The development of autonomous driving has attracted extensive attention in recent years, and it is essential to evaluate the performance of autonomous driving. However, testing on the road is expensive and inefficient. Virtual testing is the primary way to validate and verify self-driving cars, and the basis of virtual testing is to build simulation scenarios. In this paper, we propose a training, testing, and evaluation pipeline for the lane-changing task from the perspective of deep reinforcement learning. First, we design lane change scenarios for training and testing, where the test scenarios include stochastic and deterministic parts. Then, we deploy a set of benchmarks consisting of learning and non-learning approaches. We train several state-of-the-art deep reinforcement learning methods in the designed training scenarios and provide the benchmark metrics evaluation results of the trained models in the test scenarios. The designed lane-changing scenarios and benchmarks are both opened to provide a consistent experimental environment for the lane-changing task.
翻译:近年来,自主驾驶的发展引起了广泛的关注,评估自主驾驶的性能至关重要。然而,在公路上测试是昂贵和低效率的。虚拟测试是验证和核查自行驾驶汽车的主要方法,虚拟测试的基础是建立模拟情景。在本文件中,我们提议从深层强化学习的角度出发,为改变车道的任务设计一个培训、测试和评价管道。首先,我们设计培训和测试的车道变化情景,其中测试情景包括随机和确定性部分。然后,我们采用一套由学习和非学习方法组成的基准。我们在设计的培训情景中培训一些最先进的深度强化学习方法,并提供测试情景中经过培训的模型的基准衡量结果。设计的车道变化情景和基准都开放,以便为改变车道的任务提供一个一致的实验环境。