论文标题

模仿层次驾驶模型的学习:从连续意图到连续轨迹

Imitation Learning of Hierarchical Driving Model: from Continuous Intention to Continuous Trajectory

论文作者

Wang, Yunkai, Zhang, Dongkun, Wang, Jingke, Chen, Zexi, Wang, Yue, Xiong, Rong

论文摘要

减少机器和人级驾驶之间差距的挑战之一是如何赋予系统以应对环境,意图和动态的复杂性的学习能力。在本文中,我们提出了一个层次驾驶模型,具有明确的连续意图和连续动态模型,该模型将人类驾驶数据中观察到行动推理的复杂性解除了。具体而言,连续意图模块采用GPS和IMU获得的路线计划图,从RGB摄像机和LiDAR中获得的感知,作为输入,以生成带有障碍物和意图以基于网格的电位表示的潜在映射。然后,电势映射被视为条件以及当前动力学,以通过连续函数近似网络产生连续的轨迹作为输出,该函数近似网络可以在没有其他参数的情况下用于监督。最后,我们在数据集和模拟器上验证我们的方法,证明我们的方法具有更高的位移和速度预测准确性,并生成更平滑的轨迹。该方法还通过循环延迟部署在真实车辆上,以验证其有效性。据我们所知,这是使用连续函数近似网络产生驾驶轨迹的第一项工作。

One of the challenges to reduce the gap between the machine and the human level driving is how to endow the system with the learning capacity to deal with the coupled complexity of environments, intentions, and dynamics. In this paper, we propose a hierarchical driving model with explicit model of continuous intention and continuous dynamics, which decouples the complexity in the observation-to-action reasoning in the human driving data. Specifically, the continuous intention module takes the route planning map obtained by GPS and IMU, perception from a RGB camera and LiDAR as input to generate a potential map encoded with obstacles and intentions being expressed as grid based potentials. Then, the potential map is regarded as a condition, together with the current dynamics, to generate a continuous trajectory as output by a continuous function approximator network, whose derivatives can be used for supervision without additional parameters. Finally, we validate our method on both datasets and simulator, demonstrating that our method has higher prediction accuracy of displacement and velocity and generates smoother trajectories. The method is also deployed on the real vehicle with loop latency, validating its effectiveness. To the best of our knowledge, this is the first work to produce the driving trajectory using a continuous function approximator network.

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