In this study, a novel iterated Gaussian mixture measurements filter is proposed to represent the measurement likelihood function (LF) with Gaussian mixtures more precisely. The proposed approach recalculates the range interval using updated track components, and the LF is remodelled with Gaussian mixtures for the new range interval. Then, every regenerated measurement component is used to update all of the predicted track components for generating new updated track components. Experimental results demonstrate that the proposed method outperforms existing methods in bearings-only target tracking.This work was supported by the Agency for Defense Development, Republic of Korea (Grant UD160001DD)
A sensor fusion methodology for the Gaussian mixtures model is proposed for ballistic target trackin...
The Gaussian mixture probability hypothesis density (GM-PHD) filter is a promising solution to the m...
This paper presents a Gaussian-mixture (GM) implementation of the probability hypothesis density (PH...
In this paper, an improved nonlinear Gaussian mixture probability hypothesis density (GM-PHD) filter...
This paper presents a new approach for single sensor tracking using passive bearings only measuremen...
In long-range radar tracking, the measurement uncertainty region has a thin and curved shape in Cart...
Most classical bearing-only target tracking algorithms model the measurement likelihood by one Gauss...
Multi-target tracking in clutter, assuming linear target trajectory propagation and linear target me...
Bearings-only tracking is a challenging estimation problem due to the variable observability of the ...
Multitarget tracking in clutter using bearings-only measurements is a challenging problem. In this p...
A multiextended-target tracker based on the extended target Gaussian-mixture probability hypothesis ...
A Gaussian Mixture (GM) target tracking solution is a natural consequence of the multi-target tracki...
Gaussian mixtures (GM) provide a flexible and numerically robust means for the treatment of nonlinea...
A method is developed to approximate the bearings-only orbit determination like-lihood function usin...
This paper provides an analysis of likelihood approximations for bearings-only measurements. By appl...
A sensor fusion methodology for the Gaussian mixtures model is proposed for ballistic target trackin...
The Gaussian mixture probability hypothesis density (GM-PHD) filter is a promising solution to the m...
This paper presents a Gaussian-mixture (GM) implementation of the probability hypothesis density (PH...
In this paper, an improved nonlinear Gaussian mixture probability hypothesis density (GM-PHD) filter...
This paper presents a new approach for single sensor tracking using passive bearings only measuremen...
In long-range radar tracking, the measurement uncertainty region has a thin and curved shape in Cart...
Most classical bearing-only target tracking algorithms model the measurement likelihood by one Gauss...
Multi-target tracking in clutter, assuming linear target trajectory propagation and linear target me...
Bearings-only tracking is a challenging estimation problem due to the variable observability of the ...
Multitarget tracking in clutter using bearings-only measurements is a challenging problem. In this p...
A multiextended-target tracker based on the extended target Gaussian-mixture probability hypothesis ...
A Gaussian Mixture (GM) target tracking solution is a natural consequence of the multi-target tracki...
Gaussian mixtures (GM) provide a flexible and numerically robust means for the treatment of nonlinea...
A method is developed to approximate the bearings-only orbit determination like-lihood function usin...
This paper provides an analysis of likelihood approximations for bearings-only measurements. By appl...
A sensor fusion methodology for the Gaussian mixtures model is proposed for ballistic target trackin...
The Gaussian mixture probability hypothesis density (GM-PHD) filter is a promising solution to the m...
This paper presents a Gaussian-mixture (GM) implementation of the probability hypothesis density (PH...