In this paper, the Prior Density Splitting Mixture Estimator (PDSME), a new Gaussian mixture filtering algorithm for nonlinear dynamical systems and nonlinear measurement equations, is introduced. This filter reduces the linearization error which typically arises if nonlinear state and measurement equations are linearized to apply linear filtering techniques. For that purpose, the PDSME splits the prior probability density into several components of a Gaussian mixture with smaller covariances. The PDSME is applicable to both prediction and filter steps. A measure for the linearization error similar to the Kullback-Leibler distance is introduced allowing the user to specify the desired estimation quality. An upper bound for the computational...
A Bayesian filtering algorithm is developed for a class of state-space systems that can be modelled ...
The use of Gaussian mixture model representations for nonlinear estimation is an attractive tool for...
Nonlinear filtering is the problem of estimating the state of a stochastic nonlinear dynamical syste...
Filtering or measurement updating for nonlinear stochastic dynamic systems requires approximate calc...
This paper addresses the efficient state estimation for mixed linear/nonlinear dynamic systems with ...
This paper proposes a computationally efficient nonlinear filter that approximates the posterior pro...
Gaussian mixtures are a common density representation in nonlinear, non-Gaussian Bayesian state esti...
Abstract—Gaussian mixtures are a common density represen-tation in nonlinear, non-Gaussian Bayesian ...
This paper copes with the problem of nonlinear Bayesian state estimation. A nonlinear filter, the Sl...
The Probability Hypothesis Density (PHD) filter is a multipletarget filter for recursively estimatin...
Abstract—A new Gaussian mixture filter has been developed, one that uses a re-sampling step in order...
The Probability Hypothesis Density (PHD) filter is a multiple-target filter for recursively estimati...
This paper presents a filter approach for estimating the state of nonlinear dynamic systems based on...
In nonlinear filtering, special types of Gaussian mixture filters are a straightforward extension of...
For Gaussian Assumed Density Filtering based on moment matching, a framework for the efficient calcu...
A Bayesian filtering algorithm is developed for a class of state-space systems that can be modelled ...
The use of Gaussian mixture model representations for nonlinear estimation is an attractive tool for...
Nonlinear filtering is the problem of estimating the state of a stochastic nonlinear dynamical syste...
Filtering or measurement updating for nonlinear stochastic dynamic systems requires approximate calc...
This paper addresses the efficient state estimation for mixed linear/nonlinear dynamic systems with ...
This paper proposes a computationally efficient nonlinear filter that approximates the posterior pro...
Gaussian mixtures are a common density representation in nonlinear, non-Gaussian Bayesian state esti...
Abstract—Gaussian mixtures are a common density represen-tation in nonlinear, non-Gaussian Bayesian ...
This paper copes with the problem of nonlinear Bayesian state estimation. A nonlinear filter, the Sl...
The Probability Hypothesis Density (PHD) filter is a multipletarget filter for recursively estimatin...
Abstract—A new Gaussian mixture filter has been developed, one that uses a re-sampling step in order...
The Probability Hypothesis Density (PHD) filter is a multiple-target filter for recursively estimati...
This paper presents a filter approach for estimating the state of nonlinear dynamic systems based on...
In nonlinear filtering, special types of Gaussian mixture filters are a straightforward extension of...
For Gaussian Assumed Density Filtering based on moment matching, a framework for the efficient calcu...
A Bayesian filtering algorithm is developed for a class of state-space systems that can be modelled ...
The use of Gaussian mixture model representations for nonlinear estimation is an attractive tool for...
Nonlinear filtering is the problem of estimating the state of a stochastic nonlinear dynamical syste...