In urban driving scenarios, autonomous vehicles are expected to conform to traffic rules covering traffic lights, traversable and non-traversable traffic lines, etc. In this article, we propose an optimization-based integrated decision-making and control scheme for urban autonomous driving. Inherently, to ensure the compliance with traffic rules, an innovative design of potential functions (PFs) is presented to characterize various traffic rules that are commonly encountered in urban driving scenarios, and these PFs are further incorporated as part of the model predictive control (MPC) formulation. In this sense, it circumvents the necessity of typical hand-crafted rule design, and high-level decision-making is attained implicitly along with control as an integrated architecture, facilitating flexible maneuvers with safety guarantees. As demonstrated from a series of simulations in CARLA, it is noteworthy that the proposed framework admits real-time performance and high generalizability.
翻译:在城市驾驶场景中,自主驾驶车辆预计需要遵守包括信号灯、可行驶和不可行驶的交通线等交通规则。本文提出了一种基于优化的集成决策与控制方案,用于城市自主驾驶。为了确保遵守交通规则,我们提出了一种创新的潜能函数(PF)设计,用于表征城市驾驶场景中常见的各种交通规则,并将这些PF作为模型预测控制(MPC)配方的一部分。因此,它避免了典型的手工制定规则设计的必要性,并实现了随着控制的集成架构的高层决策,促进了具有安全保障的灵活操作。正如在CARLA中的一系列模拟所证明的那样,所提出的框架具有实时性能和高可推广性。