will be lost efficacy.And different illumination conditions, approximate color or shape around the car plate, different car plate standards all can restrict the method for License Plate Character Segmentation, so that be difficult at present produce extremely healthy and strong cutting techniques.Majority method all also just shows good performance under specific circumstances.
For d, OCR (optical character identification) is an important branch of area of pattern recognition, and its target is that the various literal with image format are identified as under the textual form.Recognition of License Plate Characters is a kind of special shape of OCR, and the process of Recognition of License Plate Characters can be reduced to feature extraction and characteristic matching.Method for the feature extraction of character picture is varied, has by pixel characteristic extraction method, framework characteristic extraction method, vertical orientation data statistical nature extraction method, a lot of based on the feature extraction of grid, radian Gradient Features extraction method etc.Do not carry out in addition feature extraction, in other words with the black and white values of character picture directly as feature, rely on the powerful classification capacity of sorter to identify, also be a kind of mode that can adopt.And the method for characteristic matching mainly is divided into following three kinds of A. based on statistics/mixing/with different levels sorter B.ANN.C. template matching method. wherein ANN is the most common and performance is more excellent.
Summary of the invention
The object of the present invention is to provide a kind of method and system that still image is carried out car plate identification, be intended to solve the key problem in the intelligent transportation system (ATI), obtain the number-plate number in the monitoring image, for the deeper application in back is prepared.
The method of described car plate identification provided by the invention comprises the car plate location, three steps of License Plate Character Segmentation and Recognition of License Plate Characters;
Described car plate location is to the Image Segmentation Using of input, obtains one group of car plate candidate regions.It is input as a pictures, then size carries out pre-service arbitrarily, based on two steps of cluster of DBSCAN, exports one group of car plate candidate regions;
The task of described preprocessing process is that original color image is processed, and generates a bianry image that comprises marginal information.It comprises image gray processing, and sobel longitudinal edge detection+car plate color strengthens, three steps of image binaryzation.
Described sobel longitudinal edge detection+car plate color strengthens, full figure to be carried out sobel vertically detect, in testing process, for marginal information p (x, y), if>K, x*x neighborhood around it is scanned, to every delegation wherein, occur if any the car plate color, then strengthen p (x, y) 10%; K=30 among the embodiment, x=7; The color set that the car plate color here only may occur in the various car plates.
Described cluster based on DBSCAN is to use DBSCAN Density Clustering method that the two-value picture is carried out cluster, all points are divided into several high density areas, the zone that surpasses certain threshold value T is called candidate regions, and threshold value T determines by debugging according to the scene size of reality.Here critical radius is divided into RH and RW, the radius on the expression length and width direction, general RW=3*RH; Get RH=10 among the embodiment, RW=30, T=300; Then calculate the attribute of regional, comprise length and width, length breadth ratio etc. are deleted the very few point in regional both sides.At last the attribute of candidate regions is judged, got rid of the zone that does not conform to shape, export possible candidate regions.
Described License Plate Character Segmentation is that the car plate candidate regions is carried out cutting apart of character respectively, and the deletion error candidate regions obtains one group of character block to each other candidate.It comprises the secondary pre-service and based on two steps of cutting apart of projection;
