By restricting to Gaussian distributions, the optimal Bayesian filtering problem can be transformed into an algebraically simple form, which allows for computationally efficient algorithms. Three problem settings are discussed in this thesis: (1) filtering with Gaussians only, (2) Gaussian mixture filtering for strong nonlinearities, (3) Gaussian process filtering for purely data-driven scenarios. For each setting, efficient algorithms are derived and applied to real-world problems
Bayesian learning using Gaussian processes provides a foundational framework for making decisions in...
Since the landmark work of R. E. Kalman in the 1960s, considerable efforts have been devoted to time...
The topic of this thesis is estimation of nonlinear dynamical systems, focusing on the use of method...
By restricting to Gaussian distributions, the optimal Bayesian filtering problem can be transformed ...
In this paper we develop and analyze real-time and accurate filters for nonlinear filtering problems...
This book examines Gaussian processes in both model-based reinforcement learning (RL) and inference ...
This dissertation presents two different Bayesian approaches for highly nonlinear systems with a the...
This dissertation considers the state estimation problems with symmetric Gaussian/asymmetric skew-Ga...
This paper deals with the update step of Gaussian MAP filtering. In this framework, we seek a Gaussi...
In this thesis two probabilistic model-based estimators are introduced that allow the reconstruction...
Nonlinear filtering is a major problem in statistical signal processing applications and numerous te...
Includes abstract.Includes bibliographical references.The Gauss-Newton filter is a tracking filter d...
In this paper, a Gaussian filter for nonlinear Bayesian estimation is introduced that is based on a ...
The goal of this work is improving existing and suggesting novel filtering algorithms for nonlinear ...
This paper is concerned with the use of Gaussian process regression based quadrature rules in the co...
Bayesian learning using Gaussian processes provides a foundational framework for making decisions in...
Since the landmark work of R. E. Kalman in the 1960s, considerable efforts have been devoted to time...
The topic of this thesis is estimation of nonlinear dynamical systems, focusing on the use of method...
By restricting to Gaussian distributions, the optimal Bayesian filtering problem can be transformed ...
In this paper we develop and analyze real-time and accurate filters for nonlinear filtering problems...
This book examines Gaussian processes in both model-based reinforcement learning (RL) and inference ...
This dissertation presents two different Bayesian approaches for highly nonlinear systems with a the...
This dissertation considers the state estimation problems with symmetric Gaussian/asymmetric skew-Ga...
This paper deals with the update step of Gaussian MAP filtering. In this framework, we seek a Gaussi...
In this thesis two probabilistic model-based estimators are introduced that allow the reconstruction...
Nonlinear filtering is a major problem in statistical signal processing applications and numerous te...
Includes abstract.Includes bibliographical references.The Gauss-Newton filter is a tracking filter d...
In this paper, a Gaussian filter for nonlinear Bayesian estimation is introduced that is based on a ...
The goal of this work is improving existing and suggesting novel filtering algorithms for nonlinear ...
This paper is concerned with the use of Gaussian process regression based quadrature rules in the co...
Bayesian learning using Gaussian processes provides a foundational framework for making decisions in...
Since the landmark work of R. E. Kalman in the 1960s, considerable efforts have been devoted to time...
The topic of this thesis is estimation of nonlinear dynamical systems, focusing on the use of method...