In the state estimation of a nonlinear system, the second-order filter is known to achieve better precision than the first-order filter [extended Kalman filter (EKF)] at the price of complex computation. If the measurement equation is linear in a transformed state variable, the complex measurement update equations of the second-order filter become as simple as the EKF case. Further, if the vector fields carrying the noise are constant, the high-order components in the variance propagation equation disappear. This suggests that if we make the measurement equation linear and make some vector fields constant through a coordinate transformation, we can simplify the second-order filter significantly while taking advantage of high precision. Fina...
This paper develops a novel approach for estimating latent state variables of Dynamic Stochastic Gen...
We propose a novel form of nonlinear stochastic filtering based on an iterative evaluation of a Kalm...
The Kalman filter is the general solution to the recursive, minimised mean square estimation problem...
A class of nonlinear transformation-based filters (NLTF) for state estimation is proposed. The nonli...
This paper proposes a derivative-free two-stage extended Kalman filter (2-EKF) especially suited for...
This thesis is on filtering in state space models. First, we examine approximate Kalman filters for ...
Abstract—This paper describes a new approach for generalizing the Kalman filter to nonlinear systems...
Stochastic processes viewed as the output signal of a system described by a linear second-order vect...
Abstract—In this paper, we present a new nonlinear filter for high-dimensional state estimation, whi...
Abstract — State estimation theory is one of the best mathematical approaches to analyze variants in...
The purpose of this dissertation is to develop nonlinear filters and demonstrate their applications....
Nonlinear state estimation plays a major role in many real-life applications. Recently, some sigma-p...
Nonlinear estimators based on the Kalman filter, the extended Kalman filter (EKF) and unscented Kalm...
We propose three variants of the extended Kalman filter (EKF) especially suited for parameter estima...
The main goal of filtering is to obtain, recursively in time, good estimates of the state of a stoch...
This paper develops a novel approach for estimating latent state variables of Dynamic Stochastic Gen...
We propose a novel form of nonlinear stochastic filtering based on an iterative evaluation of a Kalm...
The Kalman filter is the general solution to the recursive, minimised mean square estimation problem...
A class of nonlinear transformation-based filters (NLTF) for state estimation is proposed. The nonli...
This paper proposes a derivative-free two-stage extended Kalman filter (2-EKF) especially suited for...
This thesis is on filtering in state space models. First, we examine approximate Kalman filters for ...
Abstract—This paper describes a new approach for generalizing the Kalman filter to nonlinear systems...
Stochastic processes viewed as the output signal of a system described by a linear second-order vect...
Abstract—In this paper, we present a new nonlinear filter for high-dimensional state estimation, whi...
Abstract — State estimation theory is one of the best mathematical approaches to analyze variants in...
The purpose of this dissertation is to develop nonlinear filters and demonstrate their applications....
Nonlinear state estimation plays a major role in many real-life applications. Recently, some sigma-p...
Nonlinear estimators based on the Kalman filter, the extended Kalman filter (EKF) and unscented Kalm...
We propose three variants of the extended Kalman filter (EKF) especially suited for parameter estima...
The main goal of filtering is to obtain, recursively in time, good estimates of the state of a stoch...
This paper develops a novel approach for estimating latent state variables of Dynamic Stochastic Gen...
We propose a novel form of nonlinear stochastic filtering based on an iterative evaluation of a Kalm...
The Kalman filter is the general solution to the recursive, minimised mean square estimation problem...