Toward Better Than Pseudo-Reference in Underwater Image Enhancement

瓶颈 图像质量 人工智能 计算机视觉 计算机科学 图像增强 水下 图像处理 集合(抽象数据类型) 编码(集合论) 图像复原 质量(理念) 图像(数学) 迭代重建 噪音(视频) 地面采样距离 信噪比(成像) 数据集 人工神经网络 水准点(测量) 源代码 稳健性(进化) 测距 可视化 实时计算 基本事实 模式识别(心理学) 图像分割
作者
Yi Liu,Qiuping Jiang,Xingbo Li,Ting Luo,Wenqi Ren
出处
期刊:IEEE transactions on image processing [Institute of Electrical and Electronics Engineers]
卷期号:34: 6168-6179 被引量:3
标识
DOI:10.1109/tip.2025.3611138
摘要

Since degraded underwater images are not always accompanied with distortion-free counterparts in real-world situations, existing underwater image enhancement (UIE) methods are mostly learned on a paired set consisting of raw underwater images and their corresponding pseudo-reference labels. Although the existing UIE datasets manually select the best model-generated results as pseudo-References, such pseudo-reference labels do not always exhibit perfect visual quality. Therefore, it would be interesting to investigate whether it is possible to break through the performance bottleneck of UIE networks trained with imperfect pseudo-references. Motivated by these facts, this paper focuses on innovating more advanced loss functions rather than designing more complex network architectures. Specifically, a plug-and-play hybrid Performance SurPassing Loss (PSPL), consisting of a Quality Score Comparison Loss (QSCL) and a scene Depth-aware Unpaired Contrastive Loss (DUCL), is formulated to guide the training of UIE network. Functionally, QSCL aims to guide the UIE network to generate enhanced results with better visual quality than pseudo-references by constructing image quality score comparison losses from both image-level and region-level. Nevertheless, only using QSCL cannot guarantee obtaining desired results for those severely degraded distant regions. Therefore, we also design a tailored DUCL to handle this challenging issue from the scene depth perspective, i.e., DUCL encourages the distant regions of the enhanced results to be closer to the high-quality nearby regions (pull) and far away from the low-quality distant regions (push) of the pseudo-references. Extensive experimental results demonstrate the advantage of using PSPL over the state-of-the-arts even with an extremely simple and lightweight UIE network. The source code will be released at https://github.com/lewis081/PSPL.
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