The problem of tracking multiple maneuvering targets in clutter naturally leads to a Gaussian mixture representation of the Provability Density Function (PDF) of the target state vector. State-of-the-art Multiple Hypothesis Tracking (MHT) techniques maintain the mean, covariance and probability weight corresponding to each hypothesis, yet they rely on ad hoc merging and pruning rules to control the growth of hypotheses
Probability hypothesis density (PHD) filter is a suboptimal Bayesian multi-target filter based on ra...
Bayesian solutions of tracking problems that invoLve measurement associa, tion unc.rtainty, give ris...
We review the literature and look at two of the best algorithms for Gaussian mixture reduction, the ...
The Bayesian solution for tracking a target in clutter results naturally in a target state Gaussian ...
Multiple hypothesis trackers (MHTs) are widely accepted as the best means of tracking targets in clu...
AbstractThe measurement origin uncertainty and target (dynamic or/and measurement) model uncertainty...
Abstract – The problem of tracking targets in clutter nat-urally leads to a Gaussian mixture represe...
Multi-target tracking in clutter, assuming linear target trajectory propagation and linear target me...
A Gaussian Mixture (GM) target tracking solution is a natural consequence of the multi-target tracki...
The Gaussian mixture probability hypothesis density (GM-PHD) recursion is a closed-form solution to ...
Target tracking represents a state estimation problem recurrent in many practical scenarios like air...
In this dissertation, we consider various aspects of tracking multiple targets in clutter. The prima...
The probability hypothesis density (PHD) filter is an attractive approach to tracking an unknown and...
AbstractIn this paper, an improved implementation of multiple model Gaussian mixture probability hyp...
The Gaussian mixture probability hypothesis density (GM-PHD) filter is a promising solution to the m...
Probability hypothesis density (PHD) filter is a suboptimal Bayesian multi-target filter based on ra...
Bayesian solutions of tracking problems that invoLve measurement associa, tion unc.rtainty, give ris...
We review the literature and look at two of the best algorithms for Gaussian mixture reduction, the ...
The Bayesian solution for tracking a target in clutter results naturally in a target state Gaussian ...
Multiple hypothesis trackers (MHTs) are widely accepted as the best means of tracking targets in clu...
AbstractThe measurement origin uncertainty and target (dynamic or/and measurement) model uncertainty...
Abstract – The problem of tracking targets in clutter nat-urally leads to a Gaussian mixture represe...
Multi-target tracking in clutter, assuming linear target trajectory propagation and linear target me...
A Gaussian Mixture (GM) target tracking solution is a natural consequence of the multi-target tracki...
The Gaussian mixture probability hypothesis density (GM-PHD) recursion is a closed-form solution to ...
Target tracking represents a state estimation problem recurrent in many practical scenarios like air...
In this dissertation, we consider various aspects of tracking multiple targets in clutter. The prima...
The probability hypothesis density (PHD) filter is an attractive approach to tracking an unknown and...
AbstractIn this paper, an improved implementation of multiple model Gaussian mixture probability hyp...
The Gaussian mixture probability hypothesis density (GM-PHD) filter is a promising solution to the m...
Probability hypothesis density (PHD) filter is a suboptimal Bayesian multi-target filter based on ra...
Bayesian solutions of tracking problems that invoLve measurement associa, tion unc.rtainty, give ris...
We review the literature and look at two of the best algorithms for Gaussian mixture reduction, the ...