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A Survey and Tutorial of EEG-Based Brain Monitoring for Driver State Analysis

机译:驾驶员州分析脑电站脑监测的调查与教程

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摘要

The driver's cognitive and physiological states affect his/her ability to control the vehicle. Thus, these driver states are essential to the safety of automobiles. The design of advanced driver assistance systems (ADAS) or autonomous vehicles will depend on their ability to interact effectively with the driver. A deeper understanding of the driver state is, therefore, paramount. Electroencephalography (EEG) is proven to be one of the most effective methods for driver state monitoring and human error detection. This paper discusses EEG-based driver state detection systems and their corresponding analysis algorithms over the last three decades. First, the commonly used EEG system setup for driver state studies is introduced. Then, the EEG signal preprocessing, feature extraction, and classification algorithms for driver state detection are reviewed. Finally, EEG-based driver state monitoring research is reviewed in-depth, and its future development is discussed. It is concluded that the current EEG-based driver state monitoring algorithms are promising for safety applications. However, many improvements are still required in EEG artifact reduction, real-time processing, and between-subject classification accuracy.
机译:驾驶员的认知和生理国家影响他/她控制车辆的能力。因此,这些驾驶员国家对于汽车的安全至关重要。先进的驾驶员辅助系统(ADA)或自动车辆的设计将取决于他们与司机有效地交互的能力。因此,对驾驶员州的更深刻的了解是至关重要的。脑电图(EEG)被证明是驾驶员状态监测和人为错误检测最有效的方法之一。本文讨论了基于EEG的驱动器状态检测系统及其相应的分析算法在过去三十年中。首先,介绍了司机状态研究的常用EEG系统设置。然后,综述了驾驶员状态检测的EEG信号预处理,特征提取和分类算法。最后,深入审查了基于EEG的司机状态监测研究,讨论了未来的发展。结论是,目前基于EEG的驱动器状态监测算法是安全应用的承诺。然而,在EEG工件减少,实时处理和对象分类准确性之间仍然需要许多改进。

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