After the Party: Navigating the Mapping From Color to Ambient Lighting
By: Florin-Alexandru Vasluianu , Tim Seizinger , Zongwei Wu and more
Potential Business Impact:
Fixes photos in colored lights to look normal
Illumination in practical scenarios is inherently complex, involving colored light sources, occlusions, and diverse material interactions that produce intricate reflectance and shading effects. However, existing methods often oversimplify this challenge by assuming a single light source or uniform, white-balanced lighting, leaving many of these complexities unaddressed. In this paper, we introduce CL3AN, the first large-scale, high-resolution dataset of its kind designed to facilitate the restoration of images captured under multiple Colored Light sources to their Ambient-Normalized counterparts. Through benchmarking, we find that leading approaches often produce artifacts, such as illumination inconsistencies, texture leakage, and color distortion, primarily due to their limited ability to precisely disentangle illumination from reflectance. Motivated by this insight, we achieve such a desired decomposition through a novel learning framework that leverages explicit chromaticity-luminance components guidance, drawing inspiration from the principles of the Retinex model. Extensive evaluations on existing benchmarks and our dataset demonstrate the effectiveness of our approach, showcasing enhanced robustness under non-homogeneous color lighting and material-specific reflectance variations, all while maintaining a highly competitive computational cost. The benchmark, codes, and models are available at www.github.com/fvasluianu97/RLN2.
Similar Papers
After the Party: Navigating the Mapping From Color to Ambient Lighting
CV and Pattern Recognition
Fixes photos with many colored lights.
Taming the Light: Illumination-Invariant Semantic 3DGS-SLAM
CV and Pattern Recognition
Lets robots see clearly in any light.
UAVLight: A Benchmark for Illumination-Robust 3D Reconstruction in Unmanned Aerial Vehicle (UAV) Scenes
CV and Pattern Recognition
Fixes 3D pictures made from different lights.