Authors
Mading Li, Jiaying Liu, Wenhan Yang, Xiaoyan Sun, Zongming Guo
Publication date
2018/6
Journal
IEEE Transactions on Image Processing
Volume
27
Issue
6
Pages
2828-2841
Publisher
IEEE
Description
Low-light image enhancement methods based on classic Retinex model attempt to manipulate the estimated illumination and to project it back to the corresponding reflectance. However, the model does not consider the noise, which inevitably exists in images captured in low-light conditions. In this paper, we propose the robust Retinex model, which additionally considers a noise map compared with the conventional Retinex model, to improve the performance of enhancing low-light images accompanied by intensive noise. Based on the robust Retinex model, we present an optimization function that includes novel regularization terms for the illumination and reflectance. Specifically, we use ℓ 1 norm to constrain the piece-wise smoothness of the illumination, adopt a fidelity term for gradients of the reflectance to reveal the structure details in low-light images, and make the first attempt to estimate a noise map out of …
Total citations
2018201920202021202220232024115197152216252172
Scholar articles
M Li, J Liu, W Yang, X Sun, Z Guo - IEEE Transactions on Image Processing, 2018