Multi-Momentum Observer Contact Estimation for Bipedal Robots
J. Joe Payne, Daniel A. Hagen, Denis Garagi\'c, Aaron M. Johnson

TL;DR
This paper introduces a novel momentum observer-based method for estimating foot contact modes in bipedal robots without relying on contact sensors, enhancing reliability and accuracy in dynamic and noisy environments.
Contribution
The paper proposes a new contact mode estimation technique using multiple dynamic models and a Markov fusion approach, avoiding the limitations of contact sensors.
Findings
Achieves up to 98.44% contact detection accuracy in simulations.
Attains 77.12% accuracy on real robot data.
Provides a robust method for contact estimation without dedicated sensors.
Abstract
As bipedal robots become more and more popular in commercial and industrial settings, the ability to control them with a high degree of reliability is critical. To that end, this paper considers how to accurately estimate which feet are currently in contact with the ground so as to avoid improper control actions that could jeopardize the stability of the robot. Additionally, modern algorithms for estimating the position and orientation of a robot's base frame rely heavily on such contact mode estimates. Dedicated contact sensors on the feet can be used to estimate this contact mode, but these sensors are prone to noise, time delays, damage/yielding from repeated impacts with the ground, and are not available on every robot. To overcome these limitations, we propose a momentum observer based method for contact mode estimation that does not rely on such contact sensors. Often, momentum…
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Taxonomy
TopicsRobot Manipulation and Learning · Robotic Locomotion and Control · Soft Robotics and Applications
