Single-image super-resolution (SISR) is an important task in image processing, which aims to enhance the resolution of imaging systems. Recently, SISR has made a huge leap and has achieved promising results with the help of deep learning (DL). In this survey, we give an overview of DL-based SISR methods and group them according to their targets, such as reconstruction efficiency, reconstruction accuracy, and perceptual accuracy. Specifically, we first introduce the problem definition, research background, and the significance of SISR. Secondly, we introduce some related works, including benchmark datasets, upsampling methods, optimization objectives, and image quality assessment methods. Thirdly, we provide a detailed investigation of SISR and give some domain-specific applications of it. Fourthly, we present the reconstruction results of some classic SISR methods to intuitively know their performance. Finally, we discuss some issues that still exist in SISR and summarize some new trends and future directions. This is an exhaustive survey of SISR, which can help researchers better understand SISR and inspire more exciting research in this field. An investigation project for SISR is provided in https://github.com/CV-JunchengLi/SISR-Survey.
翻译:图像处理是一项重要任务,目的是加强成像系统的分辨率;最近,SISSR取得了巨大的飞跃,在深层学习的帮助下取得了令人乐观的成果。在这次调查中,我们概述了基于DL的SISSR方法,并根据它们的目标,如重建效率、重建精确度和感知精确度,对它们进行分类。具体地说,我们首先介绍问题定义、研究背景和SISSR的重要性。第二,我们介绍一些相关工作,包括基准数据集、升级方法、优化目标和图像质量评估方法。第三,我们详细调查SISSR,并给出一些针对特定领域的应用。第四,我们介绍一些传统的SISSR方法的重建结果,以便直接了解它们的业绩。最后,我们讨论SISSR仍然存在的一些问题,总结一些新的趋势和今后的方向。这是对SISSR的详尽调查,可以帮助研究人员更好地了解SISSR,并激励在这一领域进行更令人振奋人心的研究。一个针对SISSR的调查项目载于 https://githrub.com/C-J。