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Model-Based Imitation Learning for Urban Driving

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Peer-reviewed

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Abstract

An accurate model of the environment and the dynamic agents acting in it offers great potential for improving motion planning. We present MILE: a Model-based Imitation LEarning approach to jointly learn a model of the world and a policy for autonomous driving. Our method leverages 3D geometry as an inductive bias and learns a highly compact latent space directly from high-resolution videos of expert demonstrations. Our model is trained on an offline corpus of urban driving data, without any online interaction with the environment. MILE improves upon prior state-of-the-art by 31% in driving score on the CARLA simulator when deployed in a completely new town and new weather conditions. Our model can predict diverse and plausible states and actions, that can be interpretably decoded to bird's-eye view semantic segmentation. Further, we demonstrate that it can execute complex driving manoeuvres from plans entirely predicted in imagination. Our approach is the first camera-only method that models static scene, dynamic scene, and ego-behaviour in an urban driving environment. The code and model weights are available at https://github.com/wayveai/mile.

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Journal Title

NIPS '22: Proceedings of the 36th International Conference on Neural Information Processing Systems

Conference Name

NIPS'22: 36th International Conference on Neural Information Processing Systems

Journal ISSN

1049-5258

Volume Title

Publisher

Curran Associates Inc.

Publisher DOI

Rights and licensing

Except where otherwised noted, this item's license is described as All Rights Reserved
Sponsorship
Toshiba Europe grant G100453