基于BP神经网络的车牌识别技术研究(英文版).doc
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基于BP神经网络的车牌识别技术研究(英文版).doc
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ResearchonlicenseplaterecognitiontechnologybasedonBPneuralnetwork
Withthecontinuousdevelopmentofscienceandtechnology,meansoftrafficmanagementisfrommanualmanagementgraduallytransformedintoautomaticallyorsemiautomatically,licenseplaterecognitionasoneofthekeyandhotissuesintheresearchfieldofmoderntrafficengineeringbymoreandmorepeople'sattention.Inrecentyears,neuralnetworkshavebeenappliedinmanyfields,andthecharacteristicsofneuralnetworksareusedtomakethecharacterrecognitionbasedonBPneuralnetwork.
Thisarticlethroughtoinlicenseplaterecognitionsystemimagepreprocessing,fourkeysteps:
licenseplatelocation,charactersegmentationandcharacterrecognitionofproposedakindoflicenseplatecharactersbasedonneuralnetworkrecognitionalgorithm.Usedthismethodoflicenseplateimageexperimentswereconductedtoextractthefeatureofthelicenseplatecharactersample,andundertheenvironmentofMATLABonthelicenseplatecharacterrecognitionwassimulated.Theresultsshowedthatthisalgorithmthecharactersonthelicenseplatelocationandsegmentationhasgoodeffect,thelicenseplatecharacterrecognitionwithcertainaccuracy.
Keywords:
BPneuralnetwork;licenseplatelocation;licenseplaterecognition;charactersegmentation;characterrecognition
1Introduction
Withtheincreaseofthenumberofcars,therearetrafficcongestionintheworld.Inordertosolvethisproblem,manycitieswillbewidenedlane,butstillfarfromsolvingtheproblem.Nottoincreasetheexistingroadfacilities,howtoimprovetheefficiencyoftransportationhasbecomethefocusofresearchintheworld.Intelligenttransportationsystem(Intelligent-TransportationSystemITS)isthemaindevelopmenttrendofthefuturetrafficregulationsystem.Vehiclelicenseplaterecognitiontechnology(License-PlateRecognitionLPR)isoneofthecoretechnologiesinITS.Therefore,theresearchanddevelopmentoflicenseplaterecognitionsystemisofgreatpracticalvalueforthedevelopmentofChina'strafficmanagementfield.
Atpresent,therearestillmanyproblemsinthelicenseplaterecognitionsystem.Recognitionrateisnotpossibletodoonehundredpercent,butwiththedeepeningofresearch,licenseplaterecognitiontechnologywillgraduallymature.Thedevelopmentofmodernintelligenttransportation,makeithasgreatpotentialforapplication,abroadermarket.Atthesametime,neuralnetworkinclassificationproblemsgetwidelyused,forlicenseplaterecognitionproblem,wemustfirstfindthelicenseplatefeatures,andcorrespondingevaluationdata,usingthesedatatotrainneuralnetwork.
Becausetheartificialneuralnetworkhasthecharacteristicsofparallelprocessing,distributedstorageandfaulttolerance,itiswidelyusedintheLPRsystem.Theparallelismofthestructuremakestheinformationstorageoftheneuralnetworkadoptthedistributedmode,thatis,thelicenseplatecharacterinformationisnotstoredinapartofthenetwork,butisdistributedinthenetworkofalltheconnections.Thesefeaturesareboundtomaketheneuralnetworkinthelicenseplaterecognitionofthetwoaspectsoftheperformanceofagoodfaulttolerance:
(1)becauseofthedistributedstorageofthecharactercharacteristicinformation,thewholeperformanceofthevehiclelicenseplaterecognitionsystemwillnotbeaffectedwhensomeoftheneuronsinthenetworkaredamaged.
(2)neuralnetworkthroughprestoredinformationandlearningmechanismsforadaptivetraining,cannevercompletelicenseplateinformationandnoiseofthelicenseplateimagebyLenovotorestorefullmemoriesoftheoriginal,inordertoachievethecorrectidentificationoftheincompleteinputinformation.
Basedontheabovecharacteristics,theapplicationofartificialneuralnetworkinthevehiclelicenseplaterecognitionsystemhasgreatresearchvalue.
2introductiontheprincipleofBPneuralnetwork
BP(backpropagation)networkisproposedthescientistsgroup1986byRumelhartandMcCellandheaded,isakindoferrorinversepropagationtrainingalgorithmforthemultilayerfeedforwardnetworkandiscurrentlythemostwidelyusedmodelsofneuralnetwork.BPnetworkcanlearnandstorealotofinput-outputmodelmapping,withoutpriormathematicsdescribingthismappingequation.Itslearningruleisthesteepestdescentmethodisusedtoadjusttheweightsandthresholdsofthenetworkthroughtheback-propagationnetwork,theminimumerrorsumofsquares.BPneuralnetworktopology,includinginputlayer,hiddenlayer(input)(hidelayer)andoutputlayer(outputlayer).
