This paper proposes a filter for joint detection and tracking of a single target using measurements from multiple sensors under the presence of detection uncertainty and clutter. To capture the target presence/absence in the surveillance region as well as its kinematic state, we represent the target state as a set that can take on either the empty set or a singleton. The uncertainty in such a set is modeled by a Bernoulli random finite set (RFS), and Bayes optimal estimators for joint detection and tracking are presented. A closed-form solution for the linear-Gaussian model is derived and an analytic implementation is proposed for nonlinear models based on the unscented transform. We apply the technique to tracking targets constrained to mo...
Most tracking algorithms in the literature assume that the targets always generate measurements inde...
This paper presents a novel Bayesian method to track multiple targets in an image sequence without e...
Most classical bearing-only target tracking algorithms model the measurement likelihood by one Gauss...
In this paper, we study the problem of the joint detection and direction-of-arrival (DOA) tracking o...
The error bound is a typical measure of the limiting performance of all filters for the given sensor...
Knowledge of the clutter rate is of critical importance in multi-target Bayesian tracking. However, ...
153 pagesTracking multiple moving objects in complex environments is a key objective of many robotic...
Multiple target tracking (MTT) is a challenging task that aims to estimate the number of targets and...
This paper presents a method for simultaneous classification and robust tracking of traffic particip...
In real world multi-target tracking problems, the presence of merged measurements is a frequently oc...
This article studies the problem of joint detection and tracking of a target using multi-static Dopp...
The problem is joint detection and tracking of a non-point or extended moving object, characterised ...
Abstract- We consider a multi-target tracking problem that aims to simultaneously determine the numb...
In this paper, we propose the labeled multi-Bernoulli filter which explicitly estimates target track...
The problem is to establish the presence and subsequently to track a target using multi-static Doppl...
Most tracking algorithms in the literature assume that the targets always generate measurements inde...
This paper presents a novel Bayesian method to track multiple targets in an image sequence without e...
Most classical bearing-only target tracking algorithms model the measurement likelihood by one Gauss...
In this paper, we study the problem of the joint detection and direction-of-arrival (DOA) tracking o...
The error bound is a typical measure of the limiting performance of all filters for the given sensor...
Knowledge of the clutter rate is of critical importance in multi-target Bayesian tracking. However, ...
153 pagesTracking multiple moving objects in complex environments is a key objective of many robotic...
Multiple target tracking (MTT) is a challenging task that aims to estimate the number of targets and...
This paper presents a method for simultaneous classification and robust tracking of traffic particip...
In real world multi-target tracking problems, the presence of merged measurements is a frequently oc...
This article studies the problem of joint detection and tracking of a target using multi-static Dopp...
The problem is joint detection and tracking of a non-point or extended moving object, characterised ...
Abstract- We consider a multi-target tracking problem that aims to simultaneously determine the numb...
In this paper, we propose the labeled multi-Bernoulli filter which explicitly estimates target track...
The problem is to establish the presence and subsequently to track a target using multi-static Doppl...
Most tracking algorithms in the literature assume that the targets always generate measurements inde...
This paper presents a novel Bayesian method to track multiple targets in an image sequence without e...
Most classical bearing-only target tracking algorithms model the measurement likelihood by one Gauss...