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3 months ago

Global Structure-Aware Diffusion Process for Low-Light Image Enhancement

Jinhui Hou Zhiyu Zhu Junhui Hou Hui Liu Huanqiang Zeng Hui Yuan

Global Structure-Aware Diffusion Process for Low-Light Image Enhancement

Abstract

This paper studies a diffusion-based framework to address the low-light image enhancement problem. To harness the capabilities of diffusion models, we delve into this intricate process and advocate for the regularization of its inherent ODE-trajectory. To be specific, inspired by the recent research that low curvature ODE-trajectory results in a stable and effective diffusion process, we formulate a curvature regularization term anchored in the intrinsic non-local structures of image data, i.e., global structure-aware regularization, which gradually facilitates the preservation of complicated details and the augmentation of contrast during the diffusion process. This incorporation mitigates the adverse effects of noise and artifacts resulting from the diffusion process, leading to a more precise and flexible enhancement. To additionally promote learning in challenging regions, we introduce an uncertainty-guided regularization technique, which wisely relaxes constraints on the most extreme regions of the image. Experimental evaluations reveal that the proposed diffusion-based framework, complemented by rank-informed regularization, attains distinguished performance in low-light enhancement. The outcomes indicate substantial advancements in image quality, noise suppression, and contrast amplification in comparison with state-of-the-art methods. We believe this innovative approach will stimulate further exploration and advancement in low-light image processing, with potential implications for other applications of diffusion models. The code is publicly available at https://github.com/jinnh/GSAD.

Code Repositories

jinnh/GSAD
Official
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
low-light-image-enhancement-on-lolGlobalDiff
Average PSNR: 27.83
LPIPS: 0.091
SSIM: 0.877
low-light-image-enhancement-on-lolv2GlobalDiff
Average PSNR: 28.82
LPIPS: 0.095
SSIM: 0.895
low-light-image-enhancement-on-lolv2-1GlobalDiff
Average PSNR: 28.67
LPIPS: 0.047
SSIM: 0.944

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Global Structure-Aware Diffusion Process for Low-Light Image Enhancement | Papers | HyperAI