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An efficient recurrent adversarial framework for unsupervised real-time video enhancement

An efficient recurrent adversarial framework for unsupervised real-time video enhancement
An efficient recurrent adversarial framework for unsupervised real-time video enhancement
Video enhancement is a challenging problem, more than that of stills, mainly due to high computational cost, larger data volumes and the difficulty of achieving consistency in the spatio-temporal domain. In practice, these challenges are often coupled with the lack of example pairs, which inhibits the application of supervised learning strategies. To address these challenges, we propose an efficient adversarial video enhancement framework that learns directly from unpaired video examples. In particular, our framework introduces new recurrent cells that consist of interleaved local and global modules for implicit integration of spatial and temporal information. The proposed design allows our recurrent cells to efficiently propagate spatio-temporal information across frames and reduces the need for high complexity networks. Our setting enables learning from unpaired videos in a cyclic adversarial manner, where the proposed recurrent units are employed in all architectures. Efficient training is accomplished by introducing one single discriminator that learns the joint distribution of source and target domain simultaneously. The enhancement results demonstrate clear superiority of the proposed video enhancer over the state-of-the-art methods, in all terms of visual quality, quantitative metrics, and inference speed. Notably, our video enhancer is capable of enhancing over 35 frames per second of FullHD video (1080x1920).
0920-5691
1042-1059
Fuoli, Dario
0f4b3991-0e64-4cad-8eed-1af5111fdc4b
Huang, Zhiwu
84f477cd-9097-44dd-a33e-ff71f253d36b
Paudel, Danda Pani
92cefdf8-92e7-43ff-b952-6290a9844be0
Van Gool, Luc
a01cf48f-ee39-4ded-a74f-c00493b4bba6
Timofte, Radu
848d4025-8613-43f3-92b7-4b4a2b29711a
Fuoli, Dario
0f4b3991-0e64-4cad-8eed-1af5111fdc4b
Huang, Zhiwu
84f477cd-9097-44dd-a33e-ff71f253d36b
Paudel, Danda Pani
92cefdf8-92e7-43ff-b952-6290a9844be0
Van Gool, Luc
a01cf48f-ee39-4ded-a74f-c00493b4bba6
Timofte, Radu
848d4025-8613-43f3-92b7-4b4a2b29711a

Fuoli, Dario, Huang, Zhiwu, Paudel, Danda Pani, Van Gool, Luc and Timofte, Radu (2023) An efficient recurrent adversarial framework for unsupervised real-time video enhancement. International Journal of Computer Vision, 131, 1042-1059. (doi:10.1007/s11263-022-01735-0).

Record type: Article

Abstract

Video enhancement is a challenging problem, more than that of stills, mainly due to high computational cost, larger data volumes and the difficulty of achieving consistency in the spatio-temporal domain. In practice, these challenges are often coupled with the lack of example pairs, which inhibits the application of supervised learning strategies. To address these challenges, we propose an efficient adversarial video enhancement framework that learns directly from unpaired video examples. In particular, our framework introduces new recurrent cells that consist of interleaved local and global modules for implicit integration of spatial and temporal information. The proposed design allows our recurrent cells to efficiently propagate spatio-temporal information across frames and reduces the need for high complexity networks. Our setting enables learning from unpaired videos in a cyclic adversarial manner, where the proposed recurrent units are employed in all architectures. Efficient training is accomplished by introducing one single discriminator that learns the joint distribution of source and target domain simultaneously. The enhancement results demonstrate clear superiority of the proposed video enhancer over the state-of-the-art methods, in all terms of visual quality, quantitative metrics, and inference speed. Notably, our video enhancer is capable of enhancing over 35 frames per second of FullHD video (1080x1920).

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More information

Accepted/In Press date: 18 November 2022
Published date: 8 January 2023

Identifiers

Local EPrints ID: 501645
URI: http://eprints.soton.ac.uk/id/eprint/501645
ISSN: 0920-5691
PURE UUID: 809b3177-0ffe-480e-9824-ac004c05804f
ORCID for Zhiwu Huang: ORCID iD orcid.org/0000-0002-7385-079X

Catalogue record

Date deposited: 04 Jun 2025 17:12
Last modified: 05 Jun 2025 02:08

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Contributors

Author: Dario Fuoli
Author: Zhiwu Huang ORCID iD
Author: Danda Pani Paudel
Author: Luc Van Gool
Author: Radu Timofte

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