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Papers/Semi-Supervised Video Salient Object Detection Using Pseud...

Semi-Supervised Video Salient Object Detection Using Pseudo-Labels

Pengxiang Yan, Guanbin Li, Yuan Xie, Zhen Li, Chuan Wang, Tianshui Chen, Liang Lin

2019-08-12ICCV 2019 10Video Salient Object DetectionUnsupervised Video Object SegmentationSalient Object Detectionobject-detectionRGB Salient Object Detection
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Abstract

Deep learning-based video salient object detection has recently achieved great success with its performance significantly outperforming any other unsupervised methods. However, existing data-driven approaches heavily rely on a large quantity of pixel-wise annotated video frames to deliver such promising results. In this paper, we address the semi-supervised video salient object detection task using pseudo-labels. Specifically, we present an effective video saliency detector that consists of a spatial refinement network and a spatiotemporal module. Based on the same refinement network and motion information in terms of optical flow, we further propose a novel method for generating pixel-level pseudo-labels from sparsely annotated frames. By utilizing the generated pseudo-labels together with a part of manual annotations, our video saliency detector learns spatial and temporal cues for both contrast inference and coherence enhancement, thus producing accurate saliency maps. Experimental results demonstrate that our proposed semi-supervised method even greatly outperforms all the state-of-the-art fully supervised methods across three public benchmarks of VOS, DAVIS, and FBMS.

Results

TaskDatasetMetricValueModel
VideoFBMS-59AVERAGE MAE0.054RCRNet+NER
VideoFBMS-59MAX F-MEASURE0.861RCRNet+NER
VideoFBMS-59S-Measure0.87RCRNet+NER
VideoVOS-TAverage MAE0.049RCRNet+NER
VideoVOS-TS-Measure0.872RCRNet+NER
VideoVOS-Tmax E-measure0.856RCRNet+NER
VideoDAVIS-2016AVERAGE MAE0.028RCRNet+NER
VideoDAVIS-2016MAX F-MEASURE0.859RCRNet+NER
VideoDAVIS-2016S-Measure0.884RCRNet+NER
Object DetectionFBMS-59AVERAGE MAE0.054RCRNet+NER
Object DetectionFBMS-59MAX F-MEASURE0.861RCRNet+NER
Object DetectionFBMS-59S-Measure0.87RCRNet+NER
Object DetectionVOS-TAverage MAE0.049RCRNet+NER
Object DetectionVOS-TS-Measure0.872RCRNet+NER
Object DetectionVOS-Tmax E-measure0.856RCRNet+NER
Object DetectionDAVIS-2016AVERAGE MAE0.028RCRNet+NER
Object DetectionDAVIS-2016MAX F-MEASURE0.859RCRNet+NER
Object DetectionDAVIS-2016S-Measure0.884RCRNet+NER
3DFBMS-59AVERAGE MAE0.054RCRNet+NER
3DFBMS-59MAX F-MEASURE0.861RCRNet+NER
3DFBMS-59S-Measure0.87RCRNet+NER
3DVOS-TAverage MAE0.049RCRNet+NER
3DVOS-TS-Measure0.872RCRNet+NER
3DVOS-Tmax E-measure0.856RCRNet+NER
3DDAVIS-2016AVERAGE MAE0.028RCRNet+NER
3DDAVIS-2016MAX F-MEASURE0.859RCRNet+NER
3DDAVIS-2016S-Measure0.884RCRNet+NER
Video Object SegmentationFBMS-59AVERAGE MAE0.054RCRNet+NER
Video Object SegmentationFBMS-59MAX F-MEASURE0.861RCRNet+NER
Video Object SegmentationFBMS-59S-Measure0.87RCRNet+NER
Video Object SegmentationVOS-TAverage MAE0.049RCRNet+NER
Video Object SegmentationVOS-TS-Measure0.872RCRNet+NER
Video Object SegmentationVOS-Tmax E-measure0.856RCRNet+NER
Video Object SegmentationDAVIS-2016AVERAGE MAE0.028RCRNet+NER
Video Object SegmentationDAVIS-2016MAX F-MEASURE0.859RCRNet+NER
Video Object SegmentationDAVIS-2016S-Measure0.884RCRNet+NER
RGB Salient Object DetectionFBMS-59AVERAGE MAE0.054RCRNet+NER
RGB Salient Object DetectionFBMS-59MAX F-MEASURE0.861RCRNet+NER
RGB Salient Object DetectionFBMS-59S-Measure0.87RCRNet+NER
RGB Salient Object DetectionVOS-TAverage MAE0.049RCRNet+NER
RGB Salient Object DetectionVOS-TS-Measure0.872RCRNet+NER
RGB Salient Object DetectionVOS-Tmax E-measure0.856RCRNet+NER
RGB Salient Object DetectionDAVIS-2016AVERAGE MAE0.028RCRNet+NER
RGB Salient Object DetectionDAVIS-2016MAX F-MEASURE0.859RCRNet+NER
RGB Salient Object DetectionDAVIS-2016S-Measure0.884RCRNet+NER
2D ClassificationFBMS-59AVERAGE MAE0.054RCRNet+NER
2D ClassificationFBMS-59MAX F-MEASURE0.861RCRNet+NER
2D ClassificationFBMS-59S-Measure0.87RCRNet+NER
2D ClassificationVOS-TAverage MAE0.049RCRNet+NER
2D ClassificationVOS-TS-Measure0.872RCRNet+NER
2D ClassificationVOS-Tmax E-measure0.856RCRNet+NER
2D ClassificationDAVIS-2016AVERAGE MAE0.028RCRNet+NER
2D ClassificationDAVIS-2016MAX F-MEASURE0.859RCRNet+NER
2D ClassificationDAVIS-2016S-Measure0.884RCRNet+NER
2D Object DetectionFBMS-59AVERAGE MAE0.054RCRNet+NER
2D Object DetectionFBMS-59MAX F-MEASURE0.861RCRNet+NER
2D Object DetectionFBMS-59S-Measure0.87RCRNet+NER
2D Object DetectionVOS-TAverage MAE0.049RCRNet+NER
2D Object DetectionVOS-TS-Measure0.872RCRNet+NER
2D Object DetectionVOS-Tmax E-measure0.856RCRNet+NER
2D Object DetectionDAVIS-2016AVERAGE MAE0.028RCRNet+NER
2D Object DetectionDAVIS-2016MAX F-MEASURE0.859RCRNet+NER
2D Object DetectionDAVIS-2016S-Measure0.884RCRNet+NER
16kFBMS-59AVERAGE MAE0.054RCRNet+NER
16kFBMS-59MAX F-MEASURE0.861RCRNet+NER
16kFBMS-59S-Measure0.87RCRNet+NER
16kVOS-TAverage MAE0.049RCRNet+NER
16kVOS-TS-Measure0.872RCRNet+NER
16kVOS-Tmax E-measure0.856RCRNet+NER
16kDAVIS-2016AVERAGE MAE0.028RCRNet+NER
16kDAVIS-2016MAX F-MEASURE0.859RCRNet+NER
16kDAVIS-2016S-Measure0.884RCRNet+NER

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