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Multi-Content Complementation Network for Salient Object Detection in Optical Remote Sensing Images

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arxiv 2112.01932 v1 pith:S2HT26PF submitted 2021-12-02 cs.CV eess.IV

Multi-Content Complementation Network for Salient Object Detection in Optical Remote Sensing Images

classification cs.CV eess.IV
keywords featuresrsi-sodmccnetsalientcomplementationdetectionimagesmulti-content
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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In the computer vision community, great progresses have been achieved in salient object detection from natural scene images (NSI-SOD); by contrast, salient object detection in optical remote sensing images (RSI-SOD) remains to be a challenging emerging topic. The unique characteristics of optical RSIs, such as scales, illuminations and imaging orientations, bring significant differences between NSI-SOD and RSI-SOD. In this paper, we propose a novel Multi-Content Complementation Network (MCCNet) to explore the complementarity of multiple content for RSI-SOD. Specifically, MCCNet is based on the general encoder-decoder architecture, and contains a novel key component named Multi-Content Complementation Module (MCCM), which bridges the encoder and the decoder. In MCCM, we consider multiple types of features that are critical to RSI-SOD, including foreground features, edge features, background features, and global image-level features, and exploit the content complementarity between them to highlight salient regions over various scales in RSI features through the attention mechanism. Besides, we comprehensively introduce pixel-level, map-level and metric-aware losses in the training phase. Extensive experiments on two popular datasets demonstrate that the proposed MCCNet outperforms 23 state-of-the-art methods, including both NSI-SOD and RSI-SOD methods. The code and results of our method are available at https://github.com/MathLee/MCCNet.

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