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Combining frequency and time-domain EEG features for classification of self-paced reach-and-grasp actions

机译:结合频域和时域EEG功能对自定进度的抓握动作进行分类

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Brain-computer interfaces (BCIs) might provide an intuitive way for severely motor impaired persons to operate assistive devices to perform daily life activities. Recent studies have shown that complex hand movements, such as reach-and-grasp tasks, can be decoded from the low frequency of the electroencephalogram (EEG). In this work we investigated whether additional features extracted from the frequency-domain of alpha and beta bands could improve classification performance of rest vs. palmar vs. lateral grasp. We analysed two multi-class classification approaches, the first using features from the low frequency time-domain, and the second in which we combined the time-domain with frequency-domain features from alpha and beta bands. We measured EEG of ten participants without motor disability which performed self-paced reach-and-grasp actions on objects of daily life. For the time-domain classification approach, participants reached an average peak accuracy of 65%. For the combined approach, an average peak accuracy of 75% was reached. In both approaches and for all subjects, performance was significantly higher than chance level (38.1%, 3-class scenario). By computing the confusion matrices as well as feature rankings through the Fisher score, we show that movement vs. rest classification performance increased considerably in the combined approach and was the main responsible for the multi-class higher performance. These findings could help the development of BCIs in real-life scenarios, where decreasing false movement detections could drastically increase the end-user acceptance and usability of BCIs.
机译:脑机接口(BCI)可能为严重运动障碍的人提供一种直观的方式来操作辅助设备以执行日常生活活动。最近的研究表明,可以从脑电图(EEG)的低频中解译出复杂的手部动作,例如伸手可及的动作。在这项工作中,我们调查了从alpha和beta频段的频域提取的其他特征是否可以改善休息,手掌和侧向抓握的分类性能。我们分析了两种多类分类方法,第一种使用低频时域的特征,第二种将时域与alpha和beta频段的频域特征结合在一起。我们测量了十名没有运动障碍的参与者的脑电图,他们对日常生活对象进行了自定进度的抓握动作。对于时域分类方法,参与者达到了65%的平均峰值准确度。对于组合方法,达到了75%的平均峰准确度。在这两种方法中,对于所有受试者,成绩均显着高于机会水平(38.1%,三级情景)。通过计算费舍尔得分的混淆矩阵以及特征排名,我们表明,运动与休息分类的性能在组合方法中显着提高,并且是造成多类更高性能的主要原因。这些发现可能有助于在现实生活中开发BCI,在这种情况下,减少错误动作检测可能会大大提高BCI的最终用户接受度和可用性。

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