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Computational Teaching for Driving via Multi-Task Imitation Learning

Publication ,  Conference
Gopinath, D; Cui, X; Decastro, J; Sumner, E; Costa, J; Yasuda, H; Morgan, A; Dees, L; Chau, S; Leonard, J; Chen, T; Rosman, G; Balachandran, A
Published in: Proceedings IEEE International Conference on Robotics and Automation
January 1, 2025

Learning motor skills for sports or performance driving is often done with professional instruction from expert human teachers, whose availability is limited. Our goal is to enable automated teaching via a learned model that interacts with the student similar to a human teacher. However, training such automated teaching systems is limited by the availability of highquality annotated datasets of expert teacher and student interactions as they are difficult to collect at scale. To address this data scarcity problem, we propose an approach for training a coaching system for complex motor tasks such as high performance driving via a Multi-Task Imitation Learning (MTIL) paradigm. MTIL allows our model to learn robust representations by utilizing self-supervised training signals from more readily available non-interactive datasets of humans performing the task of interest. We validate our approach with (1) a semi-synthetic dataset created from real human driving trajectories, (2) a professional track driving instruction dataset, (3) a track-racing driving simulator human-subject study, and (4) a system demonstration on an instrumented car at a race track. Our experiments show that the right set of auxiliary machine learning tasks improves prediction of teaching instructions. Moreover, in the human subjects study, students exposed to the instructions from our teaching system improve their ability to stay within track limits, and show favorable perception of the model's interaction with them, in terms of usefulness and satisfaction.

Duke Scholars

Published In

Proceedings IEEE International Conference on Robotics and Automation

DOI

ISSN

1050-4729

Publication Date

January 1, 2025

Start / End Page

7019 / 7027
 

Citation

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Gopinath, D., Cui, X., Decastro, J., Sumner, E., Costa, J., Yasuda, H., … Balachandran, A. (2025). Computational Teaching for Driving via Multi-Task Imitation Learning. In Proceedings IEEE International Conference on Robotics and Automation (pp. 7019–7027). https://doi.org/10.1109/ICRA55743.2025.11127621
Gopinath, D., X. Cui, J. Decastro, E. Sumner, J. Costa, H. Yasuda, A. Morgan, et al. “Computational Teaching for Driving via Multi-Task Imitation Learning.” In Proceedings IEEE International Conference on Robotics and Automation, 7019–27, 2025. https://doi.org/10.1109/ICRA55743.2025.11127621.
Gopinath D, Cui X, Decastro J, Sumner E, Costa J, Yasuda H, et al. Computational Teaching for Driving via Multi-Task Imitation Learning. In: Proceedings IEEE International Conference on Robotics and Automation. 2025. p. 7019–27.
Gopinath, D., et al. “Computational Teaching for Driving via Multi-Task Imitation Learning.” Proceedings IEEE International Conference on Robotics and Automation, 2025, pp. 7019–27. Scopus, doi:10.1109/ICRA55743.2025.11127621.
Gopinath D, Cui X, Decastro J, Sumner E, Costa J, Yasuda H, Morgan A, Dees L, Chau S, Leonard J, Chen T, Rosman G, Balachandran A. Computational Teaching for Driving via Multi-Task Imitation Learning. Proceedings IEEE International Conference on Robotics and Automation. 2025. p. 7019–7027.

Published In

Proceedings IEEE International Conference on Robotics and Automation

DOI

ISSN

1050-4729

Publication Date

January 1, 2025

Start / End Page

7019 / 7027