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Camouflaged object detection (COD) is a critical task traditionally addressed using RGB images that rely on color and texture cues to distinguish foreground from background. However, these methods often fail under challenging conditions such as small object size, cluttered scenes, and dynamic lighting. Hyperspectral imaging (HSI), with its rich spectral information, offers a promising alternative by enabling foreground–background separation based on spectral differences. Yet, the absence of a dedicated benchmark for hyperspectral COD has impeded progress in this area. To fill this gap, we introduce HyperCOD, the first large-scale benchmark for hyperspectral camouflaged object detection, consisting of 350 high-resolution hyperspectral images. HyperCOD features: i) high spatial and spectral resolution; ii) diverse and realistic camouflage scenarios; and iii) varied natural environments across different seasons and lighting conditions. To effectively utilize spectral cues for COD, we propose HyperSpectral Camouflage-aware SAM (HSC-SAM), a spectral-aware extension of the Segment Anything Model. By integrating spectral-spatial decomposition and saliency-guided token filtering, HSC-SAM selectively enhances object-relevant features and achieves state-of-the-art performance on HyperCOD and other public hyperspectral benchmarks. We believe HyperCOD will serve as a valuable resource for advancing research in hyperspectral camouflaged object detection.
