In this paper, a novel variational Bayesian (VB)-based adaptive Kalman filter (VBAKF) for linear Gaussian state-space models with inaccurate process and measurement noise covariance matrices is proposed. By choosing inverse Wishart priors, the state together with the predicted error and measurement noise covariance matrices are inferred based on the VB approach. Simulation results for a target tracking example illustrate that the proposed VBAKF has better robustness to resist the uncertainties of process and measurement noise covariance matrices than existing state-of-the-art filters
The work presented here solves the multi-sensor centralized fusion problem in the linear Gaussian mo...
The maximum correntropy Kalman filter (MCKF) is an effective algorithm that was proposed to solve th...
The Kalman filter (KF) is used extensively for state estimation. Among its requirements are the proc...
In order to solve the problem that the measurement noise covariance may be unknown or change with ti...
This paper is considered with joint estimation of state and time-varying noise covariance matrices i...
In this paper, we investigate the state estimation of systems with unknown covariance non-Gaussian m...
In this paper, state and noise covariance estimation problems for linear system with unknown multipl...
We present an adaptive smoother for linear state-space models with unknown process and measurement n...
The Unscented Kalman filter (UKF) may suffer from performance degradation and even divergence while ...
The state-of-the-art algorithms for Kalman filtering in agent networks with information diffusion im...
To solve the problem of unknown state noises and uncertain measurement noises inherent in underwater...
In this paper, a new robust Kalman filtering framework for a linear system with non-Gaussian heavy-t...
The variational Bayes method is applied to the state-space estimation problem with maneuvers or chan...
The Schmidt-Kalman filter (SKF) achieves filtering consistency in the presence of biases in system d...
Filtering and smoothing algorithms for linear discrete-time state-space models with skew-t-distribut...
The work presented here solves the multi-sensor centralized fusion problem in the linear Gaussian mo...
The maximum correntropy Kalman filter (MCKF) is an effective algorithm that was proposed to solve th...
The Kalman filter (KF) is used extensively for state estimation. Among its requirements are the proc...
In order to solve the problem that the measurement noise covariance may be unknown or change with ti...
This paper is considered with joint estimation of state and time-varying noise covariance matrices i...
In this paper, we investigate the state estimation of systems with unknown covariance non-Gaussian m...
In this paper, state and noise covariance estimation problems for linear system with unknown multipl...
We present an adaptive smoother for linear state-space models with unknown process and measurement n...
The Unscented Kalman filter (UKF) may suffer from performance degradation and even divergence while ...
The state-of-the-art algorithms for Kalman filtering in agent networks with information diffusion im...
To solve the problem of unknown state noises and uncertain measurement noises inherent in underwater...
In this paper, a new robust Kalman filtering framework for a linear system with non-Gaussian heavy-t...
The variational Bayes method is applied to the state-space estimation problem with maneuvers or chan...
The Schmidt-Kalman filter (SKF) achieves filtering consistency in the presence of biases in system d...
Filtering and smoothing algorithms for linear discrete-time state-space models with skew-t-distribut...
The work presented here solves the multi-sensor centralized fusion problem in the linear Gaussian mo...
The maximum correntropy Kalman filter (MCKF) is an effective algorithm that was proposed to solve th...
The Kalman filter (KF) is used extensively for state estimation. Among its requirements are the proc...