Litcius/Paper detail

Invariant descriptors for intrinsic reflectance optimization

Anil S. Baslamisli, Theo Gevers

2021Journal of the Optical Society of America A16 citationsDOIOpen Access PDF

Abstract

Intrinsic image decomposition aims to factorize an image into albedo (reflectance) and shading (illumination) sub-components. Being ill posed and under-constrained, it is a very challenging computer vision problem. There are infinite pairs of reflectance and shading images that can reconstruct the same input. To address the problem, Intrinsic Images in the Wild by Bell et al. provides an optimization framework based on a dense conditional random field (CRF) formulation that considers long-range material relations. We improve upon their model by introducing illumination invariant image descriptors: color ratios. The color ratios and the intrinsic reflectance are both invariant to illumination and thus are highly correlated. Through detailed experiments, we provide ways to inject the color ratios into the dense CRF optimization. Our approach is physics based and learning free and leads to more accurate and robust reflectance decompositions.

Topics & Concepts

ReflectivityInvariant (physics)ShadingColor constancyArtificial intelligenceComputer visionComputer scienceConditional random fieldMathematicsOpticsImage (mathematics)PhysicsComputer graphics (images)Mathematical physicsColor Science and ApplicationsImage Enhancement TechniquesComputer Graphics and Visualization Techniques