C. Heinrich, J. Bercher, G. L. Besnerais, G. Demoment
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Restoration of spiky signals: a new optimal estimate and a comparison
Discusses the restoration of spiky sequences distorted by a linear
system and corrupted by additive noise. A (now) classical way of coping
with this problem is to use a Bayesian approach with a
Bernoulli-Gaussian (BG) prior model of the sequence. The authors refine
this method using a Bernoulli-Gaussian plus Gaussian (BCG) prior model.
This estimation method requires maximization of a posterior probability
distribution, which cannot be performed optimally. Thus the authors
propose a new non-Bayesian estimation scheme, derived from the
Kullback-Leibler information or cross-entropy. This quite general
method, called the maximum entropy on the mean method (MEMM) in Gamboa
(1989) and le Besnerais (1995) is firmly based on convex analysis and
yields a unique solution which can be efficiently calculated in
practice, and which is, in this sense, truly optimal. As a conclusion,
the authors present results obtained with both methods on a synthetic
case