Loughborough University, Epinal Way, Loughborough, United Kingdom.
Loughborough University, Epinal Way, Loughborough, United Kingdom.
Accid Anal Prev. 2019 Oct;131:180-190. doi: 10.1016/j.aap.2019.06.011. Epub 2019 Jul 11.
Developing conditionally automated driving systems is on the rise. Vehicles with full longitudinal and latitudinal control will allow drivers to engage in secondary tasks without monitoring the roadway, but users may be required to resume vehicle control to handle critical hazards. The loss of driver's situational awareness increases the potential for accidents. Thus, the automated systems need to estimate the driver's ability to resume control of the driving task. The aim of this study was to assess the physiological behaviour (heart rate and pupil diameter) of drivers. The assessment was performed during two naturalistic secondary tasks. The tasks were the email and the twenty questions task in addition to a control group that did not perform any tasks. The study aimed at finding possible correlations between the driver's physiological data and their responses to a takeover request. A driving simulator study was used to collect data from a total of 33 participants in a repeated measures design to examine the physiological changes during driving and to measure their takeover quality and response time. Secondary tasks induced changes on physiological measures and a small influence on response time. However, there was a strong observed correlation between the physiological measures and response time. Takeover quality in this study was assessed using two new performance measures called PerSpeed and PerAngle. They are identified as the mean percentage change of vehicle's speed and heading angle starting from a take-over request time. Using linear mixed models, there was a strong interaction between task, heart rate and pupil diameter and PerSpeed, PerAngle and response time. This, in turn, provided a measurable understanding of a driver's future responses to the automated system based on the driver's physiological changes to allow better decision making. The present findings of this study emphasised the possibility of building a driver mental state model and prediction system to determine the quality of the driver's responses in a highly automated vehicle. Such results will reduce accidents and enhance the driver's experience in highly automated vehicles.
开发条件自动驾驶系统的需求正在增加。具有全纵向和横向控制能力的车辆将允许驾驶员在不监视道路的情况下从事次要任务,但用户可能需要恢复车辆控制以处理关键危险。驾驶员情境意识的丧失增加了事故的可能性。因此,自动化系统需要估计驾驶员恢复驾驶任务控制的能力。本研究旨在评估驾驶员的生理行为(心率和瞳孔直径)。评估是在两个自然主义的次要任务中进行的。这些任务是电子邮件和二十个问题任务,此外还有一个不执行任何任务的对照组。该研究旨在寻找驾驶员生理数据与他们对接管请求的反应之间的可能相关性。使用驾驶模拟器研究在重复测量设计中从总共 33 名参与者那里收集数据,以检查驾驶过程中的生理变化,并测量他们的接管质量和响应时间。次要任务会对生理指标产生影响,对响应时间的影响很小。然而,在生理指标和响应时间之间观察到了很强的相关性。在这项研究中,使用了两个新的性能指标来评估接管质量,称为 PerSpeed 和 PerAngle。它们被定义为从接管请求时间开始车辆速度和航向角度的平均百分比变化。使用线性混合模型,任务、心率和瞳孔直径与 PerSpeed、PerAngle 和响应时间之间存在强烈的交互作用。这反过来为根据驾驶员对自动化系统的生理变化来更好地做出决策,提供了对驾驶员未来响应的可衡量理解。本研究的发现强调了构建驾驶员心理状态模型和预测系统的可能性,以确定高度自动化车辆中驾驶员响应的质量。这样的结果将减少事故,并提高驾驶员在高度自动化车辆中的体验。