As more and more autonomous vehicles (AVs) are being deployed on public roads, designing socially compatible behaviors for them is of critical importance. Based on observations, AVs need to predict the future behaviors of other traffic participants, and be aware of the uncertainties associated with such prediction so that safe, efficient, and human-like motions can be generated. In this paper, we propose an integrated prediction and planning framework that allows the AVs to online infer the characteristics of other road users and generate behaviors optimizing not only their own rewards, but also their courtesy to others, as well as their confidence on the consequences in the presence of uncertainties. Based on the definitions of courtesy and confidence, we explore the influences of such factors on the behaviors of AVs in interactive driving scenarios. Moreover, we evaluate the proposed algorithm on naturalistic human driving data by comparing the generated behavior with the ground truth. Results show that the online inference can significantly improve the human-likeness of the generated behaviors. Furthermore, we find that human drivers show great courtesy to others, even for those without right-of-way.
翻译:随着越来越多的自主车辆(AVs)被部署在公共道路上,设计适合他们的社会行为至关重要。根据观察,AVs需要预测其他交通参与者的未来行为,并意识到与这种预测相关的不确定性,以便产生安全、高效和人性化的动作。在本文中,我们提出了一个综合预测和规划框架,允许AVs在线推断其他道路使用者的特征,产生行为,不仅优化他们自己的奖赏,而且优化对他人的礼遇,以及他们对存在不确定性的后果的信心。根据礼遇和信心的定义,我们探索这些因素对AVs在互动驾驶情景中的行为的影响。此外,我们通过比较所产生的行为与地面真相,评估关于自然人类驾驶数据的拟议算法。结果显示,在线推论可以大大改善所产生行为的人性。此外,我们发现,人类司机对他人表现出极大的礼遇,即使是那些没有权利的人也是如此。