Democracy Does Matter: Comprehensive Feature Mining for Co-Salient Object Detection

CVPR 2022  ·  Siyue Yu, Jimin Xiao, Bingfeng Zhang, Eng Gee Lim ·

Co-salient object detection, with the target of detecting co-existed salient objects among a group of images, is gaining popularity. Recent works use the attention mechanism or extra information to aggregate common co-salient features, leading to incomplete even incorrect responses for target objects. In this paper, we aim to mine comprehensive co-salient features with democracy and reduce background interference without introducing any extra information. To achieve this, we design a democratic prototype generation module to generate democratic response maps, covering sufficient co-salient regions and thereby involving more shared attributes of co-salient objects. Then a comprehensive prototype based on the response maps can be generated as a guide for final prediction. To suppress the noisy background information in the prototype, we propose a self-contrastive learning module, where both positive and negative pairs are formed without relying on additional classification information. Besides, we also design a democratic feature enhancement module to further strengthen the co-salient features by readjusting attention values. Extensive experiments show that our model obtains better performance than previous state-of-the-art methods, especially on challenging real-world cases (e.g., for CoCA, we obtain a gain of 2.0% for MAE, 5.4% for maximum F-measure, 2.3% for maximum E-measure, and 3.7% for S-measure) under the same settings. Code will be released soon.

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Datasets


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Co-Salient Object Detection CoCA DCFM S-measure 0.710 # 3
max F-measure 0.598 # 3
mean E-measure 0.778 # 2
Mean F-measure 0.593 # 2
max E-measure 0.783 # 3
MAE 0.085 # 2
Co-Salient Object Detection CoSal2015 DCFM MAE 0.067 # 5
S-measure 0.838 # 7
max F-measure 0.856 # 5
max E-measure 0.893 # 5
mean E-measure 0.889 # 3
mean F-measure 0.850 # 3
Co-Salient Object Detection CoSOD3k DCFM S-measure 0.809 # 5
max E-measure 0.871 # 4
max F-measure 0.805 # 3
MAE 0.067 # 3
mean E-measure 0.871 # 3
mean F-measure 0.800 # 3

Methods