Described secondary preprocessing process is first regional picture to be carried out gray processing, then utilizes the average threshold value with its binaryzation, and at last by horizontal projection, low ebb is regional up and down in the searching perspective view, thinks that it is useless region, deletes it.Obtain two-value car plate topography.
Described based on the cutting apart of projection, it be input as two-value car plate topography, output is one group of image character block, is generally 7 (number of characters on the car plate).At first carry out vertical projection, think that the trough district is the dead sector, other is character area, marks off some zones with this.Then analyze judgement for the zone, to get rid of non-license plate area.Blank up and down to each character picture excision more at last.Generate one group of character zone.
Described Recognition of License Plate Characters is that every group of character block identified, and the debug candidate regions generates the number-plate number, car plate color and the license plate area coordinate that identify.It is input as single two-value zone, input is the character that identifies, and comprises Chinese character, numeral and alphabetical.If the ratio of width to height>4 in zone at first, dot density is greater than a certain threshold value in its zone, and then this character of Direct Recognition is 1.Then with whole bianry image sequence as feature, bring separately sorter into and classify Output rusults.If the character of identification is not 7, think that then it is non-license plate area.The final number-plate number, car plate color and the license plate area coordinate that identifies that generate.
Described sorter is characterized in that, respectively the two-value template is set up in numeral, character and Chinese character in advance, adopts the mode of template matches to identify during classification, the output recognition result.
The present invention also provides a kind of system of car plate identification, comprises three modules that realize three steps of described licence plate recognition method: car plate locating module, License Plate Character Segmentation module and Recognition of License Plate Characters module.Input is a pictures, and input is that some subregion pictures and recognition result are described document xml file.Can there be many kinds of parameters to select, function with dynamic-configuration parameter, function with Dynamic Definition output, can export the local picture of car plate, the local picture of position of driver, the local picture of car mark, the local picture of vehicle body, thumbnail etc., can conveniently replace licence plate recognition method, be easy to carry out batch processing.
Described many kinds of parameters is selected to refer to add parameter behind program name, plate, and other, all can only identify respectively car plate output number and position, and only calculating is exported other local pictures (by the car plate location estimating) and is all processed.Realized separating of critical process (car plate identification) and other processes.
The local picture of described calculating output position of driver according to car plate position and vehicle size, is estimated position of driver, and is compared with original image, the local picture of output position of driver after proofreading and correct.
The local picture of described calculating output car mark according to the car plate position, scans the car plate upper area, seeks the car mark, the local picture in output car plate position after cutting apart.
The local picture of described calculating output vehicle body according to car plate position and vehicle size, is estimated the vehicle body position, and is compared with original image, the local picture of output vehicle body after proofreading and correct.
Description of drawings
Fig. 1 is car plate identification process figure.
Fig. 2 is car plate locating module process flow diagram.
Fig. 3 is License Plate Character Segmentation module process flow diagram.
Fig. 4 is the enforcement illustration that a pictures is identified.
Fig. 5 is the process flow diagram of Vehicle License Plate Recognition System.
Embodiment
In order to make purpose of the present invention, technical scheme and advantage clearer, below in conjunction with drawings and Examples, the present invention is further elaborated.Should be appreciated that specific embodiment described herein only in order to explain the present invention, is not intended to limit the present invention.
