Bearings-only tracking only adopts measurements from angle sensors to realize target tracking, thus, the accuracy of the state prediction has a significant influence on the final results of filtering. There exist unpredictable approximation errors in the process of filtering due to state propagation, discretization, linearization or other adverse effects. The idea of online covariance adaption is proposed in this work, where the post covariance information is proved to be effective for the covariance adaption. With theoretical deduction, the relationship between the posterior covariance and the priori covariance is investigated; the priori covariance is modified online based on the feedback rule of covariance updating. The general framework...
This paper presents a generic approach to model the noise covariance associated with discrete sensor...
In the vector tracking loop, there is a great error in the output of discriminator owing to the dist...
Herein is presented an efficient nonlinear filtering algorithm called the Gaussian-sum cubature Kalm...
Standard Bayesian filtering algorithms only work well when the statistical properties of system nois...
In a recent paper [1], we derived a new discrete-time Bayesian filter, which we have named the cubat...
Abstract For invariant attitude dynamics evolving on matrix Lie groups, by proposing the stochastic ...
This letter presents a Gaussian-sum cubature Kalman filter with improved robustness compared to the ...
One the most important problems in target tracking are state estimation. This paper deals on estimat...
In this paper, we propose a robust adaptive cubature Kalman filter (CKF) to deal with the problem of...
Novel auxiliary truncated unscented Kalman filtering (ATUKF) is proposed for bearings-only maneuveri...
Kalman filter (KF) is used extensively for state estimation. Among its requirements are the process ...
Standard cubature Kalman filter (CKF) algorithm has some disadvantages in stochastic system control,...
The direction of arrival (DOA) tracking problem based on an angle sensor is an important topic in ma...
In this paper, we study a nonlinear bearing-only target tracking problem using four different estima...
In this paper, a fixed-lag and a fixed-interval Gaussian-sum cubature Kalman smoother are proposed f...
This paper presents a generic approach to model the noise covariance associated with discrete sensor...
In the vector tracking loop, there is a great error in the output of discriminator owing to the dist...
Herein is presented an efficient nonlinear filtering algorithm called the Gaussian-sum cubature Kalm...
Standard Bayesian filtering algorithms only work well when the statistical properties of system nois...
In a recent paper [1], we derived a new discrete-time Bayesian filter, which we have named the cubat...
Abstract For invariant attitude dynamics evolving on matrix Lie groups, by proposing the stochastic ...
This letter presents a Gaussian-sum cubature Kalman filter with improved robustness compared to the ...
One the most important problems in target tracking are state estimation. This paper deals on estimat...
In this paper, we propose a robust adaptive cubature Kalman filter (CKF) to deal with the problem of...
Novel auxiliary truncated unscented Kalman filtering (ATUKF) is proposed for bearings-only maneuveri...
Kalman filter (KF) is used extensively for state estimation. Among its requirements are the process ...
Standard cubature Kalman filter (CKF) algorithm has some disadvantages in stochastic system control,...
The direction of arrival (DOA) tracking problem based on an angle sensor is an important topic in ma...
In this paper, we study a nonlinear bearing-only target tracking problem using four different estima...
In this paper, a fixed-lag and a fixed-interval Gaussian-sum cubature Kalman smoother are proposed f...
This paper presents a generic approach to model the noise covariance associated with discrete sensor...
In the vector tracking loop, there is a great error in the output of discriminator owing to the dist...
Herein is presented an efficient nonlinear filtering algorithm called the Gaussian-sum cubature Kalm...