TL;DR
This paper introduces a contact-aided invariant extended Kalman filter for legged robot state estimation, leveraging invariant observer theory to improve convergence and performance over traditional methods.
Contribution
The paper develops a novel invariant EKF for legged robots that exploits system symmetries, providing better convergence and robustness compared to standard quaternion-based EKFs.
Findings
Invariant EKF shows improved convergence in simulations.
Experimental results demonstrate superior performance over quaternion EKF.
The approach effectively handles unobservable states like position and yaw.
Abstract
This paper derives a contact-aided inertial navigation observer for a 3D bipedal robot using the theory of invariant observer design. Aided inertial navigation is fundamentally a nonlinear observer design problem; thus, current solutions are based on approximations of the system dynamics, such as an Extended Kalman Filter (EKF), which uses a system's Jacobian linearization along the current best estimate of its trajectory. On the basis of the theory of invariant observer design by Barrau and Bonnabel, and in particular, the Invariant EKF (InEKF), we show that the error dynamics of the point contact-inertial system follows a log-linear autonomous differential equation; hence, the observable state variables can be rendered convergent with a domain of attraction that is independent of the system's trajectory. Due to the log-linear form of the error dynamics, it is not necessary to perform…
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