Domain Adaptive Object Detection

Domain Adaptive Object Detection

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時(shí)間:2019-08-04

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1、DomainAdaptiveObjectDetectionFatemehMirrashed1,VladI.Morariu1,BehjatSiddiquie2,RogerioS.Feris3,LarryS.Davis11UniversityofMaryland,CollegePark2SRIInternational3IBMResearchffatemeh,morariu,lsdg@umiacs.umd.edubehjat.siddiquie@sri.comrsferis@us.ibm.comAbstractWestudythe

2、useofdomainadaptationandtransferlearningtechniquesaspartofaframeworkforadaptiveob-jectdetection.Unlikerecentapplicationsofdomainadap-tationworkincomputervision,whichgenerallyfocusonimageclassi?cation,weexploretheproblemofextremeclassimbalancepresentwhenperformingdom

3、ainadapta-tionforobjectdetection.Themaindif?cultycausedbythisimbalanceisthattestimagescontainmillionsorbillionsofnegativeimagesubwindowsbutjustafewpositiveones,whichmakesitdif?culttoadapttothechangesinthepos-itiveclassdistributionsbysimpletechniquessuchasran-Figure1

4、.Anexampleoftheeffectsofdomainchangeforthetaskofvehicledetectionandourimprovedresultsafterdomainadap-domsampling.Weproposeaninitialapproachtoaddresstation.Here,thevehicledetectoristrainedontrainingdata,thethisproblemandapplyourtechniquetovehicledetectionsourcedomain

5、,andisappliedtotestingdata(anewdomain)thatinachallengingurbansurveillancedataset,demonstratingdiffersfromthetrainingdatainvariousways,e.g.,viewingangles,theperformanceofourapproachwithvariousamountsofillumination.Ifwedirectlyapplythetrainedmodeltoanewdo-supervision,

6、includingthefullyunsupervisedcase.main,thecon?dencemaphasmultiplepeaks,manyofwhichdonotcorrespondtovehicles.Afterdomainadaptation,thehighestpeakscorrespondtothetwovehiclesintheforeground.(Note:1.IntroductionBackgroundregionshavebeenobfuscatedforlegal/privacyrea-sons

7、)Buildingvisualmodelsofobjectsrobusttoextrinsic1variationssuchascameraviewangle(orobjectpose),reso-lution,lighting,andblurhaslongbeenoneofthechallengesmechanismstotransferoradaptknowledgefromonedo-incomputervision.Generally,adiscriminativeorgenera-maintoanotherrelat

8、eddomain.Whiletheseadvanceshavetivestatisticalmodelistrainedbyacquiringalargesetofex-alsobeenappliedbythecomputervisioncommunitywithamples

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