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Automatic Brain Tissues Segmentation based on Self Initializing K-Means Clustering Technique

机译:基于自初始化K均值聚类技术的脑组织自动分割

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摘要

This paper proposed a self-initialization process to K-Means method for automatic segmentation of human brain Magnetic Resonance Image (MRI) scans. K-Means clustering method is an iterative approach and the initialization process is usually done either manually or randomly. In this work, a method has been proposed to make use of the histogram of the gray scale MRI brain images to automatically initialize the K-means clustering algorithm. This is done by taking the number of main peaks as well as their values as number of clusters and their initial centroids respectively. This makes the algorithm faster by reducing the number of iterations in segmenting the MRI image. The proposed method is named as Histogram Based Self Initializing K-Means (HBSIKM) method. Experiments were done with the MRI brain volumes available from Internet Brain Segmentation Repository (IBSR). Similarity validation was done by Dice coefficient with the available gold standards from the IBSR website. The performance of the proposed method is compared with the traditional K-Means method. For the IBSR volumes, the proposed method yields 3 to 4 times faster results and higher dice value than traditional K-Means method.
机译:本文提出了一种针对人脑磁共振图像(MRI)自动分割的K-Means方法自初始化过程。 K-Means聚类方法是一种迭代方法,初始化过程通常手动或随机完成。在这项工作中,已经提出了一种利用灰度MRI脑图像的直方图自动初始化K均值聚类算法的方法。这是通过将主峰的数量及其值分别作为簇的数量和其初始质心来实现的。通过减少分割MRI图像的迭代次数,这使算法更快。所提出的方法称为基于直方图的自初始化K均值(HBSIKM)方法。实验是使用可从Internet Brain Segmentation Repository(IBSR)获得的MRI脑体积进行的。通过骰子系数与IBSR网站上可用的黄金标准进行相似性验证。将该方法的性能与传统的K-Means方法进行了比较。对于IBSR量,与传统的K-Means方法相比,所提出的方法产生的结果快3到4倍,并且骰子值更高。

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