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首页> 外文期刊>The International journal of robotics research >Imitation learning for agile autonomous driving
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Imitation learning for agile autonomous driving

机译:敏捷自动驾驶的模仿学习

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摘要

We present an end-to-end imitation learning system for agile, off-road autonomous driving using only low-cost on-board sensors. By imitating a model predictive controller equipped with advanced sensors, we train a deep neural network control policy to map raw, high-dimensional observations to continuous steering and throttle commands. Compared with recent approaches to similar tasks, our method requires neither state estimation nor on-the-fly planning to navigate the vehicle. Our approach relies on, and experimentally validates, recent imitation learning theory. Empirically, we show that policies trained with online imitation learning overcome well-known challenges related to covariate shift and generalize better than policies trained with batch imitation learning. Built on these insights, our autonomous driving system demonstrates successful high-speed off-road driving, matching the state-of-the-art performance.
机译:我们提出了仅使用低成本车载传感器的敏捷越野越野自动驾驶的端到端模仿学习系统。通过模仿配备先进传感器的模型预测控制器,我们训练了一种深度神经网络控制策略,可将原始的高维观测值映射到连续的转向和油门命令。与执行类似任务的最新方法相比,我们的方法既不需要状态估计,也不需要即时规划来导航车辆。我们的方法依赖并通过实验验证了最新的模仿学习理论。从经验上讲,我们显示,使用在线模仿学习训练的策略比使用批量模仿学习训练的策略克服了与协变量偏移相关的众所周知的挑战,并且泛化效果更好。基于这些见解,我们的自动驾驶系统展示了成功的高速越野驾驶,并与最新的性能相匹配。

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