CVIVMar 16, 2025

DPF-Net: Physical Imaging Model Embedded Data-Driven Underwater Image Enhancement

arXiv:2503.12470v17 citationsh-index: 2Has CodeIsprs Journal of Photogrammetry and Remote Sensing
Originality Incremental advance
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This work addresses image quality issues for underwater imaging applications, representing an incremental improvement by integrating physical parameters into a data-driven framework.

The paper tackles underwater image degradation by introducing DPF-Net, a two-stage network that combines physical imaging models with data-driven methods, achieving state-of-the-art performance on multiple test sets.

Due to the complex interplay of light absorption and scattering in the underwater environment, underwater images experience significant degradation. This research presents a two-stage underwater image enhancement network called the Data-Driven and Physical Parameters Fusion Network (DPF-Net), which harnesses the robustness of physical imaging models alongside the generality and efficiency of data-driven methods. We first train a physical parameter estimate module using synthetic datasets to guarantee the trustworthiness of the physical parameters, rather than solely learning the fitting relationship between raw and reference images by the application of the imaging equation, as is common in prior studies. This module is subsequently trained in conjunction with an enhancement network, where the estimated physical parameters are integrated into a data-driven model within the embedding space. To maintain the uniformity of the restoration process amid underwater imaging degradation, we propose a physics-based degradation consistency loss. Additionally, we suggest an innovative weak reference loss term utilizing the entire dataset, which alleviates our model's reliance on the quality of individual reference images. Our proposed DPF-Net demonstrates superior performance compared to other benchmark methods across multiple test sets, achieving state-of-the-art results. The source code and pre-trained models are available on the project home page: https://github.com/OUCVisionGroup/DPF-Net.

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