Copula-based Estimation of Continuous Sources for a Class of Constrained Rate-Distortion-Functions
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IEEE
Fecha
2024-01-30Referencia bibliográfica
Published version: G. Serra, P. A. Stavrou and M. Kountouris, "Copula-Based Estimation of Continuous Sources for a Class of Constrained Rate-Distortion Functions," 2024 IEEE International Symposium on Information Theory (ISIT), Athens, Greece, 2024, pp. 1089-1094, doi: 10.1109/ISIT57864.2024.10619503
Patrocinador
European Research Council (ERC) European Union's Horizon 2020, 101003431Resumen
We present a new method to estimate the ratedistortion-perception function in the perfect realism regime
(PR-RDPF), for multivariate continuous sources subject to a singleletter average distortion constraint. The proposed approach is
not only able to solve the specific problem but also two related
problems: the entropic optimal transport (EOT) and the outputconstrained rate-distortion function (OC-RDF), of which the PR-RDPF represents a special case. Using copula distributions, we
show that the OC-RDF can be cast as an I-projection problem on
a convex set, based on which we develop a parametric solution
of the optimal projection proving that its parameters can be
estimated, up to an arbitrary precision, via the solution of a
convex program. Subsequently, we propose an iterative scheme
via gradient methods to estimate the convex program. Lastly, we
characterize a Shannon lower bound (SLB) for the PR-RDPF
under a mean squared error (MSE) distortion constraint. We
support our theoretical findings with numerical examples by
assessing the estimation performance of our iterative scheme
using the PR-RDPF with the obtained SLB for various sources.