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Two-Stage Domain Adapted Training For Better Generalization In Real-World Image Restoration And Super-Resolution | IEEE Conference Publication | IEEE Xplore

Two-Stage Domain Adapted Training For Better Generalization In Real-World Image Restoration And Super-Resolution


Abstract:

It is well-known that in inverse problems, end-to-end trained networks overfit the degradation model seen in the training set, i.e., they do not generalize to other types...Show More

Abstract:

It is well-known that in inverse problems, end-to-end trained networks overfit the degradation model seen in the training set, i.e., they do not generalize to other types of degradations well. Recently, an approach to first map images downsampled by unknown filters to bicubicly downsampled look-alike images was proposed to successfully super-resolve such images. In this paper, we show that any inverse problem can be formulated by first mapping the input degraded images to an intermediate domain, and then training a second network to form output images from these intermediate images. Furthermore, the best intermediate domain may vary according to the task. Our experimental results demonstrate that this two-stage domain-adapted training strategy does not only achieve better results on a given class of unknown degradations but can also generalize to other unseen classes of degradations better.
Date of Conference: 19-22 September 2021
Date Added to IEEE Xplore: 23 August 2021
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ISSN Information:

Conference Location: Anchorage, AK, USA

1. Introduction

Real-world image restoration and super-resolution (SR) aim to recover enhanced and high-resolution images from their degraded and low-resolution (LR) counterparts, respectively. Most existing learning-based methods rely on the availability of such image pairs modeling realistic image degradations. However, there are two main challenges in practical scenarios: (i) there are only a limited number of degraded - ground-truth (GT) image pairs with real-world actual degradations; (ii) even if such dataset is available, the degradation model between different pairs of degraded and GT images may differ significantly.

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