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本文格式為Word版,下載可任意編輯——邊緣計算集合x邊緣計算論文集合Edge-Detection-PapersOutlineDeep-learningbasedapproachesGeneraledgedetectionObjectcontourdetectionSemanticedgedetection(Category-Aware)OcclusionboundarydetectionEdgedetectionfrommulti-framesTraditionalapproaches1.Deep-learningbasedapproaches1.1GeneraledgedetectionShortnamePaperSourceCode/ProjectLinkDexiNedDenseExtremeInceptionNetwk:TowardsaRobustCNNModelforEdgeDetectionWACV2022[Code]BDCNBi-DirectionalCascadeNetworkforPerceptualEdgeDetectionCVPR2022[code]LPCBLearningtoPredictCrispBoundariesECCV2022

AMH-NetLrningDeepStructuredMulti-ScaleFeaturesusingAttention-GatedCRFsforContourPredictionNIPS2022[code]RCFRicherConvolutionalFeaturesforEdgeDetectionCVPR2022caffe][code-pytorch][project]CEDDeepCrispBoundariesCVPR2022[code]COBConvolutionalOrientedBoundariesECCV2022[code][project]RDSLearningRelaxedDeepSupervisionforBetterEdgeDetectionCVPR2022

HFLHigh-for-LowandLow-for-High:EfficientBoundaryDetectionfromICCV2022

DeepObjectFeaturesanditsApplicationstoHigh-LevelVisionHEDHolistically-NestedEdgeDetectionICCV2022[code]DeepEdgeEdge:AMulti-ScaleBifurcatedepNetworkforTop-DownContourDetectionCVPR2022

DeepContourDeepContour:ADeepConvolutionalFeatureLearnedbyPositive-sharingLossforContourDetectionCVPR2022[code]1.2ObjectcontourdetectionShortnamePaperSourceCode/ProjectLinkCEDNObjectContourDetectionwithaFullyConvolutionalEncoder-DecoderNetworkCVPR2022caffe][code-TF]

WeaklySupervisedObjectBoundariesCVPR2022

1.3Semanticedgedetection(Category-Aware)ShortnamePaperSourceCode/ProjectLinkDFFDynamicFeatureFusionforSemanticEdgeDetectionIJCAI2022[code]STEALDevilisintheEdges:LearningSemanticBoundariesfromNoisyAnnotationsCVPR2022[code][project]SEALSimultaneousEdgeAlignmentandLearningECCV2022[code]CASENetCASENt:DeepCategory-AwareSemanticEdgeDetectionCVPR2022[code]dataset

SemanticContoursfromInverseDetectorsICCV2022[code]1.4OcclusionboundarydetectionShortnamePaperSourceCode/ProjectLink

OcclusionBoundaryDetectionviaDeepExplorationofContextCVPR2022

1.5Edgedetectionfrommulti-framesShortnamePaperSourceCode/ProjectLink

BoundaryFlowBoundaryFlow:ASiameseNetworkthatPredictsBoundaryMotionwithoutTrainingonMotionCVPR2022

LEGOLEGO:LearningEdgewithGeometryallatOncebyWatchingVideosCVPR2022[code]

UnsupervisedLearningofEdgesCVPR2022[code]

2.TraditionalapproachesShortnamePaperSourceCode/ProjectLinkSemiContourSemiContour:ASemi-supervisedLearningApproachforContourDetectionCVPR2022

OEFOrientedEdgeForestsforBoundaryDetectionCVPR2022[code]SEFastedgedetectionusingstructuredforestsTPAMI2022[code]EdgeBoxesEdgeBox:LocatingObjectProposalsfromEdgesECCV2022[code]PMICrispBoundaryDetectionUsingPointwiseMutualInformationECCV2022[code]SketchTokensSketchtokens:Alearnedmid-levelrepresentationforcontourandobjectdetectionCVPR2022

SCGDiscriminativelyTrainedSparseCodeGradientsforContourDetectionNIPS2022

gPb-owt-ucmContourDetectionandHierarchicalImageSegmentationTPAMI2022[code][project]XDoGXDoG:advancedimagestylizationwithe

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