Li Chongyi, Guo Chunle, Ren Wenqi, Cong Runmin, Hou Junhui, Kwong Sam, Tao Dacheng
IEEE Trans Image Process. 2019 Nov 28. doi: 10.1109/TIP.2019.2955241.
Underwater image enhancement has been attracting much attention due to its significance in marine engineering and aquatic robotics. Numerous underwater image enhancement algorithms have been proposed in the last few years. However, these algorithms are mainly evaluated using either synthetic datasets or few selected real-world images. It is thus unclear how these algorithms would perform on images acquired in the wild and how we could gauge the progress in the field. To bridge this gap, we present the first comprehensive perceptual study and analysis of underwater image enhancement using large-scale real-world images. In this paper, we construct an Underwater Image Enhancement Benchmark (UIEB) including 950 real-world underwater images, 890 of which have the corresponding reference images. We treat the rest 60 underwater images which cannot obtain satisfactory reference images as challenging data. Using this dataset, we conduct a comprehensive study of the state-of-the-art underwater image enhancement algorithms qualitatively and quantitatively. In addition, we propose an underwater image enhancement network (called Water-Net) trained on this benchmark as a baseline, which indicates the generalization of the proposed UIEB for training Convolutional Neural Networks (CNNs). The benchmark evaluations and the proposed Water-Net demonstrate the performance and limitations of state-of-the-art algorithms, which shed light on future research in underwater image enhancement. The dataset and code are available at.
水下图像增强因其在海洋工程和水下机器人技术中的重要性而备受关注。在过去几年中,已经提出了许多水下图像增强算法。然而,这些算法主要是使用合成数据集或少数选定的真实世界图像进行评估的。因此,尚不清楚这些算法在野外采集的图像上的表现如何,以及我们如何衡量该领域的进展。为了弥补这一差距,我们首次使用大规模真实世界图像对水下图像增强进行了全面的感知研究和分析。在本文中,我们构建了一个水下图像增强基准(UIEB),其中包括950张真实世界水下图像,其中890张有相应的参考图像。我们将其余60张无法获得满意参考图像的水下图像视为具有挑战性的数据。使用这个数据集,我们对当前最先进的水下图像增强算法进行了定性和定量的全面研究。此外,我们提出了一种在这个基准上训练的水下图像增强网络(称为Water-Net)作为基线,这表明了所提出的UIEB在训练卷积神经网络(CNN)方面的通用性。基准评估和所提出的Water-Net展示了当前最先进算法的性能和局限性,这为水下图像增强的未来研究提供了启示。数据集和代码可在……获取。