In this paper, we develop a novel method for approximate continuous-discrete Bayesian filtering. The projection filtering framework is exploited to develop accurate approximations of posterior distributions within parametric classes of probability distributions. This is done by formulating an ordinary differential equation for the posterior distribution that has the prior as initial value and hits the exact posterior after a unit of time. Particular emphasis is put on exponential families, especially the Gaussian family of densities. Experimental results demonstrate the efficacy and flexibility of the method.Peer reviewe
This paper compares the classical concept of assumed density filters (ADF) with a new class of appro...
In filtering algorithms, it is often desirable that the prior and posterior densities share a common...
We propose a Bayesian nonparametric procedure for density estimation, for data in a closed, bounded ...
In this paper, we develop a novel method for approximate continuous-discrete Bayesian filtering. The...
: We present a new and systematic method of approximating exact nonlinear filters with finite dimens...
In this paper, we propose a progressive Bayesian procedure, where the measurement information is con...
To my mother and the loving memory of my father Bayesian filtering refers to the process of sequenti...
One-dimensional Bayesian filtering and smoothing problems can be solved numerically using a number o...
A fast algorithm to approximate the first two moments of the posterior probability density function ...
This paper compares the classical concept of assumed density filters (ADF) with a new class of appro...
We study the rate of convergence of posterior distributions in density estimation problems for log-d...
We study the rate of convergence of posterior distributions in density estimation problems for log-d...
This paper proposes a computationally efficient nonlinear filter that approximates the posterior pro...
International audienceWe present a new and systematic method of approximating exact nonlinear filter...
The first part of the thesis concerns itself with Bayesian nonparametrics. We consider the problem o...
This paper compares the classical concept of assumed density filters (ADF) with a new class of appro...
In filtering algorithms, it is often desirable that the prior and posterior densities share a common...
We propose a Bayesian nonparametric procedure for density estimation, for data in a closed, bounded ...
In this paper, we develop a novel method for approximate continuous-discrete Bayesian filtering. The...
: We present a new and systematic method of approximating exact nonlinear filters with finite dimens...
In this paper, we propose a progressive Bayesian procedure, where the measurement information is con...
To my mother and the loving memory of my father Bayesian filtering refers to the process of sequenti...
One-dimensional Bayesian filtering and smoothing problems can be solved numerically using a number o...
A fast algorithm to approximate the first two moments of the posterior probability density function ...
This paper compares the classical concept of assumed density filters (ADF) with a new class of appro...
We study the rate of convergence of posterior distributions in density estimation problems for log-d...
We study the rate of convergence of posterior distributions in density estimation problems for log-d...
This paper proposes a computationally efficient nonlinear filter that approximates the posterior pro...
International audienceWe present a new and systematic method of approximating exact nonlinear filter...
The first part of the thesis concerns itself with Bayesian nonparametrics. We consider the problem o...
This paper compares the classical concept of assumed density filters (ADF) with a new class of appro...
In filtering algorithms, it is often desirable that the prior and posterior densities share a common...
We propose a Bayesian nonparametric procedure for density estimation, for data in a closed, bounded ...