Visual Perception Model for Rapid and Adaptive Low-light Image Enhancement
Xiaoxiao Li, Xiaopeng Guo, Liye Mei, Mingyu Shang, Jie Gao, Maojing, Shu, and Xiang Wang

TL;DR
This paper introduces a rapid, adaptive low-light image enhancement framework based on a visual perception model that decomposes light into intensity and distribution, improving enhancement quality and efficiency.
Contribution
It proposes a novel visual perception model and estimation scheme that accurately simulate human vision, enabling faster and more adaptive low-light image enhancement.
Findings
Outperforms state-of-the-art methods in visual quality
Achieves higher computational efficiency
Provides more accurate illumination and reflectance estimation
Abstract
Low-light image enhancement is a promising solution to tackle the problem of insufficient sensitivity of human vision system (HVS) to perceive information in low light environments. Previous Retinex-based works always accomplish enhancement task by estimating light intensity. Unfortunately, single light intensity modelling is hard to accurately simulate visual perception information, leading to the problems of imbalanced visual photosensitivity and weak adaptivity. To solve these problems, we explore the precise relationship between light source and visual perception and then propose the visual perception (VP) model to acquire a precise mathematical description of visual perception. The core of VP model is to decompose the light source into light intensity and light spatial distribution to describe the perception process of HVS, offering refinement estimation of illumination and…
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Taxonomy
TopicsImage Enhancement Techniques · Advanced Image Fusion Techniques · Image and Video Quality Assessment
