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Real-time single channel EEG motor imagery based Brain Computer Interface

机译:实时单通道EEG电机图像的脑电电脑界面

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This paper presents a motor imagery based Brain Computer Interface (BCI) that uses single channel EEG signal from the C3 or C4 electrode placed in the motor area of the head. Time frequency analysis using Short Time Fourier Transform (STFT) is used to compute spectrogram from the EEG data. The STFT is scaled to have gray level values on which Grey Co-occurrence Matrix (GLCM) is computed. Texture descriptors such as correlation, energy, contrast, homogeneity and dissimilarity are calculated from the GLCM matrices. The texture descriptors are used to train a logistic regression classifier which is then used to classify the left and right motor imagery signals. The single-channel motor imagery classification system is tested offline with different subjects. The average offline accuracy is 87.6%. An online BCI system is implemented in openViBE with the single channel classification scheme. The stimuli presentations and feedback are implemented in Python and integrated with the openViBe BCI system.
机译:本文介绍了一种基于电机图像的大脑电脑接口(BCI),其使用从位于头部电机区域的C3或C4电极的单通道EEG信号。使用短时间傅里叶变换(STFT)的时间频率分析用于从EEG数据计算频谱图。 STFT被缩放为具有灰度级值,灰色共同发生矩阵(GLCM)。纹理描述符,如相关性,能量,对比度,均匀性和异化性,从GLCM矩阵计算。纹理描述符用于训练逻辑回归分类器,然后用于分类左右电机图像信号。单通道电机图像分类系统与不同的受试者离线测试。平均离线准确度为87.6%。在OpenVibe中实现了在线BCI系统,具有单通道分类方案。刺激演示和反馈在Python中实现并与OpenVibe BCI系统集成。

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