The particle filter provides a general solution to the nonlinear filtering problem with arbitrarily accuracy. However, the curse of dimensionality prevents its application in cases where the state dimensionality is high. Further, estimation of stationary parameters is a known challenge in a particle filter framework. We suggest a marginalization approach for the case of unknown noise distribution parameters that avoid both aforementioned problem. First, the standard approach of augmenting the state vector with sensor offsets and scale factors is avoided, so the state dimension is not increased. Second, the mean and covariance of both process and measurement noises are represented with parametric distributions, whose statistics are updated a...
The marginalized particle filter is a powerful combination of the particle filter and the Kalman fil...
In this study, we investigate online Bayesian estimation of the measurement noise density of a given...
The potential use of the marginalized particle filter for nonlinear system identification is investi...
The particle filter provides a general solution to the nonlinear filtering problem with arbitrarily ...
Knowledge of the noise distribution is typically crucial for the state estimation of general state-s...
Knowledge of the noise distribution is typically crucial for the state estimation of general state-s...
Particle filters, which has been designed to find a solution to the problem of state estimation in h...
Abstract. The marginalized particle filter is a powerful combination of the particle filter and the ...
The marginalized particle filter is a powerful combination of the particle filter and the Kalman fi...
The recently developed particle filter offers a general numerical tool to approximate the state a po...
The particle filter offers a general numerical tool to approximate the posterior density function fo...
The particle filter is one of the most successful methods for state inference and identification of ...
This work proposes a marginalised particle filter with variational inference for non‐linear state‐sp...
AbstractIn Bayesian multi-target filtering, knowledge of measurement noise variance is very importan...
Abstract — The particle filter offers a general numerical tool to approximate the posterior density ...
The marginalized particle filter is a powerful combination of the particle filter and the Kalman fil...
In this study, we investigate online Bayesian estimation of the measurement noise density of a given...
The potential use of the marginalized particle filter for nonlinear system identification is investi...
The particle filter provides a general solution to the nonlinear filtering problem with arbitrarily ...
Knowledge of the noise distribution is typically crucial for the state estimation of general state-s...
Knowledge of the noise distribution is typically crucial for the state estimation of general state-s...
Particle filters, which has been designed to find a solution to the problem of state estimation in h...
Abstract. The marginalized particle filter is a powerful combination of the particle filter and the ...
The marginalized particle filter is a powerful combination of the particle filter and the Kalman fi...
The recently developed particle filter offers a general numerical tool to approximate the state a po...
The particle filter offers a general numerical tool to approximate the posterior density function fo...
The particle filter is one of the most successful methods for state inference and identification of ...
This work proposes a marginalised particle filter with variational inference for non‐linear state‐sp...
AbstractIn Bayesian multi-target filtering, knowledge of measurement noise variance is very importan...
Abstract — The particle filter offers a general numerical tool to approximate the posterior density ...
The marginalized particle filter is a powerful combination of the particle filter and the Kalman fil...
In this study, we investigate online Bayesian estimation of the measurement noise density of a given...
The potential use of the marginalized particle filter for nonlinear system identification is investi...