Nonlinear fusion of multi-dimensional densities is an important application in Bayesian state estimation. In the approach proposed here, a joint density over all considered densities is build, which is then approximated by means of a Dirac mixture density by partitioning the joint state space into regions that are represented by single Dirac components. This approximation procedure depends on the nonlinear fusion model and only areas relevant to this model are considered. The processing in joint state space has advantages, especially when fusing Dirac mixture densities. Within this approach, degeneration can be avoided and even densities without mutual support can be combined. Thus, this approach gives an alternative to multiplication of Di...
Undirected cycles in Bayesian networks are often treated by using clustering methods. This results i...
In this paper, a new class of nonlinear Bayesian estimators based on a special space partitioning st...
Filtering or measurement updating for nonlinear stochastic dynamic systems requires approximate calc...
Abstract – Nonlinear fusion of multi-dimensional random variables is an important application of Bay...
In this paper, we present a direct fusion algorithm for processing the combination of two Dirac mixt...
This paper presents a filter approach for estimating the state of nonlinear dynamic systems based on...
For the optimal approximation of multivariate Gaussian densities by means of Dirac mixtures, i.e., b...
The sample-based recursive prediction of discrete-time nonlinear stochastic dynamic systems requires...
Abstract — A deterministic procedure for optimal approximation of arbitrary probability density func...
We describe and illustrate Bayesian inference in models for density estimation using mixtures of Dir...
Since the advent of Monte-Carlo particle filtering, particle representations of densities have becom...
Efficiently implementing nonlinear Bayesian estimators is still an unsolved problem, especially for ...
This paper introduces a new approach to the recursive propagation of probability density functions t...
In nonlinear Bayesian estimation it is generally inevitable to incorporate approximate descriptions ...
Abstract — This paper addresses the challenges of the fusion of two random vectors with imprecisely ...
Undirected cycles in Bayesian networks are often treated by using clustering methods. This results i...
In this paper, a new class of nonlinear Bayesian estimators based on a special space partitioning st...
Filtering or measurement updating for nonlinear stochastic dynamic systems requires approximate calc...
Abstract – Nonlinear fusion of multi-dimensional random variables is an important application of Bay...
In this paper, we present a direct fusion algorithm for processing the combination of two Dirac mixt...
This paper presents a filter approach for estimating the state of nonlinear dynamic systems based on...
For the optimal approximation of multivariate Gaussian densities by means of Dirac mixtures, i.e., b...
The sample-based recursive prediction of discrete-time nonlinear stochastic dynamic systems requires...
Abstract — A deterministic procedure for optimal approximation of arbitrary probability density func...
We describe and illustrate Bayesian inference in models for density estimation using mixtures of Dir...
Since the advent of Monte-Carlo particle filtering, particle representations of densities have becom...
Efficiently implementing nonlinear Bayesian estimators is still an unsolved problem, especially for ...
This paper introduces a new approach to the recursive propagation of probability density functions t...
In nonlinear Bayesian estimation it is generally inevitable to incorporate approximate descriptions ...
Abstract — This paper addresses the challenges of the fusion of two random vectors with imprecisely ...
Undirected cycles in Bayesian networks are often treated by using clustering methods. This results i...
In this paper, a new class of nonlinear Bayesian estimators based on a special space partitioning st...
Filtering or measurement updating for nonlinear stochastic dynamic systems requires approximate calc...