基于联合聚类(K-Means和模糊C-Means)的有效MRI脑图像分割

Mustofa Alisahid Almahfud, Robert Setyawan, C. A. Sari, D. Setiadi, E. H. Rachmawanto
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引用次数: 12

摘要

本研究提出了一种结合两种K-Means和模糊C-Means (FCM)分组方法对人脑MRI图像进行脑肿瘤检测的分割方法。由于K-Means对颜色差异更敏感,因此可以很好地快速检测出最优值和局部异常值。但是每次程序启动时,K-Means聚类的结果都可能不同。为了克服这一问题,利用FCM对K-means的结果再次聚类,基于边缘对凸形进行分类,使聚类效果更好,计算过程更轻。在预处理阶段还提出了形态学和去噪处理,以提高精度。这种方法使检测结果更加有效和准确,计算速度更快。基于对62张脑MRI图像的实验结果,获得了91.94%的准确率。该结果远比K-Means或FCM方法准确,也比反向FCM-K-Means方法准确。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Effective MRI Brain Image Segmentation using Joint Clustering (K-Means and Fuzzy C-Means)
This study proposes a segmentation method in human brain MRI images by using a combination of two K-Means and Fuzzy C-Means (FCM) grouping methods to detect brain tumors. K-Means can detect optima and local outliers well and quickly because it is more sensitive to color differences. But the results of the K-Means cluster can be different each time the program starts. To overcome this problem, the results of K-means are clustered again with FCM to classify the convex shape based on the edge so that the cluster results better and the calculation process becomes lighter. Morphology and noise removal processes are also proposed at the preprocessing stage to improve accuracy. In this way the detection results are more effective and accurate with a faster calculation process. Based on the experimental results on 62 brain MRI images obtained an accuracy of 91.94%. This result is far more accurate than the K-Means or FCM methods and also the reverse FCM-K-Means method.
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