Fig. 1 shows the main flow process of licence plate recognition method.Comprise the car plate location, License Plate Character Segmentation and Recognition of License Plate Characters three phases.The value of intermediate transfer is 1 or a plurality of license plate candidate area, and in the middle of b, c, d operational process successively, the candidate regions of mistake is progressively abandoned.The final output number-plate number.
Fig. 2 shows car plate locating module flow process.For an input original image, for example shown in Fig. 4 upper left corner.At first it is carried out gray processing, the formula of gray processing is gray=0.299R+0.587G+0.114B, and wherein gray represents gray-scale value, and R, G, B are respectively three components of image.Next carries out vertical sobel rim detection, in the middle of vertical testing process, carries out the enhancing to the car plate color, concrete rule is (for example blue), for marginal information p (x, y), if>30,7*7 neighborhood around it is scanned, to every delegation wherein, occur if any blue dot, then strengthen p (x, y) 10%, here blueness refers to (G<150, R<150, B>G, B>R).Again carry out binaryzation, obtain a width of cloth black and white point diagram, shown in the upper right corner among Fig. 4, be not difficult to find out, near the point the car plate is than comparatively dense, and this is the basis of next step cluster.
Adopt afterwards DBSCAN Density Clustering algorithm to obtain one group of candidate regions, part shown in the dotted line is the concrete steps of clustering algorithm among Fig. 2.Its general idea is exactly for the higher zone of density ratio, thinks that they belong to the same area.In this embodiment, lateral radius RH value is 10, and vertically radius R W value is 30, and density threshold gets 250.Carry out afterwards aftertreatment, delete white space twice, get rid of the zone that does not conform to shape, in this embodiment, think that the license plate area shape should satisfy: 2.5<length breadth ratio<7,80<length<220,20<wide<60.So far, positioning stage finishes.Among Fig. 4, a right side central figure on the upper side can find out, has been divided into out 5 zones, and these 5 zones are candidate regions.Middle part picture on the lower side shows the topography of that candidate regions of car plate.
Fig. 3 shows License Plate Character Segmentation module flow process.Each candidate regions for input carries out first a series of pre-service, comprises gray processing, binaryzation and horizontal projection.That bottom central authorities is the result of binaryzation among Fig. 4, and its left side corresponding horizontal projection that is it, is it above it through the result after the cutting between the dead sector up and down.Then carry out specifically comprising vertical projection, telling character area and clear area based on the cutting apart of projection; Regional analysis, superseded false candidates; Single character is frittered minute three processes.The result has been syncopated as each character by several vertical white lines shown in the little figure on the lower side of Fig. 4 central authorities.Bring afterwards the identification engine into and carry out the identification of literal, the output number-plate number BPG016 of Soviet Union.Shown in the little figure of Fig. 4 left side central portion.
Fig. 5 shows the cardinal principle flow process of Vehicle License Plate Recognition System.It supports three kinds of different use-patterns, is respectively parameter and is all, printenv or parameter other but without the situation of follow-up coordinate; The situation of parameter p late; Parameter other back adds the situation of two groups of coordinates.When parameter is all, this system will carry out all operations were, locate first and identify car plate, then calculate various regional area pictures by it, at last output.Parameter p late represents only to identify car plate and output, and parameter other represents only to calculate various regional area pictures and output.The regional area here comprises, driver zone, car mark zone and vehicle body zone.These regional area pictures will provide certain help for other subsequent applications of intelligent transportation system.Also comprise an xml document in the last output, describe the result of identification.

