Benefiting from Bicubically Down-Sampled Images for Learning Real-World Image Super-Resolution

Mohammad Saeed Rad, Thomas Yu, C. Musat, H. K. Ekenel, B. Bozorgtabar, J. Thiran
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引用次数: 10

Abstract

Super-resolution (SR) has traditionally been based on pairs of high-resolution images (HR) and their low-resolution (LR) counterparts obtained artificially with bicubic downsampling. However, in real-world SR, there is a large variety of realistic image degradations and analytically modeling these realistic degradations can prove quite difficult. In this work, we propose to handle real-world SR by splitting this ill-posed problem into two comparatively more well-posed steps. First, we train a network to transform real LR images to the space of bicubically down-sampled images in a supervised manner, by using both real LR/HR pairs and synthetic pairs. Second, we take a generic SR network trained on bicubically downsampled images to super-resolve the transformed LR image. The first step of the pipeline addresses the problem by registering the large variety of degraded images to a common, well understood space of images. The second step then leverages the already impressive performance of SR on bicubically downsampled images, sidestepping the issues of end-to-end training on datasets with many different image degradations. We demonstrate the effectiveness of our proposed method by comparing it to recent methods in real-world SR and show that our proposed approach outperforms the state-of-the-art works in terms of both qualitative and quantitative results, as well as results of an extensive user study conducted on several real image datasets.
受益于双三次下采样图像学习真实世界图像超分辨率
传统上,超分辨率(SR)是基于双三次降采样人工获得的高分辨率图像(HR)和低分辨率图像(LR)对。然而,在现实世界的SR中,存在各种各样的真实图像退化,并且对这些真实的退化进行分析建模可能证明是相当困难的。在这项工作中,我们建议通过将这个不适定问题分成两个相对更适定的步骤来处理现实世界的SR。首先,我们训练了一个网络,通过使用真实的LR/HR对和合成的LR/HR对,以监督的方式将真实的LR图像转换为双三次下采样的图像空间。其次,我们采用双三次下采样图像训练的通用SR网络对转换后的LR图像进行超分辨。该流程的第一步通过将大量退化的图像注册到一个常见的、易于理解的图像空间来解决问题。然后,第二步利用SR在双次下采样图像上已经令人印象深刻的性能,回避了在具有许多不同图像降级的数据集上进行端到端训练的问题。我们通过将我们提出的方法与现实世界SR中的最新方法进行比较,证明了我们提出的方法的有效性,并表明我们提出的方法在定性和定量结果方面都优于最先进的作品,以及在几个真实图像数据集上进行的广泛用户研究的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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