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FATIGUE DETECTION USING THE STRENGTH OF DOMINANT EEG SOURCE: A BEAMFORMING APPROACH

机译:利用主导EEG源强度的疲劳检测:波束形成方法

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摘要

It is evident that the electroencephalogram (EEG) rhythms are slightly changed when the efficacy of mental activity declines (brain fatigue). Nonetheless, this slight change is not easily detectable by the so far suggested scalp EEG features. The goal of this paper is to propose an EEG-based biomarker, which has a congruity to the mental fatigue variation to detect the transition from non-fatigue to the fatigue mental state. The strength of the dominant EEG source, extracted by minimum variance beamformer (MVB), is proposed here as a discriminative feature to remarkably classify the two mental states. To assess the proposed scheme, EEG signals of 17 volunteers were recorded via 32 electrodes before and after taking an exhausting mental exam (3h) and the extracted EEG features were labeled as non-fatigue and fatigue, respectively. After removing the eye-blink effect, the proposed feature along with the conventional EEG features were extracted from the recorded EEGs and then applied to support vector machine (SVM) and 1-nearest neighbor (1NN) classifiers in order to differentiate these two mental states. The best result is achieved by applying the proposed feature to the SVM classifier providing 97.06% classification accuracy which is significantly (p<0.05) superior to its counter parts.
机译:很明显,当精神活性下降(脑疲劳)的疗效时,脑电图(EEG)节奏略微改变。尽管如此,到目前为止,这种略微的变化不容易检测到到目前为止的表明头皮EEG功能。本文的目标是提出基于EEG的生物标志物,这对心理疲劳变化具有一致性,以检测非疲劳到疲劳精神状态的过渡。由最小方差波束形成器(MVB)提取的主导EEG源的强度被提出作为鉴别特征,以显着分类两个精神状态。为了评估所提出的方案,通过32个电极进行17个志愿者的EEG信号,在服用精神检查(3H)之前,并分别被提取的EEG特征标记为非疲劳和疲劳。在去除眼睛闪烁效果之后,所提出的特征以及传统的EEG特征从记录的EEG提取,然后应用于支持向量机(SVM)和1到最近邻(1NN)分类器以区分这两个心理状态。通过将所提出的特征应用于SVM分类器,提供97.06%的分类精度来实现最佳结果,该分类精度显着(P <0.05)优于其对应部分。

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