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Autori principali: Zhu, Qi, Zhang, Jingyi, Zheng, Naishan, Yu, Wei, Zhang, Jinghao, Ji, Deyi, Zhao, Feng
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2512.05492
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author Zhu, Qi
Zhang, Jingyi
Zheng, Naishan
Yu, Wei
Zhang, Jinghao
Ji, Deyi
Zhao, Feng
author_facet Zhu, Qi
Zhang, Jingyi
Zheng, Naishan
Yu, Wei
Zhang, Jinghao
Ji, Deyi
Zhao, Feng
contents Underwater video pairs are fairly difficult to obtain due to the complex underwater imaging. In this case, most existing video underwater enhancement methods are performed by directly applying the single-image enhancement model frame by frame, but a natural issue is lacking temporal consistency. To relieve the problem, we rethink the temporal manifold inherent in natural videos and observe a temporal consistency prior in dynamic scenes from the local temporal frequency perspective. Building upon the specific prior and no paired-data condition, we propose an implicit representation manner for enhanced video signals, which is conducted in the wavelet-based temporal consistency field, WaterWave. Specifically, under the constraints of the prior, we progressively filter and attenuate the inconsistent components while preserving motion details and scenes, achieving a natural-flowing video. Furthermore, to represent temporal frequency bands more accurately, an underwater flow correction module is designed to rectify estimated flows considering the transmission in underwater scenes. Extensive experiments demonstrate that WaterWave significantly enhances the quality of videos generated using single-image underwater enhancements. Additionally, our method demonstrates high potential in downstream underwater tracking tasks, such as UOSTrack and MAT, outperforming the original video by a large margin, i.e., 19.7% and 9.7% on precise respectively.
format Preprint
id arxiv_https___arxiv_org_abs_2512_05492
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle WaterWave: Bridging Underwater Image Enhancement into Video Streams via Wavelet-based Temporal Consistency Field
Zhu, Qi
Zhang, Jingyi
Zheng, Naishan
Yu, Wei
Zhang, Jinghao
Ji, Deyi
Zhao, Feng
Computer Vision and Pattern Recognition
Underwater video pairs are fairly difficult to obtain due to the complex underwater imaging. In this case, most existing video underwater enhancement methods are performed by directly applying the single-image enhancement model frame by frame, but a natural issue is lacking temporal consistency. To relieve the problem, we rethink the temporal manifold inherent in natural videos and observe a temporal consistency prior in dynamic scenes from the local temporal frequency perspective. Building upon the specific prior and no paired-data condition, we propose an implicit representation manner for enhanced video signals, which is conducted in the wavelet-based temporal consistency field, WaterWave. Specifically, under the constraints of the prior, we progressively filter and attenuate the inconsistent components while preserving motion details and scenes, achieving a natural-flowing video. Furthermore, to represent temporal frequency bands more accurately, an underwater flow correction module is designed to rectify estimated flows considering the transmission in underwater scenes. Extensive experiments demonstrate that WaterWave significantly enhances the quality of videos generated using single-image underwater enhancements. Additionally, our method demonstrates high potential in downstream underwater tracking tasks, such as UOSTrack and MAT, outperforming the original video by a large margin, i.e., 19.7% and 9.7% on precise respectively.
title WaterWave: Bridging Underwater Image Enhancement into Video Streams via Wavelet-based Temporal Consistency Field
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2512.05492