Currently, there are still various situations in which automated driving systems (ADS) cannot perform as well as a human driver, particularly in predicting the behaviour of surrounding traffic. As humans are still surpassing state-of-the-art ADS in this task, a new concept enabling human driver to help ADS to better anticipate the behaviour of other road users was developed. Preliminary results suggested that the collaboration at the prediction level can effectively enhance the experience and comfort of ADS. For an in-depth investigation of the concept, we implemented an interactive prototype, called Prediction-level Cooperative Automated Driving system (PreCoAD), adapting an existing ADS that has been previously validated on the public road. The results of a driving simulator study among 15 participants in different highway scenarios showed that PreCoAD could enhance automated driving performance and provide a positive user experience. Follow-up interviews with participants also provided insights into the improvement of the system.
翻译:目前,仍然存在着自动化驾驶系统无法发挥与人驱动力同等作用的各种情况,特别是在预测周围交通行为方面;由于人类在这项任务中仍然超过最先进的ADS,因此制定了一个新的概念,使人驾驶员能够帮助ADS更好地预测其他道路使用者的行为;初步结果表明,在预测一级进行的合作可以有效地提高ADS的经验和舒适感;为了深入调查这一概念,我们采用了一个互动原型,称为预测一级的自动驾驶合作系统(PreCOAD),对以前在公共道路上验证过的现有ADS进行了调整;不同高速公路情景15名参与者的驾驶模拟研究结果表明,PreCOAD可以提高自动驾驶的性能,提供积极的用户经验;与参与者的后续访谈还深入了解了该系统的改进情况。