论文标题

通过学习缩小来缩小:通过产生和调整退化来缩小:现实世界中的超级分辨率

Learning to Zoom-in via Learning to Zoom-out: Real-world Super-resolution by Generating and Adapting Degradation

论文作者

Gong, Dong, Sun, Wei, Shi, Qinfeng, Hengel, Anton van den, Zhang, Yanning

论文摘要

大多数基于学习的超分辨率(SR)方法旨在通过在LR-HR图像对中学习从给定的低分辨率(LR)图像中恢复高分辨率(HR)图像。由于人为合成的和真实的LR图像之间的域间隙,因此在合成数据上学习的SR方法在现实世界中表现不佳。因此,采取了一些努力来捕获现实世界的图像对。捕获的LR-HR图像对通常会遭受不可避免的未对准的损失,这阻碍了端到端学习的表现。在这里,专注于现实世界的SR,我们提出了一个不同的问题:由于不可避免地,我们可以提出一种根本不需要LR-HR图像配对和对齐的方法并使用真实的图像?因此,我们提出了一个框架,以从任意的一组未配对的LR和HR图像中学习SR,并查看在如此现实和“无监督”的设置中可以走多远。为此,我们首先训练降解生成网络以生成逼真的LR图像,更重要的是要捕获其分布(即学习缩小)。我们没有假设域间隙已被消除,而是在学习降级自适应SR网络(即学习缩小)时,最大程度地减少了生成的数据与真实数据之间的差异。所提出的未配对方法在现实世界图像上获得了最新的SR结果,即使在数据集中也更有利于配对学习方法。

Most learning-based super-resolution (SR) methods aim to recover high-resolution (HR) image from a given low-resolution (LR) image via learning on LR-HR image pairs. The SR methods learned on synthetic data do not perform well in real-world, due to the domain gap between the artificially synthesized and real LR images. Some efforts are thus taken to capture real-world image pairs. The captured LR-HR image pairs usually suffer from unavoidable misalignment, which hampers the performance of end-to-end learning, however. Here, focusing on the real-world SR, we ask a different question: since misalignment is unavoidable, can we propose a method that does not need LR-HR image pairing and alignment at all and utilize real images as they are? Hence we propose a framework to learn SR from an arbitrary set of unpaired LR and HR images and see how far a step can go in such a realistic and "unsupervised" setting. To do so, we firstly train a degradation generation network to generate realistic LR images and, more importantly, to capture their distribution (i.e., learning to zoom out). Instead of assuming the domain gap has been eliminated, we minimize the discrepancy between the generated data and real data while learning a degradation adaptive SR network (i.e., learning to zoom in). The proposed unpaired method achieves state-of-the-art SR results on real-world images, even in the datasets that favor the paired-learning methods more.

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