Development of Blind Deblurring Based on Deep Learning

Shi Kecun, Zhao Li
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Abstract

Abstract The rapid development of computer vision has greatly promoted the development of camera in the fields of target detection, remote sensing analysis, target recognition and so on. As the carrier of information exchange in contemporary society, image contains a large number of information elements. When taking an image, it will blur the image and destroy many photos due to various factors, resulting in the inability to obtain relevant information from the image. Restoring a clear image from the blurred image is a hot spot in the field of computer vision and image processing. This paper expounds the causes of fuzziness in detail, summarizes and combs the current blind deblurring methods and research status based on deep learning, makes a detailed overview of the development of deblurring network based on deep learning from three aspects: convolution neural network, cyclic neural network and generation countermeasure network, and summarizes the advantages and disadvantages of various methods, Some networks are compared, and the problems of feature extraction, evaluation index and data set construction in deblurring are analyzed. Finally, the development trend of image motion blur restoration technology is prospected.
基于深度学习的盲去模糊研究进展
计算机视觉的飞速发展,极大地推动了摄像机在目标检测、遥感分析、目标识别等领域的发展。图像作为当代社会信息交流的载体,包含着大量的信息元素。在拍摄图像时,由于各种因素,会使图像模糊,毁坏很多照片,导致无法从图像中获取相关信息。从模糊图像中恢复清晰图像是计算机视觉和图像处理领域的研究热点。本文详细阐述了模糊产生的原因,总结和梳理了目前基于深度学习的盲目去模糊方法和研究现状,从三个方面详细概述了基于深度学习的去模糊网络的发展:对卷积神经网络、循环神经网络和生成对抗网络进行了比较,总结了各种方法的优缺点,并对一些网络进行了比较,分析了去模糊中特征提取、评价指标和数据集构建等问题。最后,展望了图像运动模糊复原技术的发展趋势。
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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