论文标题

具有模型引导深度展开网络的准确且轻巧的图像超分辨率

Accurate and Lightweight Image Super-Resolution with Model-Guided Deep Unfolding Network

论文作者

Ning, Qian, Dong, Weisheng, Shi, Guangming, Li, Leida, Li, Xin

论文摘要

基于深的神经网络(DNN)方法在单图超分辨率(SISR)中取得了巨大成功。但是,现有的最先进的SISR技术的设计类似于黑匣子缺乏透明度和解释性。此外,视觉质量的提高通常是由于黑盒设计而增加的模型复杂性的价格。在本文中,我们介绍并提倡一种可解释的SISR方法,以指定模型引导深度展开网络(MOG-DUN)。针对打破相干障碍的目标,我们选择使用良好的图像先验的图像,名为非局部自动回归模型,并使用它来指导我们的DNN设计。通过将深度倾向和非局部正则化纳入深度学习框架内的可训练模块,我们可以将基于模型的SISR的迭代过程展开为具有三个互连模块(DeNoising,nonlocal-ar和Rectuctuction)的构建块的多级串联。所有三个模块的设计都利用了最新进展,包括密集/跳过连接以及快速的非本地实现。除了解释性之外,Mog-Dun还准确(产生更少的混叠伪像),计算效率(具有降低的模型参数)和多功能(能够处理多重降解)。提出的MOG-DUN方法对包括RCAN,SRMDNF和SRFBN在内的现有最新图像SR方法的优越性通过在几个流行的数据集和各种降级场景上进行了广泛的实验来证实。

Deep neural networks (DNNs) based methods have achieved great success in single image super-resolution (SISR). However, existing state-of-the-art SISR techniques are designed like black boxes lacking transparency and interpretability. Moreover, the improvement in visual quality is often at the price of increased model complexity due to black-box design. In this paper, we present and advocate an explainable approach toward SISR named model-guided deep unfolding network (MoG-DUN). Targeting at breaking the coherence barrier, we opt to work with a well-established image prior named nonlocal auto-regressive model and use it to guide our DNN design. By integrating deep denoising and nonlocal regularization as trainable modules within a deep learning framework, we can unfold the iterative process of model-based SISR into a multi-stage concatenation of building blocks with three interconnected modules (denoising, nonlocal-AR, and reconstruction). The design of all three modules leverages the latest advances including dense/skip connections as well as fast nonlocal implementation. In addition to explainability, MoG-DUN is accurate (producing fewer aliasing artifacts), computationally efficient (with reduced model parameters), and versatile (capable of handling multiple degradations). The superiority of the proposed MoG-DUN method to existing state-of-the-art image SR methods including RCAN, SRMDNF, and SRFBN is substantiated by extensive experiments on several popular datasets and various degradation scenarios.

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