2级自动驾驶用户自适应驾驶风格偏好研究

Zahra Sajedinia, K. Akash, Z. Zheng, Teruhisa Misu, Miaomiao Dong, Vidya Krishnamoorthy, Kimberly D. Martinez, Keertana Sureshbabu, Gaojian Huang
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引用次数: 2

摘要

用户对自动驾驶汽车(AV)的驾驶风格有不同的偏好(防御性或进攻性)。这种偏好取决于多种因素,包括用户对AV和场景的信任。了解用户偏好的驾驶风格和接管行为有助于创造舒适的驾驶体验。在这项驾驶模拟器研究中,参与者被要求以不同的驾驶风格适应与第二语言驾驶自动化互动。我们分析了不同的自动驾驶风格适应对用户调查反应的影响。我们提出线性和广义线性混合效应模型来预测用户偏好和接管行为。结果表明,信任在决定用户偏好和接管行为方面起着重要作用。此外,场景、踩刹车和自动驾驶的攻击性水平是与用户偏好相关的主要因素。研究结果为开发人类感知的自动驾驶迈出了一步,这种自动驾驶可以根据用户的偏好隐性地调整其驾驶风格。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Investigating Users’ Preferences in Adaptive Driving Styles for Level 2 Driving Automation
Users prefer different styles (more defensive or aggressive) for their autonomous vehicle (AV) to drive. This preference depends on multiple factors including user’s trust in AV and the scenario. Understanding users’ preferred driving style and takeover behavior can assist in creating comfortable driving experiences. In this driving simulator study, participants were asked to interact with L2 driving automation with different driving style adaptations. We analyze the effects of different AV driving style adaptations on users’ survey responses. We propose linear and generalized linear mixed effect models for predicting the user’s preference and takeover actions. Results suggest that trust plays an important role in determining users’ preferences and takeover actions. Also, the scenario, pressing brakes, and AV’s aggressiveness level are among the main factors correlated with users’ preferences. The results provide a step toward developing human-aware driving automation that can implicitly adapt its driving style based on the user’s preference.
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