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Enhancement of motor cortex EEG during motor imagery: a visual feedback training study

机译:运动成像期间运动皮层脑电图的增强:视觉反馈训练研究

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There are some limitations for the motor imagery Electroencephalogram (EEG) including low-spatial resolution, non-stationary and susceptible to noise interference. This study aims to enhance the EEG features via an visual feedback training process by improving the visual feedback training paradigm design, EEG signal acquisition and EEG signal analysis, etc. We presented a novel feature extraction method in order to systematically improve the effective of feature selection, in which the coupling properties of EEG were combined with multi-level dynamic features including the time, frequency and spatial characteristics of EEG. Four subjects were guided to perform the Motor Imagery(MI) experiment with visual feedback training. Then, the integral value, Autoregressive (AR) model coefficients, avelet energy spectrum, Common Spatial Pattern (CSP) and mutual information were calculated as indices to quantify the enhancement of EEG characteristics before and after training. Statistical analysis revealed that the classification accuracy of EEG signals after training was significantly improved.
机译:电动机图像电气图(EEG)存在一些限制,包括低空间分辨率,非静止和易受噪声干扰。本研究旨在通过改进视觉反馈训练范式设计,EEG信号采集和脑电图信号分析等来通过视觉反馈培训过程来增强EEG功能。我们提出了一种新颖的特征提取方法,以系统地改善特征选择的有效性,其中EEG的耦合特性与多级动态特征组合,包括EEG的时间,频率和空间特征。引导四个受试者进行电动成像(MI)实验,并具有视觉反馈培训。然后,计算成数值,自回归(AR)模型系数,Avelet能谱,公共空间模式(CSP)和互信息作为指标,以在训练前后的EEG特性的增强。统计分析表明,培训后EEG信号的分类准确性显着提高。

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