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A Modified Genetic Algorithm Based FCM Clustering Algorithm for Magnetic Resonance Image Segmentation

机译:基于改进的基于遗传算法的磁共振图像分割的FCM聚类算法

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In this article, we have devised modified genetic algorithm (MfGA) based fuzzy C-means algorithm, which segment magnetic resonance (MR) images. In FCM, local minimum point can be easily derived for not selecting the centroids correctly. The proposed MfGA improves the population initialization and crossover parts of GA and generate the optimized class levels of the multilevel MR images. After that, the derived optimized class levels are applied as the initial input in FCM. An extensive performance comparison of the proposed method with the conventional FCM on two MR images establishes the superiority of the proposed approach.
机译:在本文中,我们设计了基于修改的基于遗传算法(MFGA)的模糊C算法,该模糊C算法是段磁共振(MR)图像。 在FCM中,可以轻易导出局部最小点,以便无法正确选择质心。 所提出的MFGA改善了GA的群体初始化和交叉部分,并生成多级MR图像的优化类级别。 之后,派生的优化类级别被应用于FCM中的初始输入。 在两个MR图像上具有传统FCM的提出方法的广泛性能比较建立了所提出的方法的优越性。

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