The problem is target motion analysis (TMA) in situations where the variance (standard deviation) of additive white Gaussian measurement noise is unknown and time-varying. In particular, the paper examines a somewhat surprising result from the theoretical analysis based on the Cramer-Rao bound, which suggests that the best-achievable (second-order) error in target state estimation is unaffected by the lack of knowledge of the measurement noise variance. In order to examine this result, the paper develops three recursive Bayesian filters for TMA, which jointly estimate the target state and the measurement variance. The basis of all filters is the Cubature Kalman filter for bearings-only tracking, combined with (i) the variational Bayesian ap...
In this paper, a novel variational Bayesian (VB)-based adaptive Kalman filter (VBAKF) for linear Gau...
This report considers the bearings-only estimation problem of a random walk target. The estimation p...
For the bearing-only target motion analysis (TMA), the pseudolinear Kalman filter (PLKF) solves the ...
Bearings-only target motion analysis (TMA) is the process of estimating the state of a moving emitti...
In order to solve the problem that the measurement noise covariance may be unknown or change with ti...
This paper addresses the problem of tracking a maneuvering target from passive measurements collecte...
The Kalman filter computes the minimum variance state estimate as a linear function of measurements ...
Abstract – In this paper, we propose and assess the performance of “H infinity filter ( H ∞ , HIF) ”...
The problem is recursive Bayesian estimation of position and velocity of a moving object using async...
International audienceThe passive target motion analysis (TMA) of a source in constant turn motion b...
In this paper we compare three different sequential estimation algorithms for tracking a single move...
AbstractIn Bayesian multi-target filtering, knowledge of measurement noise variance is very importan...
Tracking systems are based on models, in particular, the target dynamics model and the sensor measur...
Kalman filtering techniques are applied to a two sensor bearings only passive target motion analysis...
The augmented bearings-only target motion analysis (TMA) problem arises when the bearing measurement...
In this paper, a novel variational Bayesian (VB)-based adaptive Kalman filter (VBAKF) for linear Gau...
This report considers the bearings-only estimation problem of a random walk target. The estimation p...
For the bearing-only target motion analysis (TMA), the pseudolinear Kalman filter (PLKF) solves the ...
Bearings-only target motion analysis (TMA) is the process of estimating the state of a moving emitti...
In order to solve the problem that the measurement noise covariance may be unknown or change with ti...
This paper addresses the problem of tracking a maneuvering target from passive measurements collecte...
The Kalman filter computes the minimum variance state estimate as a linear function of measurements ...
Abstract – In this paper, we propose and assess the performance of “H infinity filter ( H ∞ , HIF) ”...
The problem is recursive Bayesian estimation of position and velocity of a moving object using async...
International audienceThe passive target motion analysis (TMA) of a source in constant turn motion b...
In this paper we compare three different sequential estimation algorithms for tracking a single move...
AbstractIn Bayesian multi-target filtering, knowledge of measurement noise variance is very importan...
Tracking systems are based on models, in particular, the target dynamics model and the sensor measur...
Kalman filtering techniques are applied to a two sensor bearings only passive target motion analysis...
The augmented bearings-only target motion analysis (TMA) problem arises when the bearing measurement...
In this paper, a novel variational Bayesian (VB)-based adaptive Kalman filter (VBAKF) for linear Gau...
This report considers the bearings-only estimation problem of a random walk target. The estimation p...
For the bearing-only target motion analysis (TMA), the pseudolinear Kalman filter (PLKF) solves the ...