798 research outputs found
Multivariate Davenport series
We consider series of the form , where
and is the sawtooth function. They are the natural multivariate
extension of Davenport series. Their global (Sobolev) and pointwise regularity
are studied and their multifractal properties are derived. Finally, we list
some open problems which concern the study of these series.Comment: 43 page
Random Wavelet Series: Theory and Applications
Random Wavelet Series form a class of random processes with multifractal
properties. We give three applications of this construction. First, we
synthesize a random function having any given spectrum of singularities
satisfying some conditions (but including non-concave spectra). Second, these
processes provide examples where the multifractal spectrum coincides with the
spectrum of large deviations, and we show how to recover it numerically.
Finally, particular cases of these processes satisfy a generalized
selfsimilarity relation proposed in the theory of fully developed turbulence.Comment: To appear in Annales Math\'ematiques Blaise Pasca
A pure jump Markov process with a random singularity spectrum
We construct a non-decreasing pure jump Markov process, whose jump measure
heavily depends on the values taken by the process. We determine the
singularity spectrum of this process, which turns out to be random and to
depend locally on the values taken by the process. The result relies on fine
properties of the distribution of Poisson point processes and on ubiquity
theorems.Comment: 20 pages, 4 figure
Analysis of the Lack of Compactness in the Critical Sobolev Embeddings
AbstractLet (un) be a bounded sequence inHs,p(Rd) (0<s<d/p). We show that (un) has a subsequence (u′n) such that eachu′ncan be expressed as a finite sum (plus a remainder) of translations/dilations of functionsφmand such that the remainder has arbitrary small norm inLq(1/q=(1/p)−(s/d)). This generalizes a result obtained by Patrick Gérard for the casep=2
Self-Similar Anisotropic Texture Analysis: the Hyperbolic Wavelet Transform Contribution
Textures in images can often be well modeled using self-similar processes
while they may at the same time display anisotropy. The present contribution
thus aims at studying jointly selfsimilarity and anisotropy by focusing on a
specific classical class of Gaussian anisotropic selfsimilar processes. It will
first be shown that accurate joint estimates of the anisotropy and
selfsimilarity parameters are performed by replacing the standard 2D-discrete
wavelet transform by the hyperbolic wavelet transform, which permits the use of
different dilation factors along the horizontal and vertical axis. Defining
anisotropy requires a reference direction that needs not a priori match the
horizontal and vertical axes according to which the images are digitized, this
discrepancy defines a rotation angle. Second, we show that this rotation angle
can be jointly estimated. Third, a non parametric bootstrap based procedure is
described, that provides confidence interval in addition to the estimates
themselves and enables to construct an isotropy test procedure, that can be
applied to a single texture image. Fourth, the robustness and versatility of
the proposed analysis is illustrated by being applied to a large variety of
different isotropic and anisotropic self-similar fields. As an illustration, we
show that a true anisotropy built-in self-similarity can be disentangled from
an isotropic self-similarity to which an anisotropic trend has been
superimposed
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