In this letter, we propose an iterative Kalman type algorithm based on posterior linearization. The proposed algorithm uses a nested loop structure to optimize the mean of the estimate in the inner loop and update the covariance, which is a computationally more expensive operation, only in the outer loop. The optimization of the mean update is done using a damped algorithm to avoid divergence. Our simulations show that the proposed algorithm is more accurate than existing iterative Kalman filters.Peer reviewe
The Kalman filter is a technique for estimating a time-varying state given a dynamical model for, an...
The problem of computing estimates of the state vector in a non-stationary dynamic linear model is c...
Abstract – Applying the Kalman filtering scheme to linearized system dynamics and observation models...
In this letter, we propose an iterative Kalman type algorithm based on posterior linearization. The ...
Publisher Copyright: © 2022 International Society of Information Fusion.This paper is concerned with...
This paper is concerned with Gaussian approximations to the posterior probability density function (...
This paper is concerned with Gaussian approximations to the posterior probability density function (...
This note considers the problem of Bayesian smoothing in nonlinear state-space models with additive ...
This letter presents the development of novel iterated filters and smoothers that only require speci...
International audienceWe propose a new nonlinear Bayesian filtering algorithm where the prediction s...
This paper deals with Gaussian approximations to the posterior probability density function (PDF) in...
This article introduces a new algorithm for nonlinear state estimation based on deterministic sigma ...
This thesis is on filtering in state space models. First, we examine approximate Kalman filters for ...
The Kalman filter is the general solution to the recursive, minimised mean square estimation problem...
This paper proposes a computationally efficient nonlinear filter that approximates the posterior pro...
The Kalman filter is a technique for estimating a time-varying state given a dynamical model for, an...
The problem of computing estimates of the state vector in a non-stationary dynamic linear model is c...
Abstract – Applying the Kalman filtering scheme to linearized system dynamics and observation models...
In this letter, we propose an iterative Kalman type algorithm based on posterior linearization. The ...
Publisher Copyright: © 2022 International Society of Information Fusion.This paper is concerned with...
This paper is concerned with Gaussian approximations to the posterior probability density function (...
This paper is concerned with Gaussian approximations to the posterior probability density function (...
This note considers the problem of Bayesian smoothing in nonlinear state-space models with additive ...
This letter presents the development of novel iterated filters and smoothers that only require speci...
International audienceWe propose a new nonlinear Bayesian filtering algorithm where the prediction s...
This paper deals with Gaussian approximations to the posterior probability density function (PDF) in...
This article introduces a new algorithm for nonlinear state estimation based on deterministic sigma ...
This thesis is on filtering in state space models. First, we examine approximate Kalman filters for ...
The Kalman filter is the general solution to the recursive, minimised mean square estimation problem...
This paper proposes a computationally efficient nonlinear filter that approximates the posterior pro...
The Kalman filter is a technique for estimating a time-varying state given a dynamical model for, an...
The problem of computing estimates of the state vector in a non-stationary dynamic linear model is c...
Abstract – Applying the Kalman filtering scheme to linearized system dynamics and observation models...