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Modality-Specific Hierarchical Enhancement for RGB-D Camouflaged Object Detection

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Camouflaged object detection (COD) is challenging due to high target-background similarity, and recent methods address this by complementarily using RGB-D texture and geometry cues. However, RGB-D COD methods still underutilize modality-specific cues, which limits fusion quality. We believe this is because RGB and depth features are fused directly after backbone extraction without modality-specific enhancement. To address this limitation, we propose MHENet, an RGB-D COD framework that performs modality-specific hierarchical enhancement and adaptive fusion of RGB and depth features. Specifically, we introduce a Texture Hierarchical Enhancement Module (THEM) to amplify subtle texture variations by extracting high-frequency information and a Geometry Hierarchical Enhancement Module (GHEM) to enhance geometric structures via learnable gradient extraction, while preserving cross-scale semantic consistency. Finally, an Adaptive Dynamic Fusion Module (ADFM) adaptively fuses the enhanced texture and geometry features with spatially varying weights. Experiments on four benchmarks demonstrate that MHENet surpasses 16 state-of-the-art methods qualitatively and quantitatively. Code is available at https://github.com/afdsgh/MHENet.

Yuzhen Niu, Yangqing Wang, Ri Cheng, Fusheng Li, Rongshen Wang, Zhichen Yang• 2026

Related benchmarks

TaskDatasetResultRank
Camouflaged Object DetectionCOD10K (test)
S-measure (S_alpha)0.889
224
Camouflaged Object DetectionChameleon
S-measure (S_alpha)92.6
150
Camouflaged Object DetectionCAMO (test)
E_phi0.932
111
Camouflaged Object DetectionNC4K
M Score0.031
67
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