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Rapid brain tissue segmentation process by modified FCM algorithm with CUDA enabled GPU machine

机译:改进的FCM算法和支持CUDA的GPU机器可快速进行脑组织分割过程

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摘要

The proposed work introduces a modified method of fuzzy c means (FCM) algorithm using bias field correction and partial supervision techniques. The proposed method is named as bias corrected partial supervision FCM (BCPSFCM). The modified membership function takes the advantage of available knowledge from labeled patterns with the bias field correction. The experiment is tested on internet brain segmentation repository with their gold standard. The performance of the method is compared with three existing methods and 12 state of the art methods using dice coefficient, sensitivity, specificity, and accuracy. Accuracy of the proposed method reached upto 98%, 98%, and 99% of GM, WM, and CSF segmentation but required additional computation power from graphics processing unit (GPU). Further parallel BCPSFCM is proposed with the help of compute unified device architecture enabled GPU machine and the processing time is reduced up to 49 times than the serial implementation.
机译:拟议的工作介绍了一种改进的模糊c均值(FCM)算法,该算法使用了偏场校正和部分监督技术。所提出的方法被称为偏差校正的局部监督FCM(BCPSFCM)。修改后的隶属度函数利用带有偏置场校正的标记模式的可用知识。该实验已在其黄金标准的互联网大脑分割存储库中进行了测试。使用骰子系数,灵敏度,特异性和准确性,将该方法的性能与三种现有方法和12种最新技术方法进行比较。所提出方法的准确性达到了GM,WM和CSF分割的98%,98%和99%,但需要图形处理单元(GPU)的额外计算能力。在支持计算统一设备架构的GPU机器的帮助下,进一步提出了并行BCPSFCM,与串行实现相比,处理时间最多可减少49倍。

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