Unrolled Decomposed Unpaired Learning for Controllable Low-Light Video Enhancement
Lingyu Zhu, Wenhan Yang, Baoliang Chen, Hanwei Zhu, Zhangkai Ni, Qi, Mao, Shiqi Wang

TL;DR
This paper introduces UDU-Net, a novel unpaired learning framework that decomposes spatial and temporal factors for effective low-light video enhancement without requiring paired training data.
Contribution
The paper proposes an unrolled optimization-based network that decomposes and iteratively updates spatial and temporal factors, incorporating human perception feedback for improved low-light video enhancement.
Findings
Outperforms state-of-the-art in illumination and noise suppression
Achieves superior temporal consistency in videos
Effective in both indoor and outdoor scenes
Abstract
Obtaining pairs of low/normal-light videos, with motions, is more challenging than still images, which raises technical issues and poses the technical route of unpaired learning as a critical role. This paper makes endeavors in the direction of learning for low-light video enhancement without using paired ground truth. Compared to low-light image enhancement, enhancing low-light videos is more difficult due to the intertwined effects of noise, exposure, and contrast in the spatial domain, jointly with the need for temporal coherence. To address the above challenge, we propose the Unrolled Decomposed Unpaired Network (UDU-Net) for enhancing low-light videos by unrolling the optimization functions into a deep network to decompose the signal into spatial and temporal-related factors, which are updated iteratively. Firstly, we formulate low-light video enhancement as a Maximum A Posteriori…
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Taxonomy
TopicsImage Enhancement Techniques · Advanced Vision and Imaging · Advanced Image Processing Techniques
