Low Light Image
Low-light image enhancement (LLIE) aims to improve the quality of images taken in dimly lit conditions, addressing issues like low brightness, noise, and color distortion. Current research focuses on developing efficient and effective deep learning models, including those based on transformers, diffusion models, and convolutional neural networks, often incorporating techniques like Retinex theory and frequency-domain processing to achieve better results. These advancements are significant for various applications, such as improving the performance of computer vision tasks (object detection, classification) in low-light environments and enhancing the capabilities of mobile phone cameras and other imaging devices. A key challenge remains aligning enhancements for optimal human perception with the needs of machine vision algorithms.
Papers
ClassLIE: Structure- and Illumination-Adaptive Classification for Low-Light Image Enhancement
Zixiang Wei, Yiting Wang, Lichao Sun, Athanasios V. Vasilakos, Lin Wang
ReCo-Diff: Explore Retinex-Based Condition Strategy in Diffusion Model for Low-Light Image Enhancement
Yuhui Wu, Guoqing Wang, Zhiwen Wang, Yang Yang, Tianyu Li, Peng Wang, Chongyi Li, Heng Tao Shen