In recent years, particle filtering has become a powerful tool for tracking signals and time-varying parameters of random dynamic systems. These methods require a mathematical representation of the dynamics of the system evolution, together with assumptions of probabilistic models. In this paper, we present a new class of particle filtering methods that do not assume explicit mathematical forms of the probability distributions of the noise in the system. As a consequence, the proposed techniques are simpler, more robust, and more flexible than standard particle filters. Apart from the theoretical development of specific methods in the new class, we provide computer simulation results that demonstrate the performance of the algorithms in the...
Since their introduction in 1993, particle filters are amongst the most popular algorithms for perfo...
A framework for positioning, navigation and tracking problems using particle filters (sequential Mon...
We propose particle filtering algorithms for tracking on infinite (or large) dimensional state space...
“Particle Filters for Random Set Models” presents coverage of state estimation of stochastic dynamic...
This book discusses state estimation of stochastic dynamic systems from noisy measurements, specific...
This paper introduces the key principles and applications of particle filtering. Particle Filters ar...
The PhD thesis deals with the general model based estimation problem, which is solved here using par...
paper “A New Class of Particle Filters for Random Dynamic Systems with Unknown Statistics ” (EURASIP...
Abstract—Increasingly, for many application areas, it is becoming important to include elements of n...
Dynamical behavior can be seen in many real-life phenomena, typically as a dependence over time. Thi...
The Kalman filter provides an effective solution to the linear Gaussian filtering problem. However w...
This overview paper describes the particle methods developed for the implementation of the a class o...
This paper presents a particle filtering formulation for tracking an unknown and varying number of v...
The ability to analyse, interpret and make inferences about evolving dynamical systems is of great i...
AbstractA new particle filter is presented for nonlinear tracking problems. In practice, maneuvering...
Since their introduction in 1993, particle filters are amongst the most popular algorithms for perfo...
A framework for positioning, navigation and tracking problems using particle filters (sequential Mon...
We propose particle filtering algorithms for tracking on infinite (or large) dimensional state space...
“Particle Filters for Random Set Models” presents coverage of state estimation of stochastic dynamic...
This book discusses state estimation of stochastic dynamic systems from noisy measurements, specific...
This paper introduces the key principles and applications of particle filtering. Particle Filters ar...
The PhD thesis deals with the general model based estimation problem, which is solved here using par...
paper “A New Class of Particle Filters for Random Dynamic Systems with Unknown Statistics ” (EURASIP...
Abstract—Increasingly, for many application areas, it is becoming important to include elements of n...
Dynamical behavior can be seen in many real-life phenomena, typically as a dependence over time. Thi...
The Kalman filter provides an effective solution to the linear Gaussian filtering problem. However w...
This overview paper describes the particle methods developed for the implementation of the a class o...
This paper presents a particle filtering formulation for tracking an unknown and varying number of v...
The ability to analyse, interpret and make inferences about evolving dynamical systems is of great i...
AbstractA new particle filter is presented for nonlinear tracking problems. In practice, maneuvering...
Since their introduction in 1993, particle filters are amongst the most popular algorithms for perfo...
A framework for positioning, navigation and tracking problems using particle filters (sequential Mon...
We propose particle filtering algorithms for tracking on infinite (or large) dimensional state space...