End-to-End Imitation Learning for Autonomous Vehicle Steering on a Single-Camera Stream

Open Access
Authors
Publication date 2022
Host editors
  • M.H. Ang
  • H. Asama
  • W. Lin
  • S. Foong
Book title Intelligent Autonomous Systems 16
Book subtitle Proceedings of the 16th International Conference IAS-16
ISBN
  • 9783030958916
ISBN (electronic)
  • 9783030958923
Series Lecture Notes in Networks and Systems
Event 16th International Conference on Intelligent Autonomous Systems
Pages (from-to) 212-224
Publisher Cham: Springer
Organisations
  • Faculty of Science (FNWI) - Informatics Institute (IVI)
Abstract
Vehicles can follow roads based on a forward-looking camera, but this has to be done reliably in all circumstances. In daily traffic, they can encounter many unforeseen situations. Training for those situations in simulations should prepare them for such encounters, but this requires simulated worlds with enough complexity. In this paper, we compare different convolutional neural networks trained to follow the roads in one of the most complex environments available in the simulation environment CARLA: the map Town 3. Still, during training the vehicle encounters a disproportionate number of simple straight roads, so care has to be taken on the balance in the training set. End-to-end learning for autonomous vehicles have been shown before, but not for the complex worlds used in this paper. After the training, the vehicle can follow the road reliably in the training map, a behavior that can be transferred to a non-complex map with circumstances it has not seen before. Complex situations remain difficult to learn without high-level commands. The learned behavior has
been validated on a map which is just released with the latest version of
the CARLA simulator, Town 10HD. The Xception network architecture performs best in our benchmark with success rates of 62% and 90% for complex validation town Town 10HD and non-complex validation town Town 6 respectively.
Document type Conference contribution
Language English
Published at https://doi.org/10.1007/978-3-030-95892-3_16
Downloads
MCAS_paper_orden_v4 (Accepted author manuscript)
Permalink to this page
Back