Imitation Learning for Generalizable Self-Driving Policy with Sim-to-Real Transfer

Abstract

Imitation Learning uses the demonstrations of an expert to uncover the optimal policy and it is suitable for real-world robotics tasks as well. In this case, however, the training of the agent is carried out in a simulation environment due to safety, economic and time constraints. Later, the agent is applied in the real-life domain using sim-to-real methods. In this paper, we apply Imitation Learning methods that solve a robotics task in a simulated environment and use transfer learning to apply these solutions in the real-world environment. Our task is set in the Duckietown environment, where the robotic agent has to follow the right lane based on the input images of a single forward-facing camera. We present three Imitation Learning and two sim-to-real methods capable of achieving this task. A detailed comparison is provided on these techniques to highlight their advantages and disadvantages.

Cite

Text

Lőrincz et al. "Imitation Learning for Generalizable Self-Driving Policy with Sim-to-Real Transfer." ICLR 2022 Workshops: GPL, 2022.

Markdown

[Lőrincz et al. "Imitation Learning for Generalizable Self-Driving Policy with Sim-to-Real Transfer." ICLR 2022 Workshops: GPL, 2022.](https://mlanthology.org/iclrw/2022/lorincz2022iclrw-imitation/)

BibTeX

@inproceedings{lorincz2022iclrw-imitation,
  title     = {{Imitation Learning for Generalizable Self-Driving Policy with Sim-to-Real Transfer}},
  author    = {Lőrincz, Zoltán and Szemenyei, Márton and Moni, Robert},
  booktitle = {ICLR 2022 Workshops: GPL},
  year      = {2022},
  url       = {https://mlanthology.org/iclrw/2022/lorincz2022iclrw-imitation/}
}