Institute for Transport Studies, University of Leeds, United Kingdom.
Institute for Transport Studies, University of Leeds, United Kingdom.
Accid Anal Prev. 2024 Jul;202:107560. doi: 10.1016/j.aap.2024.107560. Epub 2024 Apr 26.
As the level of vehicle automation increases, drivers are more likely to engage in non-driving related tasks which take their hands, eyes, and/or mind away from the driving task. Consequently, there has been increased interest in creating Driver Monitoring Systems (DMS) that are valid and reliable for detecting elements of driver state. Workload is one element of driver state that has remained elusive within the literature. Whilst there has been promising work in estimating mental workload using gaze-based metrics, the literature has placed too much emphasis on point estimate differences. Whilst these are useful for establishing whether effects exist, they ignore the inherent variability within individuals and between different drivers. The current work builds on this by using a Bayesian distributional modelling approach to quantify the within and between participants variability in Information Theoretical gaze metrics. Drivers (N = 38) undertook two experimental drives in hands-off Level 2 automation with their hands and feet away from operational controls. During both drives, their priority was to monitor the road before a critical takeover. During one drive participants had to complete a secondary cognitive task (2-back) during the hands-off Level 2 automation. Changes in Stationary Gaze Entropy and Gaze Transition Entropy were assessed for conditions with and without the 2-back to investigate whether consistent differences between workload conditions could be found across the sample. Stationary Gaze Entropy proved a reliable indicator of mental workload; 92 % of the population were predicted to show a decrease when completing 2-back during hands-off Level 2 automated driving. Conversely, Gaze Transition Entropy showed substantial heterogeneity; only 66 % of the population were predicted to have similar decreases. Furthermore, age was a strong predictor of the heterogeneity of the average causal effect that high mental workload had on eye movements. These results indicate that, whilst certain elements of Information Theoretic metrics can be used to estimate mental workload by DMS, future research needs to focus on the heterogeneity of these processes. Understanding this heterogeneity has important implications toward the design of future DMS and thus the safety of drivers using automated vehicle functions. It must be ensured that metrics used to detect mental workload are valid (accurately detecting a particular driver state) as well as reliable (consistently detecting this driver state across a population).
随着车辆自动化水平的提高,驾驶员更有可能从事与驾驶无关的任务,这些任务会使他们的手、眼和/或注意力从驾驶任务上转移开。因此,人们越来越感兴趣的是创建驾驶员监控系统(DMS),这些系统对于检测驾驶员状态的各个方面是有效和可靠的。工作负荷是驾驶员状态的一个方面,在文献中一直难以捉摸。虽然使用基于注视的指标来估计心理工作负荷已经有了很有希望的工作,但文献过于强调点估计差异。虽然这些对于确定效果是否存在是有用的,但它们忽略了个体内部和不同驾驶员之间的固有可变性。目前的工作在此基础上,使用贝叶斯分布建模方法来量化信息理论注视指标的参与者内和参与者间的可变性。研究人员让 38 名驾驶员在双手和双脚远离操作控制的情况下进行两次无手驾驶 2 级自动化的实验驾驶。在两次驾驶中,他们的首要任务是在关键接管前监控道路。在一次驾驶中,参与者在双手离开 2 级自动化的情况下必须完成次要认知任务(2 回)。评估有无 2 回的情况下静止注视熵和注视转换熵的变化,以调查是否可以在样本中找到一致的工作负荷条件之间的差异。静止注视熵被证明是心理工作负荷的可靠指标;92%的人在双手离开 2 级自动驾驶时完成 2 回时,预计会出现下降。相反,注视转换熵显示出很大的异质性;只有 66%的人预计会有类似的下降。此外,年龄是高心理工作负荷对眼动影响的平均因果效应异质性的一个强有力预测指标。这些结果表明,虽然信息理论指标的某些元素可以通过 DMS 来估计心理工作负荷,但未来的研究需要关注这些过程的异质性。了解这种异质性对未来 DMS 的设计以及使用自动驾驶功能的驾驶员的安全性具有重要意义。必须确保用于检测心理工作负荷的指标不仅有效(准确地检测到特定的驾驶员状态),而且可靠(在整个人群中一致地检测到该驾驶员状态)。