With the recent development of autonomous vehicle technology, there have been active efforts on the deployment of this technology at different scales that include urban and highway driving. While many of the prototypes showcased have shown to operate under specific cases, little effort has been made to better understand their shortcomings and generalizability to new areas. Distance, uptime and number of manual disengagements performed during autonomous driving provide a high-level idea on the performance of an autonomous system but without proper data normalization, testing location information, and the number of vehicles involved in testing, the disengagement reports alone do not fully encompass system performance and robustness. Thus, in this study a complete set of metrics are proposed for benchmarking autonomous vehicle systems in a variety of scenarios that can be extended for comparison with human drivers. These metrics have been used to benchmark UC San Diego's autonomous vehicle platforms during early deployments for micro-transit and autonomous mail delivery applications.
翻译:随着汽车自驾技术的最近发展,人们积极努力在不同规模上部署这一技术,包括城市和公路驾驶,虽然展示的许多原型显示在特定情况下运作,但很少努力更好地了解其缺点和对新地区的可概括性,自主驾驶期间进行的人工脱轨的距离、停机时间和次数为自动驾驶系统的性能提供了一个高层次的构想,但没有适当的数据正常化、测试地点信息以及测试所涉车辆的数量,单靠脱离接触报告并不完全包括系统性能和稳健性,因此,在这项研究中,提出了一套完整的衡量标准,用于在各种情况下为自主车辆系统制定基准,以便与人驾驶员进行比较,这些衡量标准被用于在早期部署用于微型过境和自动邮寄应用的期间为圣地亚哥大学的自主车辆平台设定基准。