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BTS-Net: Bi-directional Transfer-and-Selection Network For RGB-D Salient Object Detection

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Depth information has been proved beneficial in RGB-D salient object detection (SOD). However, depth maps obtained often suffer from low quality and inaccuracy. Most existing RGB-D SOD models have no cross-modal interactions or only have unidirectional interactions from depth to RGB in their encoder stages, which may lead to inaccurate encoder features when facing low quality depth. To address this limitation, we propose to conduct progressive bi-directional interactions as early in the encoder stage, yielding a novel bi-directional transfer-and-selection network named BTS-Net, which adopts a set of bi-directional transfer-and-selection (BTS) modules to purify features during encoding. Based on the resulting robust encoder features, we also design an effective light-weight group decoder to achieve accurate final saliency prediction. Comprehensive experiments on six widely used datasets demonstrate that BTS-Net surpasses 16 latest state-of-the-art approaches in terms of four key metrics.

Wenbo Zhang, Yao Jiang, Keren Fu, Qijun Zhao• 2021

Related benchmarks

TaskDatasetResultRank
RGB-D Salient Object DetectionSTERE
S-measure (Sα)0.915
198
RGB-D Salient Object DetectionNJU2K (test)
S-measure (Sα)0.921
137
RGB-D Salient Object DetectionSIP
S-measure (Sα)0.896
124
RGB-D Salient Object DetectionLFSD
S-measure (Sα)86.7
122
RGB-D Salient Object DetectionRGBD135
S-measure (Sα)0.943
92
RGB-D Salient Object DetectionNLPR (test)
S-measure (Sα)93.4
71
Salient Object DetectionUSOD10k
S-alpha0.9093
40
Underwater Salient Object DetectionUSOD10k 1.0 (test)
S_alpha0.9093
21
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