This paper presents a novel and mathematically rigorous Bayes’ recursion for tracking a target that generates multiple measurements with state dependent sensor field of view and clutter. Our Bayesian formulation is mathematically well-founded due to our use of a consistent likelihood function derived from random finite set theory. It is established that under certain assumptions, the proposed Bayes’ recursion reduces to the cardinalized probability hypothesis density (CPHD) recursion for a single target. A particle implementation of the proposed recursion is given. Under linear Gaussian and constant sensor field of view assumptions, an exact closed-form solution to the proposed recursion is derived, and efficient implementations are given. ...
Knowledge of the clutter rate is of critical importance in multi-target Bayesian tracking. However, ...
Principled and novel multi-object tracking algorithms are proposed, that have the ability to optimal...
This paper proposes a composite Bayesian filtering approach for unmanned aerial vehicle trajectory e...
Abstract — This paper presents a novel and mathematically rigorous Bayes recursion for tracking a ta...
Multitarget tracking is the process of jointly determining the number of targets present and their s...
We decompose a probability density function (PDF) of a labelled random finite set (RFS) into a proba...
Abstract – Ba-Tuong-Vo et al proposed a Bayes filter of single target in the random finite set frame...
Most tracking algorithms in the literature assume that the targets always generate measurements inde...
The multi-target tracking problem essentially involves the recursive joint estimation of the state o...
The aim of multi-object tracking is the estimation of the number of objects and their individual sta...
In this paper we address the problem of tracking multiple targets based on raw measurements by means...
The objective of multi-object estimation is to simultaneously estimate the number of objects and the...
Random finite sets (RFSs) are natural representations of multi-target states and observations that a...
153 pagesTracking multiple moving objects in complex environments is a key objective of many robotic...
In this paper we present a general solution for multi-target tracking problems with superpositional ...
Knowledge of the clutter rate is of critical importance in multi-target Bayesian tracking. However, ...
Principled and novel multi-object tracking algorithms are proposed, that have the ability to optimal...
This paper proposes a composite Bayesian filtering approach for unmanned aerial vehicle trajectory e...
Abstract — This paper presents a novel and mathematically rigorous Bayes recursion for tracking a ta...
Multitarget tracking is the process of jointly determining the number of targets present and their s...
We decompose a probability density function (PDF) of a labelled random finite set (RFS) into a proba...
Abstract – Ba-Tuong-Vo et al proposed a Bayes filter of single target in the random finite set frame...
Most tracking algorithms in the literature assume that the targets always generate measurements inde...
The multi-target tracking problem essentially involves the recursive joint estimation of the state o...
The aim of multi-object tracking is the estimation of the number of objects and their individual sta...
In this paper we address the problem of tracking multiple targets based on raw measurements by means...
The objective of multi-object estimation is to simultaneously estimate the number of objects and the...
Random finite sets (RFSs) are natural representations of multi-target states and observations that a...
153 pagesTracking multiple moving objects in complex environments is a key objective of many robotic...
In this paper we present a general solution for multi-target tracking problems with superpositional ...
Knowledge of the clutter rate is of critical importance in multi-target Bayesian tracking. However, ...
Principled and novel multi-object tracking algorithms are proposed, that have the ability to optimal...
This paper proposes a composite Bayesian filtering approach for unmanned aerial vehicle trajectory e...