Towards Unified Deep Image Deraining: A Survey and a New Benchmark

Xiang Chen;Jinshan Pan;Jiangxin Dong;Jinhui Tang
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Abstract

Recent years have witnessed significant advances in image deraining due to the progress of effective image priors and deep learning models. As each deraining approach has individual settings (e.g., training and test datasets, evaluation criteria), how to fairly evaluate existing approaches comprehensively is not a trivial task. Although existing surveys aim to thoroughly review image deraining approaches, few of them focus on unifying evaluation settings to examine the deraining capability and practicality evaluation. In this paper, we provide a comprehensive review of existing image deraining methods and provide a unified evaluation setting to evaluate their performance. Furthermore, we construct a new high-quality benchmark named HQ-RAIN to conduct extensive evaluations, consisting of 5,000 paired high-resolution synthetic images with high harmony and realism. We also discuss existing challenges and highlight several future research opportunities worth exploring. To facilitate the reproduction and tracking of the latest deraining technologies for general users, we build an online platform to provide the off-the-shelf toolkit, involving the large-scale performance evaluation.
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面向统一深度图像训练:综述与新标杆
近年来,由于有效的图像先验和深度学习模型的进步,图像脱除取得了重大进展。由于每种训练方法都有单独的设置(例如,训练和测试数据集,评估标准),因此如何公平地全面评估现有方法并不是一项微不足道的任务。虽然现有的调查旨在对图像脱模方法进行全面的审查,但很少有研究集中于统一评价设置来考察脱模能力和实用性评价。在本文中,我们提供了一个全面的审查现有的图像脱轨方法,并提供了一个统一的评估设置,以评估其性能。此外,我们构建了一个新的高质量基准HQ-RAIN进行广泛的评估,该基准由5000对高分辨率合成图像组成,具有很高的协调性和真实感。我们还讨论了现有的挑战,并强调了几个值得探索的未来研究机会。为了方便广大用户对最新培训技术的复制和跟踪,我们建立了一个在线平台,提供现成的工具包,包括大规模的绩效评估。
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