The purpose of nonlinear filtering is to extract useful information from noisy sensor data. It finds applications in all disciplines of science and engineering, including tracking and navigation, traffic surveillance, financial engineering, neuroscience, biology, robotics, computer vision, weather forecasting, geophysical survey and oceanology, etc. This thesis is particularly concerned with the nonlinear filtering problem in the continuous-time continuous-valued state-space setting (diffusion). In this setting, the nonlinear filter is described by the Kushner-Stratonovich (K-S) stochastic partial differential equation (SPDE). For the general nonlinear non-Gaussian problem, no analytical expression for the solution of the SPDE is availabl...
This thesis is concerned with the development and applications of controlled interacting particle sy...
This thesis studies different aspects of the linear and the nonlinear stochastic filtering problem. ...
Particle filters have, in recent years, been found to perform well in highly nonlinear problems as w...
The purpose of nonlinear filtering is to extract useful information from noisy sensor data. It finds...
This thesis is concerned with the design and analysis of particle-based algorithms for two problems:...
This paper is concerned with the filtering problem in continuous time. Three algorithmic solution ap...
This paper is concerned with the filtering problem in continuous time. Three algorithmic solution ap...
A new formulation of the particle filter for nonlinear filtering is presented, based on concepts fro...
Generally, in most applied fields, the dynamic state space models are of nonlinearity with non-Gauss...
Recent research has provided several new methods for avoiding degeneracy in particle fil-ters. These...
In a recent work it is shown that importance sampling can be avoided in the particle filter through ...
The Kalman filter provides an effective solution to the linear Gaussian filtering problem. However w...
Abstract — In recent work it is shown that importance sampling can be avoided in the particle filter...
The main goal of filtering is to obtain, recursively in time, good estimates of the state of a stoch...
The Kalman filter provides an effective solution to the linear-Gaussian filtering problem. However, ...
This thesis is concerned with the development and applications of controlled interacting particle sy...
This thesis studies different aspects of the linear and the nonlinear stochastic filtering problem. ...
Particle filters have, in recent years, been found to perform well in highly nonlinear problems as w...
The purpose of nonlinear filtering is to extract useful information from noisy sensor data. It finds...
This thesis is concerned with the design and analysis of particle-based algorithms for two problems:...
This paper is concerned with the filtering problem in continuous time. Three algorithmic solution ap...
This paper is concerned with the filtering problem in continuous time. Three algorithmic solution ap...
A new formulation of the particle filter for nonlinear filtering is presented, based on concepts fro...
Generally, in most applied fields, the dynamic state space models are of nonlinearity with non-Gauss...
Recent research has provided several new methods for avoiding degeneracy in particle fil-ters. These...
In a recent work it is shown that importance sampling can be avoided in the particle filter through ...
The Kalman filter provides an effective solution to the linear Gaussian filtering problem. However w...
Abstract — In recent work it is shown that importance sampling can be avoided in the particle filter...
The main goal of filtering is to obtain, recursively in time, good estimates of the state of a stoch...
The Kalman filter provides an effective solution to the linear-Gaussian filtering problem. However, ...
This thesis is concerned with the development and applications of controlled interacting particle sy...
This thesis studies different aspects of the linear and the nonlinear stochastic filtering problem. ...
Particle filters have, in recent years, been found to perform well in highly nonlinear problems as w...