This paper presents a random set based approach to tracking of an unknown number of extended targets, in the presence of clutter measurements and missed detections, where the targets' extensions are modeled as random matrices. For this purpose, the random matrix framework developed recently by Koch et al. is adapted into the extended target PHD framework, resulting in the Gaussian inverse Wishart PHD (GIW-PHD) filter. A suitable multiple target likelihood is derived, and the main filter recursion is presented along with the necessary assumptions and approximations. The particularly challenging case of close extended targets is addressed with practical measurement clustering algorithms. The capabilities and limitations of the resulting exten...
In extended/group target tracking, where the extensions of the targets are estimated, target spawnin...
Abstract Based on the random finite set (RFS) framework and the probability hypothesis density (PHD)...
© 1991-2012 IEEE. Most conventional target tracking algorithms assume that one target can generate a...
This paper presents an overview of the extended target tracking research undertaken at the division ...
This paper presents a Gaussian-mixture (GM) implementation of the probability hypothesis density (PH...
In extended target tracking, targets potentially produce more than one measurement per time step. Mu...
In extended target tracking, targets potentially produce more than one measurement per time step. Mu...
Abstract—This paper presents a Gaussian-mixture implemen-tation of the PHD filter for tracking exten...
This paper presents a Gaussian-mixture implementation of the phd filter for tracking extended target...
Targets that generate multiple measurements at a given instant in time are commonly known as extende...
This paper addresses extended multi-target tracking in clutter, i.e. tracking targets that may produ...
This paper presents a framework for tracking extended targets which give rise to a structured set of...
This paper presents a framework for tracking extended targets which give rise to a structured set of...
In extended/group target tracking, where the extensions of the targets are estimated, target spawnin...
Use of the Gaussian inverse Wishart probability hypothesis density (GIW-PHD) filter has demonstrated...
In extended/group target tracking, where the extensions of the targets are estimated, target spawnin...
Abstract Based on the random finite set (RFS) framework and the probability hypothesis density (PHD)...
© 1991-2012 IEEE. Most conventional target tracking algorithms assume that one target can generate a...
This paper presents an overview of the extended target tracking research undertaken at the division ...
This paper presents a Gaussian-mixture (GM) implementation of the probability hypothesis density (PH...
In extended target tracking, targets potentially produce more than one measurement per time step. Mu...
In extended target tracking, targets potentially produce more than one measurement per time step. Mu...
Abstract—This paper presents a Gaussian-mixture implemen-tation of the PHD filter for tracking exten...
This paper presents a Gaussian-mixture implementation of the phd filter for tracking extended target...
Targets that generate multiple measurements at a given instant in time are commonly known as extende...
This paper addresses extended multi-target tracking in clutter, i.e. tracking targets that may produ...
This paper presents a framework for tracking extended targets which give rise to a structured set of...
This paper presents a framework for tracking extended targets which give rise to a structured set of...
In extended/group target tracking, where the extensions of the targets are estimated, target spawnin...
Use of the Gaussian inverse Wishart probability hypothesis density (GIW-PHD) filter has demonstrated...
In extended/group target tracking, where the extensions of the targets are estimated, target spawnin...
Abstract Based on the random finite set (RFS) framework and the probability hypothesis density (PHD)...
© 1991-2012 IEEE. Most conventional target tracking algorithms assume that one target can generate a...