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Individual-Specific Classification of Mental Workload Levels Via an Ensemble Heterogeneous Extreme Learning Machine for EEG Modeling

机译:通过整体异构学习机进行脑电模型的心理工作量水平的个人特定分类

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In a human–machine cooperation system, assessing the mental workload (MW) of the human operator is quite crucial to maintaining safe operation conditions. Among various MW indicators, electroencephalography (EEG) signals are particularly attractive because of their high temporal resolution and sensitivity to the occupation of working memory. However, the individual difference of the EEG feature distribution may impair the machine-learning based MW classifier. In this paper, we employed a fast-training neural network, extreme learning machine (ELM), as the basis to build an individual-specific classifier ensemble to recognize binary MW. To improve the diversity of the classification committee, heterogeneous member classifiers were adopted by fusing multiple ELMs and Bayesian models. Specifically, a deep network structure was applied in each weak model aiming at finding informative EEG feature representations. The structure of hyper-parameters of the proposed heterogeneous ensemble ELM (HE-ELM) was then identified and then its performance was compared against several competitive MW classifiers. We found that the HE-ELM model was superior for improving the individual-specific accuracy of MW assessments.
机译:在人机协作系统中,评估操作员的心理工作量(MW)对于维持安全的操作条件至关重要。在各种兆瓦级指标中,脑电图(EEG)信号特别吸引人,因为它们的时间分辨率高且对工作记忆的占用敏感。但是,EEG特征分布的个体差异可能会损害基于机器学习的MW分类器。在本文中,我们以快速训练神经网络极限学习机(ELM)为基础,建立了识别二进制MW的特定于个人的分类器集合。为了提高分类委员会的多样性,通过将多个ELM和贝叶斯模型融合来采用异构成员分类器。具体来说,在每个弱模型中都应用了深层网络结构,旨在发现信息量丰富的脑电特征表示。然后,确定提出的异构集合ELM(HE-ELM)的超参数结构,然后将其性能与几个竞争性MW分类器进行比较。我们发现,HE-ELM模型在提高MW评估的特定于个人的准确性方面是优越的。

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