Title :
Reduced sigma point filters for the propagation of means and covariances through nonlinear transformations
Author :
Julier, Simon J. ; Uhlmann, Jeffrey K.
Author_Institution :
IDAK Industries, Jefferson City, MO, USA
Abstract :
The Unscented Transform (UT) approximates the result of applying a specified nonlinear transformation to a given mean and covariance estimate. The UT works by constructing a set of points, referred to as sigma points, which has the same known statistics, e.g., first and second and possibly higher moments, as the given estimate. The given nonlinear transformation Is applied to the set, and the unscented estimate is obtained by computing the statistics of the transformed set of sigma points. For example, the mean and covariance of the transformed set approximates the nonlinear transformation of the original mean and covariance estimate. The computational efficiency of the UT therefore depends on the number of sigma points required to capture the known statistics of the original estimate. In this paper we examine methods for minimizing the number of sigma points for real-time control, estimation, and filtering applications. We demonstrate results in a 3D localization example.
Keywords :
Kalman filters; adaptive control; nonlinear estimation; 3D localization example; Kalman filter; computational efficiency; covariance estimate; mean estimate; nonlinear estimation; nonlinear transformation; nonlinear transformations; real-time control; reduced sigma point filters; sigma points; unscented transform; Computational efficiency; Degradation; Filtering; Jacobian matrices; Linear approximation; Monte Carlo methods; Particle filters; Sampling methods; Statistical distributions; Statistics;
Conference_Titel :
American Control Conference, 2002. Proceedings of the 2002
Print_ISBN :
0-7803-7298-0
DOI :
10.1109/ACC.2002.1023128