The Gaussian Many-Help-One Distributed Source Coding Problem
Abstract
Jointly Gaussian memoryless sources are observed at N distinct terminals. The goal is to efficiently encode the observations in a distributed fashion so as to enable reconstruction of any one of the observations, say the first one, at the decoder subject to a quadratic fidelity criterion. Our main result is a precise characterization of the rate-distortion region when the covariance matrix of the sources satisfies a "tree-structure" condition. In this situation, a natural analog-digital separation scheme optimally trades off the distributed quantization rate tuples and the distortion in the reconstruction: each encoder consists of a point-to-point Gaussian vector quantizer followed by a Slepian-Wolf binning encoder. We also provide a partial converse that suggests that the tree structure condition is fundamental.
Cite
@article{arxiv.0805.1857,
title = {The Gaussian Many-Help-One Distributed Source Coding Problem},
author = {Saurabha Tavildar and Pramod Viswanath and Aaron B. Wagner},
journal= {arXiv preprint arXiv:0805.1857},
year = {2008}
}