Building driver's trust in lane change assistance systems by adapting to driver's uncertainty states

Fei Yan, M. Eilers, A. Lüdtke, M. Baumann
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引用次数: 5

Abstract

Driver's uncertainty during decision-making in overtaking results in long reaction times and potentially dangerous lane change maneuvers. Current lane change assistance systems focus on safety assessments providing either too conservative or excessive warnings, which influence driver's acceptance and trust in these systems. Inspired by the emancipation theory of trust, we expect systems providing information adapted to driver's uncertainty states to simultaneously help to reduce long reaction times and build the overall trust in automation. In previous work, we presented an adaptive lane change assistance system based on this concept utilizing a probabilistic model of driver's uncertainty. In this paper, we investigate whether the proposed system is able to improve reaction times and build trust in the automation as expected. A simulator study was conducted to compare the proposed system with an unassisted baseline and three reference systems not adaptive to driver's uncertainty. The results show while all systems reduce reaction times compared to the baseline, the proposed adaptive system is the most trusted and accepted.
适应驾驶员不确定状态,建立驾驶员对变道辅助系统的信任
在超车决策过程中,驾驶员的不确定性导致超车反应时间过长,并且有潜在的变道危险。当前的变道辅助系统侧重于提供过于保守或过度警告的安全评估,这影响了驾驶员对这些系统的接受和信任。受信任解放理论的启发,我们期望系统提供适应驾驶员不确定性状态的信息,同时帮助减少长时间的反应时间,并建立对自动化的整体信任。在之前的工作中,我们利用驾驶员不确定性的概率模型提出了基于此概念的自适应变道辅助系统。在本文中,我们研究了所提出的系统是否能够如预期的那样改善反应时间并建立对自动化的信任。通过仿真研究,将所提出的系统与无辅助基线和三种不适应驾驶员不确定性的参考系统进行了比较。结果表明,与基线相比,所有系统都减少了反应时间,所提出的自适应系统是最值得信赖和接受的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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