Title :
Gaussian Filtering using state decomposition methods
Author :
Beutler, Frederik ; Huber, Marco F. ; Hanebeck, Uwe D.
Author_Institution :
Intell. Sensor-Actuator-Syst. Lab. (ISAS), Univ. Karlsruhe (TH), Karlsruhe, Germany
Abstract :
State estimation for nonlinear systems generally requires approximations of the system or the probability densities, as the occurring prediction and filtering equations cannot be solved in closed form. For instance, linear regression Kalman filters like the unscented Kalman filter or the considered Gaussian filter propagate a small set of sample points through the system to approximate the posterior mean and covariance matrix. To reduce the number of sample points, special structures of the system and measurement equation can be taken into account. In this paper, two principles of system decomposition are considered and applied to the Gaussian filter. One principle exploits that only a part of the state vector is directly observed by the measurement. The second principle separates the system equations into linear and nonlinear parts in order to merely approximate the nonlinear part of the state. The benefits of both decompositions are demonstrated on a real-world example.
Keywords :
Gaussian processes; Kalman filters; covariance matrices; nonlinear filters; regression analysis; state estimation; vectors; Gaussian filter; covariance matrix; filtering equation; linear regression Kalman filter; nonlinear system; posterior mean approximation; probability density; state decomposition method; state estimation; state vector; unscented Kalman filter; Covariance matrix; Gaussian noise; Information filtering; Information filters; Linear regression; Nonlinear equations; Nonlinear filters; Nonlinear systems; Particle filters; State estimation; Estimation; Linear Regression Kalman Filter; Rao-Blackwellization; filtering; tracking;
Conference_Titel :
Information Fusion, 2009. FUSION '09. 12th International Conference on
Conference_Location :
Seattle, WA
Print_ISBN :
978-0-9824-4380-4