We address the problem of distributed estimation of a parameter from a set of noisy observations collected by a sensor network, assuming that some sensors may be subject to data failures and report only noise. In such scenario, simple schemes such as the Best Linear Unbiased Estimator result in an error floor in moderate and high signal-to-noise ratio (SNR), whereas previously proposed methods based on hard decisions on data failure events degrade as the SNR decreases. Aiming at optimal performance within the whole range of SNRs, we adopt a Maximum Likelihood framework based on the Expectation-Maximization (EM) algorithm. The statistical model and the iterative nature of the EM method allow for a diffusion-based distributed implementation, ...
We propose a modified diffusion strategy for parameter estimation in sensor networks where nodes exc...
We consider a sensor network in which each sensor takes measurements, at various times, of some unkn...
We consider a sensor network in which each sensor may take at every time iteration a noisy linear me...
We address the problem of distributed estimation of a parameter from a set of noisy observations col...
We address the problem of distributed estimation of a parameter from a set of noisy observations col...
We address the problem of distributed estimation of a parameter from a set of noisy observations co...
Distributed implementations of the Expectation-Maximization (EM) algorithm reported in literature ha...
We address the problem of distributed estimation of a vector-valued parameter performed by a wireles...
Distributed estimation of Gaussian mixtures has many applications in wireless sensor network (WSN), ...
This paper focuses on the problem of the distributed estimation of a parameter vector based on noisy...
We consider the problem of distributed estimation, where a set of nodes is required to collectively ...
Abstract The issue considered in the current study is the problem of adaptive distributed estimatio...
Estimating the unknown parameters of a statistical model based on the observations collected by a se...
This paper addresses the problem of distributed estimation of a parameter vector in the presence of ...
In this paper we consider the issue of distributed adaptive estimation over sensor networks. To deal...
We propose a modified diffusion strategy for parameter estimation in sensor networks where nodes exc...
We consider a sensor network in which each sensor takes measurements, at various times, of some unkn...
We consider a sensor network in which each sensor may take at every time iteration a noisy linear me...
We address the problem of distributed estimation of a parameter from a set of noisy observations col...
We address the problem of distributed estimation of a parameter from a set of noisy observations col...
We address the problem of distributed estimation of a parameter from a set of noisy observations co...
Distributed implementations of the Expectation-Maximization (EM) algorithm reported in literature ha...
We address the problem of distributed estimation of a vector-valued parameter performed by a wireles...
Distributed estimation of Gaussian mixtures has many applications in wireless sensor network (WSN), ...
This paper focuses on the problem of the distributed estimation of a parameter vector based on noisy...
We consider the problem of distributed estimation, where a set of nodes is required to collectively ...
Abstract The issue considered in the current study is the problem of adaptive distributed estimatio...
Estimating the unknown parameters of a statistical model based on the observations collected by a se...
This paper addresses the problem of distributed estimation of a parameter vector in the presence of ...
In this paper we consider the issue of distributed adaptive estimation over sensor networks. To deal...
We propose a modified diffusion strategy for parameter estimation in sensor networks where nodes exc...
We consider a sensor network in which each sensor takes measurements, at various times, of some unkn...
We consider a sensor network in which each sensor may take at every time iteration a noisy linear me...