RRSR: Reciprocal Reference-based Image Super-Resolution with Progressive Feature Alignment and Selection

Lin Zhang, Xin Li, Dongliang He, Fu Li, Yili Wang, Zhao Zhang
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引用次数: 3

Abstract

Reference-based image super-resolution (RefSR) is a promising SR branch and has shown great potential in overcoming the limitations of single image super-resolution. While previous state-of-the-art RefSR methods mainly focus on improving the efficacy and robustness of reference feature transfer, it is generally overlooked that a well reconstructed SR image should enable better SR reconstruction for its similar LR images when it is referred to as. Therefore, in this work, we propose a reciprocal learning framework that can appropriately leverage such a fact to reinforce the learning of a RefSR network. Besides, we deliberately design a progressive feature alignment and selection module for further improving the RefSR task. The newly proposed module aligns reference-input images at multi-scale feature spaces and performs reference-aware feature selection in a progressive manner, thus more precise reference features can be transferred into the input features and the network capability is enhanced. Our reciprocal learning paradigm is model-agnostic and it can be applied to arbitrary RefSR models. We empirically show that multiple recent state-of-the-art RefSR models can be consistently improved with our reciprocal learning paradigm. Furthermore, our proposed model together with the reciprocal learning strategy sets new state-of-the-art performances on multiple benchmarks.
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基于互向参考的图像超分辨率渐进式特征对齐与选择
基于参考的图像超分辨率(RefSR)是一个很有前途的图像超分辨率分支,在克服单幅图像超分辨率的局限性方面显示出巨大的潜力。虽然之前最先进的RefSR方法主要侧重于提高参考特征转移的有效性和鲁棒性,但通常忽略了一个重建良好的SR图像应该能够更好地重建其相似的LR图像,当它被称为。因此,在这项工作中,我们提出了一个互惠学习框架,可以适当地利用这一事实来加强RefSR网络的学习。此外,为了进一步改进RefSR任务,我们特意设计了一个渐进式特征对齐和选择模块。该模块在多尺度特征空间对参考输入图像进行对齐,并逐步进行参考感知特征选择,从而将更精确的参考特征转移到输入特征中,增强了网络性能。我们的互惠学习范式是模型不可知的,它可以应用于任意的RefSR模型。我们的经验表明,多个最新的最先进的RefSR模型可以通过我们的互惠学习范式不断改进。此外,我们提出的模型与互惠学习策略一起在多个基准上设定了新的最先进的性能。
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