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Combination of Independent Component Analysis and Feature Extraction of ERP for Level Classification of Sustained Attention

机译:ERP独立分量分析及特征提取的组合持续注意力分类

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This paper investigates the relations between ERP features and visual sustained attention. Continuous Performance Test is used for determining sustained attention level. Fifty eight features were extracted from the 19-channel recorded signals. Twenty four Subjects were divided into three classes according to their attention level. LDA classifier is used and high accuracy (94%, 88% and 93% for each two classes) is achieved by using two features in classifying the test data. Obtained results are in agreement with the previous studies.
机译:本文调查了ERP功能与视觉持续关注之间的关系。连续性能测试用于确定持续的注意力水平。从19通道记录信号中提取五十八个特征。根据他们的注意水平,二十四个受试者分为三个班级。通过在分类测试数据的分类中使用两个功能,实现了LDA分类器,并且通过使用两个功能来实现高精度(每两个类的94%,88%和93%)。获得的结果与以前的研究一致。

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