Wavelets Based on Prolate Spheroidal Wave Functions

被引:2
作者
Gilbert G. Walter
Xiaoping Shen
机构
[1] Mathematics Department University of Wisconsin-Milwaukee,
[2] Milwaukee,undefined
[3] WI 53201,undefined
[4] Mathematics Department,undefined
[5] Ohio University,undefined
[6] Athens,undefined
[7] Ohio 45701,undefined
来源
Journal of Fourier Analysis and Applications | 2004年 / 10卷
关键词
Frequency Domain; Expansion Coefficient; Time Localization; Sampling Technique; Energy Concentration;
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摘要
The article is concerned with a particular multiresolution analysis (MRA) composed of Paley–Wiener spaces. Their usual wavelet basis consisting of sinc functions is replaced by one based on prolate spheroidal wave functions (PSWFs) which have much better time localization than the sinc function. The new wavelets preserve the high energy concentration in both the time and frequency domain inherited from PSWFs. Since the size of the energy concentration interval of PSWFs is one of the most important parameters in some applications, we modify the wavelets at different scales to retain a constant energy concentration interval. This requires a slight modification of the dilation relations, but leads to locally positive kernels. Convergence and other related properties, such as Gibbs phenomenon, of the associated approximations are discussed. A computationally friendly sampling technique is exploited to calculate the expansion coefficients. Several numerical examples are provided to illustrate the theory.
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页码:1 / 26
页数:25
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