This article introduces a Rao-Blackwellised particle filtering (RBPF) approach in the finite set statistics (FISST) multitarget tracking framework. The RBPF approach is proposed in such a case, where each sensor is assumed to produce a sequence of detection reports each containing either one single-target measurement, or a "no detection" report. The tests cover two di#erent measurement models: a linear-Gaussian measurement model, and a nonlinear model linearised in the extended Kalman filter (EKF) scheme. In the tests, Rao-Blackwellisation resulted in a significant reduction of the errors of the FISST estimators when compared to a previously proposed direct particle implementation. In addition, the RBPF approach was shown to be ap...
This tutorial paper summarizes the motivations, concepts and techniques of finite-set statistics (FI...
For performance gain and efficiency it is important to utilize model structure in particle filtering...
Particle filters can become quite inefficient when applied to a high-dimensional state space since a...
This article introduces a Rao-Blackwellised particle filtering (RBPF) approach in the finite set sta...
In this paper we address the problem of tracking multiple targets based on raw measurements by means...
This paper considers the problem of multitarget tracking in cluttered environment. To reduce the dep...
Particle filters have become popular tools for visual tracking since they do not require the modelin...
In this paper, we explore the potential gains in using Sequential Monte Carlo (SMC) methods for exte...
The multi-target tracking problem essentially involves the recursive joint estimation of the state o...
This overview paper describes the particle methods developed for the implementation of the a class o...
In this paper, we explore the potential gains in using Sequential Monte Carlo (SMC) methods for exte...
Multitarget tracking in clutter using bearings-only measurements is a challenging problem. In this p...
Multitarget tracking is the process of jointly determining the number of targets present and their s...
For performance gain and efficiency it is important to utilize model structure in particle filtering...
We review some advances of the particle filtering (PF) algorithm that have been achieved in the last...
This tutorial paper summarizes the motivations, concepts and techniques of finite-set statistics (FI...
For performance gain and efficiency it is important to utilize model structure in particle filtering...
Particle filters can become quite inefficient when applied to a high-dimensional state space since a...
This article introduces a Rao-Blackwellised particle filtering (RBPF) approach in the finite set sta...
In this paper we address the problem of tracking multiple targets based on raw measurements by means...
This paper considers the problem of multitarget tracking in cluttered environment. To reduce the dep...
Particle filters have become popular tools for visual tracking since they do not require the modelin...
In this paper, we explore the potential gains in using Sequential Monte Carlo (SMC) methods for exte...
The multi-target tracking problem essentially involves the recursive joint estimation of the state o...
This overview paper describes the particle methods developed for the implementation of the a class o...
In this paper, we explore the potential gains in using Sequential Monte Carlo (SMC) methods for exte...
Multitarget tracking in clutter using bearings-only measurements is a challenging problem. In this p...
Multitarget tracking is the process of jointly determining the number of targets present and their s...
For performance gain and efficiency it is important to utilize model structure in particle filtering...
We review some advances of the particle filtering (PF) algorithm that have been achieved in the last...
This tutorial paper summarizes the motivations, concepts and techniques of finite-set statistics (FI...
For performance gain and efficiency it is important to utilize model structure in particle filtering...
Particle filters can become quite inefficient when applied to a high-dimensional state space since a...