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Prediction of individual finger movements for motor execution and imagery: An EEG study

机译:预测电机执行和图像的单个手指运动:EEG研究

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In the study of brain computer interface using electroencephalogram (EEG), the area of motor imagery of individual finger movement has been extensively examined. The objective of this study is to predict which finger is moving or being imaged through the use of EEG. We measured EEG activity while subjects performed either motor execution or motor imagery of individual finger movements with their right hand. Event related spectral perturbation was used as indicator of brain activity, which represents frequency power fluctuation from the baseline interval. The frequency bands α, β, and γ (8-15, 16-31, and 32-128 Hz, respectively) were used for analysis. Additionally, a feature consisting of a combination of those three bands was also explored using principal component analysis. These four kinds of features were classified by a linear discriminant analysis using ten-fold cross validation. Result indicated that the combined feature of the three frequency bands could classify most combinations of finger in both motor execution and motor imagery. The results suggest that EEG during the performance of motor imagery of individual finger movement is discriminable depending on the subject.
机译:在使用脑电图(EEG)的脑电脑界面的研究中,广泛检查单个手指运动的电动机图像面积。本研究的目的是预测通过使用EEG来预测哪种手指移动或正在成像。我们测量了EEG活动,而受试者通过右手执行单个手指移动的电机执行或电动机图像。事件相关光谱扰动用作大脑活动的指标,其表示来自基线间隔的频率电力波动。频带α,β和γ(8-15,16-31和32-128Hz)用于分析。另外,还使用主成分分析探索由那些三个频段组合组成的特征。通过使用十倍交叉验证的线性判别分析来分类这四种特征。结果表明,三个频带的组合特征可以在电机执行和电动机图像中对手指的大多数组合进行分类。结果表明,eeg在单个手指运动的电动机图像的性能下,根据受试者可怜。

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