小波域中值滤波在图像分割中的应用

Lei Liang
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引用次数: 4

摘要

本文提出了一种将小波域中值滤波应用于图像分割的方法,当图像包含空间域中值滤波难以分割的区域时。该方法先将图像变换到小波域,然后在小波域迭代应用中值滤波,最后将结果变换到空间域。小波域中值滤波的优点是,在小波域中,遇到根图像的概率分散在子带图像上,因此中值滤波在迭代的早期不太可能遇到根图像,随着迭代的增加可以产生更好的结果。在具有高斯噪声模式的图像分割中获得了更好的性能,特别是当区域的平均值彼此接近时。计算机仿真结果验证了该方法的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Median filtering in the wavelet domain in image segmentation
In this paper we propose a method of applying median filtering in the wavelet domain in image segmentation when the image consists of regions hard to be segmented by the spatial domain median filter. The method transforms an image into the wavelet domain and then iteratively applies the median filter in the wavelet domain and finally transforms the result into the spatial domain. The advantage of wavelet domain median filtering is that in the wavelet domain, probabilities of encountering root images are spread over sub-band images and therefore median filtering is unlikely to encounter root images at an early stage of iterations and can generate better results as the iteration increases. Better performance is obtained in segmenting images having a Gaussian noise patter, especially when regions are close to each other in their mean values. Results from computer simulation are used to demonstrate superiority of the method.
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