Improved Upper Bounds to the Causal Quadratic Rate-Distortion Function for Gaussian Stationary Sources
Milan S. Derpich, Jan {\O}stergaard

TL;DR
This paper derives new upper bounds for the causal quadratic rate-distortion function of Gaussian stationary sources, providing closed-form expressions, optimization methods, and practical coding schemes to approach theoretical limits.
Contribution
It introduces a closed-form expression for the causal RDF of Gaussian sources, develops bounds on rate loss, and proposes an iterative convex optimization method for filter design.
Findings
Derived a closed-form causal RDF for first-order Gauss-Markov processes.
Established bounds on the additive rate loss for Gaussian sources.
Proposed an iterative method to optimize filters achieving the causal RDF.
Abstract
We improve the existing achievable rate regions for causal and for zero-delay source coding of stationary Gaussian sources under an average mean squared error (MSE) distortion measure. To begin with, we find a closed-form expression for the information-theoretic causal rate-distortion function (RDF) under such distortion measure, denoted by , for first-order Gauss-Markov processes. Rc^{it}(D) is a lower bound to the optimal performance theoretically attainable (OPTA) by any causal source code, namely Rc^{op}(D). We show that, for Gaussian sources, the latter can also be upper bounded as Rc^{op}(D)\leq Rc^{it}(D) + 0.5 log_{2}(2\pi e) bits/sample. In order to analyze for arbitrary zero-mean Gaussian stationary sources, we introduce \bar{Rc^{it}}(D), the information-theoretic causal RDF when the reconstruction error is jointly stationary with the source.…
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Taxonomy
TopicsWireless Communication Security Techniques · Distributed Sensor Networks and Detection Algorithms · Energy Harvesting in Wireless Networks
