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Learning Flight Control Systems from Human Demonstrations and Real-Time Uncertainty-Informed Interventions

Robotics 2023-05-02 v1

Abstract

This paper describes a methodology for learning flight control systems from human demonstrations and interventions while considering the estimated uncertainty in the learned models. The proposed approach uses human demonstrations to train an initial model via imitation learning and then iteratively, improve its performance by using real-time human interventions. The aim of the interventions is to correct undesired behaviors and adapt the model to changes in the task dynamics. The learned model uncertainty is estimated in real-time via Monte Carlo Dropout and the human supervisor is cued for intervention via an audiovisual signal when this uncertainty exceeds a predefined threshold. This proposed approach is validated in an autonomous quadrotor landing task on both fixed and moving platforms. It is shown that with this algorithm, a human can rapidly teach a flight task to an unmanned aerial vehicle via demonstrating expert trajectories and then adapt the learned model by intervening when the learned controller performs any undesired maneuver, the task changes, and/or the model uncertainty exceeds a threshold

Keywords

Cite

@article{arxiv.2305.00929,
  title  = {Learning Flight Control Systems from Human Demonstrations and Real-Time Uncertainty-Informed Interventions},
  author = {Prashant Ganesh and J. Humberto Ramos and Vinicius G. Goecks and Jared Paquet and Matthew Longmire and Nicholas R. Waytowich and Kevin Brink},
  journal= {arXiv preprint arXiv:2305.00929},
  year   = {2023}
}

Comments

IFAC 2023

R2 v1 2026-06-28T10:22:38.814Z