Low-Light Image Enhancement Algorithm Integrating Retinex Illumination Estimation and Multi-Attention

被引:0
作者
Jiang, Yaping [1 ]
Guo, Shixian [1 ]
机构
[1] Zhengzhou University of Light Industry, School of Computer Science and Technology, Henan, Zhengzhou
基金
中国国家自然科学基金;
关键词
Degradation restoration; illumination estimation; multi-attention; multi-scale color correction; Retinex theory;
D O I
10.1109/ACCESS.2025.3583723
中图分类号
学科分类号
摘要
To address the challenges of poor visibility, blurred textures, and distortions in low-light conditions, this paper presents an image enhancement algorithm that integrates Retinex-based illumination estimation with multi-attention mechanisms. The algorithm introduces a perturbation component into the Retinex model to simulate image degradation, enabling more accurate illumination estimation. Additionally, multi-attention mechanisms are incorporated to strengthen the model's ability to capture both local and global features. An Illumination Estimation Module is proposed to predict illumination information of the image. A Degradation Restoration Module is designed to boost the visibility of the illumination map and eliminate artifacts. A Multi-Scale Color Correction Module is introduced for color correction on illumination feature maps. The preliminary enhanced image constructed by the Illumination Estimation Module and the restored map from Degradation Restoration Module are residually fused, and the color-corrected map from Multi-Scale Color Correction Module is integrated in the channel dimension with a scaling factor α , completing the enhancement of low-light images. Comprehensive quantitative and qualitative evaluations across seven benchmark datasets validate the proposed algorithm effectively removes artifacts, significantly improves image quality, and enhances visual perception. © 2013 IEEE.
引用
收藏
页码:112805 / 112817
页数:12
相关论文
共 38 条
[1]  
Xu X., Wang R., Lu J., Low-light image enhancement via structure modeling and guidance, Proc. IEEE/CVF Conf. Comput. Vis. Pattern Recognit. (CVPR), pp. 12345-12356, (2023)
[2]  
Wang Y., Chen Z., Guo X., Enhanced low-light image restoration via multi-scale retinex and deep neural networks, Signal Process., Image Commun., 84, (2020)
[3]  
Yan Q., Feng Y., Zhang C., Pang G., Shi K., Wu P., Dong W., Sun J., Zhang Y., HVI: A New Color Space for Low-light Image Enhancement, (2025)
[4]  
Noh F.A.B.A., Histogram equalization for image enhancement using multi-scale contrast manipulation, IEEE Trans. Image Process., 33, pp. 1112-1125, (2023)
[5]  
Murshed M.A., Ahmed K., Adaptive gamma correction for contrast enhancement in low-light image enhancement, Multimedia Tools Appl., 82, 15, pp. 20999-21020, (2023)
[6]  
Li Z., Liu F., Yang W., Peng S., Zhou J., A survey of convolutional neural networks: Analysis, applications, and prospects, IEEE Trans. Neural Netw. Learn. Syst., 33, 12, pp. 6999-7019, (2022)
[7]  
Lore K.G., Akintayo A., Sarkar S., LLNet: A deep autoencoder approach to natural low-light image enhancement, Pattern Recognit., 61, pp. 650-662, (2017)
[8]  
Agrawal D., Yadav A.C., Tyagi P.K., Low-light and hazy image enhancement using retinex theory and wavelet transform fusion, Multimedia Tools Appl., 83, 29, pp. 72519-72536, (2024)
[9]  
Chen W., Wang W., Yang W., Liu J., Deep retinex decomposition for low-light enhancement, Proc. Brit. Mach. Vis. Conf., pp. 155-161, (2018)
[10]  
Zhao X., Li S., Zhang J., An enhanced histogram equalization method for low-light image enhancement, IEEE Trans. Image Process., 32, pp. 2612-2624, (2023)