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.
CITATION STYLE
Pan, Y., Cheng, C. A., Saigol, K., Lee, K., Yan, X., Theodorou, E. A., & Boots, B. (2018). Agile Autonomous Driving using End-to-End Deep Imitation Learning. In Robotics: Science and Systems. MIT Press Journals. https://doi.org/10.15607/RSS.2018.XIV.056
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