基于粒子群的RBF神经网络癫痫脑电图分类研究

Kun-sen Li, Weizhen Luo, Tingxi Wen, Huailin Dong
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引用次数: 0

摘要

癫痫是一种危害人类健康的常见病和多发病,因其随时随地发作,对患者身心健康造成很大影响,已成为许多国家重视的高发中性网络疾病。本文提出了混合特征提取方法,将时域方法和非线性分析方法混合提取特征,然后应用粒子群算法进行优化选择,最后利用优化后的特征通过RBF神经网络算法训练癫痫分类器。在实验中,两类问题和三类问题的准确率分别达到了99。%和98.1%,多次交叉实验结果表明,该方法在针对癫痫脑电波的分类特征提取中是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classified research on epilepsy electroencephalogram of RBF neutral network based on particle swarm
Epilepsy is a kind of common diseases and frequently-occurring diseases damaging human health, and has a big impact on patient's body and mental health due to its attack at any place and any time, which has been the valued neutral network disease with high incidence in many countries. This paper proposes the mixed feature extraction to extract the feature by mixture of timedomain method and nonlinear analysis method, and then make optimization selection by applying particle swarm optimization, and finally train the epilepsy classifier by utilizing the optimized features through the RBF neutral network algorithm. In the experiment, the accuracies of two-classification problems and three-classification problems respectively reach 99.% and 98.1%, The results of cross-over experiment for many times show that, the method is of effectiveness in the classified feature extraction aiming at epilepsy brain wave.
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