Observed Shape Detection from EEG Time Series

M. Alobaidi, A. Duru, O. Bayat
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Abstract

Brain computer interface studies required recording of a physiological response of a subject to exhibit relevant information. This extracted information can be used to perform an action and the amount of the information plays a significant role in the determination of brain computer interface (BCI) performance. The use of improved experimental paradigms as well as measuring the brain responses using electroencephalogram (EEG) is the most common approach for the BCI studies. In this study, the classification of the ongoing brain activity occurring as response to the four shapes is managed and reported. We applied Fourier transform to obtain the frequency spectrum regarding the one second time series of each channel with a time overlap of 50% to the feature set of each stimulus type. Four machine learning classifiers are implemented, and in the concept of the classification, (delta, theta, alpha, beta, and gamma) band power values for one second period constituted the feature set, resulting in a total of 315 features. Among the four ML classifier Quadratic Discriminant 87.1% recorded the highest accuracy.
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基于脑电时间序列的观察形状检测
脑机接口研究需要记录受试者的生理反应来展示相关信息。这些提取的信息可以用来执行一个动作,信息的多少对脑机接口(BCI)性能的决定起着重要的作用。使用改进的实验范式以及使用脑电图(EEG)测量脑反应是脑机接口研究中最常用的方法。在这项研究中,对正在进行的大脑活动的分类,作为对四种形状的反应进行了管理和报告。我们应用傅里叶变换得到每个通道的1秒时间序列的频谱,每个通道与每种刺激类型的特征集的时间重叠为50%。实现了四个机器学习分类器,在分类的概念中,(delta, theta, alpha, beta,和gamma)一秒周期的频带功率值构成特征集,共有315个特征。在4个ML分类器中,二次判别器的准确率最高,为87.1%。
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