Image Super-Resolution Reconstruction Based on Multi-scale Residual Learning

Shuying Huang, Jichao Wang, Yong Yang
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Abstract

Current image super-resolution (SR) reconstruction methods based on deep learning focus more on using the learning capabilities of deeper networks to obtain better reconstruction results, but the increase in depth will increase the complexity of the network structure and the difficulty of training. To address this problem, considering the advantages of residual learning that can overcome the problem of low learning efficiency, and the ability of multiscale networks that can extract global and local features at different scales, this paper proposes a multi-scale residual block (MSRB) for feature learning. Based on the constructed MSRB, a cascaded multi-scale residual network (CMSRN) is developed for image SR reconstruction. In the network, to reconstruct richer image texture details, multiple multi-scale residual blocks are cascaded to construct the residual feature learning part. Experimental results on four datasets show that the proposed network can obtain better reconstruction results, and is superior to state-of-the-art SR reconstruction methods in terms of subjective observation and objective quantitative evaluation.
基于多尺度残差学习的图像超分辨率重建
目前基于深度学习的图像超分辨率(SR)重建方法更多的是利用更深层网络的学习能力来获得更好的重建结果,但深度的增加会增加网络结构的复杂性和训练的难度。为了解决这一问题,考虑到残差学习可以克服学习效率低的优点,以及多尺度网络可以在不同尺度下提取全局和局部特征的能力,本文提出了一种用于特征学习的多尺度残差块(MSRB)。在构建的残差网络的基础上,提出了一种用于图像残差重建的级联多尺度残差网络(CMSRN)。在网络中,为了重建更丰富的图像纹理细节,将多个多尺度残差块级联,构建残差特征学习部分。在4个数据集上的实验结果表明,本文提出的网络可以获得更好的重建效果,并且在主观观察和客观定量评价方面都优于现有的SR重建方法。
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