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Research of P300 Feature Extraction Algorithm Based on ICA and Wavelet Transform

机译:基于ICA和小波变换的P300特征提取算法研究

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A brain-computer interface (BCI) is a system for direct communication between brain and computer. The P300 BCI system relies on an oddball paradigm to elicit the P300. With the aim to extract different P300 feature information from different subjects and reduce the data amount of electroencephalogram (EEG) in P300 classification, a P300 feature extraction algorithm is proposed, which is based on independent component analysis (ICA) and wavelet transform. Firstly, based on the algorithms of ICA and fisher distance, specific channel combinations which to extract features from are selected for different subjects, and different optimal features such as peaks of time domain, peak areas and wavelet coefficients from these specific channel combinations are extracted. Then, a support vector machine (SVM) is used for the classification of P300. Here, the BCI Competition III data set II has been used to verify the method. Compared with the two related literature, for subject A, the proposed method can achieve an accuracy of 85%, which has 6 and 5 percentage point increase respectively and reduce the data amount by 62.5%, and for subject B, achieve an accuracy of 94%, which has 5 and 1 percentage point increase respectively and reduce the data amount by 64.3%. All these verify that the proposed method can select optimal features from both time domain and frequency domain according to specific subjects and reduce the data amount to improve the speed of classification, while achieve an higher accuracy.
机译:脑机接口(BCI)是用于脑机之间直接通信的系统。 P300 BCI系统依靠奇数球范式来引发P300。为了从不同主体中提取不同的P300特征信息,减少P300分类中的脑电图数据量,提出了一种基于独立分量分析(ICA)和小波变换的P300特征提取算法。首先,基于ICA和费舍尔距离的算法,针对不同的对象选择提取特征的特定信道组合,并从这些特定信道组合中提取不同的最佳特征,例如时域峰值,峰面积和小波系数。然后,将支持向量机(SVM)用于P300的分类。在此,已使用BCI竞赛III数据集II来验证该方法。与两个相关文献相比,该方法对主题A的准确度达到85%,分别提高了6个和5个百分点,数据量减少了62.5%;对于主题B,该方法的准确度达到了94% %,分别增加5和1个百分点,数据量减少64.3%。所有这些都证明了该方法可以根据特定主题从时域和频域中选择最优特征,并减少数据量以提高分类速度,同时达到较高的准确性。

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