Underwater Image Enhancement with Cascaded Contrastive Learning
Yi Liu, Qiuping Jiang, Xinyi Wang, Ting Luo, Jingchun Zhou

TL;DR
This paper introduces CCL-Net, a two-stage deep learning framework using cascaded contrastive learning for underwater image enhancement, effectively addressing diverse degradations and improving image quality.
Contribution
The paper proposes a novel two-stage framework with cascaded contrastive learning to enhance underwater images more effectively than single-stage methods.
Findings
Outperforms state-of-the-art methods on multiple benchmarks.
Effectively improves color correction and haze removal.
Demonstrates the benefit of cascaded contrastive loss in progressive enhancement.
Abstract
Underwater image enhancement (UIE) is a highly challenging task due to the complexity of underwater environment and the diversity of underwater image degradation. Due to the application of deep learning, current UIE methods have made significant progress. Most of the existing deep learning-based UIE methods follow a single-stage network which cannot effectively address the diverse degradations simultaneously. In this paper, we propose to address this issue by designing a two-stage deep learning framework and taking advantage of cascaded contrastive learning to guide the network training of each stage. The proposed method is called CCL-Net in short. Specifically, the proposed CCL-Net involves two cascaded stages, i.e., a color correction stage tailored to the color deviation issue and a haze removal stage tailored to improve the visibility and contrast of underwater images. To guarantee…
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Taxonomy
TopicsImage Enhancement Techniques · Image and Signal Denoising Methods · Blind Source Separation Techniques
MethodsContrastive Learning
