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MRI Brain Image Segmentation Using Modified Fuzzy C-Means Clustering Algorithm

机译:改进的模糊C均值聚类算法进行MRI脑图像分割

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Clustering approach is widely used in biomedical applications particularly for brain tumor detection in abnormal magnetic resonance (MRI) images. Fuzzy clustering using fuzzy C-means (FCM) algorithm proved to be superior over the other clustering approaches in terms of segmentation efficiency. But the major drawback of the FCM algorithm is the huge computational time required for convergence. The effectiveness of the FCM algorithm in terms of computational rate is improved by modifying the cluster center and membership value updating criterion. In this paper, the application of modified FCM algorithm for MR brain tumor detection is explored. A comprehensive feature vector space is used for the segmentation technique. Comparative analysis in terms of segmentation efficiency and convergence rate is performed between the conventional FCM and the modified FCM. Experimental results show superior results for the modified FCM algorithm in terms of the performance measures.
机译:聚类方法已广泛用于生物医学应用中,尤其是用于异常磁共振(MRI)图像中的脑肿瘤检测。在分割效率方面,使用模糊C均值(FCM)算法进行的模糊聚类被证明优于其他聚类方法。但是FCM算法的主要缺点是收敛所需的大量计算时间。通过修改聚类中心和成员值更新标准,可以提高FCM算法在计算速度方面的有效性。本文探讨了改进的FCM算法在磁共振脑肿瘤检测中的应用。综合的特征向量空间用于分割技术。在传统FCM和修改后的FCM之间进行了分段效率和收敛速度方面的比较分析。实验结果表明,改进后的FCM算法在性能指标上具有优异的结果。

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