CONSENSUS-LIKE ALGORITHMS FOR ESTIMATION OF GAUSSIAN MIXTURES OVER LARGE SCALE NETWORKS
Academic Article
Publication Date:
2014
abstract:
In this paper, we address the problem of estimating Gaussian mixtures in a sensor network. The scenario we consider is the following: a common signal is acquired by sensors, whose measurements are affected by standard Gaussian noise and by different offsets. The measurements can thus be statistically modeled as mixtures of Gaussians with equal variance and different expected values. The aim of the network is to achieve a common estimation of the signal, and to cluster the sensors according to their own offsets.
Iris type:
01.01 Articolo in rivista
Keywords:
Sensor networks; estimation and clustering; Gaussian mixture models; maximum likelihood estimation
List of contributors:
Ravazzi, Chiara
Published in: