EReCu: Pseudo-label Evolution Fusion and Refinement with Multi-Cue Learning for Unsupervised Camouflage Detection
arXiv cs.CV / 3/13/2026
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Key Points
- The paper introduces EReCu, a unified unsupervised camouflage object detection framework that improves pseudo-label reliability and feature fidelity.
- It proposes the Multi-Cue Native Perception module that combines low-level texture cues with mid-level semantics to better align masks with native object information.
- It introduces Pseudo-Label Evolution Fusion, enabling teacher-student refinement and using depthwise separable convolutions for efficient semantic denoising.
- Spectral Tensor Attention Fusion is used to balance semantic and structural information via compact spectral aggregation across multiple layers of attention maps.
- Local Pseudo-Label Refinement leverages attention diversity to recover fine textures and improve boundary fidelity, achieving state-of-the-art results on UCOD benchmarks with strong generalization.
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