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EEG-Based Mental Workload Neurometric to Evaluate the Impact of Different Traffic and Road Conditions in Real Driving Settings

机译:基于脑电图的脑力负荷神经计量技术以评估实际驾驶环境中不同交通和道路状况的影响

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摘要

Car driving is considered a very complex activity, consisting of different concomitant tasks and subtasks, thus it is crucial to understand the impact of different factors, such as road complexity, traffic, dashboard devices, and external events on the driver’s behavior and performance. For this reason, in particular situations the cognitive demand experienced by the driver could be very high, inducing an excessive experienced mental workload and consequently an increasing of error commission probability. In this regard, it has been demonstrated that human error is the main cause of the 57% of road accidents and a contributing factor in most of them. In this study, 20 young subjects have been involved in a real driving experiment, performed under different traffic conditions (rush hour and not) and along different road types (main and secondary streets). Moreover, during the driving tasks different specific events, in particular a pedestrian crossing the road and a car entering the traffic flow just ahead of the experimental subject, have been acted. A Workload Index based on the Electroencephalographic (EEG), i.e., brain activity, of the drivers has been employed to investigate the impact of the different factors on the driver’s workload. Eye-Tracking (ET) technology and subjective measures have also been employed in order to have a comprehensive overview of the driver’s perceived workload and to investigate the different insights obtainable from the employed methodologies. The employment of such EEG-based Workload index confirmed the significant impact of both traffic and road types on the drivers’ behavior (increasing their workload), with the advantage of being under real settings. Also, it allowed to highlight the increased workload related to external events while driving, in particular with a significant effect during those situations when the traffic was low. Finally, the comparison between methodologies revealed the higher sensitivity of neurophysiological measures with respect to ET and subjective ones. In conclusion, such an EEG-based Workload index would allow to assess objectively the mental workload experienced by the driver, standing out as a powerful tool for research aimed to investigate drivers’ behavior and providing additional and complementary insights with respect to traditional methodologies employed within road safety research.
机译:驾车被认为是一项非常复杂的活动,由不同的伴随任务和子任务组成,因此了解诸如道路复杂性,交通,仪表板设备和外部事件等不同因素对驾驶员行为和性能的影响至关重要。由于这个原因,在特定情况下,驾驶员所经历的认知需求可能非常高,从而导致过度的有经验的精神工作量,并因此增加了错误委托的可能性。在这方面,已证明人为错误是造成57%道路交通事故的主要原因,并且是大多数事故的成因。在这项研究中,有20位年轻受试者参与了真实的驾驶实验,这些实验是在不同的交通条件下(非高峰时间)和沿着不同的道路类型(主要和次要街道)进行的。而且,在驾驶任务期间,已经采取了不同的特定事件,特别是过马路的行人和刚好在实验对象之前进入交通流的汽车。已采用基于驾驶员的脑电图(EEG)(即大脑活动)的工作负荷指数来调查不同因素对驾驶员工作负荷的影响。还采用了眼动追踪(ET)技术和主观措施,以全面了解驾驶员的感知工作量,并调查可从采用的方法学中获得的不同见解。使用这种基于EEG的工作量指数,证实了交通和道路类型对驾驶员行为的重大影响(增加了他们的工作量),并且具有处于真实环境下的优势。此外,它还可以突出显示驾驶中与外部事件相关的增加的工作量,特别是在交通流量较低的情况下,具有显着的效果。最后,方法之间的比较表明,神经生理学措施对ET和主观措施的敏感性更高。总之,这种基于EEG的工作量指数将能够客观地评估驾驶员所经历的精神工作量,从而成为旨在研究驾驶员行为并提供关于内部使用的传统方法的补充和补充见解的强大研究工具道路安全研究。

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