Detecting camouflaged objects is challenging due to their high visual similarity to surrounding environments in texture, color, and shape. Traditional Camouflaged Object Detection (COD) methods heavily rely on pixel-level annotations, which are costly and time-consuming. Scribble-Supervised COD (SSCOD) has emerged as a more efficient alternative by using sparse scribble annotations. However, it faces two critical challenges: sparse annotations, compounded by the extreme similarity between foreground and background, cause entangled feature representations and inaccurate predictions in unlabeled regions, and existing SSCOD methods lack robustness to scale variations, resulting in inconsistent predictions across scales. To alleviate these challenges, we propose the Mutual Iterative Refinement Network (MIR-Net), which introduces a cross-branch mutual refinement mechanism to disentangle and enhance foreground and background features. MIR-Net incorporates two novel modules: Background-driven Foreground Feature Enhancement (BFFE) and Foreground-driven Background Feature Enhancement (FBFE), which dynamically suppress irrelevant cues and amplify relevant features. Additionally, we introduce a Scale-Invariant Consistency (SIC) loss that enforces stable and accurate predictions across scales, improving the model’s robustness to scale variations. Comprehensive experiments on CAMO, COD10K, and NC4K datasets demonstrate that MIR-Net achieves state-of-the-art performance among SSCOD methods, surpassing all fully supervised CNN-based models and demonstrating competitive performance with fully supervised Transformer-based approaches. These results highlight MIR-Net’s potential to advance COD under weak supervision.
Mutual Iterative Refinement Network for Scribble-Supervised Camouflaged Object Detection
Chao Yin,Kequan Yang,Jide Li,Xiaoqiang Li
Published 2025 in IEEE Transactions on Image Processing
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- Publication year
2025
- Venue
IEEE Transactions on Image Processing
- Publication date
2025-11-10
- Fields of study
Medicine, Computer Science, Engineering
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Semantic Scholar, PubMed
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