Litcius/Paper detail

EFINet: Restoration for Low-Light Images via Enhancement-Fusion Iterative Network

Chunxiao Liu, Fanding Wu, Xun Wang

2022IEEE Transactions on Circuits and Systems for Video Technology63 citationsDOI

Abstract

The lighting environment in the real world is so complex that most existing low-light image restoration methods suffer from color cast and local over-exposure. In order to solve these problems, this paper proposes the enhancement-fusion iterative network (EFINet) for low-light image enhancement. Within each iteration of EFINet, a stretching coefficient estimation network based enhancement module is designed to adjust the input image pixel-wisely to obtain the initial enhancement result with the estimated coefficient maps. Then, an encoder-decoder based fusion network is devised to extract the deep features and combine the well-exposed local areas in both the input image and the initially enhanced image, to obtain a visually pleasing, high-quality image enhancement result. The coefficient estimation network and the fusion network are weight shared among all iterations. What’s more, most of the low-light image datasets are generated through illumination reduction in a global way. To better simulate the diverse illumination distribution in the real world, we put forward a new low-light image synthesis method to produce the low-light images with non-uniform illumination for the network training purpose. After conducting extensive experiments on both synthetic and real-world low-light images, the results verify the superiority of our algorithm over the state-of-the-art (SOTA) methods, especially in balancing the brightness difference and preventing over-enhancement.

Topics & Concepts

Artificial intelligenceComputer scienceImage fusionComputer visionPixelBrightnessImage enhancementImage restorationImage (mathematics)Image qualityImage processingOpticsPhysicsImage Enhancement TechniquesAdvanced Image Fusion TechniquesAdvanced Image Processing Techniques