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Identification of Mental Workload Using Imbalanced EEG Data and DySMOTE-based Neural Network Approach

机译:使用不平衡的EEG数据和基于DySMOTE的神经网络方法识别心理工作量

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Identifying the temporal changes of mental workload level (MWL) is crucial for enhancing the safety of human-machine (HM) system operations especially when human operators suffer from cognitive overload and inattention. In this paper, we oversampled the EEG data in minority class to dynamically learn a multilayer perceptron (MLP) model based on a dynamical SMOTE (DySMOTE) approach in order to classify the MWL. The proposed approach consists of data sampling and a dynamical selection strategy, in which the probability of each sample being selected to update the weights and thresholds of the MLP is estimated in each epoch to derive an accurate classifier model. The DySMOTE approach was evaluated on the measured EEG data from eight subjects. The results showed that the proposed method outperforms existing methods in terms of several performance metrics including geometric mean (G-mean) and classification accuracy (or correct classification rate) of individual classes of the MWL.
机译:识别精神工作量水平(MWL)的时间变化对于增强人机(HM)系统操作的安全性至关重要,尤其是当操作员遭受认知超负荷和注意力不集中时。在本文中,我们对少数类中的EEG数据进行过采样,以基于动态SMOTE(DySMOTE)方法动态学习多层感知器(MLP)模型,以便对MWL进行分类。所提出的方法包括数据采样和动态选择策略,其中在每个时期中估计每个样本被选择以更新MLP的权重和阈值的概率,以得出准确的分类器模型。 DySMOTE方法是根据来自八个受试者的测得的EEG数据进行评估的。结果表明,所提出的方法在几种性能指标方面优于现有方法,包括几何平均数(G-mean)和MWL各个类别的分类精度(或正确的分类率)。

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