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The Feature Extraction Method of EEG Signals Based on the Loop Coefficient of Transition Network

机译:基于过渡网络环路系数的脑电信号特征提取方法

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High accuracy of epilepsy EEG automatic detection has important clinical research significance. The combination of nonlinear time series analysis and complex network theory made it possible to analyze time series by the statistical characteristics of complex network. In this paper, based on the transition network the feature extraction method of EEG signals was proposed. Based on the complex network, the epileptic EEG data were transformed into the transition network, and the loop coefficient was extracted as the feature to classify the epileptic EEG signals. Experimental results show that the single feature classification based on the extracted feature obtains classification accuracy up to 98.5%, which indicates that the classification accuracy of the single feature based on the transition network was very high.
机译:癫痫脑电图的高精度自动检测具有重要的临床研究意义。非线性时间序列分析和复杂网络理论的结合使得可以通过复杂网络的统计特性来分析时间序列。本文基于过渡网络,提出了脑电信号特征提取方法。基于复杂网络,将癫痫脑电数据转换为过渡网络,提取环路系数作为特征,对癫痫脑电信号进行分类。实验结果表明,基于提取特征的单特征分类的分类准确率高达98.5%,表明基于过渡网络的单特征分类准确度很高。

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