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Using EEG for Mental Fatigue Assessment: A Comprehensive Look Into the Current State of the Art

机译:利用脑电局进行精神疲劳评估:全面研究现有最新状态

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This paper provides a brief survey of recent developments on the use of electroencephalogram (EEG) sensors for detecting mental fatigue (MF) in human operators during tasks involving human-machine interaction. This research topic has received much attention since there is a consensus among experts on the increasing relation between human failure and accidents in safety-critical tasks. MF is one of the most influential aspects leading to human failure and the most reliable way to assess it is using operators physiological data, especially EEG. In the past few decades, hundreds of publications have explored the use of EEG alone or together with other objective and subjective measures for assessing MF, drowsiness, and tiredness in human operators. With recent improvements in data preprocessing, feature extraction, and classification algorithms, the monitoring and mitigation of MF in real time has become a reality. This trend is mainly due to the increasing use of machine learning techniques. This paper provides a comprehensive look at the current state of the art in the field of MF detection using EEG, identifying the currently used technique, algorithms, and methods and possible trends and promising areas for further research. The paper is concluded by suggesting a kernel partial least squares discrete-output linear regression based model as an all-around good option for an MF assessment system.
机译:本文简要介绍了在涉及人机相互作用的任务期间使用脑电图(EEG)传感器用于检测人类运营商的精神疲劳(MF)的近期发展。这项研究主题得到了很多关注,因为专家之间存在普及人类失败与安全关键任务中的事故之间的关系。 MF是导致人类失败的最有影响力的方面之一,以及评估它的最可靠方式是使用操作员生理数据,尤其是脑电图。在过去的几十年里,数百个出版物探索了eeg单独使用或与其他客观和主观措施一起评估人类运营商的嗜睡和疲劳。随着近期数据预处理的改进,特征提取和分类算法,实时监测和减轻MF已成为现实。这种趋势主要是由于机器学习技术的使用越来越多。本文通过EEG识别MF检测领域的现有技术的全面看,识别当前使用的技术,算法和方法以及可能的趋势以及有希望的进一步研究领域。通过暗示内核部分最小二乘基于核心的基于模式的模型作为MF评估系统的全程选择,结论了本文。

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