Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

Retinex-inspired Unrolling with Cooperative Prior Architecture Search for Low-light Image Enhancement

About

Low-light image enhancement plays very important roles in low-level vision field. Recent works have built a large variety of deep learning models to address this task. However, these approaches mostly rely on significant architecture engineering and suffer from high computational burden. In this paper, we propose a new method, named Retinex-inspired Unrolling with Architecture Search (RUAS), to construct lightweight yet effective enhancement network for low-light images in real-world scenario. Specifically, building upon Retinex rule, RUAS first establishes models to characterize the intrinsic underexposed structure of low-light images and unroll their optimization processes to construct our holistic propagation structure. Then by designing a cooperative reference-free learning strategy to discover low-light prior architectures from a compact search space, RUAS is able to obtain a top-performing image enhancement network, which is with fast speed and requires few computational resources. Extensive experiments verify the superiority of our RUAS framework against recently proposed state-of-the-art methods.

Risheng Liu, Long Ma, Jiaao Zhang, Xin Fan, Zhongxuan Luo• 2020

Related benchmarks

TaskDatasetResultRank
Low-light Image EnhancementLOL
PSNR16.44
162
Low-light Image EnhancementLOL v1
PSNR18.23
135
Low-light Image EnhancementLOL real v2 (test)
PSNR19.061
122
Low-light Image EnhancementLOL real v2
PSNR18.37
122
Low-light Image EnhancementLOL syn v2
PSNR16.55
118
Low-light Image EnhancementLOL (test)
PSNR18.23
97
Low-light Image EnhancementLOL v1
PSNR16.405
84
Low-light Image EnhancementLOL real v2
PSNR18.37
81
Novel View SynthesisRe10K (test)
PSNR11.5
79
Low-light Image EnhancementLOL Syn v2 (test)
PSNR16.584
78
Showing 10 of 94 rows
...

Other info

Follow for update