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Papers/Cascaded Partial Decoder for Fast and Accurate Salient Obj...

Cascaded Partial Decoder for Fast and Accurate Salient Object Detection

Zhe Wu, Li Su, Qingming Huang

2019-04-18CVPR 2019 6Camouflaged Object SegmentationSalient Object Detectionobject-detectionObject DetectionRGB Salient Object Detection
PaperPDFCode(official)

Abstract

Existing state-of-the-art salient object detection networks rely on aggregating multi-level features of pre-trained convolutional neural networks (CNNs). Compared to high-level features, low-level features contribute less to performance but cost more computations because of their larger spatial resolutions. In this paper, we propose a novel Cascaded Partial Decoder (CPD) framework for fast and accurate salient object detection. On the one hand, the framework constructs partial decoder which discards larger resolution features of shallower layers for acceleration. On the other hand, we observe that integrating features of deeper layers obtain relatively precise saliency map. Therefore we directly utilize generated saliency map to refine the features of backbone network. This strategy efficiently suppresses distractors in the features and significantly improves their representation ability. Experiments conducted on five benchmark datasets exhibit that the proposed model not only achieves state-of-the-art performance but also runs much faster than existing models. Besides, the proposed framework is further applied to improve existing multi-level feature aggregation models and significantly improve their efficiency and accuracy.

