Collecting amounts of distorted/clean image pairs in the real world is non-trivial, which seriously limits the practical applications of these supervised learning-based methods on real-world image super-resolution (RealSR). Previous works usually address this problem by leveraging unsupervised learning-based technologies to alleviate the dependency on paired training samples. However, these methods typically suffer from unsatisfactory texture synthesis due to the lack of supervision of clean images. To overcome this problem, we are the first to have a close look at the under-explored direction for RealSR, i.e., few-shot real-world image super-resolution, which aims to tackle the challenging RealSR problem with few-shot distorted/clean image pairs. Under this brand-new scenario, we propose Distortion Relation guided Transfer Learning (DRTL) for the few-shot RealSR by transferring the rich restoration knowledge from auxiliary distortions (i.e., synthetic distortions) to the target RealSR under the guidance of distortion relation. Concretely, DRTL builds a knowledge graph to capture the distortion relation between auxiliary distortions and target distortion (i.e., real distortions in RealSR). Based on the distortion relation, DRTL adopts a gradient reweighting strategy to guide the knowledge transfer process between auxiliary distortions and target distortions. In this way, DRTL could quickly learn the most relevant knowledge from the synthetic distortions for the target distortion. We instantiate DRTL with two commonly-used transfer learning paradigms, including pre-training and meta-learning pipelines, to realize a distortion relation-aware Few-shot RealSR. Extensive experiments on multiple benchmarks and thorough ablation studies demonstrate the effectiveness of our DRTL.
翻译:收集真实世界中的扭曲/清晰图像对并不容易,这严重限制了这些基于监督学习的方法在实际应用中的可行性。以前的方法通常通过利用无监督学习技术来缓解对成对训练样本的依赖。然而,由于缺乏清晰图像的监督,这些方法通常会遭受无法令人满意的纹理合成。为了克服这个问题,我们首次从少样本真实世界图像超分辨率的方向来研究RealSR(实际图像超分辨率)问题。它旨在利用少量扭曲/清晰图像对来解决具有挑战性的RealSR问题。在这个全新的场景下,我们提出了扭曲关系引导迁移学习(DRTL)方法,利用扭曲关系来将从辅助扭曲(即合成扭曲)获得的丰富修复知识迁移至目标RealSR中。具体而言,DRTL建立一个知识图谱,以捕捉辅助扭曲与目标扭曲(即RealSR中的实际扭曲)之间的扭曲关系。基于扭曲关系,DRTL采用了梯度重新加权策略来指导辅助扭曲和目标扭曲之间的知识转移过程。这样,DRTL可以快速学习从合成扭曲中为目标扭曲提供最相关的知识。我们利用两种常用的迁移学习方法(预训练和元学习管道)来实现基于扭曲关系的少样本 RealSR。在多个基准测试和彻底的消融研究中的大量实验表明了我们DRTL的有效性。