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From Local Cosine Bases to Global Harmonics

โœ Scribed by Kai Bittner; Charles K. Chui


Publisher
Elsevier Science
Year
1999
Tongue
English
Weight
104 KB
Volume
6
Category
Article
ISSN
1063-5203

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โœฆ Synopsis


In this paper, the reproduction of trigonometric polynomials with two-overlapping local cosine bases is investigated. This study is motivated by the need to represent most effectively a Fourier series in the form of a localized cosine series for the purpose of local analysis, thus providing a vehicle for the transition from classical harmonic analysis to analysis by Wilson-type wavelets. It is shown that there is one and only one class, which is a one-parameter family, of window functions that allows pointwise reproduction of all global harmonics, where the parameter is the order of smoothness of the window functions. It turns out that this class of window functions is also optimal in the sense that all global harmonics are reproduced by using a minimal number of the local trigonometric basis functions.


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