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Papers/RGB-D Salient Object Detection with Cross-Modality Modulat...

RGB-D Salient Object Detection with Cross-Modality Modulation and Selection

Chongyi Li, Runmin Cong, Yongri Piao, Qianqian Xu, Chen Change Loy

2020-07-14ECCV 2020 8feature selectionSalient Object DetectionRGB-D Salient Object Detectionobject-detectionObject DetectionRGB Salient Object Detection
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Abstract

We present an effective method to progressively integrate and refine the cross-modality complementarities for RGB-D salient object detection (SOD). The proposed network mainly solves two challenging issues: 1) how to effectively integrate the complementary information from RGB image and its corresponding depth map, and 2) how to adaptively select more saliency-related features. First, we propose a cross-modality feature modulation (cmFM) module to enhance feature representations by taking the depth features as prior, which models the complementary relations of RGB-D data. Second, we propose an adaptive feature selection (AFS) module to select saliency-related features and suppress the inferior ones. The AFS module exploits multi-modality spatial feature fusion with the self-modality and cross-modality interdependencies of channel features are considered. Third, we employ a saliency-guided position-edge attention (sg-PEA) module to encourage our network to focus more on saliency-related regions. The above modules as a whole, called cmMS block, facilitates the refinement of saliency features in a coarse-to-fine fashion. Coupled with a bottom-up inference, the refined saliency features enable accurate and edge-preserving SOD. Extensive experiments demonstrate that our network outperforms state-of-the-art saliency detectors on six popular RGB-D SOD benchmarks.

Results

TaskDatasetMetricValueModel
Object DetectionNJU2KAverage MAE0.044CMMS
Object DetectionNJU2KS-Measure90.4CMMS
3DNJU2KAverage MAE0.044CMMS
3DNJU2KS-Measure90.4CMMS
2D ClassificationNJU2KAverage MAE0.044CMMS
2D ClassificationNJU2KS-Measure90.4CMMS
2D Object DetectionNJU2KAverage MAE0.044CMMS
2D Object DetectionNJU2KS-Measure90.4CMMS
16kNJU2KAverage MAE0.044CMMS
16kNJU2KS-Measure90.4CMMS

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