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Distributed Source Coding for Correlated Memoryless Gaussian Sources (0908.3982v4)

Published 27 Aug 2009 in cs.IT and math.IT

Abstract: We consider a distributed source coding problem of $L$ correlated Gaussian observations $Y_i, i=1,2,...,L$. We assume that the random vector $Y{L}={}{\rm t} (Y_1,Y_2,$ $...,Y_L)$ is an observation of the Gaussian random vector $XK={}{\rm t}(X_1,X_2,...,X_K)$, having the form $YL=AXK+NL ,$ where $A$ is a $L\times K$ matrix and $NL={}{\rm t}(N_1,N_2,...,N_L)$ is a vector of $L$ independent Gaussian random variables also independent of $XK$. The estimation error on $XK$ is measured by the distortion covariance matrix. The rate distortion region is defined by a set of all rate vectors for which the estimation error is upper bounded by an arbitrary prescribed covariance matrix in the meaning of positive semi definite. In this paper we derive explicit outer and inner bounds of the rate distortion region. This result provides a useful tool to study the direct and indirect source coding problems on this Gaussian distributed source coding system, which remain open in general.

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