The aim of this paper is to propose diffusion strategies for distributed estimation over adaptive networks, assuming the presence of spatially correlated measurements distributed according to a Gaussian Markov random field (GMRF) model. The proposed methods incorporate prior information about the statistical dependency among observations, while at the same time processing data in real time and in a fully decentralized manner. A detailed mean-square analysis is carried out in order to prove stability and evaluate the steady-state performance of the proposed strategies. Finally, we also illustrate how the proposed techniques can be easily extended in order to incorporate thresholding operators for sparsity recovery applications. Numerical res...
Diffusion adaptation techniques based on the least-mean-squares criterion have been proposed for dis...
We provide an overview of adaptive estimation algorithms over distributed networks. The algorithms ...
Adaptive networks are suitable for decentralized inference tasks. Recent works have intensively stud...
In this paper we propose distributed strategies for the estimation of sparse vectors over adaptive n...
This article proposes diffusion LMS strategies for distributed estimation over adaptive networks tha...
We consider the problem of distributed estimation, where a set of nodes is required to collectively ...
DoctorWe study diffusion strategies over adaptive networks for distributed estimation in which every...
We study the problem of distributed adaptive estimation over networks where nodes cooperate to estim...
We formulate and study distributed estimation algorithms based on diffusion protocols to implement c...
The goal of this paper is to propose diffusion LMS techniques for distributed estimation over adapti...
We present diffusion algorithms for distributed estimation and detection over networks that endow al...
DoctorIn this thesis, we develop novel algorithms which deal with a distributed estimation problem. ...
We study distributed least-mean square (LMS) estimation problems over adaptive networks, where nodes...
daptive networks (AN) have been recently proposed to address distributed estimation problems [1]–[4]...
We introduce novel diffusion based adaptive estimation strategies for distributed networks that have...
Diffusion adaptation techniques based on the least-mean-squares criterion have been proposed for dis...
We provide an overview of adaptive estimation algorithms over distributed networks. The algorithms ...
Adaptive networks are suitable for decentralized inference tasks. Recent works have intensively stud...
In this paper we propose distributed strategies for the estimation of sparse vectors over adaptive n...
This article proposes diffusion LMS strategies for distributed estimation over adaptive networks tha...
We consider the problem of distributed estimation, where a set of nodes is required to collectively ...
DoctorWe study diffusion strategies over adaptive networks for distributed estimation in which every...
We study the problem of distributed adaptive estimation over networks where nodes cooperate to estim...
We formulate and study distributed estimation algorithms based on diffusion protocols to implement c...
The goal of this paper is to propose diffusion LMS techniques for distributed estimation over adapti...
We present diffusion algorithms for distributed estimation and detection over networks that endow al...
DoctorIn this thesis, we develop novel algorithms which deal with a distributed estimation problem. ...
We study distributed least-mean square (LMS) estimation problems over adaptive networks, where nodes...
daptive networks (AN) have been recently proposed to address distributed estimation problems [1]–[4]...
We introduce novel diffusion based adaptive estimation strategies for distributed networks that have...
Diffusion adaptation techniques based on the least-mean-squares criterion have been proposed for dis...
We provide an overview of adaptive estimation algorithms over distributed networks. The algorithms ...
Adaptive networks are suitable for decentralized inference tasks. Recent works have intensively stud...