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DGA-Net: Enhancing SAM with Depth Prompting and Graph-Anchor Guidance for Camouflaged Object Detection

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To fully exploit depth cues in Camouflaged Object Detection (COD), we present DGA-Net, a specialized framework that adapts the Segment Anything Model (SAM) via a novel ``depth prompting" paradigm. Distinguished from existing approaches that primarily rely on sparse prompts (e.g., points or boxes), our method introduces a holistic mechanism for constructing and propagating dense depth prompts. Specifically, we propose a Cross-modal Graph Enhancement (CGE) module that synthesizes RGB semantics and depth geometric within a heterogeneous graph to form a unified guidance signal. Furthermore, we design an Anchor-Guided Refinement (AGR) module. To counteract the inherent information decay in feature hierarchies, AGR forges a global anchor and establishes direct non-local pathways to broadcast this guidance from deep to shallow layers, ensuring precise and consistent segmentation. Quantitative and qualitative experimental results demonstrate that our proposed DGA-Net outperforms the state-of-the-art COD methods.

Yuetong Li, Qing Zhang, Yilin Zhao, Gongyang Li, Zeming Liu• 2026

Related benchmarks

TaskDatasetResultRank
Camouflaged Object DetectionCAMO 250 (test)
M (Mean Score)0.033
59
Camouflaged Object DetectionCOD10K 2026 images (test)
S-measure (Sm)0.903
20
Camouflaged Object DetectionNC4K 4121 images (test)
Sm0.911
17
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