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Classification of Two Mental States Using Electroencephalogram Signals

机译:使用脑电图信号对两个心理状态进行分类

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Electrical activity of human brain changes with the human reactions to the situations, thoughts processing and with different mental states of mind. Brain Computer Interface uses different features of brain electrical activity to create a parallel communication pathway and replaces traditional pathway of nervous system to control numerous applications, by the patients suffering from severe motor disorders. Formation of a Brain Computer Interface is carried out in steps which include preprocessing, feature extraction and classification of Electroencephalogram signals to generate a meaningful command. As Electroencephalogram signals change with different alertness level of human brain, this can cause a false interpretation of Electroencephalogram signals as a patient's alertness may change severely due to medicines with high alcoholic content. A methodology is proposed in present work for feature extraction and classification of Electroencephalogram signals recorded from drowsy and controlled subject. The raw Electroencephalogram data is filtered to extract μ and β wavebands using Butterworth filter. Discrete wavelet coefficients are calculated from filtered data and further processed by Principal Component Analysis for dimensionality reduction. Statistical parameters calculated as features from reduced data set, are used to prepare the input feature vector to train the classifier. Support Vector Machine classifier classifies the two classes of data.
机译:人类脑的电气活动随着思想,思想加工和不同心理状态的思想加工和不同心理的反应而变化。脑电脑界面使用脑电活动的不同特征来创建平行通信途径,并取代严重运动障碍的患者控制众多应用的传统神经系统途径。在包括预处理,特征提取和脑电图信号的分类中的步骤中进行了脑电脑接口的形成,以产生有意义的命令。由于脑电图信号随着人类大脑的不同警觉性水平而变化,这可能导致脑电图信号的错误解释,因为患者的警觉可能因具有高酒精含量的药物而严重变化。在现有的工作中提出了一种方法,用于从昏昏欲睡和控制对象记录的脑电图信号的特征提取和脑电图信号分类。滤波原始脑电图数据以使用Butterworth滤波器提取μ和β波段。离散小波系数由滤波数据计算,并通过主要成分分析进一步处理,以进行维度降低。作为从减少数据集的特征计算的统计参数用于准备输入特征向量以训练分类器。支持向量机器分类器对两类数据进行分类。

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