Unpaired Real-World Super-Resolution with Pseudo Controllable Restoration

2022 IEEE/CVF Conference on Computer Vision and Pattern Recognition Workshops (CVPRW)(2022)

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摘要
Current super-resolution methods rely on the bicubic down-sampling assumption in order to develop the ill-posed reconstruction of the low-resolution image. Not surprisingly, these approaches fail when using real-world low-resolution images due to the presence of artifacts and intrinsic noise absent in the bicubic setup. Consequently, attention is increasingly paid to techniques that alleviate this problem and super-resolve real-world images. As acquiring paired real-world datasets is a challenging problem, real-world super-resolution solutions are traditionally tackled as a blind problem or as an unpaired data-driven problem. The former makes assumptions about the downsampling operations, the latter uses unpaired training to learn the real distributions. Recently, blind approaches have dominated this problem by assuming a diverse bank of degradations, whereas the unpaired solutions have shown under-performance due to the two-staged training. In this paper, we propose an unpaired real-world super-resolution method that performs on par, or even better than blind paired approaches by introducing a pseudo-controllable restoration module in a fully end-to-end system.
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pseudocontrollable restoration module,blind paired approaches,real-world super-resolution method,unpaired solutions,blind approaches,uses unpaired training,unpaired data-driven problem,blind problem,real-world super-resolution solutions,super-resolve real-world images,bicubic setup,intrinsic noise,real-world low-resolution images,low-resolution image,bicubic down-sampling assumption,super-resolution methods
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