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图像腐蚀和图像膨胀Matlab代码

于 2020-12-06 发布
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代码说明:

该代码首先实现了图像的腐蚀处理和图像的膨胀处理。然后,经过先腐蚀(Erosion)处理,后膨胀(Dilation)处理得到了Opening Image;又经过先膨胀(Dilation)处理,后腐蚀(Erosion)处理得到了Closing Image。程序执行后能够得到原始图像、膨胀后图像、腐蚀后图像、Opening Image和Closing Image这五幅图像的对比显示结果。

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