CVDec 23, 2025

JDPNet: A Network Based on Joint Degradation Processing for Underwater Image Enhancement

arXiv:2512.20213v11 citationsh-index: 4
Originality Incremental advance
AI Analysis

This addresses image quality issues for underwater imaging applications, but it is incremental as it builds on existing network-based enhancement methods.

The paper tackles the challenge of enhancing underwater images degraded by nonlinear coupled effects, proposing JDPNet which achieves state-of-the-art performance with a better tradeoff between performance, parameter size, and computational cost on multiple datasets.

Given the complexity of underwater environments and the variability of water as a medium, underwater images are inevitably subject to various types of degradation. The degradations present nonlinear coupling rather than simple superposition, which renders the effective processing of such coupled degradations particularly challenging. Most existing methods focus on designing specific branches, modules, or strategies for specific degradations, with little attention paid to the potential information embedded in their coupling. Consequently, they struggle to effectively capture and process the nonlinear interactions of multiple degradations from a bottom-up perspective. To address this issue, we propose JDPNet, a joint degradation processing network, that mines and unifies the potential information inherent in coupled degradations within a unified framework. Specifically, we introduce a joint feature-mining module, along with a probabilistic bootstrap distribution strategy, to facilitate effective mining and unified adjustment of coupled degradation features. Furthermore, to balance color, clarity, and contrast, we design a novel AquaBalanceLoss to guide the network in learning from multiple coupled degradation losses. Experiments on six publicly available underwater datasets, as well as two new datasets constructed in this study, show that JDPNet exhibits state-of-the-art performance while offering a better tradeoff between performance, parameter size, and computational cost.

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