In this paper, we consider two challenging issues in reference-based super-resolution (RefSR), (i) how to choose a proper reference image, and (ii) how to learn real-world RefSR in a self-supervised manner. Particularly, we present a novel self-supervised learning approach for real-world image SR from observations at dual camera zooms (SelfDZSR). Considering the popularity of multiple cameras in modern smartphones, the more zoomed (telephoto) image can be naturally leveraged as the reference to guide the SR of the lesser zoomed (short-focus) image. Furthermore, SelfDZSR learns a deep network to obtain the SR result of short-focus image to have the same resolution as the telephoto image. For this purpose, we take the telephoto image instead of an additional high-resolution image as the supervision information and select a center patch from it as the reference to super-resolve the corresponding short-focus image patch. To mitigate the effect of the misalignment between short-focus low-resolution (LR) image and telephoto ground-truth (GT) image, we design an auxiliary-LR generator and map the GT to an auxiliary-LR while keeping the spatial position unchanged. Then the auxiliary-LR can be utilized to deform the LR features by the proposed adaptive spatial transformer networks (AdaSTN), and match the Ref features to GT. During testing, SelfDZSR can be directly deployed to super-solve the whole short-focus image with the reference of telephoto image. Experiments show that our method achieves better quantitative and qualitative performance against state-of-the-arts. Codes are available at https://github.com/cszhilu1998/SelfDZSR.
翻译:在本文中,我们审议了基于参考的超级分辨率(RefSR)中两个具有挑战性的问题,(i) 如何选择适当的参考图像,(ii) 如何以自我监督的方式学习真实世界 RefSR。特别是,我们从双镜头放大器(自DZSR)的观测中为真实世界图像SR提供了一种新型的自监督学习方法。考虑到现代智能手机中多摄像头的受欢迎程度,较放大的图像(teephoto)可以自然地作为指导较轻缩放图像(short-fof)的图像的反射参考。此外,SefDZSR学会学会学会一个深度的网络来获取短焦距图像的SR结果,以便获得与远程摄影图图像相同的分辨率。为此,我们把远程摄影到更多的高分辨率图像作为监督信息,并从中选择一个中枢作为超级解析的短焦距图像的链接。为了减轻短期分辨率分辨率(sh-drial-LR) 图像在短距低分辨率分辨率的低分辨率(LRDR) 图像中和远距图像的图像的自定位中,而将智能图像的自定位的自定位的自定位的自定义-ral-dro-rode-drode-rode-rode-ral-ral-d-ral-rus 的图像的性测试是用于。