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P300 Feature Extraction Based on Parametric Model and FastICA Algorithm

机译:基于参数模型和FastICA算法的P300特征提取

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A method based on AR model and Fast ICA algorithm for P300 feature extracting is presented. In the study, the visual evoked signal is obtained via the alternate pictures. Then, principal component analysis (PCA) is used for reducing the dimension of EEG signal, independent component analysis (ICA) is used for removing EOG artifact. And AR model is constructed for filtrating the spontaneous EEG. Finally, a coherence average is used to extract P300 in real-time. The results have shown that this method can perform effectively to extract P300 feature independently to any prior information and avoid the subjectȁ9;s visual fatigue caused by long time visual evoking. It can be applied on online BCI system.
机译:提出了一种基于AR模型和快速ICA算法的P300特征提取方法。在研究中,视觉诱发信号是通过替代图片获得的。然后,主成分分析(PCA)用于减小EEG信号的维数,独立成分分析(ICA)用于去除EOG伪影。并建立了用于过滤自发性脑电图的AR模型。最后,使用相干平均值实时提取P300。结果表明,该方法可以有效地独立于任何先验信息提取P300特征,并且避免了受试者长时间视觉诱发的视觉疲劳。可以在在线BCI系统上应用。

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