arXiv:2605.15450v1 Announce Type: cross
Abstract: Concealed Object Segmentation (COS) encompasses a family of dense-prediction tasks, including camouflaged object detection, polyp segmentation, transparent object detection, and industrial defect inspection, where targets are visually entangled with their surroundings through different physical mechanisms. Existing methods either operate directly on RGB images or employ emphheterogeneous decompositions (eg, Fourier, wavelet) that redistribute spatial evidence across scale/frequency coefficients, making pixel-aligned cues less direct. We introduce a fundamentally different perspective: textbfhomogeneous image decomposition via Retinex theory, which factorizes an image into illumination and reflectance components within the emphsame spatial domain. Our key insight is that visual entanglement enforces appearance matching in the composite space, but this does emphnot necessitate simultaneous matching in both component spaces, a phenomenon we formalize as the textbfDiscriminability Gap Theorem. Crucially, we show that across diverse COS sub-tasks, the underlying physical processes systematically anti-correlate illumination and reflectance differences, yielding theoretical guarantees that Retinex decomposition preserves or strictly improves total foreground–background discriminability across the full physical regime, with anti-correlation maximizing the gain. Building on this, we propose textbfRIDE comprising: (i) a Task-Driven Retinex Decomposition module that learns segmentation-optimal factorizations end-to-end; (ii) a Discriminability Gap Attention mechanism that adaptively exploits where decomposition helps; and (iii) a Camouflage-Breaking Contrastive loss operating in reflectance feature space.
ExECG: An Explainable AI Framework for ECG models
arXiv:2605.19258v1 Announce Type: cross Abstract: Deep learning has enabled ECG diagnostic models with strong performance in tasks such as arrhythmia classification and abnormality detection. However,


