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Learning Robust Control Policies for End-to-End Autonomous Driving From Data-Driven Simulation

机译:从数据驱动模拟中学习稳健的控制策略,实现端到端自主驱动

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摘要

In this work, we present a data-driven simulation and training engine capable of learning end-to-end autonomous vehicle control policies using only sparse rewards. By leveraging real, human-collected trajectories through an environment, we render novel training data that allows virtual agents to drive along a continuum of new local trajectories consistent with the road appearance and semantics, each with a different view of the scene. We demonstrate the ability of policies learned within our simulator to generalize to and navigate in previously unseen real-world roads, without access to any human control labels during training. Our results validate the learned policy onboard a full-scale autonomous vehicle, including in previously un-encountered scenarios, such as new roads and novel, complex, near-crash situations. Our methods are scalable, leverage reinforcement learning, and apply broadly to situations requiring effective perception and robust operation in the physical world.
机译:在这项工作中,我们提供了一种数据驱动的模拟和培训引擎,其能够仅使用稀疏奖励学习端到端的自主车辆控制策略。通过利用真实的人类收集的轨迹通过环境,我们渲染新颖的培训数据,允许虚拟代理沿着与道路外观和语义一致的新局部轨迹驾驶,每个轨迹都有一个不同的场景视图。我们展示了在我们的模拟器中学到的政策能力,以概括到以前看不见的现实世界的路线,而无需在培训期间访问任何人类控制标签。我们的结果验证了历史政策的全面自治车辆,包括以前不遇到的情景,例如新的道路和小说,复杂,近碰撞情况。我们的方法是可扩展的,利用强化学习,并应用于物理世界中需要有效感知和强大操作的情况。

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