基于MATLAB的运动模糊图像复原算法研究(含噪声干扰)

上传者: 43386461 | 上传时间: 2019-12-21 18:57:06 | 文件大小: 13.73MB | 文件类型: rar
有段时间需要做图像复原的研究,就用了平时用的比较多的MATLAB平台。利用的是MATLAB的工具箱,但各个参数的设置我都研究了一段时间,也参考了萨冈雷斯的关于图像处理的著作。程序前半部分不含噪声用了四种滤波法,后半部分加入了噪声干扰,也做了一些简单的分析 。希望对有需要的朋友有所帮助。

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