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Classification of Sustained Attention Level Based on Morphological Features of EEG's Independent Components

机译:基于EEG独立组分的形态特征的持续关注水平分类

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The aim of this study is to investigate the relations between morphological features of ERP's independent components and visual sustained attention. Continuous Performance Test (CPT) is used for defining the level of sustained attention. Independent Component Analysis (ICA) is applied on 19-channel recorded EEG and the best component is determined based on time, frequency and spatial specifications of the components. The ERPs are extracted for each group of stimuli and eighteen morphological features (including P3) were extracted. Nineteen subjects were divided into three groups according to their attention level. LDA classifier is then used for discrimination of classes. The results are compared with two other common methods. Classification based on the proposed method yields in accuracy of 81% with the advantage of preserving almost all the data. Outcomes represent a significant correlation between CPT result and some parameters of brain signal's components which can be used in evaluating the level of attention.
机译:本研究的目的是调查ERP独立成分形态特征与视觉持续关注的关系。连续性能测试(CPT)用于定义持续关注的水平。独立分量分析(ICA)应用于19通道记录的EEG,并且基于组件的时间,频率和空间规范确定了最佳组件。将ERP萃取为每组刺激,并提取十八个形态特征(包括P3)。根据他们的注意水平,19名受试者分为三组。然后将LDA分类器用于歧视类。结果与另外两种常用方法进行比较。基于所提出的方法的分类,精度率为81%,优点是保留几乎所有数据的优势。结果代表了CPT结果与脑信号组件的一些参数之间的显着相关性,其可用于评估关注程度。

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