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A frequency recognition method based on Multitaper Spectral Analysis and SNR estimation for SSVEP-based brain-computer interface

机译:一种基于多销谱分析的频率识别方法和基于SSVEP的脑电电脑界面的SNR估计

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Over the past several years, steady-state visual evoked potential (SSVEP)-based brain-computer interfaces (BCIs) have attracted wide attention in the field of BCIs research due to high information transfer rate, little user training, and applicability to the majority. In conventional recognition methods for training-free SSVEP-based BCIs, the energy difference between the frequencies of electroencephalogram (EEG) background noise is usually ignored, therefore, there is a significant variance among the recognition accuracy of different stimulus frequencies. In order to improve the performance of training-free SSVEP-based BCIs system and balance the accuracy of recognition between different stimulus frequencies, a recognition method based on multitaper spectral analysis and signal-to-noise ratio estimation (MTSA-SNR) is proposed in this paper. A 40-class SSVEP public benchmark SSVEP dataset recorded from 35 subjects was used to evaluate the performance of the proposed method. Under the condition of 2.25s data length, the accuracy of the three methods were 81.1% (MTSA-SNR), 74.5% (canonical correlation analysis, CCA) and 73.4% (multivariate synchronization index, MSI), and the corresponding ITRs were 101 bits/min (MTSA-SNR), 89 bits/min (CCA), 87 bits/min (MSI). In the low frequency range (8-9.8Hz), the average recognition accuracy of the three methods is 82.9% (MTSA-SNR), 82.0% (CCA), 83.3% (MSI). The average accuracy of the three methods was 78.6% (MTSA-SNR), 64.9% (CCA) and 61.8% (MSI) in the high frequency range (14-15.8Hz). According to the results, the proposed method can effectively improve the performance of training-free SSVEP-based BCI system, and balance the recognition accuracy between different stimulation frequencies.
机译:在过去的几年里,基于稳态的视觉诱发潜力(SSVEP)基础的脑电电脑界面(BCIS)由于高信息传输速度,小用户培训和大多数人的适用性,因此引起了BCIS研究领域的广泛关注。在传统的基于SSVEP的BCIS的传统识别方法中,脑电图频率之间的能量差通常忽略,因此,不同刺激频率的识别准确性之间存在显着方差。为了提高基于SSVEP的BCCIS系统的性能并平衡不同刺激频率之间识别的准确性,提出了一种基于多销光谱分析和信噪比估计(MTSA-SNR)的识别方法这张纸。从35个科目记录的40级SSVEP公共基准SSVEP数据集用于评估所提出的方法的性能。在2.25s数据长度的条件下,三种方法的准确性为81.1%(MTSA-SNR),74.5%(规范相关分析,CCA)和73.4%(多变量同步指数,MSI),相应的ITRS为101比特/分钟(MTSA-SNR),89位/分钟(CCA),87位/分钟(MSI)。在低频范围(8-9.8Hz)中,三种方法的平均识别准确性为82.9%(MTSA-SNR),82.0%(CCA),83.3%(MSI)。三种方法的平均准确性为高频范围(14-15.8Hz)的78.6%(MTSA-SNR),64.9%(CCA)和61.8%(MSI)。根据结果​​,该方法可以有效地改善无培训的基于SSVEP的BCI系统的性能,并平衡不同刺激频率之间的识别准确性。

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