This book discusses state estimation of stochastic dynamic systems from noisy measurements, specifically sequential Bayesian estimation and nonlinear or stochastic filtering. The class of solutions presented in this book is based on the Monte Carlo statistical method. Although the resulting algorithms, known as particle filters, have been around for more than a decade, the recent theoretical developments of sequential Bayesian estimation in the framework of random set theory have provided new opportunities which are not widely known and are covered in this book. This book is ideal for graduate students, researchers, scientists and engineers interested in Bayesian estimation
The focus of this paper is Bayesian state and parameter estimation using nonlinear models. A recentl...
Abstract—Increasingly, for many application areas, it is becoming important to include elements of n...
This overview paper describes the particle methods developed for the implementation of the a class o...
“Particle Filters for Random Set Models” presents coverage of state estimation of stochastic dynamic...
This book aims to give readers a unified Bayesian treatment starting from the basics (Baye's rule) t...
The PhD thesis deals with the general model based estimation problem, which is solved here using par...
Particle Filter is a significant member of the group of methods aiming to provide reasonable solutio...
Particle Filter is a significant member of the group of methods aiming to provide reasonable solutio...
Suppose one wants to model a dynamic process that is contam-inated by noise, i.e. one seeks the stat...
This article discusses a partially adapted particle filter for estimating the likelihood of nonlinea...
A introduction to particle filtering is discussed starting with an overview of Bayesian inference fr...
The problem is sequential Bayesian detection and estimation of nonlinear dynamic stochastic systems ...
Dynamical behavior can be seen in many real-life phenomena, typically as a dependence over time. Thi...
Dynamical behavior can be seen in many real-life phenomena, typically as a dependence over time. Thi...
This book provides a general introduction to Sequential Monte Carlo (SMC) methods, also known as par...
The focus of this paper is Bayesian state and parameter estimation using nonlinear models. A recentl...
Abstract—Increasingly, for many application areas, it is becoming important to include elements of n...
This overview paper describes the particle methods developed for the implementation of the a class o...
“Particle Filters for Random Set Models” presents coverage of state estimation of stochastic dynamic...
This book aims to give readers a unified Bayesian treatment starting from the basics (Baye's rule) t...
The PhD thesis deals with the general model based estimation problem, which is solved here using par...
Particle Filter is a significant member of the group of methods aiming to provide reasonable solutio...
Particle Filter is a significant member of the group of methods aiming to provide reasonable solutio...
Suppose one wants to model a dynamic process that is contam-inated by noise, i.e. one seeks the stat...
This article discusses a partially adapted particle filter for estimating the likelihood of nonlinea...
A introduction to particle filtering is discussed starting with an overview of Bayesian inference fr...
The problem is sequential Bayesian detection and estimation of nonlinear dynamic stochastic systems ...
Dynamical behavior can be seen in many real-life phenomena, typically as a dependence over time. Thi...
Dynamical behavior can be seen in many real-life phenomena, typically as a dependence over time. Thi...
This book provides a general introduction to Sequential Monte Carlo (SMC) methods, also known as par...
The focus of this paper is Bayesian state and parameter estimation using nonlinear models. A recentl...
Abstract—Increasingly, for many application areas, it is becoming important to include elements of n...
This overview paper describes the particle methods developed for the implementation of the a class o...