非负矩阵分解及在人脸识别的应用PPT格式课件下载.ppt

上传人:b****2 文档编号:15128266 上传时间:2022-10-27 格式:PPT 页数:30 大小:1.02MB
下载 相关 举报
非负矩阵分解及在人脸识别的应用PPT格式课件下载.ppt_第1页
第1页 / 共30页
非负矩阵分解及在人脸识别的应用PPT格式课件下载.ppt_第2页
第2页 / 共30页
非负矩阵分解及在人脸识别的应用PPT格式课件下载.ppt_第3页
第3页 / 共30页
非负矩阵分解及在人脸识别的应用PPT格式课件下载.ppt_第4页
第4页 / 共30页
非负矩阵分解及在人脸识别的应用PPT格式课件下载.ppt_第5页
第5页 / 共30页
点击查看更多>>
下载资源
资源描述

非负矩阵分解及在人脸识别的应用PPT格式课件下载.ppt

《非负矩阵分解及在人脸识别的应用PPT格式课件下载.ppt》由会员分享,可在线阅读,更多相关《非负矩阵分解及在人脸识别的应用PPT格式课件下载.ppt(30页珍藏版)》请在冰豆网上搜索。

非负矩阵分解及在人脸识别的应用PPT格式课件下载.ppt

D.D.LeeandS.Seung,”Learningthepartsofobjectsbynon-negativematrixfactorization”Nature,vol.401,pp.788-791,1999作者的相关信息DanielD.Lee,Ph.D.lAssociateProfessorDept.ofElectricalandSystemsEngineeringDept.ofBioengineering(Secondary)GRASP(GeneralRobotics,Automation,Sensing,Perception)Labl203BMoore/6314UniversityofPennsylvania200S.33rdStreetPhiladelphia,PA19104215-898-8112215-573-2068(FAX)lEmail:

ddleeseas.upenn.edulhttp:

/www.seas.upenn.edu/ddlee/H.SebastianSeunglProfessorofComputationalNeuroscience,MITInvestigator,HowardHughesMedicalInstitutelMIT,46-506543VassarSt.Cambridge,MA02139voice:

617-252-1693seungmit.edulAdministrativeassistant:

AmyDunnvoice:

617-452-2694fax:

617-452-2913adunnmit.edulhttp:

/hebb.mit.edu/people/seung/ProblemStatementGivenasetofimages:

1.Createasetofbasisimagesthatcanbelinearlycombinedtocreatenewimages2.Findthesetofweightstoreproduceeveryinputimagefromthebasisimages3.DimensionreductionlPCAlNMFlLNMFlFNMFlWNMFMainlyDiscussPCAlFindasetoforthogonalbasisimageslThereconstructedimageisalinearcombinationofthebasisimagesWhatdontwelikeaboutPCA?

lPCAinvolvesaddingupsomebasisimagesthensubtractingotherslBasisimagesarentphysicallyintuitivelSubtractingdoesntmakesenseincontextofsomeapplicationslHowdoyousubtractaface?

lWhatdoessubtractionmeaninthecontextofdocumentclassification?

backNon-negativeMatrixFactorizationlLikePCA,exceptthecoefficientsinthelinearcombinationcannotbenegativeNon-negativematrixfactorization(NMF)(Lee&

Seung-2001)NMFgivesPartbasedrepresentation(Lee&

SeungNature1999)NMFisbasedonGradientDescentNMF:

VWHs.t.Wi,d,Hd,j0LetCbeagivencostfunction,thenupdatetheparametersaccordingto:

TheideabehindmultiplicativeupdatesPositivetermNegativetermTheNMFdecompositionisnotuniqueNMFonlyuniquewhendataadequatelyspansthepositiveorthant(Donoho&

Stodden-2004)NMFBasisImagesnmf_basislOnlyallowingaddingofbasisimagesmakesintuitivesenseHasphysicalanalogueinneuronslForcingthereconstructioncoefficientstobepositiveleadstonicebasisimagesToreconstructimages,allyoucandoisaddinmorebasisimagesThisleadstobasisimagesthatrepresentpartsFaceslTrainingset:

2429exampleslFirst25examplesshownatrightlSetconsistsof19x19centeredfaceimagesFaceslBasisImages:

Rank:

49Iterations:

50Facesx=OriginalFacesx=OriginalbackbackExampleLocalnon-negativematrixfactorizationLettingLNMFisaimedatlearninglocalfeaturesbyimposingthefollowingthreeadditionalconstraintsontheNMFbasis:

backbackLNMF_basisLNMF_basisFishernon-negativematrixfactorizationbackbackWeightedNMFbackback结论及未来工作l综上所述,非负矩阵分解是一种的提取图像局部特征信息的有效的方法,目前在很多领域得到广泛应用,值得我们关注。

l问题

(1)非平衡样本集识别率低的问题

(2)权重选取问题参考文献l1D.D.LeeandH.S.Seung,“Learningthepartsofobjectsbynon-negativematrixfactorization”,Nature,vol.401,pp.788-791,1999l2D.D.LeeandH.S.Seung“Algorithmsfornon-negativeMatrixfactorization”,inProceedingsofNeuralInformationProcessingSystems,2000.l3S.Z.Li,X.Hou,H.J.Zhang,andQ.Cheng,“Learningspatiallylocalized,parts-basedrepresentation”,Proc.IEEEInt.Conf.ComputerVisionandPatternRecognition,2001,pp.207-212l4J.LuandY.-P.Tan,“Doublyweightednonnegativematrixfactorizationforimbalancedfacerecognition”,Proc.IEEEInt.Conf.Acoustics,Speech,andSignalProcessing,2009,pp.877C880

展开阅读全文
相关资源
猜你喜欢
相关搜索

当前位置:首页 > 考试认证 > IT认证

copyright@ 2008-2022 冰豆网网站版权所有

经营许可证编号:鄂ICP备2022015515号-1