This work introduces interactive traffic scenarios in the CARLA simulator, which are based on real-world traffic. We concentrate on tactical tasks lasting several seconds, which are especially challenging for current control methods. The CARLA Real Traffic Scenarios (CRTS) is intended to be a training and testing ground for autonomous driving systems. To this end, we open-source the code under a permissive license and present a set of baseline policies. CRTS combines the realism of traffic scenarios and the flexibility of simulation. We use it to train agents using a reinforcement learning algorithm. We show how to obtain competitive polices and evaluate experimentally how observation types and reward schemes affect the training process and the resulting agent's behavior.
翻译:这项工作在以真实世界交通为基础的CARLA模拟器中引入互动式交通情况。我们专注于持续数秒钟的战术任务,这对目前的控制方法特别具有挑战性。CARLA真实交通情况(CRTS)旨在成为自主驾驶系统的培训和测试场。为此,我们以许可许可证的形式打开代码,并提出一套基线政策。CRTS结合了交通情况的现实性和模拟的灵活性。我们用它来用强化学习算法培训代理。我们展示了如何获得有竞争力的警察和实验性评估观察类型和奖励计划如何影响培训过程和由此产生的代理行为。