AI RESEARCH
Revisiting Shadow Detection from a Vision-Language Perspective
arXiv CS.CV
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ArXi:2605.11771v1 Announce Type: new Shadow detection is commonly formulated as a vision-driven dense prediction problem, where models rely primarily on pixel-wise visual supervision to distinguish shadows from non-shadow regions. However, this formulation can become unreliable in visually ambiguous cases, where similar dark regions may correspond either to cast shadows or to intrinsically dark surfaces, making visual evidence alone insufficient for establishing a stable decision rule.