Adaptive multi-modal interface model concerning mental workload in take-over request during semi-autonomous driving

Weiya Chen, T. Sawaragi, T. Hiraoka
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引用次数: 5

Abstract

With the development of automated driving technologies, human factors involved in automated driving are gaining increasing attention for a balanced implementation of the convenience brought by the technology and safety risk in commercial vehicle models. One influential human factor is mental workload. In the take-over request (TOR) from autonomous to manual driving at level 3 of International Society of Automotive Engineers' (SAE) Levels of Driving Automation, the time window for the driver to have full comprehension of the driving environment is extremely short, which means the driver is under high mental workload. To support the driver during a TOR, we propose an adaptive multi-modal interface model concerning mental workload. In this study, we evaluated the reliability of only part of the proposed model in a driving-simulator experiment as well as using the experimental data from a previous study.
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半自动驾驶接管请求心理负荷的自适应多模态接口模型
随着自动驾驶技术的发展,为了在商用车车型中平衡实现技术带来的便利性和安全风险,自动驾驶中涉及的人为因素越来越受到关注。一个有影响的人为因素是精神负荷。在国际汽车工程师学会(SAE)自动驾驶水平3级从自动驾驶到手动驾驶的接管请求(TOR)中,驾驶员充分了解驾驶环境的时间窗口非常短,这意味着驾驶员承受着很高的精神负荷。为了在TOR过程中支持驾驶员,我们提出了一个考虑心智负荷的自适应多模态接口模型。在本研究中,我们仅在驾驶模拟器实验中评估了所提出模型的部分可靠性,并使用了先前研究的实验数据。
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