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基于多模态脑功能网络的驾驶员疲劳评估。

Assessment of driver drowsiness using electroencephalogram signals based on multiple functional brain networks.

机构信息

Department of Mechanical Engineering and Automation, Northeastern University, 110819 Shenyang, Liaoning, China.

Department of Mechanical Engineering and Automation, Northeastern University, 110819 Shenyang, Liaoning, China.

出版信息

Int J Psychophysiol. 2018 Nov;133:120-130. doi: 10.1016/j.ijpsycho.2018.07.476. Epub 2018 Aug 3.

Abstract

This paper proposes a comprehensive approach to explore whether functional brain network (FBN) changes from the alert state to the drowsy state and to find out ideal neurophysiology indicators able to detect driver drowsiness in terms of FBN. A driving simulation experiment consisting of two driving tasks is designed and conducted using fifteen participant drivers. Collected EEG signals are then decomposed into multiple frequency bands by wavelet packet transform (WPT). Based on this, two novel FBN approaches, synchronization likelihood (SL) and minimum spanning tree (MST) are combined and applied to feature recognition and classification system. Unlike other methods, our approaches focus on the interaction and correlation between different brain regions. Statistical analysis of network features indicates that the difference between alert state and drowsy state are significant and further confirmed that brain network configuration should be related to drowsiness. For classification, these brain network features are selected and then fed into four classifiers considered namely Support Vector Machines (SVM), K Nearest Neighbors classifier (KNN), Logistic Regression (LR) and Decision Trees (DT). It is found that combining MST method and SL method is actually increasing the classification accuracy with all classifiers considered in this work especially the KNN classifier from 95.4% to 98.6%. Moreover, KNN classifier also gives the highest precision of 98.3%, sensitivity of 98.8% and specificity of 98.9%. Thus this kind of methodology might be a useful tool for further understanding the neurophysiology mechanisms of driver drowsiness, and as a reference work for future studies or future 'systems'.

摘要

本文提出了一种综合方法来探索从警觉状态到困倦状态的功能脑网络 (FBN) 是否发生了变化,并找到理想的神经生理学指标,以便从 FBN 角度来检测驾驶员困倦。设计并进行了一项包含两个驾驶任务的驾驶模拟实验,共有 15 名驾驶员参与者。然后,通过小波包变换 (WPT) 将采集到的 EEG 信号分解为多个频带。在此基础上,将两种新的 FBN 方法——同步似然度 (SL) 和最小生成树 (MST) 相结合,并应用于特征识别和分类系统。与其他方法不同,我们的方法专注于不同脑区之间的相互作用和相关性。网络特征的统计分析表明,警觉状态和困倦状态之间的差异非常显著,并进一步证实了脑网络配置应该与困倦有关。在分类方面,选择这些脑网络特征,然后将其输入到四个考虑到的分类器中,包括支持向量机 (SVM)、K 近邻分类器 (KNN)、逻辑回归 (LR) 和决策树 (DT)。结果发现,结合 MST 方法和 SL 方法实际上提高了所有考虑到的分类器的分类准确性,尤其是 KNN 分类器,从 95.4%提高到 98.6%。此外,KNN 分类器还给出了最高的精度为 98.3%、敏感性为 98.8%和特异性为 98.9%。因此,这种方法可能是进一步理解驾驶员困倦的神经生理学机制的有用工具,并为未来的研究或未来的“系统”提供参考。

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