基于训练k均值聚类的磁共振图像分割

A. Kumbhar, A. Kulkarni
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引用次数: 6

摘要

磁共振图像分割是人体组织可视化中不可缺少的一个过程,尤其是在临床分析中。在本文中,我们描述了一种使用LM-k-means技术从真实MR图像中分割白质和灰质的方法。将k-means等简单的无监督聚类系统预处理后,利用Levenberg-Marquardt优化技术将其转化为监督系统。由此推断,k-means系统不会自行到达均值,这将给出一个很好的分割。因此,LM算法为此目的训练它。将结果与k-means系统的结果进行了比较,结果显示出了相当大的改进,精度更高。
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Magnetic Resonant Image segmentation using trained K-means clustering
Magnetic Resonant Image segmentation is an indispensable process in the visualization of human tissues, particularly during clinical analysis. In this paper, we describe a method for segmentation of White matter and Gray matter from real MR images using a LM-k-means technique. After preprocessing, a simple unsupervised clustering system like k-means is taken and made into a supervised system by using Levenberg-Marquardt optimization technique. It was inferred that a k-means system does not arrive on its own at the means which will give a good segmentation. Hence the LM algorithm trains it for that purpose. The results are compared with that of a k-means system and they show a considerable improvement with a much higher precision.
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