Existing robust state estimation methods are generally unable to distinguish model uncertainties (state outliers) from measurement outliers as they only exploit the current measurement. In this paper, the measurements in a sliding window are therefore utilized to better distinguish them, and an adaptive method is embedded, leading to a sliding window variational outlier-robust Kalman filter based on Student's t noise modelling. Target tracking simulations and experiments show that the tracking accuracy and consistency of the proposed filter are superior to those of the existing state-of-the-art outlier-robust methods thanks to the improved ability to identify the outliers but at a cost of greater computational burden
In time series analysis state space models are very popular. Often it is interesting to sequentially...
Simultaneous occurrence of gross errors (outliers/biases/drifts) in the measured signals, and drifti...
Abstract—The Kalman filter is widely used in many different fields. Many practical applications and ...
Existing robust state estimation methods are generally unable to distinguish model uncertainties (st...
The Schmidt-Kalman filter (SKF) achieves filtering consistency in the presence of biases in system d...
Kalman filter (KF), which is an algorithm that is utilized to estimate unknown variables based on no...
Measurement-outliers caused by non-linear observation model or random disturbance will lead to the 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 ...
A Kalman Filtering algorithm which is robust to observational outliers is developed by assuming that...
This paper proposes a new robust Kalman filter algorithm under outliers and system uncertainties. Th...
Impulsed noise outliers are data points that differs significantly from other observations.They are ...
Impulsed noise outliers are data points that differs significantly from other observations. They are...
Using results from the field of robust statistics, we derive a class of Kalman filters that are robu...
A common situation in filtering where classical Kalman filtering does not perform particularly well ...
In time series analysis state space models are very popular. Often it is interesting to sequentially...
Simultaneous occurrence of gross errors (outliers/biases/drifts) in the measured signals, and drifti...
Abstract—The Kalman filter is widely used in many different fields. Many practical applications and ...
Existing robust state estimation methods are generally unable to distinguish model uncertainties (st...
The Schmidt-Kalman filter (SKF) achieves filtering consistency in the presence of biases in system d...
Kalman filter (KF), which is an algorithm that is utilized to estimate unknown variables based on no...
Measurement-outliers caused by non-linear observation model or random disturbance will lead to the 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 ...
A Kalman Filtering algorithm which is robust to observational outliers is developed by assuming that...
This paper proposes a new robust Kalman filter algorithm under outliers and system uncertainties. Th...
Impulsed noise outliers are data points that differs significantly from other observations.They are ...
Impulsed noise outliers are data points that differs significantly from other observations. They are...
Using results from the field of robust statistics, we derive a class of Kalman filters that are robu...
A common situation in filtering where classical Kalman filtering does not perform particularly well ...
In time series analysis state space models are very popular. Often it is interesting to sequentially...
Simultaneous occurrence of gross errors (outliers/biases/drifts) in the measured signals, and drifti...
Abstract—The Kalman filter is widely used in many different fields. Many practical applications and ...