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Detecting Different Tasks Using EEG-Source-Temporal Features

机译:使用EEG源时间特征检测不同的任务

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This study proposes a new type of features extracted from Electroencephalography (EEG) signals to distinguish between different tasks. EEG signals are collected from six children aged between two to six years old during opened and closed eyes tasks. For each time-sample, Time Difference of Arrival (TDOA) is applied to EEG time series to compute the source-temporal-features that are assigned to x, y and z coordinates. The features are classified using neural network. The results show an accuracy of around 100% for eyes open task and around (83%-95%) for eyes closed tasks for the same subject. This study highlights the use of new types of features (source-temporal features), to characterize the brain functional behavior.
机译:本研究提出了一种从脑电图(EEG)信号中提取的新型特征,以区分不同的任务。在开放和闭合的眼睛任务期间,从六个龄在两到六岁之间的儿童收集脑电图。对于每个时间样本,将到达(TDOA)的时间差应用于EEG时间序列以计算分配给X,Y和Z坐标的源时间 - 要素。使用神经网络分类功能。结果表明,眼睛打开任务约为100%的准确性,对眼睛的闭合任务进行了左右(83%-95%)。本研究强调了使用新类型的特征(源时间特征),以表征大脑功能行为。

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