通过机器学习分类生理测量评估驾驶员参与

A. Lochbihler, Bruce Wallace, Kathleen Van Benthem, C. Herdman, Willona M. Sloan, Kirsten Brightman, Josh Goheen, F. Knoefel, S. Marshall
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引用次数: 1

摘要

评估驾驶员是否参与并监督自动驾驶和半自动驾驶汽车(AV)正成为一项越来越重要的任务。自动驾驶汽车在道路上变得越来越普遍,充分的驾驶员参与是安全操作的必要条件。5级汽车的全面普及可能需要很多年的时间,因为目前消费者还无法购买到5级汽车,在这之前,道路上将会看到0-4级汽车的混合。在此期间,如果发生危险情况,无人驾驶汽车不知道如何机动,人类仍将负责控制车辆。为了在这些情况下将自动驾驶汽车安全移交给人类,即使在自动驾驶汽车行驶时,驾驶员也必须保持一定程度的参与。为了做到这一点,生理传感器可以用来测量心率和呼吸率等信号,这些信号是驾驶员参与的已知指标。本文将驾驶员置于非意外驾驶和意外驾驶场景中,以评估是否可以从手动驾驶和自动驾驶的生理变化中识别出注意力集中的驾驶员。机器学习(ML)用于理解生理信号的模式,并在意外情况下对驾驶员进行分类。最后,机器学习模型显示了对驾驶和非驾驶驾驶员进行分类的成功能力,在手动驾驶场景中准确率为73.3%,在自动驾驶场景中准确率为86.7%,当两种驾驶场景的数据结合在一起时,准确率为70.0%,显示了模型的泛化能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Assessing Driver Engagement Through Machine Learning Classification of Physiological Measures
The assessment to determine if drivers are engaged and supervising autonomous and semi-autonomous vehicles (AV) is becoming an increasingly important task. AVs are becoming more prevalent on the road and adequate driver engagement is a must for safe operation. The full adoption of level 5 vehicles will likely take many years as they do not currently exist for consumer purchase and before this happens the roads will see a mix of level 0-4 vehicles. During this time humans will still be responsible for taking control of the vehicle if a hazardous scenario occurs and the AV does not know how to maneuver around. To have a safe handover from AV to human during these situations the driver must maintain a level of engagement even while the AV is driving. To do this physiological sensors can be used to measure signals such as heart rate and respiration rate, which are known indicators of a driver’s engagement. This paper exposes drivers to non-surprise and surprise driving scenarios to assess if attentive drivers can be identified from physiological changes for manual and AV driving. Machine learning (ML) is used to understand the patterns of physiological signals and classify when a driver is engaged during a surprise scenario. Finally, the ML models show a successful ability to classify engaged versus non-engaged drivers with a 73.3% accuracy in manual driving scenarios, 86.7% accuracy in AV, and 70.0% accuracy when the data from both driving scenarios are combined showing the model’s ability to generalize.
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