Miao Minmin, Zeng Hong, Wang Aimin, Zhao Fengkui, Liu Feixiang
School of Instrument Science and Engineering, Southeast University, No. 2 Sipailou, Nanjing 210096, China.
College of Automobile and Traffic Engineering, Nanjing Forest University, No. 159 Longpan Road, Nanjing 210037, China.
Rev Sci Instrum. 2017 Sep;88(9):094305. doi: 10.1063/1.5001896.
Electroencephalogram (EEG)-based motor imagery (MI) brain-computer interface (BCI) has shown its effectiveness for the control of rehabilitation devices designed for large body parts of the patients with neurologic impairments. In order to validate the feasibility of using EEG to decode the MI of a single index finger and constructing a BCI-enhanced finger rehabilitation system, we collected EEG data during right hand index finger MI and rest state for five healthy subjects and proposed a pattern recognition approach for classifying these two mental states. First, Fisher's linear discriminant criteria and power spectral density analysis were used to analyze the event-related desynchronization patterns. Second, both band power and approximate entropy were extracted as features. Third, aiming to eliminate the abnormal samples in the dictionary and improve the classification performance of the conventional sparse representation-based classification (SRC) method, we proposed a novel dictionary cleaned sparse representation-based classification (DCSRC) method for final classification. The experimental results show that the proposed DCSRC method gives better classification accuracies than SRC and an average classification accuracy of 81.32% is obtained for five subjects. Thus, it is demonstrated that single right hand index finger MI can be decoded from the sensorimotor rhythms, and the feature patterns of index finger MI and rest state can be well recognized for robotic exoskeleton initiation.
基于脑电图(EEG)的运动想象(MI)脑机接口(BCI)已证明其在控制为神经功能障碍患者的大型身体部位设计的康复设备方面的有效性。为了验证使用脑电图解码单根食指运动想象并构建BCI增强型手指康复系统的可行性,我们收集了5名健康受试者在右手食指运动想象和静息状态期间的脑电图数据,并提出了一种模式识别方法来对这两种心理状态进行分类。首先,使用Fisher线性判别准则和功率谱密度分析来分析事件相关去同步化模式。其次,提取带功率和近似熵作为特征。第三,为了消除字典中的异常样本并提高传统基于稀疏表示的分类(SRC)方法的分类性能,我们提出了一种新颖的基于字典清理稀疏表示的分类(DCSRC)方法进行最终分类。实验结果表明,所提出的DCSRC方法比SRC具有更好的分类准确率,5名受试者的平均分类准确率为81.32%。因此,证明了可以从感觉运动节律中解码单根右手食指的运动想象,并且可以很好地识别食指运动想象和静息状态的特征模式,以启动机器人外骨骼。