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Bispectral analysis-based approach for steady-state visual evoked potentials detection

机译:基于双光谱分析的稳态视觉诱发电位检测方法

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摘要

Brain-Computer Interface (BCI) systems are widely based on steady-state visual evoked potentials (SSVEP) detection using electroencephalography (EEG) signals. SSVEP-based BCIs are becoming attractive due to their higher signal-to-noise ratio (SNR) as well as faster information transfer rate (ITR). However, their performances are largely affected by the interference coming from the spontaneous EEG activities which intrinsically restrict their efficiency in distinguishing between SSVEPs and background EEG activities. In this paper, we introduce a new approach for the detection of SSVEP based on bispectral analysis to palliate the frequency-dependent bias. A COMB filter associated with a wavelet denoising filter is firstly used to minimize the noise while improving the SNR of phase signals. Next, the complementary orthogonal projections and the principle component analysis (PCA) are used to decompose the components related to SSVEPs and components related to brain activities. Finally, the bispectrum, a powerful tool for the analysis and the characterization of nonlinear properties of stochastic signals, is used to extract the features of the EEG signal benefiting from the information about the phase coupling of the signal components. The results of experiments, using two databases on five (or ten) subjects, show that the proposed approach significantly outperformed the standard CCA approach in distinguishing the target frequency and in average information transfer rate.
机译:大脑 - 计算机接口(BCI)系统基于使用脑电图(EEG)信号的稳态视觉诱发电位(SSVEP)检测。基于SSVEP的BCIS由于其较高的信噪比(SNR)以及更快的信息传输速率(ITR)而变得有吸引力。然而,他们的性能主要受到来自自然脑电图活动的干扰的影响,这在内在限制了它们在区分SSVEPS和背景EEG活动方面的效率。在本文中,我们介绍了一种基于双光谱分析来检测SSVEP的新方法,以缓解频率相关的偏差。首先使用与小波噪声滤波器相关联的梳状滤波器,以最小化噪声,同时改善相位信号的SNR。接下来,互补正交投影和原理分量分析(PCA)用于分解与脑活动相关的SSVEPS和组件相关的组件。最后,BISPectrum是用于分析的强大工具和随机信号的非线性特性的表征,用于提取来自关于信号分量的相位耦合信息的EEG信号的特征。实验结果,使用五个(或十个)科目的两个数据库,表明所提出的方法在区分目标频率和平均信息转移率时显着优于标准CCA方法。

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