Kalman filter is one of the best filter used in the state estimation based on optimality criteria using system model and observation model. A common assumption used in estimation by Kalman filter is that noise is Gaussian but in practically we get thick-tailed Non-Gaussian noise distribution.This type of noise known as Outlier in the data and cause the significant degradation of performance of Kalman Filter. There are many Nonlinear methods exist which can give desired estimation in the presence of Non-Gaussian Noise. We also want the filter which is Robust in the presence of outlier and statistically efficient.But classical Kalman Filter is not suitable in the presence of non-gaussian noise. To get the high statistical efficiency in the pr...
The Kalman filter (KF) is an extremely powerful and versatile tool for signal processing that has be...
Includes bibliographical reference.viii, 149 leaves : ill. ; 30 cm.This study is concerned with filt...
Abstract: We present optimality results for robust Kalman filtering where robustness is understood i...
Kalman filter is one of the best filter utilized as a part of the state estimation taking into accou...
This paper proposes a new robust Kalman filter algorithm under outliers and system uncertainties. Th...
In this paper, the problem of designing the feasible Kalman filter under a non-Gaussian stochastic e...
Kalman filter (KF), which is an algorithm that is utilized to estimate unknown variables based on no...
Caption title.Includes bibliographical references (p. 23-25).Supported by the U.S. Air Force Office ...
In time series analysis state space models are very popular. Often it is interesting to sequentially...
Filtering and estimation are two of the most pervasive tools of engineering. Whenever the state of a...
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 ...
We present some optimality results for robust Kalman filtering. To this end, we introduce the genera...
A common situation in filtering where classical Kalman filtering does not perform particularly well ...
Using results from the field of robust statistics, we derive a class of Kalman filters that are robu...
The Kalman filter (KF) is an extremely powerful and versatile tool for signal processing that has be...
Includes bibliographical reference.viii, 149 leaves : ill. ; 30 cm.This study is concerned with filt...
Abstract: We present optimality results for robust Kalman filtering where robustness is understood i...
Kalman filter is one of the best filter utilized as a part of the state estimation taking into accou...
This paper proposes a new robust Kalman filter algorithm under outliers and system uncertainties. Th...
In this paper, the problem of designing the feasible Kalman filter under a non-Gaussian stochastic e...
Kalman filter (KF), which is an algorithm that is utilized to estimate unknown variables based on no...
Caption title.Includes bibliographical references (p. 23-25).Supported by the U.S. Air Force Office ...
In time series analysis state space models are very popular. Often it is interesting to sequentially...
Filtering and estimation are two of the most pervasive tools of engineering. Whenever the state of a...
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 ...
We present some optimality results for robust Kalman filtering. To this end, we introduce the genera...
A common situation in filtering where classical Kalman filtering does not perform particularly well ...
Using results from the field of robust statistics, we derive a class of Kalman filters that are robu...
The Kalman filter (KF) is an extremely powerful and versatile tool for signal processing that has be...
Includes bibliographical reference.viii, 149 leaves : ill. ; 30 cm.This study is concerned with filt...
Abstract: We present optimality results for robust Kalman filtering where robustness is understood i...