ICLR: Inter-Chrominance and Luminance Interaction for Natural Color Restoration in Low-Light Image Enhancement
By: Xin Xu , Hao Liu , Wei Liu and more
Potential Business Impact:
Makes dark pictures clear and colorful.
Low-Light Image Enhancement (LLIE) task aims at improving contrast while restoring details and textures for images captured in low-light conditions. HVI color space has made significant progress in this task by enabling precise decoupling of chrominance and luminance. However, for the interaction of chrominance and luminance branches, substantial distributional differences between the two branches prevalent in natural images limit complementary feature extraction, and luminance errors are propagated to chrominance channels through the nonlinear parameter. Furthermore, for interaction between different chrominance branches, images with large homogeneous-color regions usually exhibit weak correlation between chrominance branches due to concentrated distributions. Traditional pixel-wise losses exploit strong inter-branch correlations for co-optimization, causing gradient conflicts in weakly correlated regions. Therefore, we propose an Inter-Chrominance and Luminance Interaction (ICLR) framework including a Dual-stream Interaction Enhancement Module (DIEM) and a Covariance Correction Loss (CCL). The DIEM improves the extraction of complementary information from two dimensions, fusion and enhancement, respectively. The CCL utilizes luminance residual statistics to penalize chrominance errors and balances gradient conflicts by constraining chrominance branches covariance. Experimental results on multiple datasets show that the proposed ICLR framework outperforms state-of-the-art methods.
Similar Papers
After the Party: Navigating the Mapping From Color to Ambient Lighting
CV and Pattern Recognition
Fixes photos with many colored lights.
Towards Perfection: Building Inter-component Mutual Correction for Retinex-based Low-light Image Enhancement
CV and Pattern Recognition
Makes dark pictures clear by fixing hidden errors.
Evaluating Low-Light Image Enhancement Across Multiple Intensity Levels
CV and Pattern Recognition
Makes dark pictures clear in any light.