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基于超椭球模糊聚类的人脑磁共振图象分割
引用本文:梁夷龙,王 松,夏绍玮,王子罡.基于超椭球模糊聚类的人脑磁共振图象分割[J].软件学报,1998,9(9):683-689.
作者姓名:梁夷龙  王 松  夏绍玮  王子罡
作者单位:1. 清华大学自动化系,北京,100084
2. 清华大学计算机科学与技术系,北京,100084
基金项目:本文研究得到国家自然科学基金和国家863高科技项目基金资助.
摘    要:通常使用的聚类分割方法认为样本的分布是超球形的,然而,这并不符合人脑磁共振MR(magnetic resonance)图象的真正特点.针对这一缺陷,提出了一种基于超椭球模糊聚类的人脑MR图象分割方法.实验结果表明,这种分割方法能有效地将人脑MR图象分割为灰质和白质两种组织,并具有较高的效率和分割精度.

关 键 词:MR(magnetic  resonance)图象分割,自适应阈值,高斯滤波,超椭球模糊聚类.
收稿时间:1998/2/28 0:00:00
修稿时间:1998/4/20 0:00:00

Human Brain Magnetic Resonance Image Segmentation Based on Hyperellipsoidal Fuzzy Clustering Algorithm
LIANG Yi-long,WANG Song,XIA Shao-wei and WANG Zi-gang.Human Brain Magnetic Resonance Image Segmentation Based on Hyperellipsoidal Fuzzy Clustering Algorithm[J].Journal of Software,1998,9(9):683-689.
Authors:LIANG Yi-long  WANG Song  XIA Shao-wei and WANG Zi-gang
Affiliation:LIANG Yi long 1\ WANG Song 1\ XIA Shao wei 1\ WANG Zi gang 2\ 1(Department of Automation\ Tsinghua University\ Beijing\ 100084) \ 2(Department of Computer Science and Technology\ Tsinghua University\ Beijing\ 100084)
Abstract:The commonly used cluster based segmentation method assumes that the sample distribution is hyperspherical, but this kind of assumption is not consistent with the real characteristic of the human brain MR (magnetic resonance) image. In order to surmount this drawback, a new algorithm for segmenting MR image based on hyperellipsoidal fuzzy clustering is presented in this paper. Provided experimental results indicate that the proposed strategy is feasible for classifying the white matter and the gray matter of the brain, and has the merits of both high efficiency and remarkable accuracy.
Keywords:MR (magnetic resonance) image segmentation  adaptive threshold  Gaussian filtering  hyperellipsoidal fuzzy clustering  
本文献已被 CNKI 维普 万方数据 等数据库收录!
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