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Fast and accurate fuzzy C-means algorithm for MR brain image segmentation

机译:MR大脑图像分割的快速准确的模糊C均值算法

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摘要

Fuzzy theory based intelligent techniques are widely preferred for medical applications because of high accuracy. Among the fuzzy based techniques, Fuzzy C-Means (FCM) algorithm is popular than the other approaches due to the availability of expert knowledge. But, one of the hidden facts is that the computational complexity of the FCM algorithm is significantly high. Since medical applications need to be time effective, suitable modifications must be made in this algorithm for practical feasibility. In this study, necessary changes are included in the FCM approach to make the approach time effective without compromising the segmentation efficiency. An additional data reduction approach is performed in the conventional FCM to minimize the computational complexity and the convergence rate. A comparative analysis with the conventional FCM algorithm and the proposed Fast and Accurate FCM (FAFCM) is also given to show the superior nature of the proposed approach. These techniques are analyzed in terms of segmentation efficiency and convergence rate. Experimental results show promising results for the proposed approach. (c) 2016 Wiley Periodicals, Inc. Int J Imaging Syst Technol, 26, 188-195, 2016
机译:基于模糊理论的智能技术由于具有很高的准确性而被广泛应用于医疗应用。在基于模糊的技术中,由于具有专家知识,模糊C均值(FCM)算法比其他方法更受欢迎。但是,隐藏的事实之一是FCM算法的计算复杂度非常高。由于医疗应用需要时间有效,因此必须对该算法进行适当的修改以实现实际可行性。在这项研究中,FCM方法中包含必要的更改,以使方法时间有效而又不影响分割效率。在常规FCM中执行了另一种数据缩减方法,以最大程度地减少计算复杂性和收敛速度。还与常规FCM算法和建议的快速和精确FCM(FAFCM)进行了比较分析,以显示该方法的优越性。从分割效率和收敛速度方面分析了这些技术。实验结果表明该方法具有良好的前景。 (c)2016 Wiley Periodicals,Inc.国际成像技术,2016年26月188-195

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