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📄 Abstract
Abstract: We study the computation of the rate-distortion-perception function (RDPF)
for discrete memoryless sources subject to a single-letter average distortion
constraint and a perception constraint belonging to the family of
$f$-divergences. In this setting, the RDPF forms a convex programming problem
for which we characterize optimal parametric solutions. We employ the developed
solutions in an alternating minimization scheme, namely Optimal Alternating
Minimization (OAM), for which we provide convergence guarantees. Nevertheless,
the OAM scheme does not lead to a direct implementation of a generalized
Blahut-Arimoto (BA) type of algorithm due to implicit equations in the
iteration's structure. To overcome this difficulty, we propose two alternative
minimization approaches whose applicability depends on the smoothness of the
used perception metric: a Newton-based Alternating Minimization (NAM) scheme,
relying on Newton's root-finding method for the approximation of the optimal
solution of the iteration, and a Relaxed Alternating Minimization (RAM) scheme,
based on relaxing the OAM iterates. We show, by deriving necessary and
sufficient conditions, that both schemes guarantee convergence to a globally
optimal solution. We also provide sufficient conditions on the distortion and
perception constraints, which guarantee that the proposed algorithms converge
exponentially fast in the number of iteration steps. We corroborate our
theoretical results with numerical simulations and establish connections with
existing results.