Over the past few decades, the computational power has been increasing rapidly. With advances of the parallel computation architectures it provides new opportu- nities for solving the optimal estimation problem in real- time. In addition, sensor miniaturization technology enables us to acquire multiple measurements at low cost. Kolmogorov’s forward equation is the governing equation of the nonlinear estimation problem. The nonlinear projection filter presented in the late 90’s is an almost exact solution of the nonlinear estimation problem, which solves the governing equation us- ing Galerkin’s method. The filter requires high-dimensional integration in several steps and the complexity of the filter increases exponentially with the dimensio...
The purpose of nonlinear filtering is to extract useful information from noisy sensor data. It finds...
International audienceThis paper presents a new and systematic method of approximating exact nonline...
AbstractThis paper presents suboptimal linear and nonlinear filtering methods based on observation v...
Advances in sensor systems have resulted in the availability of high resolution sensors, capable of ...
Target tracking filters have a variety of applications in various areas. Typically, a radar provides...
AbstractExamples of two and three dimensional phase demodulation problems are presented. Computer re...
The purpose of this dissertation is to develop nonlinear filters and demonstrate their applications....
A parallel algorithm for Kalman filtering with contaminated observations is developed. Theı parallel...
In principle, general approaches to optimal nonlinear filtering can be described in a unified way fr...
ii We propose new methods to improve nonlinear filtering and robust estimation algorithms. In the fi...
In principle, general approaches to optimal nonlinear filtering can be described in a unified way fr...
In this paper, the filtering problem for the general time-invariant nonlinear state-observation syst...
Nonlinear filtering is certainly very important in estimation since most real-world problems are no...
The conditional probability density function of the state of a stochastic dynamic system represents ...
This paper deals with a new and systematic method of approximating exact nonlinear filters with fini...
The purpose of nonlinear filtering is to extract useful information from noisy sensor data. It finds...
International audienceThis paper presents a new and systematic method of approximating exact nonline...
AbstractThis paper presents suboptimal linear and nonlinear filtering methods based on observation v...
Advances in sensor systems have resulted in the availability of high resolution sensors, capable of ...
Target tracking filters have a variety of applications in various areas. Typically, a radar provides...
AbstractExamples of two and three dimensional phase demodulation problems are presented. Computer re...
The purpose of this dissertation is to develop nonlinear filters and demonstrate their applications....
A parallel algorithm for Kalman filtering with contaminated observations is developed. Theı parallel...
In principle, general approaches to optimal nonlinear filtering can be described in a unified way fr...
ii We propose new methods to improve nonlinear filtering and robust estimation algorithms. In the fi...
In principle, general approaches to optimal nonlinear filtering can be described in a unified way fr...
In this paper, the filtering problem for the general time-invariant nonlinear state-observation syst...
Nonlinear filtering is certainly very important in estimation since most real-world problems are no...
The conditional probability density function of the state of a stochastic dynamic system represents ...
This paper deals with a new and systematic method of approximating exact nonlinear filters with fini...
The purpose of nonlinear filtering is to extract useful information from noisy sensor data. It finds...
International audienceThis paper presents a new and systematic method of approximating exact nonline...
AbstractThis paper presents suboptimal linear and nonlinear filtering methods based on observation v...