Interactive image restoration aims to restore images by adjusting several controlling coefficients, which determine the restoration strength. Existing methods are restricted in learning the controllable functions under the supervision of known degradation types and levels. They usually suffer from a severe performance drop when the real degradation is different from their assumptions. Such a limitation is due to the complexity of real-world degradations, which can not provide explicit supervision to the interactive modulation during training. However, how to realize the interactive modulation in real-world super-resolution has not yet been studied. In this work, we present a Metric Learning based Interactive Modulation for Real-World Super-Resolution (MM-RealSR). Specifically, we propose an unsupervised degradation estimation strategy to estimate the degradation level in real-world scenarios. Instead of using known degradation levels as explicit supervision to the interactive mechanism, we propose a metric learning strategy to map the unquantifiable degradation levels in real-world scenarios to a metric space, which is trained in an unsupervised manner. Moreover, we introduce an anchor point strategy in the metric learning process to normalize the distribution of metric space. Extensive experiments demonstrate that the proposed MM-RealSR achieves excellent modulation and restoration performance in real-world super-resolution. Codes are available at https://github.com/TencentARC/MM-RealSR.
翻译:互动图像恢复的目的是通过调整若干控制系数来恢复图像,这些系数决定恢复强度。在已知降解类型和水平的监督下,现有方法在学习可控功能方面受到限制。当实际降解不同于其假设时,它们通常会受到严重性能下降的影响。这种限制是由于现实世界退化的复杂性,无法对培训期间的互动调控提供明确的监督。然而,如何在现实世界超级分辨率中实现互动式调控,尚未研究如何实现真实世界超级分辨率中的交互式调控。此外,在这项工作中,我们为Real-World超级分辨率(MM-RealSR)推出了基于计量学习的互动式互动调控。具体地说,我们提出了一个不受监督的降解估计战略,以估计现实世界情景中的降解程度。我们建议采用已知的降解程度作为互动机制的明确监督,而不是将现实世界情景情景情景中无法量化的降解程度映射成一个计量空间,而该空间的培训则未以不受控制的方式进行。此外,我们介绍了一个基于基准学习过程的基点战略,以使光度空间的分布正常化。大规模实验表明,拟议的MMM/RESR在现实空间中实现了极好的恢复。