With the development of autonomous driving, it is becoming increasingly common for autonomous vehicles (AVs) and human-driven vehicles (HVs) to travel on the same roads. Existing single-vehicle planning algorithms on board struggle to handle sophisticated social interactions in the real world. Decisions made by these methods are difficult to understand for humans, raising the risk of crashes and making them unlikely to be applied in practice. Moreover, vehicle flows produced by open-source traffic simulators suffer from being overly conservative and lacking behavioral diversity. We propose a hierarchical multi-vehicle decision-making and planning framework with several advantages. The framework jointly makes decisions for all vehicles within the flow and reacts promptly to the dynamic environment through a high-frequency planning module. The decision module produces interpretable action sequences that can explicitly communicate self-intent to the surrounding HVs. We also present the cooperation factor and trajectory weight set, bringing diversity to autonomous vehicles in traffic at both the social and individual levels. The superiority of our proposed framework is validated through experiments with multiple scenarios, and the diverse behaviors in the generated vehicle trajectories are demonstrated through closed-loop simulations.
翻译:随着自主驾驶的发展,自主驾驶车辆和人驾驶车辆在相同公路上旅行的情况越来越普遍。机上现有的单车规划算法在努力处理现实世界中复杂的社会互动。这些方法所作的决定对于人类来说很难理解,增加了碰撞的风险,使其难以实际应用。此外,开放源交通模拟器产生的车辆流动过于保守,缺乏行为多样性。我们提出了具有若干优势的等级性多车辆决策和规划框架。框架共同为流动中的所有车辆作出决定,并通过高频规划模块对动态环境作出迅速反应。决定模块产生可解释的行动序列,可以明确地向周围的HV明确传达自我意图。我们还介绍了合作因素和轨迹重量,使社会和个人两级的交通具有自主性。我们提议的框架的优越性通过多种假设的实验得到验证,产生的车辆轨迹中的各种行为通过闭路模拟得到证明。