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UC-Net: Uncertainty Inspired RGB-D Saliency Detection via Conditional Variational Autoencoders

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In this paper, we propose the first framework (UCNet) to employ uncertainty for RGB-D saliency detection by learning from the data labeling process. Existing RGB-D saliency detection methods treat the saliency detection task as a point estimation problem, and produce a single saliency map following a deterministic learning pipeline. Inspired by the saliency data labeling process, we propose probabilistic RGB-D saliency detection network via conditional variational autoencoders to model human annotation uncertainty and generate multiple saliency maps for each input image by sampling in the latent space. With the proposed saliency consensus process, we are able to generate an accurate saliency map based on these multiple predictions. Quantitative and qualitative evaluations on six challenging benchmark datasets against 18 competing algorithms demonstrate the effectiveness of our approach in learning the distribution of saliency maps, leading to a new state-of-the-art in RGB-D saliency detection.

Jing Zhang, Deng-Ping Fan, Yuchao Dai, Saeed Anwar, Fatemeh Sadat Saleh, Tong Zhang, Nick Barnes• 2020

Related benchmarks

TaskDatasetResultRank
RGB-D Salient Object DetectionSTERE
S-measure (Sα)0.903
198
Camouflaged Object DetectionCOD10K (test)
S-measure (S_alpha)0.776
174
RGB-D Salient Object DetectionNJU2K (test)
S-measure (Sα)0.897
137
RGB-D Salient Object DetectionSIP
S-measure (Sα)0.875
124
RGB-D Salient Object DetectionLFSD
S-measure (Sα)91.8
122
RGBD Saliency DetectionDES
S-measure0.934
102
Camouflaged Object DetectionChameleon
S-measure (S_alpha)88
96
RGB-D Salient Object DetectionRGBD135
S-measure (Sα)0.934
92
RGBD Saliency DetectionNLPR
S-measure92
85
Camouflaged Object DetectionCOD10K
S-measure (S_alpha)0.776
83
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