A Kalman Filter for Nonlinear Attitude Estimation Using Time Variable Matrices and Quaternions

Sensors (Basel). 2020 Nov 25;20(23):6731. doi: 10.3390/s20236731.

Abstract

The nonlinear problem of sensing the attitude of a solid body is solved by a novel implementation of the Kalman Filter. This implementation combines the use of quaternions to represent attitudes, time-varying matrices to model the dynamic behavior of the process and a particular state vector. This vector was explicitly created from measurable physical quantities, which can be estimated from the filter input and output. The specifically designed arrangement of these three elements and the way they are combined allow the proposed attitude estimator to be formulated following a classical Kalman Filter approach. The result is a novel estimator that preserves the simplicity of the original Kalman formulation and avoids the explicit calculation of Jacobian matrices in each iteration or the evaluation of augmented state vectors.

Keywords: AHRS; IMU; Kalman Filter; attitude estimation; quaternions.