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Main Authors: Ju, Mingye, Chen, Chuheng, Guo, Charles A., Pan, Jinshan, Tang, Jinhui, Tao, Dacheng
Format: Preprint
Published: 2022
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Online Access:https://arxiv.org/abs/2211.11571
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author Ju, Mingye
Chen, Chuheng
Guo, Charles A.
Pan, Jinshan
Tang, Jinhui
Tao, Dacheng
author_facet Ju, Mingye
Chen, Chuheng
Guo, Charles A.
Pan, Jinshan
Tang, Jinhui
Tao, Dacheng
contents How to effectively explore semantic feature is vital for low-light image enhancement (LLE). Existing methods usually utilize the semantic feature that is only drawn from the output produced by high-level semantic segmentation (SS) network. However, if the output is not accurately estimated, it would affect the high-level semantic feature (HSF) extraction, which accordingly interferes with LLE. To this end, we develop a simple and effective semantic-aware LLE network (SSLEN) composed of a LLE main-network (LLEmN) and a SS auxiliary-network (SSaN). In SLLEN, LLEmN integrates the random intermediate embedding feature (IEF), i.e., the information extracted from the intermediate layer of SSaN, together with the HSF into a unified framework for better LLE. SSaN is designed to act as a SS role to provide HSF and IEF. Moreover, thanks to a shared encoder between LLEmN and SSaN, we further propose an alternating training mechanism to facilitate the collaboration between them. Unlike currently available approaches, the proposed SLLEN is able to fully lever the semantic information, e.g., IEF, HSF, and SS dataset, to assist LLE, thereby leading to a more promising enhancement performance. Comparisons between the proposed SLLEN and other state-of-the-art techniques demonstrate the superiority of SLLEN with respect to LLE quality over all the comparable alternatives.
format Preprint
id arxiv_https___arxiv_org_abs_2211_11571
institution arXiv
publishDate 2022
record_format arxiv
spellingShingle SLLEN: Semantic-aware Low-light Image Enhancement Network
Ju, Mingye
Chen, Chuheng
Guo, Charles A.
Pan, Jinshan
Tang, Jinhui
Tao, Dacheng
Computer Vision and Pattern Recognition
How to effectively explore semantic feature is vital for low-light image enhancement (LLE). Existing methods usually utilize the semantic feature that is only drawn from the output produced by high-level semantic segmentation (SS) network. However, if the output is not accurately estimated, it would affect the high-level semantic feature (HSF) extraction, which accordingly interferes with LLE. To this end, we develop a simple and effective semantic-aware LLE network (SSLEN) composed of a LLE main-network (LLEmN) and a SS auxiliary-network (SSaN). In SLLEN, LLEmN integrates the random intermediate embedding feature (IEF), i.e., the information extracted from the intermediate layer of SSaN, together with the HSF into a unified framework for better LLE. SSaN is designed to act as a SS role to provide HSF and IEF. Moreover, thanks to a shared encoder between LLEmN and SSaN, we further propose an alternating training mechanism to facilitate the collaboration between them. Unlike currently available approaches, the proposed SLLEN is able to fully lever the semantic information, e.g., IEF, HSF, and SS dataset, to assist LLE, thereby leading to a more promising enhancement performance. Comparisons between the proposed SLLEN and other state-of-the-art techniques demonstrate the superiority of SLLEN with respect to LLE quality over all the comparable alternatives.
title SLLEN: Semantic-aware Low-light Image Enhancement Network
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2211.11571