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Time Domain Parameters for Online Feedback fNIRS-Based Brain-Computer Interface Systems

机译:在线反馈基于fNIRS的脑机接口系统的时域参数

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We investigate time domain parameters called high order moments in functional Near Infrared Spectroscopy (fNIRS) signal and propose to use them as new brain features in fNIRS-based Brain Computer Interface (BCI) research. These high order moments are well appropriate with fNIRS data without any special preprocessing or filtering step. Therefore, they could be used to guide users in feedback fNIRS-based BCI experiments. We performed experiments on motor imagery and person identification problems with the 2nd order moment, 4th order moment and a combination of these moments. Experimental results showed that these features provided high accuracy. For motor imagery problem, our system could achieve accuracy up to 99.5% for subject independent problem and varies between 86.5±5.4% and 97.0±2.1% for subject dependent problem. For person identification problem, our system could achieve accuracy nearly 100%. Comparing with other systems that used non-filtered raw signal as feature, these features are more stable than the raw signal because of noise reduction. We also found that the 2nd order moment alone could be an excellent and efficient feature for fNIRS-based BCI systems.
机译:我们研究功能性近红外光谱(fNIRS)信号中称为高阶矩的时域参数,并建议将其用作基于fNIRS的脑计算机接口(BCI)研究中的新脑功能。这些高阶矩非常适合fNIRS数据,而无需任何特殊的预处理或过滤步骤。因此,它们可以用来指导用户进行基于fNIRS的反馈BCI实验。我们用二阶矩,四阶矩以及这些矩的组合对运动图像和人的识别问题进行了实验。实验结果表明,这些功能具有很高的准确性。对于运动图像问题,我们的系统对于独立于主题的问题可以达到高达99.5%的精度,对于独立于主题的问题,其精度在86.5±5.4%和97.0±2.1%之间。对于人员识别问题,我们的系统可以达到近100%的准确性。与其他使用未经滤波的原始信号作为功能的系统相比,由于降低了噪声,这些功能比原始信号更稳定。我们还发现,对于基于fNIRS的BCI系统,仅二阶矩可能是一个出色而有效的功能。

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