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doctoral thesis

Gaussian versus Sparse Stochastic Processes : Construction, Regularity, Compressibility

Fageot, Julien René  
2017

Although our work lies in the field of random processes, this thesis was originally motivated by signal processing applications, mainly the stochastic modeling of sparse signals. We develop a mathematical study of the innovation model, under which a signal is described as a random process s that can be linearly and deterministically transformed into a white noise. The noise represents the unpredictable part of the signal, called its innovation, and is part of the family of Lévy white noises, which includes both Gaussian and Poisson noises. In mathematical terms, s satisfies the equation Ls=w where L is a differential operator and w a Lévy noise. The problem is therefore to study the solution of a stochastic differential equation driven by a Lévy noise. Gaussian models usually fail to reproduce the empirical sparsity observed in real-world signals. By contrast, Lévy models offer a wide range of random processes going from typically non-sparse (Gaussian) to very sparse ones (Poisson), and with many sparse signals standing between these two extremes. Our contributions can be divided in four parts. First, the cornerstone of our work is the theory of generalized random processes. Within this framework, all the considered random processes are seen as random tempered generalized functions and can be observed through smooth and rapidly decaying windows. This allows us to define the solutions of Ls=w, called generalized Lévy processes, in the most general setting. Then, we identify two limit phenomenons: the approximation of generalized Lévy processes by their Poisson counterparts, and the asymptotic behavior of generalized Lévy processes at coarse and fine scales. In the third part, we study the localization of Lévy noise in notorious function spaces (Hölder, Sobolev, Besov). As an application, characterize the local smoothness and the asymptotic growth rate of the Lévy noise. Finally, we quantify the local compressibility of the generalized Lévy processes, understood as a measure of the decreasing rate of their approximation error in an appropriate basis. From this last result, we provide a theoretical justification of the ability of the innovation model to represent sparse signals. The guiding principle of our research is the duality between the local and asymptotic properties of generalized Lévy processes. In particular, we highlight the relevant quantities, called the local and asymptotic indices, that allow quantifying the local regularity, the asymptotic growth rate, the limit behavior at coarse and fine scales, and the level of compressibility of the solutions of generalized Lévy processes.

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Type
doctoral thesis
DOI
10.5075/epfl-thesis-7657
Author(s)
Fageot, Julien René  
Advisors
Unser, Michaël  
Jury

Prof. Clément Hongler (président) ; Prof. Michaël Unser (directeur de thèse) ; Prof. Robert Dalang, Prof. Stéphane Jaffard, Prof. Rene Schilling (rapporteurs)

Date Issued

2017

Publisher

EPFL

Publisher place

Lausanne

Public defense year

2017-04-24

Thesis number

7657

Total of pages

181

Subjects

Lévy white noise

•

sparse stochastic processes

•

stochastic differential equations

•

generalized random processes

•

infinite divisibility

•

convergence in law

•

Besov regularity

•

N-term approximation

•

wavelets

EPFL units
LIB  
Faculty
STI  
School
IMT  
Doctoral School
EDEE  
Award

EPFL Doctorate Award

2018
Available on Infoscience
April 19, 2017
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/136542
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