CVMar 29

PhaSR: Generalized Image Shadow Removal with Physically Aligned Priors

arXiv:2601.1747081.72 citationsh-index: 10Has Code
Predicted impact top 26% in CV · last 90 daysOriginality Incremental advance
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For computer vision tasks requiring robust shadow removal under diverse lighting, PhaSR addresses the bottleneck of misaligned physical priors with a novel method.

PhaSR introduces dual-level prior alignment for shadow removal, achieving competitive performance with lower complexity and generalization to multi-source ambient lighting where traditional methods fail.

Shadow removal under diverse lighting conditions requires disentangling illumination from intrinsic reflectance, a challenge compounded when physical priors are not properly aligned. We propose PhaSR (Physically Aligned Shadow Removal), addressing this through dual-level prior alignment to enable robust performance from single-light shadows to multi-source ambient lighting. First, Physically Aligned Normalization (PAN) performs closed-form illumination correction via Gray-world normalization, log-domain Retinex decomposition, and dynamic range recombination, suppressing chromatic bias. Second, Geometric-Semantic Rectification Attention (GSRA) extends differential attention to cross-modal alignment, harmonizing depth-derived geometry with DINO-v2 semantic embeddings to resolve modal conflicts under varying illumination. Experiments show competitive performance in shadow removal with lower complexity and generalization to ambient lighting where traditional methods fail under multi-source illumination. Our source code is available at https://github.com/ming053l/PhaSR.

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