Paper ID: 2410.12345

A Data-driven Contact Estimation Method for Wheeled-Biped Robots

Ü. Bora Gökbakan (WILLOW, DI-ENS, PSL), Frederike Dümbgen (WILLOW, DI-ENS, PSL), Stéphane Caron (WILLOW, DI-ENS, PSL)

Contact estimation is a key ability for limbed robots, where making and breaking contacts has a direct impact on state estimation and balance control. Existing approaches typically rely on gate-cycle priors or designated contact sensors. We design a contact estimator that is suitable for the emerging wheeled-biped robot types that do not have these features. To this end, we propose a Bayes filter in which update steps are learned from real-robot torque measurements while prediction steps rely on inertial measurements. We evaluate this approach in extensive real-robot and simulation experiments. Our method achieves better performance while being considerably more sample efficient than a comparable deep-learning baseline.

Submitted: Oct 16, 2024