Auteurs : Unser, Michael (Auteur de la Conférence)
CIRM (Editeur )
Résumé :
We start with a brief historical account of wavelets and of the way they shattered some of the preconceptions of the 20th century theory of statistical signal processing that is founded on the Gaussian hypothesis. The advent of wavelets led to the emergence of the concept of sparsity and resulted in important advances in image processing, compression, and the resolution of ill-posed inverse problems, including compressed sensing. In support of this change in paradigm, we introduce an extended class of stochastic processes specified by a generic (non-Gaussian) innovation model or, equivalently, as solutions of linear stochastic differential equations driven by white Lévy noise. Starting from first principles, we prove that the solutions of such equations are either Gaussian or sparse, at the exclusion of any other behavior. Moreover, we show that these processes admit a representation in a matched wavelet basis that is "sparse" and (approximately) decoupled. The proposed model lends itself well to an analytic treatment. It also has a strong predictive power in that it justifies the type of sparsity-promoting reconstruction methods that are currently being deployed in the field.
Keywords: wavelets - fractals - stochastic processes - sparsity - independent component analysis - differential operators - iterative thresholding - infinitely divisible laws - Lévy processes
Codes MSC :
42C40
- Wavelets and other special systems
60G18
- Self-similar processes
60G20
- Generalized stochastic processes
60H40
- White noise theory
60G22
- Fractional processes, including fractional Brownian motion
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Informations sur la Rencontre
Nom de la rencontre : 30 years of wavelets / 30 ans des ondelettes Organisateurs de la rencontre : Feichtinger, Hans G. ; Torrésani, Bruno Dates : 23/01/15 - 24/01/15
Année de la rencontre : 2015
URL Congrès : https://www.chairejeanmorlet.com/1523.html
DOI : 10.24350/CIRM.V.18723003
Citer cette vidéo:
Unser, Michael (2015). Wavelets and stochastic processes: how the Gaussian world became sparse. CIRM. Audiovisual resource. doi:10.24350/CIRM.V.18723003
URI : http://dx.doi.org/10.24350/CIRM.V.18723003
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Bibliographie
- Unser, M., & Tafti, Pouya D. (2014). An introduction to sparse stochastic processes. Cambridge: Cambridge University Press - www.cambridge.org/9781107058545