Claims (3)

1. the method that road image is carried out car plate identification is characterized in that, comprises the car plate location, three steps of License Plate Character Segmentation and Recognition of License Plate Characters;
Described car plate location is to the Image Segmentation Using of input, obtains one group of car plate candidate regions;
Described License Plate Character Segmentation is that the car plate candidate regions is carried out cutting apart of character respectively, and the deletion error candidate regions obtains one group of character block to each other candidate;
Described Recognition of License Plate Characters is that every group of character block identified, and the debug candidate regions generates the number-plate number that identifies, car plate color and license plate area coordinate;
(1) in the described car plate positioning step, be input as a pictures, then size arbitrarily carries out pre-service, based on two steps of cluster of DBSCAN;
The task of described preprocessing process is that original color image is processed, and generates a bianry image that comprises marginal information; Preprocessing process comprises image gray processing, and sobel longitudinal edge detection+car plate color strengthens, three steps of image binaryzation;
The task of described cluster based on DBSCAN is that bianry image is carried out clustering processing, generates one group of car plate candidate regions; The steps include: to use DBSCAN Density Clustering method that the two-value picture is carried out cluster, all points are divided into several high density areas, the zone that surpasses certain threshold value T is called candidate regions; Here critical radius is divided into RH and RW, the radius on the expression length and width direction, RW=3*RH; Then calculate the attribute of regional, comprise length and width, length breadth ratio is deleted the very few point in regional both sides; At last the attribute of candidate regions is judged, got rid of the zone that does not conform to shape, export possible candidate regions;
Described sobel longitudinal edge detection+car plate color strengthens, the steps include: that full figure is carried out sobel vertically to be detected, in testing process, for marginal information p (x, y), if greater than K, x*x neighborhood around it is scanned, to every delegation wherein, occur if any the car plate color, then strengthen p (x, y) 10%, the car plate color here refers to the color set that may occur in the various car plates;
(2) described License Plate Character Segmentation comprises the secondary pre-service and based on two steps of cutting apart of projection;
Described secondary preprocessing process is that each candidate regions is carried out gray processing, local binarization, and the horizontal projection operation generates the two-value license plate image;
Described based on being cutting apart of projection that bianry image is carried out vertical projection, then character cutting is one by one exported one group of image character block at last;
Described secondary pre-service the steps include: first regional picture to be carried out gray processing, then utilizes the average threshold value with its binaryzation, by horizontal projection, low ebb is regional up and down in the searching perspective view, thinks that it is useless region at last, delete it, obtain two-value car plate topography;
Describedly the steps include: at first to carry out vertical projection based on the cutting apart of projection, think that the trough district is the dead sector, other is character area, marks off some zones with this; Then analyze judgement for the zone, get rid of non-license plate area; Blank up and down to each character picture excision more at last; Generate one group of character zone;
(3) described Recognition of License Plate Characters the steps include: to be input as single two-value zone, and output is the character that identifies, and comprises Chinese character, numeral and alphabetical; If the ratio of width to height>4 in zone at first, dot density is greater than a certain threshold value in its zone, and then this character of Direct Recognition is 1; Then with whole bianry image sequence as feature, bring separately sorter into and classify Output rusults; If the character of identification is not 7, think that then it is non-license plate area; The final number-plate number that identifies, car plate color and the license plate area coordinate of generating;
Classifying with described sorter, is respectively the two-value template to be set up in numeral, character and Chinese character in advance, adopts the mode of template matches to identify during classification, the output recognition result.
2. the system of a car plate identification is characterized in that comprise: car plate locating module, License Plate Character Segmentation module, three parts of Recognition of License Plate Characters module are based on licence plate recognition method claimed in claim 1; Input is a pictures, and output is that some subregion pictures and recognition result are described document xml file;
There is many kinds of parameters to select, has the function of dynamic-configuration parameter, have the function of Dynamic Definition output, the local picture of output car plate, the local picture of position of driver, the local picture of car mark, the local picture of vehicle body, thumbnail; The convenient licence plate recognition method of replacing is easy to carry out batch processing;
Described many kinds of parameters is selected to refer to add parameter p late or other or all behind program name, only identifies respectively car plate output number and position, and only calculating is exported other local pictures and all processed, and realizes separating of critical process and other processes.
3. Vehicle License Plate Recognition System according to claim 2, it is characterized in that calculating the local picture of the described position of driver of output, is according to car plate position and vehicle size, estimation position of driver, and compare the local picture of output position of driver after proofreading and correct with original image; Calculating the local picture of the described car mark of output, is according to the car plate position, and the car plate upper area is scanned, and seeks the car mark, the local picture in output car plate position after cutting apart; Calculating the local picture of the described vehicle body of output, is according to car plate position and vehicle size, estimates the vehicle body position, and compares with original image, the local picture of output vehicle body after proofreading and correct.
CN 201010166981 2010-05-06 2010-05-06 Vehicle license plate recognition method and system of road image Expired - Fee Related CN101872416B (en)

