This paper copes with the problem of nonlinear Bayesian state estimation. A nonlinear filter, the Sliced Gaussian Mixture Filter (SGMF), employs linear substructures in the nonlinear measurement and prediction model in order to simplify the estimation process. Here, a special density representation, the sliced Gaussian mixture density, is used to derive an exact solution of the Chapman-Kolmogorov equation. The sliced Gaussian mixture density is obtained by a systematic and deterministic approximation of a continuous density minimizing a certain distance measure. In contrast to previous work, improvements of the SGMF presented here include an extended system model and the processing of multi-dimensional nonlinear subspaces. As an application...
For Gaussian Assumed Density Filtering based on moment matching, a framework for the efficient calcu...
In this paper, we analyze the performance of the Gaussian mixture probability hypothesis density (GM...
This paper proposes a computationally efficient nonlinear filter that approximates the posterior pro...
This paper addresses the efficient state estimation for mixed linear/nonlinear dynamic systems with ...
This article proposes a Gaussian filtering method to approximate the single-target updates and norma...
Nonlinear filtering is the problem of estimating the state of a stochastic nonlinear dynamical syste...
In this paper, the Prior Density Splitting Mixture Estimator (PDSME), a new Gaussian mixture filteri...
Filtering or measurement updating for nonlinear stochastic dynamic systems requires approximate calc...
In this paper, an improved nonlinear Gaussian mixture probability hypothesis density (GM-PHD) filter...
This paper describes the approximation of a nonlinear posterior density by a Gaussian Mixture (GM). ...
This paper presents a method for the simultaneous state and parameter estimation of finite-dimension...
A Bayesian filtering algorithm is developed for a class of state-space systems that can be modelled ...
State estimation for nonlinear systems generally requires approximations of the system or the probab...
This paper investigates a smoothing method using the nonlinear Gaussian mixture probability hypothes...
The cardinalized probability hypothesis density (CPHD) filter is a recursive Bayesian algorithm for ...
For Gaussian Assumed Density Filtering based on moment matching, a framework for the efficient calcu...
In this paper, we analyze the performance of the Gaussian mixture probability hypothesis density (GM...
This paper proposes a computationally efficient nonlinear filter that approximates the posterior pro...
This paper addresses the efficient state estimation for mixed linear/nonlinear dynamic systems with ...
This article proposes a Gaussian filtering method to approximate the single-target updates and norma...
Nonlinear filtering is the problem of estimating the state of a stochastic nonlinear dynamical syste...
In this paper, the Prior Density Splitting Mixture Estimator (PDSME), a new Gaussian mixture filteri...
Filtering or measurement updating for nonlinear stochastic dynamic systems requires approximate calc...
In this paper, an improved nonlinear Gaussian mixture probability hypothesis density (GM-PHD) filter...
This paper describes the approximation of a nonlinear posterior density by a Gaussian Mixture (GM). ...
This paper presents a method for the simultaneous state and parameter estimation of finite-dimension...
A Bayesian filtering algorithm is developed for a class of state-space systems that can be modelled ...
State estimation for nonlinear systems generally requires approximations of the system or the probab...
This paper investigates a smoothing method using the nonlinear Gaussian mixture probability hypothes...
The cardinalized probability hypothesis density (CPHD) filter is a recursive Bayesian algorithm for ...
For Gaussian Assumed Density Filtering based on moment matching, a framework for the efficient calcu...
In this paper, we analyze the performance of the Gaussian mixture probability hypothesis density (GM...
This paper proposes a computationally efficient nonlinear filter that approximates the posterior pro...