Automatic generation of membership functions for brain MR images

Chih-Wei Chang, G. Hillman, HaoYing Ying, T. A. Kent, J. Yen
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引用次数: 1

Abstract

In this paper, we present a rule-based fuzzy segmentation system that is capable of segmenting magnetic resonance (MR) images of diseased human brains into physiologically and pathologically meaningful regions for measurement. We have developed a novel technique to automatically generate the membership functions for the fuzzy sets in the antecedent of the IF-THEN fuzzy rules in our system. Using this fuzzy system, we have performed the segmentation of brain images with periventricular lesions into four classes (grey matter, white matter, cerobrospinal fluid and periventricular lesions). The brain images were processed by our rule-based system as well as by the standard fuzzy o-means (FCM) algorithm used for performance comparison. The results, confirmed by the medical experts, showed that the rule-based fuzzy system significantly outperformed the standard FCM in the segmentation of the abnormal brain images.
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脑磁共振图像的隶属函数自动生成
在本文中,我们提出了一个基于规则的模糊分割系统,该系统能够将患病人脑的磁共振图像分割成生理和病理上有意义的区域进行测量。我们开发了一种新的方法来自动生成在IF-THEN模糊规则之前的模糊集的隶属函数。利用该模糊系统,我们将脑室周围病变的脑图像分割为四类(灰质、白质、脑脊液和脑室周围病变)。脑图像通过我们基于规则的系统以及用于性能比较的标准模糊o均值(FCM)算法进行处理。结果得到了医学专家的证实,表明基于规则的模糊系统在异常脑图像分割方面明显优于标准FCM。
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