Funding Information: Muhammad Emzir would like to express his gratitude to the KFUPM Dean of Research Oversight and Coordination for the SR211015 grant. Publisher Copyright: © 2022 Elsevier B.V.The projection filter is a technique for approximating the solutions of optimal filtering problems. In projection filters, the Kushner–Stratonovich stochastic partial differential equation that governs the propagation of the optimal filtering density is projected to a manifold of parametric densities, resulting in a finite-dimensional stochastic differential equation. Despite the fact that projection filters are capable of representing complicated probability densities, their current implementations are limited to Gaussian family or unidimensional fi...
We are rarely able to fully and directly observe many phenomena which are crucial to our daily lives...
In this paper, we develop a novel method for approximate continuous-discrete Bayesian filtering. The...
The conditional probability density function of the state of a stochastic dynamic system represents ...
The projection filter is a technique for approximating the solutions of optimal filtering problems. ...
: We present a new and systematic method of approximating exact nonlinear filters with finite dimens...
This paper compares the classical concept of assumed density filters (ADF) with a new class of appro...
International audienceWe present a new and systematic method of approximating exact nonlinear filter...
This paper deals with a new and systematic method of approximating exact nonlinear filters with fini...
International audienceWe present the projection filter, an approximate finite-dimensional filter bas...
We review the introduction of several types of projection filters. Projection structures coming from...
This paper presents a new and systematic method of approximating exact nonlinear filters with finite...
The goal of filtering theory is to compute the filter distribution, that is, the conditional distrib...
This paper compares the classical concept of assumed density filters (ADF) with a new class of appro...
We present the two new notions of projection of a stochastic differential equation (SDE) onto a subm...
A series of novel filters for probabilistic inference that propose an alternative way of performing ...
We are rarely able to fully and directly observe many phenomena which are crucial to our daily lives...
In this paper, we develop a novel method for approximate continuous-discrete Bayesian filtering. The...
The conditional probability density function of the state of a stochastic dynamic system represents ...
The projection filter is a technique for approximating the solutions of optimal filtering problems. ...
: We present a new and systematic method of approximating exact nonlinear filters with finite dimens...
This paper compares the classical concept of assumed density filters (ADF) with a new class of appro...
International audienceWe present a new and systematic method of approximating exact nonlinear filter...
This paper deals with a new and systematic method of approximating exact nonlinear filters with fini...
International audienceWe present the projection filter, an approximate finite-dimensional filter bas...
We review the introduction of several types of projection filters. Projection structures coming from...
This paper presents a new and systematic method of approximating exact nonlinear filters with finite...
The goal of filtering theory is to compute the filter distribution, that is, the conditional distrib...
This paper compares the classical concept of assumed density filters (ADF) with a new class of appro...
We present the two new notions of projection of a stochastic differential equation (SDE) onto a subm...
A series of novel filters for probabilistic inference that propose an alternative way of performing ...
We are rarely able to fully and directly observe many phenomena which are crucial to our daily lives...
In this paper, we develop a novel method for approximate continuous-discrete Bayesian filtering. The...
The conditional probability density function of the state of a stochastic dynamic system represents ...