基于经验模态分解和支持向量机的脑电信号分析

Kaushik Das, Rajkishur Mudoi
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引用次数: 2

摘要

本文提出了一种基于经验模态分解(EMD)域的脑电图信号检测癫痫发作的方法。在这里,我们使用了方差、偏度和峰度等统计矩,以及样本熵和近似熵等非线性测度,这些测度是通过对正态、间隔和间隔脑电图信号进行经验模态分解得到的。EMD方法产生的本征模态函数可以看作是一组调幅调频信号。将计算出的特征输入到支持向量机中进行分类,并利用在线数据集研究了该方法的有效性。在数据集中,我们考虑了三种状态,即正常状态、间隔状态和临界状态。该方法对正常、骤停、间歇、骤停脑电信号的分类准确率达到100%。
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Analysis of EEG signals using empirical mode decomposition and support vector machine
This paper presents a method for the detection of epileptic seizure from electroencephalogram (EEG) signals in the empirical mode decomposition (EMD) domain. Here we have used statistical moments like variance, skewness and kurtosis and non linear measures like sample entropy and approximate entropy on the intrinsic mode functions (IMFs), which are obtained by doing empirical mode decomposition on normal, interictal and ictal EEG signals. The intrinsic mode functions which are generated by the EMD method can be considered as a set of amplitude and frequency modulated signals. For classification the calculated features are feed to a support vector machine and the effectiveness of the proposed method is studied using a dataset which is available online. In the dataset we have considered three states namely normal, interictal and ictal. The proposed method gives an accuracy of 100% for the classification of normal and ictal as well as interictal and ictal EEG signals.
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