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Deep learning methods in real-time image super-resolution: a survey

机译:实时图像超分辨率的深度学习方法:调查

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Super-resolution is generally defined as a process to obtain high-resolution images form inputs of low-resolution observations, which has attracted quantity of attention from researchers of image-processing community. In this paper, we aim to analyze, compare, and contrast technical problems, methods, and the performance of super-resolution research, especially real-time super-resolution methods based on deep learning structures. Specifically, we first summarize fundamental problems, perform algorithm categorization, and analyze possible application scenarios that should be considered. Since increasing attention has been drawn in utilizing convolutional neural networks (CNN) or generative adversarial networks (GAN) to predict high-frequency details lost in low- resolution images, we provide a general overview on background technologies and pay special attention to super-resolution methods built on deep learning architectures for real-time super-resolution, which not only produce desirable reconstruction results, but also enlarge possible application scenarios of super resolution to systems like cell phones, drones, and embedding systems. Afterwards, benchmark datasets with descriptions are enumerated, and performance of most representative super-resolution approaches is provided to offer a fair and comparative view on performance of current approaches. Finally, we conclude the paper and suggest ways to improve usage of deep learning methods on real-time image super-resolution.
机译:超级分辨率通常被定义为获得低分辨率图像形式的低分辨率观测的输入,这引起了图像处理社区的研究人员的注意力。本文旨在分析,比较和对比技术问题,方法以及基于深度学习结构的实时超分辨率方法的技术问题,方法和对比。具体而言,我们首先总结了基本问题,执行算法分类,并分析应该考虑的可能的应用程序。由于在利用卷积神经网络(CNN)或生成的对抗网络(GAN)中提高了越来越长的关注来预测低分辨率图像中丢失的高频细节,因此我们提供了背景技术的一般概述,并特别注意超分辨率用于实时超分辨率的深度学习架构构建的方法,这不仅产生所需的重建结果,而且还扩大了超级分辨率的可能应用场景,如手机,无人机和嵌入系统等系统。之后,列举具有描述的基准数据集,并提供了大多数代表性超分辨率方法的性能,以提供关于当前方法的性能的公平和比较观点。最后,我们结束了论文,并提出了改进利用深度学习方法对实时图像超分辨率的方法。

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