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Detecting EEG Dynamic Changes Using Supervised Temporal Patterns

机译:使用监督的时间模式检测脑电动态变化

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The electroencephalogram signal records the neural activation at electrodes placed over the scalp. Brain-Computer Interfaces decode brain activity measured by EEG to send commands to external devices. The most well-known BCI systems are based on Motor Imagery paradigm that corresponds to the imagination of a motor action without execution. Event-Related Desynchronization and Synchronization shows the channel-wise temporal dynamics related to the motor activity. However, ERD/S demands the application of a large bank of narrowband filters to find dynamic changes and the assumption of temporal alignment ignores the between-trial temporal variations of neuronal activity. Taking to account the temporal variations, this work introduces a signal filtering analysis based on the estimation of Supervised Temporal Patterns that decode brain dynamics in MI paradigm which result from the solution of a generalized eigenvalues problem. The signal filtering analysis detects temporal dynamics related to MI tasks within each trial. The method highlights MI activity along channels and trials and shows differences between subjects performing these kinds of tasks.
机译:脑电图信号记录放置在头皮上方的电极处的神经激活。脑机接口解码由EEG测量的脑活动,以将命令发送到外部设备。最著名的BCI系统基于Motor Imagery范例,该范例对应于无需执行动作的想象力。事件相关的不同步和同步显示了与电机活动相关的通道级时间动态。但是,ERD / S要求使用大量的窄带滤波器来查找动态变化,并且时间对齐的假设忽略了神经元活动的试验间时间变化。考虑到时间变化,这项工作引入了基于监督时间模式的估计的信号过滤分析,该监督时间模式对MI范式中的脑部动力学进行解码,这是解决广义特征值问题的结果。信号过滤分析可检测每个试验中与MI任务相关的时间动态。该方法突出显示了沿渠道和试验的MI活动,并显示了执行此类任务的受试者之间的差异。

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