Archive/Variational Retinex Model with Illumination Guidance and Fractional Derivative for Low-Light Enhancement
Variational Retinex Model with Illumination Guidance and Fractional Derivative for Low-Light Enhancement
Minhan Yang, Zinan Liu, Guoqi Zhan et al.
8 juillet 2026
en

Abstract

Low-light enhancement is a crucial task in computer vision; it can improve either the subjective experience of viewers or the usability of computer vision systems designed for normal-light images. In this paper, a variational Retinex model in the image domain is developed for low-light enhancement, which infuses classical/fractional differentiation of the input image into the illumination/reflectance component by means of a structure/texture-aware map (SAM/TAM). Firstly, the SAM (TAM) is generated by the inverse square of classical (fractional) differentiation of the input image. Secondly, the regularization term of illumination (reflectance) is defined by utilizing the SAM (TAM) as a weighted matrix, and an illumination guidance term is incorporated into the objective function. The illumination guidance term encourages the estimated illumination to encompass more structural information by penalizing deviation of illumination from the illumination pre-estimated by a dark channel prior to a guided image filtering. Finally, an alternative algorithm is employed to solve the minimization problem involved in the model. The performance of the proposed method is evaluated on three datasets for low-light enhancement and compared with eight state-of-the-art Retinex methods, qualitatively and quantitatively. Evaluation results show that the proposed method generally achieves higher performance in terms of low-light enhancement.

IPC Classification

G06

Keywords

variationalretinexmodelilluminationguidancefractionalderivativelow-lightenhancementphotonicscrucialtaskcomputervisionimproveeithersubjectiveexperienceviewersusabilitysystemsdesignednormal-lightimages
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