Perception-Inspired Color Space Design for Photo White Balance Editing
By: Yang Cheng , Ziteng Cui , Lin Gu and more
White balance (WB) is a key step in the image signal processor (ISP) pipeline that mitigates color casts caused by varying illumination and restores the scene's true colors. Currently, sRGB-based WB editing for post-ISP WB correction is widely used to address color constancy failures in the ISP pipeline when the original camera RAW is unavailable. However, additive color models (e.g., sRGB) are inherently limited by fixed nonlinear transformations and entangled color channels, which often impede their generalization to complex lighting conditions. To address these challenges, we propose a novel framework for WB correction that leverages a perception-inspired Learnable HSI (LHSI) color space. Built upon a cylindrical color model that naturally separates luminance from chromatic components, our framework further introduces dedicated parameters to enhance this disentanglement and learnable mapping to adaptively refine the flexibility. Moreover, a new Mamba-based network is introduced, which is tailored to the characteristics of the proposed LHSI color space. Experimental results on benchmark datasets demonstrate the superiority of our method, highlighting the potential of perception-inspired color space design in computational photography. The source code is available at https://github.com/YangCheng58/WB_Color_Space.
Similar Papers
A Perceptually Inspired Variational Framework for Color Enhancement
CV and Pattern Recognition
Improves picture colors to look more natural.
Color Me Correctly: Bridging Perceptual Color Spaces and Text Embeddings for Improved Diffusion Generation
CV and Pattern Recognition
Makes AI draw exact colors from descriptions.
Leveraging Multispectral Sensors for Color Correction in Mobile Cameras
CV and Pattern Recognition
Makes photos' colors look real and correct.