Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

CLE Diffusion: Controllable Light Enhancement Diffusion Model

About

Low light enhancement has gained increasing importance with the rapid development of visual creation and editing. However, most existing enhancement algorithms are designed to homogeneously increase the brightness of images to a pre-defined extent, limiting the user experience. To address this issue, we propose Controllable Light Enhancement Diffusion Model, dubbed CLE Diffusion, a novel diffusion framework to provide users with rich controllability. Built with a conditional diffusion model, we introduce an illumination embedding to let users control their desired brightness level. Additionally, we incorporate the Segment-Anything Model (SAM) to enable user-friendly region controllability, where users can click on objects to specify the regions they wish to enhance. Extensive experiments demonstrate that CLE Diffusion achieves competitive performance regarding quantitative metrics, qualitative results, and versatile controllability. Project page: https://yuyangyin.github.io/CLEDiffusion/

Yuyang Yin, Dejia Xu, Chuangchuang Tan, Ping Liu, Yao Zhao, Yunchao Wei• 2023

Related benchmarks

TaskDatasetResultRank
Low-light Image EnhancementVE-LOL-L v1 (test)
FID79.859
28
Semantic segmentationEndoVis 17
Dice82.44
18
Low-light Image EnhancementEndoVis18
PSNR29.66
14
Semantic segmentationReal-world
Dice0.5662
14
Low-light Image EnhancementEndoVis 17
FPS0.37
14
Low-light Image EnhancementVV
PI3.47
8
Low-light Image EnhancementDICM
PI3.361
8
Showing 7 of 7 rows

Other info

Follow for update