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Multivariate synchronization index for frequency recognition of SSVEP-based brain-computer interface

机译:基于SSVEP的脑机接口频率识别的多元同步指标

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摘要

Multichannel frequency recognition methods are prevalent in SSVEP-BCI systems. These methods increase the convenience of the BCI system for users and require no calibration data. A novel multivariate synchronization index (MSI) for frequency recognition was proposed in this paper. This measure characterized the synchronization between multichannel EEGs and the reference signals, the latter of which were defined according to the stimulus frequency. For the simulation and real data, the proposed method showed better performance than the widely used canonical correlation analysis (CCA) and minimum energy combination (MEC), especially for short data length and a small number of channels. The MSI was also implemented successfully in an online SSVEP-based BCI system, thus further confirming its feasibility for application systems. Because fast and accurate recognition is crucial for practical systems, we recommend MSI as a potential method for frequency recognition in future SSVEP-BCI.
机译:多通道频率识别方法在SSVEP-BCI系统中很普遍。这些方法为用户增加了BCI系统的便利性,并且不需要校准数据。提出了一种新颖的用于频率识别的多元同步指数(MSI)。该措施表征了多通道脑电图和参考信号之间的同步,参考信号是根据刺激频率定义的。对于仿真和真实数据,所提出的方法表现出比广泛使用的规范相关分析(CCA)和最小能量组合(MEC)更好的性能,尤其是对于数据长度短和信道少的情况。 MSI还成功地在基于SSVEP的在线BCI系统中实施,从而进一步证实了其在应用系统中的可行性。由于快速准确的识别对于实际系统至关重要,因此我们建议将MSI作为潜在的未来SSVEP-BCI频率识别方法。

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