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Papers/Accurate RGB-D Salient Object Detection via Collaborative ...

Accurate RGB-D Salient Object Detection via Collaborative Learning

Wei Ji, Jingjing Li, Miao Zhang, Yongri Piao, Huchuan Lu

2020-07-23ECCV 2020 8Thermal Image SegmentationSalient Object DetectionRGB-D Salient Object Detectionobject-detectionObject DetectionRGB Salient Object DetectionSaliency Detection
PaperPDFCode(official)Code

Abstract

Benefiting from the spatial cues embedded in depth images, recent progress on RGB-D saliency detection shows impressive ability on some challenge scenarios. However, there are still two limitations. One hand is that the pooling and upsampling operations in FCNs might cause blur object boundaries. On the other hand, using an additional depth-network to extract depth features might lead to high computation and storage cost. The reliance on depth inputs during testing also limits the practical applications of current RGB-D models. In this paper, we propose a novel collaborative learning framework where edge, depth and saliency are leveraged in a more efficient way, which solves those problems tactfully. The explicitly extracted edge information goes together with saliency to give more emphasis to the salient regions and object boundaries. Depth and saliency learning is innovatively integrated into the high-level feature learning process in a mutual-benefit manner. This strategy enables the network to be free of using extra depth networks and depth inputs to make inference. To this end, it makes our model more lightweight, faster and more versatile. Experiment results on seven benchmark datasets show its superior performance.

Results

TaskDatasetMetricValueModel
Semantic SegmentationRGB-T-Glass-SegmentationMAE0.145CoNet
Object DetectionNJU2KAverage MAE0.047CoNet
Object DetectionNJU2KS-Measure89.4CoNet
3DNJU2KAverage MAE0.047CoNet
3DNJU2KS-Measure89.4CoNet
2D ClassificationNJU2KAverage MAE0.047CoNet
2D ClassificationNJU2KS-Measure89.4CoNet
Scene SegmentationRGB-T-Glass-SegmentationMAE0.145CoNet
2D Object DetectionNJU2KAverage MAE0.047CoNet
2D Object DetectionNJU2KS-Measure89.4CoNet
2D Object DetectionRGB-T-Glass-SegmentationMAE0.145CoNet
10-shot image generationRGB-T-Glass-SegmentationMAE0.145CoNet
16kNJU2KAverage MAE0.047CoNet
16kNJU2KS-Measure89.4CoNet

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