Underwater image restoration attracts significant attention due to its importance in unveiling the underwater world. This paper elaborates on a novel method that achieves state-of-the-art results for underwater image restoration based on the unsupervised image-to-image translation framework. We design our method by leveraging from contrastive learning and generative adversarial networks to maximize mutual information between raw and restored images. Additionally, we release a large-scale real underwater image dataset to support both paired and unpaired training modules. Extensive experiments with comparisons to recent approaches further demonstrate the superiority of our proposed method.
翻译:水下图像的恢复因其在揭开水下世界方面的重要性而吸引了人们的极大关注。本文件阐述了一种创新方法,根据未经监督的图像到图像翻译框架,在水下图像的恢复方面实现最新成果。我们从对比式学习和基因对抗网络中利用我们的方法设计,以尽量扩大原始图像和已恢复图像之间的相互信息。此外,我们发布了一个大型实际的水下图像数据集,以支持配对和非配对式培训模块。与最近的做法进行比较的广泛实验进一步显示了我们拟议方法的优越性。