In this paper, a statistical similarity measure is in-troduced to quantify the similarity between two random vectors. The measure is then employed to develop a novel outlier-robust Kalman filtering framework. The approximation errors and the stability of the proposed filter are analyzed and discussed. To implement the filter, a fixed-point iterative algorithm and a separate iterative algorithm are given, and their local convergent conditions are also provided, and their comparisons have been made. In addition, selection of the similarity function is considered, and four exemplary similarity functions are established, from which the relations between our new method and existing outlier-robust Kalman filters are revealed. Simulation examples ...
This paper proposes a new robust Kalman filter algorithm under outliers and system uncertainties. Th...
In this paper we discuss efficient methods of the state estimation which are robust against unknown ...
In this paper we discuss efficient methods of the state estimation which are robust against unknown ...
In this paper, a statistical similarity measure is in-troduced to quantify the similarity between tw...
Abstract—The Kalman filter is widely used in many different fields. Many practical applications and ...
A Kalman Filtering algorithm which is robust to observational outliers is developed by assuming that...
A Kalman Filtering algorithm which is robust to observational outliers is developed by assuming that...
Kalman filter (KF), which is an algorithm that is utilized to estimate unknown variables based on no...
A common situation in filtering where classical Kalman filtering does not perform particularly well ...
In this paper, the problem of designing the feasible Kalman filter under a non-Gaussian stochastic e...
In this paper, the problem of designing the feasible Kalman filter under a non-Gaussian stochastic e...
Abstract. Outlier detection is an important research topic that focuses on detecting abnormal inform...
Outlier detection is an important research topic that focuses on detecting abnormal information in d...
Outlier detection is an important research topic that focuses on detecting abnormal information in d...
Outlier detection is an important research topic that focuses on detecting abnormal information in d...
This paper proposes a new robust Kalman filter algorithm under outliers and system uncertainties. Th...
In this paper we discuss efficient methods of the state estimation which are robust against unknown ...
In this paper we discuss efficient methods of the state estimation which are robust against unknown ...
In this paper, a statistical similarity measure is in-troduced to quantify the similarity between tw...
Abstract—The Kalman filter is widely used in many different fields. Many practical applications and ...
A Kalman Filtering algorithm which is robust to observational outliers is developed by assuming that...
A Kalman Filtering algorithm which is robust to observational outliers is developed by assuming that...
Kalman filter (KF), which is an algorithm that is utilized to estimate unknown variables based on no...
A common situation in filtering where classical Kalman filtering does not perform particularly well ...
In this paper, the problem of designing the feasible Kalman filter under a non-Gaussian stochastic e...
In this paper, the problem of designing the feasible Kalman filter under a non-Gaussian stochastic e...
Abstract. Outlier detection is an important research topic that focuses on detecting abnormal inform...
Outlier detection is an important research topic that focuses on detecting abnormal information in d...
Outlier detection is an important research topic that focuses on detecting abnormal information in d...
Outlier detection is an important research topic that focuses on detecting abnormal information in d...
This paper proposes a new robust Kalman filter algorithm under outliers and system uncertainties. Th...
In this paper we discuss efficient methods of the state estimation which are robust against unknown ...
In this paper we discuss efficient methods of the state estimation which are robust against unknown ...