Zhang Shanshan, Wang Kun, Xu Minpeng, Wang Zhongpeng, Chen Long, Wang Faqi, Zhang Lixin, Ming Dong
Annu Int Conf IEEE Eng Med Biol Soc. 2019 Jul;2019:4541-4544. doi: 10.1109/EMBC.2019.8857117.
In recent years, motor imagery-based BCIs (MI-BCIs) controlled various external devices successfully, which have great potential in neurological rehabilitation. In this paper, we designed a paradigm of sequential finger movements and utilized spatial filters for feature extraction to classify single-trial electroencephalography (EEG) induced by finger movements of left and right hand. Ten healthy subjects participated the experiment. The analysis of EEG patterns showed significant contralateral dominance. We investigated how data length affected the classification accuracy. The classification accuracy was improved with the increase of the keystrokes in one trial, and the results were 87.42%, 91.21%, 93.08% and 93.59% corresponding to single keystroke, two keystrokes, three keystrokes and four keystrokes. This study would be helpful to improve the decoding efficiency and optimize the encoding method of motor-related EEG information.
近年来,基于运动想象的脑机接口(MI-BCIs)成功地控制了各种外部设备,在神经康复方面具有巨大潜力。在本文中,我们设计了一种连续手指运动范式,并利用空间滤波器进行特征提取,以对由左右手手指运动诱发的单次试验脑电图(EEG)进行分类。十名健康受试者参与了实验。脑电图模式分析显示出明显的对侧优势。我们研究了数据长度如何影响分类准确率。随着一次试验中按键次数的增加,分类准确率得到提高,对应单次按键、两次按键、三次按键和四次按键的结果分别为87.42%、91.21%、93.08%和93.59%。本研究将有助于提高运动相关脑电信息的解码效率并优化编码方法。