In this paper, we investigate the state estimation of systems with unknown covariance non-Gaussian measurement noise. A novel improved Gaussian filter (GF) is proposed, where the maximum correntropy criterion (MCC) is used to suppress the pollution of non-Gaussian measurement noise and its covariance is online estimated through the variational Bayes (VB) approximation. MCC and VB are integrated through the fixed-point iteration to modify the estimated measurement noise covariance. As a general framework, the proposed algorithm is applicable to both linear and nonlinear systems with different rules being used to calculate the Gaussian integrals. Experimental results show that the proposed algorithm has better estimation accuracy than related...
The classical unscented Kalman filter (UKF) requires prior knowledge on statistical characteristics ...
This paper proposes an event-triggered variational Bayesian filter for remote state estimation with ...
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...
In this paper, a novel variational Bayesian (VB)-based adaptive Kalman filter (VBAKF) for linear Gau...
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...
The variational Bayes method is applied to the state-space estimation problem with maneuvers or chan...
The Kalman filter (KF) is optimal with respect to minimum mean square error (MMSE) if the process no...
The state estimation problem is ubiquitous in many fields, and the common state estimation method is...
A new algorithm called maximum correntropy unscented Kalman filter (MCUKF) is proposed and applied t...
The unscented transformation (UT) is an efficient method to solve the state estimation problem for a...
In order to deal with the uncertainty of measurement noise, particularly for outlier types of multip...
Abstract—Recently, a new adaptive scheme [Conte et al. (1995), Gini (1997)] has been introduced for ...
International audienceRecently, a new adaptive scheme [1], [2] has been introduced for covariance st...
The classical unscented Kalman filter (UKF) requires prior knowledge on statistical characteristics ...
This paper proposes an event-triggered variational Bayesian filter for remote state estimation with ...
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...
In this paper, a novel variational Bayesian (VB)-based adaptive Kalman filter (VBAKF) for linear Gau...
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...
The variational Bayes method is applied to the state-space estimation problem with maneuvers or chan...
The Kalman filter (KF) is optimal with respect to minimum mean square error (MMSE) if the process no...
The state estimation problem is ubiquitous in many fields, and the common state estimation method is...
A new algorithm called maximum correntropy unscented Kalman filter (MCUKF) is proposed and applied t...
The unscented transformation (UT) is an efficient method to solve the state estimation problem for a...
In order to deal with the uncertainty of measurement noise, particularly for outlier types of multip...
Abstract—Recently, a new adaptive scheme [Conte et al. (1995), Gini (1997)] has been introduced for ...
International audienceRecently, a new adaptive scheme [1], [2] has been introduced for covariance st...
The classical unscented Kalman filter (UKF) requires prior knowledge on statistical characteristics ...
This paper proposes an event-triggered variational Bayesian filter for remote state estimation with ...
The work presented here solves the multi-sensor centralized fusion problem in the linear Gaussian mo...