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A comprehensive review of deep learning-based single image super-resolution

机译:基于深度学习的单图像超分辨率的全面审查

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Image super-resolution (SR) is one of the vital image processing methods that improve the resolution of an image in the field of computer vision. In the last two decades, significant progress has been made in the field of super-resolution, especially by utilizing deep learning methods. This survey is an effort to provide a detailed survey of recent progress in single-image super-resolution in the perspective of deep learning while also informing about the initial classical methods used for image super-resolution. The survey classifies the image SR methods into four categories, i.e., classical methods, supervised learning-based methods, unsupervised learning-based methods, and domain-specific SR methods. We also introduce the problem of SR to provide intuition about image quality metrics, available reference datasets, and SR challenges. Deep learning-based approaches of SR are evaluated using a reference dataset. Some of the reviewed state-of-the-art image SR methods include the enhanced deep SR network (EDSR), cycle-in-cycle GAN (CinCGAN), multiscale residual network (MSRN), meta residual dense network (Meta-RDN), recurrent back-projection network (RBPN), second-order attention network (SAN), SR feedback network (SRFBN) and the wavelet-based residual attention network (WRAN). Finally, this survey is concluded with future directions and trends in SR and open problems in SR to be addressed by the researchers.
机译:图像超分辨率(SR)是其改善的图像的计算机视觉领域中的分辨率的重要的图像处理方法中的一种。在过去的二十年里,显著的进步已经在超分辨率领域取得了,尤其是通过利用深学习方法。这项调查是为了提供的在单幅影像超分辨率的最新进展进行详细调查,深度学习的角度出发,同时通知有关用于影像超分辨率最初的经典方法。该调查分类上述图像SR方法分为四类,即,传统方法,基于监督学习的方法,无监督学习型的方法,和特定于域的SR方法。我们还介绍了SR的问题,以提供有关图像质量指标,可参考的数据集,以及SR挑战直觉。 SR深以学习为主的方法是使用一个参考的数据集进行评估。一些的审查状态的最先进的图像SR方法包括增强深SR网络(EDSR),周期式周期GAN(CinCGAN),多尺度剩余网络(MSRN),间残余密集网络(元RDN) ,复发性反投影网络(RBPN),二阶注意网络(SAN),SR反馈网络(SRFBN)和基于小波的剩余关注网络(WRAN)。最后,本次调查的结论与在SR SR和开放的问题,由研究人员来解决未来的发展方向和趋势。

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