Research on Image Super-resolution Reconstruction Based on Deep Learning

Jingyu Jiang, Li Zhao, Yan Jiao
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Abstract

Abstract Image super-resolution reconstruction (SR) aims to use a specific algorithm to restore a low-resolution blurred image in the same scene into a high-resolution clear image. Due to its wide application value and theoretical value, image super-resolution reconstruction technology has become a research hotspot in the field of computer vision and image processing, and has attracted widespread attention from researchers. Compared with traditional methods, deep learning methods have shown better reconstruction effects in the field of image super-resolution reconstruction, and have gradually developed into the mainstream technology. Therefore, this paper classifies the image super-resolution reconstruction problem systematically according to the structure of the network model, and divides it into two categories: the super-division method based on the convolutional neural network model and the super-division method based on the generative confrontation network model. The main image super-resolution reconstruction methods are sorted out, several more important deep learning super-resolution reconstruction models are described, the advantages and disadvantages of different algorithms and the applicable application scenarios are analyzed and compared, and the different types of super-resolution algorithms are discussed. The method of mutual fusion and image and video quality evaluation, and a brief introduction to commonly used data sets. Finally, the potential problems faced by the current image super-resolution reconstruction technology are discussed, and a new outlook for the future development direction is made.
基于深度学习的图像超分辨率重建研究
图像超分辨率重建(super-resolution reconstruction, SR)旨在通过特定的算法将同一场景中的低分辨率模糊图像恢复为高分辨率清晰图像。图像超分辨率重建技术由于其广泛的应用价值和理论价值,已成为计算机视觉和图像处理领域的研究热点,引起了研究者的广泛关注。与传统方法相比,深度学习方法在图像超分辨率重建领域表现出更好的重建效果,并逐渐发展成为主流技术。因此,本文根据网络模型的结构对图像超分辨率重建问题进行了系统的分类,并将其分为基于卷积神经网络模型的超分割方法和基于生成对抗网络模型的超分割方法两大类。对目前主要的图像超分辨率重建方法进行了梳理,介绍了几种较为重要的深度学习超分辨率重建模型,分析比较了不同算法的优缺点和适用的应用场景,并对不同类型的超分辨率算法进行了讨论。相互融合的方法以及图像和视频质量的评价,并简要介绍了常用的数据集。最后,讨论了当前图像超分辨率重建技术面临的潜在问题,并对未来的发展方向做出了新的展望。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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