Simultaneous Enhancement and Noise Suppression under Complex Illumination Conditions
By: Jing Tao , You Li , Banglei Guan and more
Potential Business Impact:
Fixes blurry, noisy pictures in bad light.
Under challenging light conditions, captured images often suffer from various degradations, leading to a decline in the performance of vision-based applications. Although numerous methods have been proposed to enhance image quality, they either significantly amplify inherent noise or are only effective under specific illumination conditions. To address these issues, we propose a novel framework for simultaneous enhancement and noise suppression under complex illumination conditions. Firstly, a gradient-domain weighted guided filter (GDWGIF) is employed to accurately estimate illumination and improve image quality. Next, the Retinex model is applied to decompose the captured image into separate illumination and reflection layers. These layers undergo parallel processing, with the illumination layer being corrected to optimize lighting conditions and the reflection layer enhanced to improve image quality. Finally, the dynamic range of the image is optimized through multi-exposure fusion and a linear stretching strategy. The proposed method is evaluated on real-world datasets obtained from practical applications. Experimental results demonstrate that our proposed method achieves better performance compared to state-of-the-art methods in both contrast enhancement and noise suppression.
Similar Papers
Evaluating Low-Light Image Enhancement Across Multiple Intensity Levels
CV and Pattern Recognition
Makes dark pictures clear in any light.
2-Shots in the Dark: Low-Light Denoising with Minimal Data Acquisition
CV and Pattern Recognition
Makes dark photos clear with just one picture.
Physics-Guided Rectified Flow for Low-light RAW Image Enhancement
Image and Video Processing
Improves dark photos by fixing camera noise.