Priority Applications (1)

Application Number Priority Date Filing Date Title
CN 201010166981 CN101872416B (en) 2010-05-06 2010-05-06 Vehicle license plate recognition method and system of road image

Applications Claiming Priority (1)

Application Number Priority Date Filing Date Title
CN 201010166981 CN101872416B (en) 2010-05-06 2010-05-06 Vehicle license plate recognition method and system of road image

Publications (2)

Publication Number Publication Date
CN101872416A CN101872416A (en) 2010-10-27
CN101872416B true CN101872416B (en) 2013-05-01

Family

ID=42997271

Family Applications (1)

Application Number Title Priority Date Filing Date
CN 201010166981 Expired - Fee Related CN101872416B (en) 2010-05-06 2010-05-06 Vehicle license plate recognition method and system of road image

Country Status (1)

Country Link
CN (1) CN101872416B (en)

Cited By (1)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
CN105005757A (en) * 2015-03-12 2015-10-28 电子科技大学 Method for recognizing license plate characters based on Grassmann manifold

Families Citing this family (32)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
CN102694978A (en) * 2011-03-25 2012-09-26 杨占昆 Method for extracting effective information of high definition snapshot image data
CN103000028B (en) * 2011-09-14 2015-12-09 上海宝康电子控制工程有限公司 Number plate of vehicle recognition system and recognition methods
CN103020634A (en) * 2011-09-26 2013-04-03 北京大学 Segmentation method and device for recognizing identifying codes
CN102610103A (en) * 2012-01-13 2012-07-25 深圳市黄河数字技术有限公司 Intelligent traffic line analysis and recognition method
CN103632548A (en) * 2012-08-22 2014-03-12 上海工程技术大学 License plate recognition control system and application thereof
CN102867418B (en) * 2012-09-14 2014-10-22 浙江宇视科技有限公司 Method and device for judging license plate identification accuracy
CN102915638A (en) * 2012-10-07 2013-02-06 复旦大学 Surveillance video-based intelligent parking lot management system
CN103000029B (en) * 2012-11-20 2015-10-07 河南亚视软件技术有限公司 Automobile video frequency recognition methods and application thereof
CN103093194B (en) * 2013-01-07 2017-04-26 信帧电子技术(北京)有限公司 Breach of regulation vehicle detection method and device based on videos
CN103093201B (en) * 2013-01-21 2015-12-23 信帧电子技术(北京)有限公司 Vehicle-logo location recognition methods and system
CN103268703A (en) * 2013-05-23 2013-08-28 华录智达科技有限公司 Snapshot system for bus lane
CN103544491A (en) * 2013-11-08 2014-01-29 广州广电运通金融电子股份有限公司 Optical character recognition method and device facing complex background
CN103559793B (en) * 2013-11-18 2015-12-09 哈尔滨工业大学 A kind of car internal sunshade board detecting method and device
CN103699876B (en) * 2013-11-26 2017-05-17 天津商业大学 Method and device for identifying vehicle number based on linear array CCD (Charge Coupled Device) images
CN103617735B (en) * 2013-12-20 2016-07-06 深圳市捷顺科技实业股份有限公司 A kind of vehicle identification method and system
CN104361336A (en) * 2014-11-26 2015-02-18 河海大学 Character recognition method for underwater video images
CN104573656B (en) * 2015-01-09 2018-02-02 安徽清新互联信息科技有限公司 A kind of car plate color determination methods based on connected region information
CN105989589B (en) * 2015-02-09 2019-01-18 上海微电子装备(集团)股份有限公司 A kind of mask graph gray processing method
CN104966047A (en) * 2015-05-22 2015-10-07 浪潮电子信息产业股份有限公司 Method and device for identifying vehicle license
CN105447490B (en) * 2015-11-19 2019-04-30 浙江宇视科技有限公司 Vehicle critical point detection method and device based on gradient regression tree
CN107292302B (en) * 2016-03-31 2021-05-14 阿里巴巴(中国)有限公司 Method and system for detecting interest points in picture
CN106257492A (en) * 2016-08-09 2016-12-28 成都联众智科技有限公司 Licence plate recognition method based on dual edge detection
CN106251634A (en) * 2016-08-09 2016-12-21 成都联众智科技有限公司 Embedded vehicle license plate identification system
CN106448185A (en) * 2016-12-16 2017-02-22 合肥寰景信息技术有限公司 Road traffic violation behavior analyzing and pre-warning system based on action recognition
CN108319951B (en) * 2017-01-16 2020-10-02 杭州海康威视数字技术股份有限公司 Method and device for recognizing characters in license plate
CN106971557B (en) * 2017-05-18 2019-10-15 北京宏恺安营停车管理有限公司 A kind of vehicle identification method and system
CN108510505B (en) * 2018-03-30 2022-04-01 南京工业大学 Graph segmentation image segmentation method of high-resolution image based on double lattices
CN108805050B (en) * 2018-05-28 2021-01-01 上海交通大学 Electric wire detection method based on local binary pattern
CN108960243A (en) * 2018-07-06 2018-12-07 蚌埠学院 License plate locating method
CN110458167B (en) * 2019-08-20 2022-02-15 浙江工业大学 Metal piece surface bending text line correction method
CN117173416B (en) * 2023-11-01 2024-01-05 山西阳光三极科技股份有限公司 Railway freight train number image definition processing method based on image processing
CN117523734A (en) * 2024-01-05 2024-02-06 深圳市喂车科技有限公司 Non-inductive payment method and server based on vehicle unique identification

