Yong Xinyi, Menon Carlo
School of Engineering Science, Simon Fraser University, Burnaby, British Columbia, Canada.
PLoS One. 2015 Apr 1;10(4):e0121896. doi: 10.1371/journal.pone.0121896. eCollection 2015.
The task of discriminating the motor imagery of different movements within the same limb using electroencephalography (EEG) signals is challenging because these imaginary movements have close spatial representations on the motor cortex area. There is, however, a pressing need to succeed in this task. The reason is that the ability to classify different same-limb imaginary movements could increase the number of control dimensions of a brain-computer interface (BCI). In this paper, we propose a 3-class BCI system that discriminates EEG signals corresponding to rest, imaginary grasp movements, and imaginary elbow movements. Besides, the differences between simple motor imagery and goal-oriented motor imagery in terms of their topographical distributions and classification accuracies are also being investigated. To the best of our knowledge, both problems have not been explored in the literature. Based on the EEG data recorded from 12 able-bodied individuals, we have demonstrated that same-limb motor imagery classification is possible. For the binary classification of imaginary grasp and elbow (goal-oriented) movements, the average accuracy achieved is 66.9%. For the 3-class problem of discriminating rest against imaginary grasp and elbow movements, the average classification accuracy achieved is 60.7%, which is greater than the random classification accuracy of 33.3%. Our results also show that goal-oriented imaginary elbow movements lead to a better classification performance compared to simple imaginary elbow movements. This proposed BCI system could potentially be used in controlling a robotic rehabilitation system, which can assist stroke patients in performing task-specific exercises.
利用脑电图(EEG)信号来区分同一肢体不同运动的运动想象任务具有挑战性,因为这些想象运动在运动皮层区域具有相近的空间表征。然而,成功完成这项任务存在迫切需求。原因在于,对不同的同一肢体想象运动进行分类的能力可以增加脑机接口(BCI)的控制维度数量。在本文中,我们提出了一种3分类BCI系统,用于区分与休息、想象抓握运动和想象肘部运动相对应的EEG信号。此外,还在研究简单运动想象和目标导向运动想象在地形分布和分类准确率方面的差异。据我们所知,这两个问题在文献中均未得到探讨。基于从12名身体健康的个体记录的EEG数据,我们证明了同一肢体运动想象分类是可行的。对于想象抓握和肘部(目标导向)运动的二分类,所达到的平均准确率为66.9%。对于区分休息与想象抓握和肘部运动的3分类问题,所达到的平均分类准确率为60.7%,高于33.3%的随机分类准确率。我们的结果还表明,与简单的想象肘部运动相比,目标导向的想象肘部运动具有更好的分类性能。这种提出的BCI系统有可能用于控制机器人康复系统,该系统可以帮助中风患者进行特定任务的锻炼。