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Application of Phase Space Reconstruction in a Few-Channel EEG-NIRS Bimodal Brain-Computer Interface System

机译:相空间重构在少数通道EEG-NIRS双峰脑机接口系统中的应用

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We developed a highly accurate, few-channel, bimodal electroencephalograph (EEG) and near-infrared spectroscopy (NIRS) brain-computer interface (BCI) system by developing new methods for signal processing and feature extraction. For data processing, we performed source analysis of EEG and NIRS signals to select the best channels from which to build a few-channel system. For EEG feature extraction, we used phase space reconstruction to convert EEG few-channel signals into multichannel signals, facilitating the extraction of EEG features by common spatial pattern. The Hurst exponent of the selected 10 channels constituted the extracted NIRS data feature. For pattern classification, we fused EEG and NIRS features together and used the support vector machine classification method. The average accuracy of bimodal EEG-NIRS was significantly higher than that of either EEG or NIRS as unimodal techniques.
机译:通过开发用于信号处理和特征提取的新方法,我们开发了高精度,少通道,双峰脑电图(EEG)和近红外光谱(NIRS)脑机接口(BCI)系统。对于数据处理,我们对EEG和NIRS信号进行了源分析,以选择最佳的通道来构建几个通道的系统。对于脑电图特征提取,我们使用相空间重构将脑电图的少通道信号转换为多通道信号,从而有助于通过常见的空间模式提取脑电图特征。所选的10个通道的赫斯特指数构成了提取的NIRS数据特征。对于模式分类,我们将EEG和NIRS特征融合在一起,并使用了支持向量机分类方法。双峰EEG-NIRS作为单峰技术的平均准确度明显高于EEG或NIRS。

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