Chai Xiaoke, Zhang Zhimin, Guan Kai, Zhang Tengyu, Xu Jinxiu, Niu Haijun
Beijing Advanced Innovation Center for Biomedical Engineering, School of Biological Science and Medical Engineering, Beihang University, Beijing 100191, China.
National Research Center for Rehabilitation Technical Aids, Beijing 100176, China.
Comput Methods Programs Biomed. 2020 Nov;196:105650. doi: 10.1016/j.cmpb.2020.105650. Epub 2020 Jul 9.
In flicker-based steady-state visual evoked potentials (SSVEP) brain-computer interface (BCI), the system performance decreases due to prolonged repeated visual stimulation. To reduce the performance decrease due to visual fatigue, the zoom motion based steady-state motion visual evoked potentials (SSMVEPs) paradigm had been proposed. In this study, the stimulation parameters of the paradigm are optimised to mitigate the decrease in detection accuracy for SSMVEP due to visual fatigue.
Eight zoom motion-based SSMVEP paradigms with different stimulation parameters were compared. The graph size, luminance, colour, and shape, as well as the frequency range and interval of the stimulation and refresh rate of the screen was changed to determine the optimal paradigm with high recognition accuracy and reduced fatigue effects. The signal-to-noise ratio (SNR) of SSMVEP was also calculated for four fatigue levels. Moreover, the power spectral density of electroencephalograph (EEG) alpha and theta bands during ongoing activity was calculated for the stimulation experiment to evaluate fatigue at the start and end of the stimulation task.
All stimulation SSMVEP paradigms exhibited high accuracies. Changes in luminance, colour, and shape did not impact the recognition accuracy, nor did a higher stimulation frequency or lower frequency interval of each stimulation block. However, the paradigm with smaller stimulus achieved the highest average target selection accuracy of 97.2%, compared to 94.9% for the standard paradigm. Furthermore, it exhibited almost zero reduction in recognition accuracy due to fatigue. From fatigue level 1 to level 4, the smaller zoom motion-based SSMVEP exhibited a lower decrease in the SNR of SSMVEP and a lower alpha/theta ratio decrease during ongoing stimulation activity compared to the standard paradigm.
For a zoom motion-based SSMVEP paradigm, changing multiple stimulation parameters can lead to the same high performance as the standard paradigm. Moreover, using a smaller stimulus can reduce the accuracy decrease caused by fatigue because the SNR decrease in the evoked SSMVEP state was negligible and the alpha/theta index decrease during ongoing activity was lower than that for the standard paradigm.
在基于闪烁的稳态视觉诱发电位(SSVEP)脑机接口(BCI)中,由于长时间重复视觉刺激,系统性能会下降。为了减少因视觉疲劳导致的性能下降,提出了基于缩放运动的稳态运动视觉诱发电位(SSMVEPs)范式。在本研究中,对该范式的刺激参数进行了优化,以减轻因视觉疲劳导致的SSMVEP检测准确率下降。
比较了8种具有不同刺激参数的基于缩放运动的SSMVEP范式。改变图形大小、亮度、颜色和形状,以及刺激的频率范围和间隔和屏幕刷新率,以确定具有高识别准确率和降低疲劳效应的最佳范式。还计算了四种疲劳水平下SSMVEP的信噪比(SNR)。此外,在刺激实验中计算了持续活动期间脑电图(EEG)α和θ波段的功率谱密度,以评估刺激任务开始和结束时的疲劳程度。
所有刺激的SSMVEP范式都表现出较高的准确率。亮度、颜色和形状的变化不影响识别准确率,每个刺激块的较高刺激频率或较低频率间隔也不影响。然而,与标准范式的94.9%相比,刺激较小的范式实现了最高的平均目标选择准确率97.2%。此外,由于疲劳,其识别准确率几乎没有下降。从疲劳水平1到水平4,与标准范式相比,基于较小缩放运动的SSMVEP在持续刺激活动期间SSMVEP的SNR下降较低,α/θ比值下降也较低。
对于基于缩放运动的SSMVEP范式,改变多个刺激参数可导致与标准范式相同的高性能。此外,使用较小的刺激可以减少由疲劳引起的准确率下降,因为诱发的SSMVEP状态下的SNR下降可以忽略不计,并且持续活动期间的α/θ指数下降低于标准范式。