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SPSN: Superpixel Prototype Sampling Network for RGB-D Salient Object Detection

About

RGB-D salient object detection (SOD) has been in the spotlight recently because it is an important preprocessing operation for various vision tasks. However, despite advances in deep learning-based methods, RGB-D SOD is still challenging due to the large domain gap between an RGB image and the depth map and low-quality depth maps. To solve this problem, we propose a novel superpixel prototype sampling network (SPSN) architecture. The proposed model splits the input RGB image and depth map into component superpixels to generate component prototypes. We design a prototype sampling network so that the network only samples prototypes corresponding to salient objects. In addition, we propose a reliance selection module to recognize the quality of each RGB and depth feature map and adaptively weight them in proportion to their reliability. The proposed method makes the model robust to inconsistencies between RGB images and depth maps and eliminates the influence of non-salient objects. Our method is evaluated on five popular datasets, achieving state-of-the-art performance. We prove the effectiveness of the proposed method through comparative experiments.

Minhyeok Lee, Chaewon Park, Suhwan Cho, Sangyoun Lee• 2022

Related benchmarks

TaskDatasetResultRank
RGB-D Salient Object DetectionSTERE
S-measure (Sα)0.907
198
RGB-D Salient Object DetectionSIP
S-measure (Sα)0.892
124
RGB-D Salient Object DetectionNLPR (test)
S-measure (Sα)92.3
71
RGB-D Saliency DetectionNLPR
Max F-beta0.912
65
RGB-D Salient Object DetectionNJUD
S-measure91.8
54
RGB-D Salient Object DetectionSTERE (test)
S-measure (Sα)0.907
45
RGB-D Salient Object DetectionSIP (test)
S-measure (Sα)89.2
37
RGB-D Salient Object DetectionNJU2K (val)
S-measure0.912
11
RGB-D Salient Object DetectionNJUD (test)
S-measure (Sm)93.3
7
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