Mother Wavelet for Optimal Feature Analysis in Multiclass EEG Signals

N. Rafiuddin, Y. Khan, Omar Farooq
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Abstract

The aim of this study is to investigate the best type of mother wavelet capable of classifying multiple classes related to EEG. For instance, classification of the three brain states, namely seizure, pre-seizure (for seizure prediction), and normal states is an important part of the study in multiclass classification of epilepsy. In an attempt to yield the best mother wavelet, the study employs the MDWP approach by excavating through the wavelet packet tree up to the seventh level of decomposition, exploiting the wavelet coefficients on each level. The mother wavelets incorporated in the study are the commonly used wavelets, namely db4, sym5, coif4 and db2. Features were obtained by evaluating energy on all wavelet packets, which were further ranked using Naïve-Bayes classifier. Beginning with the feature ranked highest and progressively adding features with lower ranks one at a time, the classification results depicted in the form of patterns show the db4 mother wavelet to outperform others.
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基于母小波的多类脑电信号最优特征分析
本研究的目的是探讨能够对脑电相关的多个类别进行分类的最佳母小波类型。例如,癫痫发作、癫痫前(用于预测癫痫发作)和正常状态三种大脑状态的分类是癫痫多类分类研究的重要组成部分。为了得到最好的母小波,本研究采用了MDWP方法,通过挖掘小波包树直到分解的第七个层次,利用每个层次上的小波系数。本研究纳入的母小波是常用的小波,即db4、sym5、coif4和db2。通过评估所有小波包上的能量得到特征,并使用Naïve-Bayes分类器对其进行进一步排序。从排名最高的特征开始,逐步添加排名较低的特征,以模式的形式描述的分类结果显示db4母小波优于其他小波。
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