The capability to follow a lead-vehicle and avoid rear-end collisions is one of the most important functionalities for human drivers and various Advanced Driver Assist Systems (ADAS). Existing safety performance justification of the car-following systems either relies on simple concrete scenarios with biased surrogate metrics or requires a significantly long driving distance for risk observation and inference. In this paper, we propose a guaranteed unbiased and sampling efficient scenario-based safety evaluation framework inspired by the previous work on $\epsilon\delta$-almost safe set quantification. The proposal characterizes the complete safety performance of the test subject in the car-following regime. The performance of the proposed method is also demonstrated in challenging cases including some widely adopted car-following decision-making modules and the commercially available Openpilot driving stack by CommaAI.
翻译:跟踪含铅车辆和避免后端碰撞的能力是人类驾驶员和各种高级驾驶辅助系统(ADAS)最重要的功能之一。汽车跟踪系统现有的安全性能理由要么依赖于带有偏颇代用指标的简单具体情景,要么需要长长的驾驶距离来进行风险观察和推断。在本文件中,我们提出了一个有保证的、无偏向的和抽样高效的情景安全评价框架,这一框架受到以前关于美元-delta$-最接近安全的成套量化方法的工作的启发。该提案是该测试对象在汽车跟踪系统中完全安全性能的特点。拟议方法的性能在具有挑战性的案件中也得到了证明,包括一些广泛采用的汽车跟踪决策模块和CommaAI现有的开放驾驶车道。