Citations (3)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US6553131B1 (en) * 1999-09-15 2003-04-22 Siemens Corporate Research, Inc. License plate recognition with an intelligent camera
CN1851731A (en) * 2006-05-25 2006-10-25 电子科技大学 Registration number character dividing method
CN101154271A (en) * 2006-09-30 2008-04-02 电子科技大学中山学院 License plate character segmentation method based on fast area labeling algorithm and license plate large-spacing locating method

Family Cites Families (1)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US8131018B2 (en) * 2008-02-08 2012-03-06 Tk Holdings Inc. Object detection and recognition system

Patent Citations (3)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US6553131B1 (en) * 1999-09-15 2003-04-22 Siemens Corporate Research, Inc. License plate recognition with an intelligent camera
CN1851731A (en) * 2006-05-25 2006-10-25 电子科技大学 Registration number character dividing method
CN101154271A (en) * 2006-09-30 2008-04-02 电子科技大学中山学院 License plate character segmentation method based on fast area labeling algorithm and license plate large-spacing locating method

Cited By (2)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
CN105005757A (en) * 2015-03-12 2015-10-28 电子科技大学 Method for recognizing license plate characters based on Grassmann manifold
CN105005757B (en) * 2015-03-12 2018-04-06 电子科技大学 A kind of license plate character recognition method popular based on Grassmann

Also Published As

Publication number Publication date
CN101872416A (en) 2010-10-27

Similar Documents

Publication Publication Date Title
CN101872416B (en) Vehicle license plate recognition method and system of road image
CN105373794B (en) A kind of licence plate recognition method
CN101334836B (en) License plate positioning method incorporating color, size and texture characteristic
CN104951784B (en) A kind of vehicle is unlicensed and license plate shading real-time detection method
CN103116751B (en) A kind of Method of Automatic Recognition for Character of Lcecse Plate
CN109726717B (en) Vehicle comprehensive information detection system
CN102509098B (en) Fisheye image vehicle identification method
Wang et al. An effective method for plate number recognition
Anishiya et al. Number plate recognition for indian cars using morphological dilation and erosion with the aid of ocrs
CN102722707A (en) License plate character segmentation method based on connected region and gap model
CN106650553A (en) License plate recognition method and system
Le et al. Real time traffic sign detection using color and shape-based features
CN105160691A (en) Color histogram based vehicle body color identification method
Deb et al. HSI color based vehicle license plate detection
CN103824081A (en) Method for detecting rapid robustness traffic signs on outdoor bad illumination condition
CN100385452C (en) Registration number character dividing method
Radha et al. A novel approach to extract text from license plate of vehicles
Azad et al. New method for optimization of license plate recognition system with use of edge detection and connected component
Rashedi et al. A hierarchical algorithm for vehicle license plate localization
Ingole et al. Characters feature based Indian vehicle license plate detection and recognition
Do et al. Speed limit traffic sign detection and recognition based on support vector machines
CN111401364A (en) License plate positioning algorithm based on combination of color features and template matching
Khoshki et al. Improved Automatic License Plate Recognition (ALPR) system based on single pass Connected Component Labeling (CCL) and reign property function
Patel et al. A novel approach for detecting number plate based on overlapping window and region clustering for Indian conditions
Feng et al. Non-motor vehicle illegal behavior discrimination and license plate detection based on real-time video

Legal Events

Date Code Title Description
C06 Publication
PB01 Publication
C10 Entry into substantive examination
SE01 Entry into force of request for substantive examination
C14 Grant of patent or utility model
GR01 Patent grant
CF01 Termination of patent right due to non-payment of annual fee
CF01 Termination of patent right due to non-payment of annual fee

Granted publication date: 20130501