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Selectivity or Invariance: Boundary-aware Salient Object Detection

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Typically, a salient object detection (SOD) model faces opposite requirements in processing object interiors and boundaries. The features of interiors should be invariant to strong appearance change so as to pop-out the salient object as a whole, while the features of boundaries should be selective to slight appearance change to distinguish salient objects and background. To address this selectivity-invariance dilemma, we propose a novel boundary-aware network with successive dilation for image-based SOD. In this network, the feature selectivity at boundaries is enhanced by incorporating a boundary localization stream, while the feature invariance at interiors is guaranteed with a complex interior perception stream. Moreover, a transition compensation stream is adopted to amend the probable failures in transitional regions between interiors and boundaries. In particular, an integrated successive dilation module is proposed to enhance the feature invariance at interiors and transitional regions. Extensive experiments on six datasets show that the proposed approach outperforms 16 state-of-the-art methods.

Jinming Su, Jia Li, Yu Zhang, Changqun Xia, Yonghong Tian• 2018

Related benchmarks

TaskDatasetResultRank
Salient Object DetectionDUTS (test)
M (MAE)0.04
302
Salient Object DetectionPASCAL-S (test)
MAE0.079
149
Salient Object DetectionHKU-IS (test)
MAE0.037
137
Salient Object DetectionECSSD (test)
S-measure (Sa)92.4
104
Salient Object DetectionDUT-OMRON (test)
MAE0.061
92
Salient Object DetectionECSSD 1,000 images (test)
MAE0.035
48
Salient Object DetectionDUT (test)
MAE4
41
Salient Object DetectionPASCAL-S 850 images (test)
MAE0.07
41
Salient Object DetectionDUT-OMRON 5,168 images (test)
MAE0.059
15
Salient Object DetectionTHUR15K 6,232 images (test)
MAE0.068
13
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