The basic nonlinear filtering problem for dynamical systems is considered. Approximating the optimal filter estimate by particle filter methods has become perhaps the most common and useful method in recent years. Many variants of particle filters have been suggested, and there is an extensive literature on the theoretical aspects of the quality of the approximation. Still a clear-cut result that the approximate solution, for unbounded functions, converges to the true optimal estimate as the number of particles tends to infinity seems to be lacking. It is the purpose of this contribution to give such a basic convergence result for a rather general class of unbounded functions. Furthermore, a general framework, including many of the particle...
In this paper we extend the L4 proof of Hu et al. (2008) from bootstrap type of particle filters to ...
Abstract. The optimal ¯lter = ft; t ¸ 0g for a general observation model is approximated by a prob...
summary:The paper deals with kernel density estimates of filtering densities in the particle filter....
The basic nonlinear filtering problem for dynamical systems is considered. Approximating the optimal...
Particle filters are becoming increasingly important and useful for state estimation in nonlinear sy...
Optimal filtering problems are ubiquitous in signal processing and related fields. Except for a rest...
This work extends our recent work on proving that the particle filter converge for unbounded functio...
The PhD thesis deals with the general model based estimation problem, which is solved here using par...
Particle filters are important approximation methods for solv-ing probabilistic optimal filtering pr...
Abstract. This paper covers stochastic particle methods for the numerical so-lution of the nonlinear...
This paper cover stochastic particle methods for the numerical solving of the nonlinear filtering eq...
Abstract: We consider the particle filter approximation of the optimal filter in non-compact state s...
Particle filters are Monte Carlo methods that aim to approximate the optimal filter of a partially o...
In this paper, we investigate the convergence of empirical processes for a class of interacting part...
A new formulation of the particle filter for nonlinear filtering is presented, based on concepts fro...
In this paper we extend the L4 proof of Hu et al. (2008) from bootstrap type of particle filters to ...
Abstract. The optimal ¯lter = ft; t ¸ 0g for a general observation model is approximated by a prob...
summary:The paper deals with kernel density estimates of filtering densities in the particle filter....
The basic nonlinear filtering problem for dynamical systems is considered. Approximating the optimal...
Particle filters are becoming increasingly important and useful for state estimation in nonlinear sy...
Optimal filtering problems are ubiquitous in signal processing and related fields. Except for a rest...
This work extends our recent work on proving that the particle filter converge for unbounded functio...
The PhD thesis deals with the general model based estimation problem, which is solved here using par...
Particle filters are important approximation methods for solv-ing probabilistic optimal filtering pr...
Abstract. This paper covers stochastic particle methods for the numerical so-lution of the nonlinear...
This paper cover stochastic particle methods for the numerical solving of the nonlinear filtering eq...
Abstract: We consider the particle filter approximation of the optimal filter in non-compact state s...
Particle filters are Monte Carlo methods that aim to approximate the optimal filter of a partially o...
In this paper, we investigate the convergence of empirical processes for a class of interacting part...
A new formulation of the particle filter for nonlinear filtering is presented, based on concepts fro...
In this paper we extend the L4 proof of Hu et al. (2008) from bootstrap type of particle filters to ...
Abstract. The optimal ¯lter = ft; t ¸ 0g for a general observation model is approximated by a prob...
summary:The paper deals with kernel density estimates of filtering densities in the particle filter....