Results

TaskDatasetMetricValueModel
Object DetectionECSSDF-measure0.917CPD-R (ResNet50)
Object DetectionECSSDMAE0.037CPD-R (ResNet50)
Object DetectionPASCAL-SF-measure0.824CPD-R (ResNet50)
Object DetectionPASCAL-SMAE0.072CPD-R (ResNet50)
Object DetectionHKU-ISF-measure0.891CPD-R (ResNet50)
Object DetectionHKU-ISMAE0.034CPD-R (ResNet50)
Object DetectionISTDBalanced Error Rate6.76CPD
Object DetectionUCFBalanced Error Rate7.21CPD
Object DetectionDUT-OMRONF-measure0.747CPD-R (ResNet50)
Object DetectionDUT-OMRONMAE0.056CPD-R (ResNet50)
Object DetectionSBU / SBU-RefineBalanced Error Rate4.19CPD
Object DetectionCODMAE0.059CPD
Object DetectionCODS-Measure0.747CPD
Object DetectionCODWeighted F-Measure0.508CPD
Object DetectionPCOD_1200S-Measure0.855CPD
3DECSSDF-measure0.917CPD-R (ResNet50)
3DECSSDMAE0.037CPD-R (ResNet50)
3DPASCAL-SF-measure0.824CPD-R (ResNet50)
3DPASCAL-SMAE0.072CPD-R (ResNet50)
3DHKU-ISF-measure0.891CPD-R (ResNet50)
3DHKU-ISMAE0.034CPD-R (ResNet50)
3DISTDBalanced Error Rate6.76CPD
3DUCFBalanced Error Rate7.21CPD
3DDUT-OMRONF-measure0.747CPD-R (ResNet50)
3DDUT-OMRONMAE0.056CPD-R (ResNet50)
3DSBU / SBU-RefineBalanced Error Rate4.19CPD
3DCODMAE0.059CPD
3DCODS-Measure0.747CPD
3DCODWeighted F-Measure0.508CPD
3DPCOD_1200S-Measure0.855CPD
RGB Salient Object DetectionECSSDF-measure0.917CPD-R (ResNet50)
RGB Salient Object DetectionECSSDMAE0.037CPD-R (ResNet50)
RGB Salient Object DetectionPASCAL-SF-measure0.824CPD-R (ResNet50)
RGB Salient Object DetectionPASCAL-SMAE0.072CPD-R (ResNet50)
RGB Salient Object DetectionHKU-ISF-measure0.891CPD-R (ResNet50)
RGB Salient Object DetectionHKU-ISMAE0.034CPD-R (ResNet50)
RGB Salient Object DetectionISTDBalanced Error Rate6.76CPD
RGB Salient Object DetectionUCFBalanced Error Rate7.21CPD
RGB Salient Object DetectionDUT-OMRONF-measure0.747CPD-R (ResNet50)
RGB Salient Object DetectionDUT-OMRONMAE0.056CPD-R (ResNet50)
RGB Salient Object DetectionSBU / SBU-RefineBalanced Error Rate4.19CPD
Camouflaged Object SegmentationCODMAE0.059CPD
Camouflaged Object SegmentationCODS-Measure0.747CPD
Camouflaged Object SegmentationCODWeighted F-Measure0.508CPD
Camouflaged Object SegmentationPCOD_1200S-Measure0.855CPD
Object SegmentationCODMAE0.059CPD
Object SegmentationCODS-Measure0.747CPD
Object SegmentationCODWeighted F-Measure0.508CPD
Object SegmentationPCOD_1200S-Measure0.855CPD
2D ClassificationECSSDF-measure0.917CPD-R (ResNet50)
2D ClassificationECSSDMAE0.037CPD-R (ResNet50)
2D ClassificationPASCAL-SF-measure0.824CPD-R (ResNet50)
2D ClassificationPASCAL-SMAE0.072CPD-R (ResNet50)
2D ClassificationHKU-ISF-measure0.891CPD-R (ResNet50)
2D ClassificationHKU-ISMAE0.034CPD-R (ResNet50)
2D ClassificationISTDBalanced Error Rate6.76CPD
2D ClassificationUCFBalanced Error Rate7.21CPD
2D ClassificationDUT-OMRONF-measure0.747CPD-R (ResNet50)
2D ClassificationDUT-OMRONMAE0.056CPD-R (ResNet50)
2D ClassificationSBU / SBU-RefineBalanced Error Rate4.19CPD
2D ClassificationCODMAE0.059CPD
2D ClassificationCODS-Measure0.747CPD
2D ClassificationCODWeighted F-Measure0.508CPD
2D ClassificationPCOD_1200S-Measure0.855CPD
2D Object DetectionECSSDF-measure0.917CPD-R (ResNet50)
2D Object DetectionECSSDMAE0.037CPD-R (ResNet50)
2D Object DetectionPASCAL-SF-measure0.824CPD-R (ResNet50)
2D Object DetectionPASCAL-SMAE0.072CPD-R (ResNet50)
2D Object DetectionHKU-ISF-measure0.891CPD-R (ResNet50)
2D Object DetectionHKU-ISMAE0.034CPD-R (ResNet50)
2D Object DetectionISTDBalanced Error Rate6.76CPD
2D Object DetectionUCFBalanced Error Rate7.21CPD
2D Object DetectionDUT-OMRONF-measure0.747CPD-R (ResNet50)
2D Object DetectionDUT-OMRONMAE0.056CPD-R (ResNet50)
2D Object DetectionSBU / SBU-RefineBalanced Error Rate4.19CPD
2D Object DetectionCODMAE0.059CPD
2D Object DetectionCODS-Measure0.747CPD
2D Object DetectionCODWeighted F-Measure0.508CPD
2D Object DetectionPCOD_1200S-Measure0.855CPD
16kECSSDF-measure0.917CPD-R (ResNet50)
16kECSSDMAE0.037CPD-R (ResNet50)
16kPASCAL-SF-measure0.824CPD-R (ResNet50)
16kPASCAL-SMAE0.072CPD-R (ResNet50)
16kHKU-ISF-measure0.891CPD-R (ResNet50)
16kHKU-ISMAE0.034CPD-R (ResNet50)
16kISTDBalanced Error Rate6.76CPD
16kUCFBalanced Error Rate7.21CPD
16kDUT-OMRONF-measure0.747CPD-R (ResNet50)
16kDUT-OMRONMAE0.056CPD-R (ResNet50)
16kSBU / SBU-RefineBalanced Error Rate4.19CPD
16kCODMAE0.059CPD
16kCODS-Measure0.747CPD
16kCODWeighted F-Measure0.508CPD
16kPCOD_1200S-Measure0.855CPD

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