Traversing intersections is a challenging problem for autonomous vehicles, especially when the intersections do not have traffic control. Recently deep reinforcement learning has received massive attention due to its success in dealing with autonomous driving tasks. In this work, we address the problem of traversing unsignalized intersections using a novel curriculum for deep reinforcement learning. The proposed curriculum leads to: 1) A faster training process for the reinforcement learning agent, and 2) Better performance compared to an agent trained without curriculum. Our main contribution is two-fold: 1) Presenting a unique curriculum for training deep reinforcement learning agents, and 2) showing the application of the proposed curriculum for the unsignalized intersection traversal task. The framework expects processed observations of the surroundings from the perception system of the autonomous vehicle. We test our method in the CommonRoad motion planning simulator on T-intersections and four-way intersections.
翻译:交通交叉路口是自治车辆面临的一个棘手问题,特别是在十字路口没有交通控制的情况下。最近,深入强化学习因其成功处理自主驾驶任务而引起大量关注。在这项工作中,我们利用新的强化学习课程解决无标志十字路口的穿梭问题。拟议课程导致:(1) 强化学习机构的培训进程更快,(2) 与没有课程培训的代理人相比,业绩更好。我们的主要贡献有两方面:(1) 为深强化学习机构提供培训的独特课程,(2) 为未信号的交叉交叉路口任务显示拟议课程的应用情况。框架期望从自主车辆的感知系统中对周围进行观察。我们在T路口和四路交叉路口测试通用移动规划模拟器的方法。