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Task-generic mental fatigue recognition based on neurophysiological signals and dynamical deep extreme learning machine

机译:基于神经生理信号和动态深度极限学习机的任务型心理疲劳识别

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The electroencephalography (EEG) based machine-learning model for mental fatigue recognition can evaluate the reliability of the human operator performance. The task-generic model is particularly important since the time cost for preparing the task-specific training EEG dataset is avoid. This study develops a novel mental fatigue classifier, dynamical deep extreme learning machine (DD-ELM), to adapt the variation of the EEG feature distributions across two mental tasks. Different from the static deep learning approaches, DD-ELM iteratively updates the shallow weights at multiple time steps during the testing stage. The proposed method incorporates the both of the merits from the deep network for EEG feature abstraction and the ELM autoencoder for fast weight recompuation. The feasibility of the DD-ELM is validated by investigating EEG datasets recorded under two paradigms of AutoCAMS human-machine tasks. The accuracy comparison indicates the new classifier significantly outperforms several state-of-the-art mental fatigue estimators. By examining the CPU time, the computational burden of the DD-ELM is also acceptable for high-dimensional EEG features. (C) 2018 Elsevier B.V. All rights reserved.
机译:基于脑电图(EEG)的用于精神疲劳识别的机器学习模型可以评估操作员绩效的可靠性。任务通用模型特别重要,因为避免了准备任务专用训练EEG数据集的时间成本。这项研究开发了一种新颖的心理疲劳分类器,动态深度极限学习机(DD-ELM),以适应跨两个心理任务的脑电特征分布的变化。与静态深度学习方法不同,DD-ELM在测试阶段的多个时间步长迭代更新浅层权重。所提出的方法结合了用于EEG特征提取的深层网络和用于快速权重重新计算的ELM自动编码器的优点。 DD-ELM的可行性通过调查在两种AutoCAMS人机任务范式下记录的EEG数据集得到了验证。准确性比较表明,新的分类器明显优于一些最新的精神疲劳评估器。通过检查CPU时间,DD-ELM的计算负担对于高维EEG功能也是可以接受的。 (C)2018 Elsevier B.V.保留所有权利。

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