Title :
Non-linear Bayesian filtering by convolution method using fast Fourier transform
Author_Institution :
Inst. Math. de Bordeaux, Univ. Bordeaux 1, Bordeaux, France
Abstract :
Using Kalman techniques, it is possible to perform optimal estimation in linear Gaussian state-space models. When the Gaussian assumptions are inadequate, the Kalman-type filters fail to be optimal. Classical filtering methods, such as the particle filter or Zakai filter can still be optimal as they provide not only the mean and covariance matrix estimations but also the conditional probability density of the state, given the observations. In this article, we propose a new method to calculate the filtering distribution. Our method is grid-based, and uses the convolution method to calculate the prediction step. The novelty of our approach is that we apply a fast Fourier transform technique to obtain a competitive numerical algorithm. Our approach is compared to classical methods such as UKF, EKF and particle filters.
Keywords :
Bayes methods; Gaussian processes; Kalman filters; convolution; covariance matrices; estimation theory; fast Fourier transforms; nonlinear filters; particle filtering (numerical methods); state-space methods; EKF filters; Gaussian assumptions; Kalman techniques; Kalman-type filters; UKF filters; Zakai filter; classical filtering methods; competitive numerical algorithm; conditional probability density; convolution method; covariance matrix estimations; fast Fourier transform technique; filtering distribution; linear Gaussian state-space models; nonlinear Bayesian filtering; optimal estimation; particle filter; prediction step; Bayesian methods; Convolution; Discrete Fourier transforms; Equations; Kalman filters; Mathematical model; Prediction algorithms; Convolution method; Kalman type filtering; Non linear filtering; fast Fourier transform;
Conference_Titel :
Information Fusion (FUSION), 2011 Proceedings of the 14th International Conference on
Conference_Location :
Chicago, IL
Print_ISBN :
978-1-4577-0267-9