论文标题
一项有关关键驾驶场景的调查 - 方法论观点
A Survey on Safety-Critical Driving Scenario Generation -- A Methodological Perspective
论文作者
论文摘要
在过去几年中,自动驾驶系统的发展取得了重大发展,这要归功于机器学习的感应和决策算法的进步。他们在现实世界中大规模部署的一个关键挑战是他们的安全评估。大多数现有的驾驶系统仍在日常生活中收集的自然主义场景或启发式的对抗性方面进行培训和评估。但是,一般而言,大量的汽车导致了极低的碰撞率,这表明在收集到的现实世界中,最关键的情况很少见。因此,人为产生场景的方法对于衡量风险和降低成本至关重要。在这项调查中,我们专注于自动驾驶中安全 - 关键方案的算法。我们首先通过将现有算法分为三类,对现有算法提供全面的分类学:数据驱动的生成,对抗生成和基于知识的生成。然后,我们讨论了场景生成的有用工具,包括仿真平台和软件包。最后,我们将讨论扩展到当前作品的五个主要挑战 - 忠诚,效率,多样性,可转让性,可控性和受这些挑战带来的研究机会。
Autonomous driving systems have witnessed a significant development during the past years thanks to the advance in machine learning-enabled sensing and decision-making algorithms. One critical challenge for their massive deployment in the real world is their safety evaluation. Most existing driving systems are still trained and evaluated on naturalistic scenarios collected from daily life or heuristically-generated adversarial ones. However, the large population of cars, in general, leads to an extremely low collision rate, indicating that the safety-critical scenarios are rare in the collected real-world data. Thus, methods to artificially generate scenarios become crucial to measure the risk and reduce the cost. In this survey, we focus on the algorithms of safety-critical scenario generation in autonomous driving. We first provide a comprehensive taxonomy of existing algorithms by dividing them into three categories: data-driven generation, adversarial generation, and knowledge-based generation. Then, we discuss useful tools for scenario generation, including simulation platforms and packages. Finally, we extend our discussion to five main challenges of current works -- fidelity, efficiency, diversity, transferability, controllability -- and research opportunities lighted up by these challenges.