模糊规则在人脑正常组织分类中的应用

A. Namasivayam, L. Hall
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引用次数: 15

摘要

人脑二维磁共振图像的自动分类和组织标记可能涉及到一个初步的聚类阶段。分割像磁共振图像这样的大型多维数据集是非常耗时的。如果可以在应用聚类之前对图像进行部分分类,则可以在聚类阶段获得更好的性能。我们证明使用模糊规则来做这种部分分类是非常有效的。模糊规则可以对图像的主要部分进行预分类,从而给聚类算法提供较少的要操作的像素数。此外,由于预分类阶段本身是模糊的,因此可以直接用于初始化模糊聚类算法,从而为其提供所需的先机。提出了一种利用模糊规则对正常人大脑核磁共振图像进行预分类的方法。将正常大脑分割成感兴趣的组织比单独聚类要快得多。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The use of fuzzy rules in classification of normal human brain tissues
Automatic classification and tissue labeling of 2D magnetic resonance images of the human brain may involve a preliminary clustering stage. Segmenting large multidimensional data sets like those from magnetic resonance images is very time consuming. Better performance at the clustering stage as achieved if partial classification of the image can be done before applying clustering. We show the use of fuzzy rules to do this partial classification to be very effective. Fuzzy rules can preclassify a major portion of the image giving a clustering algorithm a lesser number of pixels to operate upon. Furthermore, as the preclassification stage is itself fuzzy, it can be directly used to initialize a fuzzy clustering algorithm, giving it a much needed headstart. We present an approach to using fuzzy rules to preclassify magnetic resonance images of the normal human brain. Good segmentation of normal brain into tissues of interest is obtained much faster than with clustering alone.
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