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Deciding the appropriate Mother Wavelet for extract features from brain computer interface signals

机译:确定适当的Mother Wavelet从大脑计算机接口信号中提取特征

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Feature extraction is a very challenging task because the choice of discriminative features directly affects the classification performance of brain computer interface system. The objective of this paper is to investigate the Mother Wavelets' affects on classification results. In order to execute this, we extracted features from three different data sets by using twelve Mother Wavelets. Then we classified the brain computer interface signals with three classification algorithms, including k-nearest neighbor, support vector machine and linear discriminant analysis. The experiments proved that Daubechies and Shannon are the most suitable wavelet families in order to extract more discriminative features from brain computer interface signals.
机译:特征提取是一项非常具有挑战性的任务,因为区分特征的选择直接影响大脑计算机接口系统的分类性能。本文的目的是研究子小波对分类结果的影响。为了执行此操作,我们使用了十二个子波从三个不同的数据集中提取了特征。然后我们用三种分类算法对脑计算机接口信号进行分类,包括k近邻算法,支持向量机和线性判别分析。实验证明,Daubechies和Shannon是最合适的小波家族,目的是从大脑计算机接口信号中提取出更多的判别特征。

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