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Informations sur l'article
Titre:
Besov, Bayes, and Plato in multiscale statistical modeling Auteur(s): Baraniuk Richard, Rice University
Résumé de l'article
These currently exist two distinct paradigms for modeling images. In the first, images are regarded as functions from a deterministic function space, such as a Besov smoothness class. In the second, images are treated statistically as realizations of a random process. This talk reviews and indicates the links between the leading deterministic and statistical image models, with an emphasis on multiresolution techniques and wavelets. To overcome the major shortcomings of the Besov smoothness characterization, we develop new statistical models based on mixtures on graphs. To illustrate, we discuss applications in image estimation and segmentation.
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