2.1BPalgorithm
Theerrorback-propagationalgorithm(BPalgorithm)ofthelearningprocess,bythereverseforwardpropagationanderrorinformationtransmissionconsistsoftwoprocesses.Inputlayerneuronsreceivestheinputinformationfromtheoutsideworld,andpassedtothemiddlelayerneurons;intermediatelayerisinternalinformationprocessinglayerandisresponsiblefortheinformationtransform,accordingtothedemandoftheinformationchanges,themiddlelayercanbedesignedforsinglehiddenlayerormultihiddenlayerstructure;thelasthiddenlayertransfertooutputlayerneurons,afterfurtherprocessing,tocompletealearningforwardpropagationprocess,fromtheoutputlayeroutputtotheoutsideinformationprocessingresults.Whentheactualoutputisnotinconformitywiththeexpectedoutput,thereversepropagationphaseoftheerrorisentered.Theerroriscorrectedbytheoutputlayer,andtheweightofeachlayeriscorrectedbytheerrorgradientdescentmethod.Thecycleofinformationforwardpropagationanderrorbackpropagationprocess,theconstantadjustmentoftheweightsofeachlayer,isthelearningandtrainingofneuralnetworkprocess,thisprocesshasbeencarriedouttonetworkoutputerrorreducedtoanacceptablelevel,orpre-setlearningtimessofar.
3licenseplaterecognitionprinciple
Acompletevehiclelicenseplaterecognitionsystemisdividedintothefollowingfoursteps:
[4].Asshownbelow:
车牌定位
字符分割
图像处理
车牌识别
识别训练
1)imageprocessing:
Nomatterontheimprovementofthelicenseplateimageidentifiabledegree,orsimplifiedlocationandsegmentationofthecharacters,imageconversionanddatacompression,imagecorrectionandimageenhancementprocessingisverynecessary.
(2)licenseplatelocation:
Mainlyincludingtheedgeofthelicenseplateimageextractionandtwovalues,thelicenseplateleveldirectionofthepositioningalgorithm,theverticaldirectionofthelicenseplatelocationalgorithm.Finallydeterminetherelativepositionofthelicenseplateintheentireimage,theoutputoftherectangularlicenseplateimage.
(3)charactersegmentation:
Asinglecharacterisobtainedbyusingthecharacterlocationandsegmentationmethod,whichisusedtodetectthenumberofpixels.
(4)characterrecognition:
Thetemplatematchingmethodisusedtomatchthecharactersintheneuralnetworkdatabasetoconfirmthecharacter,getthefinallicense,includingtheEnglishlettersandnumbers.
4systemdesignandImplementation
Theestablishmentof4.1BPneuralnetwork
BPnetworkisisappliedverywidelyusedasafeedforwardneuralnetwork,issimilartothehumanbrainandhighdegreeofparallelism.Goodfaulttoleranceandassociativememoryfunction,adaptivelearningandfaulttoleranceabilityarestrong,fromthetheoreticalresearchshows,withasinglehiddenlayerneuralnetworkenoughtoperformarbitrarilycomplexfunctionmappingsystem.Therefore,wechoosethehasahiddenlayerofthreelayerBPneuralnetworktorealizethecharacterrecognition.Withartificialneuralnetworkcharacterrecognitionmainlyhastwokindsofmethods:
onemethodistotreatthecharacterrecognitionfeatureextraction,andthentotraintheneuralnetworkclassifierwiththefeature.Theextractionandrecognitioneffectofcharacterfeatures,andcharacterfeatureextractionisoftentime-consuming.Therefore,thecharacterfeatureextractionbecomesthekeyresearch.Theotherwayistomakefulluseofthecharacteristicsoftheneuralnetwork,directlytotheprocessingofimageinputnetwork,automaticallybythenetworktorealizethefeatureextractionandrecognition.Here,Iusedsecondmethodstoidentifythecharacter.
与模板样版进行计算
寻找相关度最大的模块
读入字符
根据模块输出值
Theneuralnetworkiscomposedoftwostages:
(1)learningperiod:
Theconnectionweightsbetweenneuronscanbemodifiedbylearningrulesinordertominimizetheobjectivefunction.
Vehiclelicenseplatecharactersseven,mostlicenseplatefirstChinesecharacters,usuallyrepresentthevehiclebelongstotheprovinces,orisservices,policedon'thavereferredtoasthespecificmeaningofthecharacters,followedbythelettersandnumbers.Licenseplatecharacterrecognitionandgeneralcharacterrecognitionisthatithasalimitednumberofcharacters,atotalofaboutmorethan50Chinesecharacters,26Englishletters,numbers10.Soitisveryconvenienttosetupthecharactertemplatelibrary.
ThelicenseplaterecognitionofChinesecharacters,lettersandnumbers,butthenumberisnotverylarge,butforChinesecharacters,thereisonlya"Su".Lettersandnumbersarethe"numbers"and"letters"setupbytheCSPHOTOSHOPprocess,whicharecollectedfromtheInternet,andusedtobuildthetemplatelibrary.
Chinesecharactersincludedinthelibraryare:
Beijing,Zhejiang,Jiangsu,Henan,Henan,Shaanxi,Shaanxi,Lu,lettersare:
A-Z,thenumberoflibrariesare:
0-9.
(2)workingperiod:
Inthispaper,thenumberofhiddenlayerneuronsis13,andthenumberofoutputneuronsis6
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