Affine Density in Wavelet Analysis Affine Density in Wavelet Analysis
Lecture Notes in Mathematics

Affine Density in Wavelet Analysis

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Descrizione dell’editore

In wavelet analysis, irregular wavelet frames have recently come to the forefront of current research due to questions concerning the robustness and stability of wavelet algorithms. A major difficulty in the study of these systems is the highly sensitive interplay between geometric properties of a sequence of time-scale indices and frame properties of the associated wavelet systems.


This volume provides the first thorough and comprehensive treatment of irregular wavelet frames by introducing and employing a new notion of affine density as a highly effective tool for examining the geometry of sequences of time-scale indices. Many of the results are new and published for the first time. Topics include: qualitative and quantitative density conditions for existence of irregular wavelet frames, non-existence of irregular co-affine frames, the Nyquist phenomenon for wavelet systems, and approximation properties of irregular wavelet frames.

GENERE
Scienza e natura
PUBBLICATO
2007
7 giugno
LINGUA
EN
Inglese
PAGINE
155
EDITORE
Springer Berlin Heidelberg
DIMENSIONE
2,3
MB

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