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Automatic adaptation to the beta rebound after brisk movement imagery in a brain-computer interface

机译:自动适应Beta在脑电电脑界面中快速运动图像后的Beta反弹

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We simulate how a two-class brain-computer interface automatically adapts to post-movement imagery bursts of beta band activity (beta rebound) measured in the electroencephalogram at Cz. We used data from 20 healthy, novice volunteers. By combining an adaptive BCI approach with beta rebound features we hypothesize to attain better performance for more users, higher usability and lower setup time than with previous approaches. Our simulation processed data trialwise: The adaptive BCI continuously performed trial based outlier rejection, auto-calibrated a linear classifier after ten trials per class, and re-calibrated at every five trials per class. We simulated online performance by always applying the most recent classifier to newly processed trials. We found a high average peak accuracy of 76.4 ± 10.6 % over the participants. The present system performs equally well as a comparable state-of-the-art, low-scale co-adaptive BCI, but requires less user effort, a lower number of sensors and lower system complexity. The system also well complements existing beta rebound based BCI systems: In comparison to even simpler approaches it tends to work for more users. Compared to an approach that used motor execution to setup a classifier, the present system allows for faster, more intuitive and more effective calibration. We consider the encouraging results from this simulation an important step towards online operation.
机译:我们模拟了两级脑电脑界面如何自动适应在CZ中脑电图中测量的β带活动(β反弹)的移动后图像突发。我们使用来自20个健康的新手志愿者的数据。通过将Adapive BCI方法与Beta反弹功能组合,我们假设为更多用户提供更好的性能,更高的可用性和比以前的方法更高的设置时间。我们的模拟处理数据试验:自适应BCI连续执行基于试验的异常拒绝,自动校准每类的10个试验后的线性分类器,并在每班五次试验中重新校准。我们通过始终将最新分类器应用于新处理的试验来模拟在线表演。我们发现参与者的高平均峰值精度为76.4±10.6%。本系统同样地表现出相当的最先进的低规模共同自适应BCI,但需要更少的用户努力,较少数量的传感器和更低的系统复杂性。该系统也很好地补充了现有的Beta反弹的BCI系统:与更简单的方法相比,它往往适用于更多用户。与使用使用电机执行来设置分类器的方法相比,本系统允许更快,更直观,更有效的校准。我们认为这一模拟的令人鼓舞的结果是在线运营的重要一步。

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