Learning to Drive from a World Model

Goff, Mitchell, Hogan, Greg, Hotz, George, Locmaria, Armand du Parc, Raczy, Kacper, Schäfer, Harald, Shihadeh, Adeeb, Zhang, Weixing, Yousfi, Yassine

arXiv.org Artificial Intelligence 

Most self-driving systems rely on hand-coded perception outputs and engineered driving rules. Learning directly from human driving data with an end-to-end method can allow for a training architecture that is simpler and scales well with compute and data. In this work, we propose an end-to-end training architecture that uses real driving data to train a driving policy in an on-policy simulator . W e show two different methods of simulation, one with reprojective simulation and one with a learned world model. W e show that both methods can be used to train a policy that learns driving behavior without any hand-coded driving rules. W e evaluate the performance of these policies in a closed-loop simulation and when deployed in a real-world advanced driver-assistance system.

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