A brain-computer interface (BCI) based on electroencephalography (EEG) can be useful for rehabilitation and the control of external devices. Five grasping tasks were decoded for motor execution (ME) and motor imagery (MI). During this experiment, eight healthy subjects were asked to imagine and grasp five objects. Analysis of EEG signals was performed after detecting muscle signals on electromyograms (EMG) with a time interval selection technique on data taken from these ME and MI experiments. By refining only data corresponding to the exact time when the users performed the motor intention, the proposed method can train the decoding model using only the EEG data generated by various motor intentions with strong correlation with a specific class. There was an accuracy of 70.73% for ME and 47.95% for MI for the five offline tasks. This method may be applied to future applications, such as controlling robot hands with BCIs.
翻译:脑计算机界面(BCI)基于电子脑镜学(EEG)的大脑-计算机界面(BCI)可用于修复和控制外部装置。五项掌握的任务被解码用于发动机执行(ME)和机动图象(MI)。在这次实验中,有八个健康对象被要求想象和捕捉五个对象。对EEEG信号的分析是在探测到电子图(EMG)上的肌肉信号并对这些磁图和MI实验中的数据进行时间间隔选择技术之后进行的。通过精炼与用户完成运动意图的确切时间相对应的数据,拟议的方法可以只使用与特定类别密切相关的各种运动意图产生的EEG数据来训练解码模型。在五项离线任务中,ME的精确率为70.73%,MI为47.95%。这种方法可用于今后的应用,例如控制BCI的机器人手。