Adapted Wavelet Analysis

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A01=Mladen Victor Wickerhauser
advanced signal analysis programming
array
Author_Mladen Victor Wickerhauser
bases
Basis Subset
Binary Tree
Category=PBK
Category=PBW
Category=PHDS
discrete
discrete Fourier analysis
Dwt
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filter
Hedge Level
INI
Input Array
Library Tree
Littlewood Paley Decomposition
Llo Ca Te
Local Cosine
Low Pass High Pass
multidimensional data analysis
orthonormal
Orthonormal Basis
output
Output Array
packet
packets
quadrature
Quadrature Filter
quadrature filtering methods
Riesz Basis
Scaling Subspace
Schwartz Class
Schwartz Function
signal processing techniques
Tensor Products
Time Frequency Atoms
time-frequency decomposition
transform
trigonometric transforms
Wavelet Packet
Wavelet Packet Bases
Wavelet Packet Coefficients
Wavelet Subspaces

Product details

  • ISBN 9781568810416
  • Weight: 771g
  • Dimensions: 152 x 229mm
  • Publication Date: 17 Apr 1996
  • Publisher: Taylor & Francis Inc
  • Publication City/Country: US
  • Product Form: Hardback
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This detail-oriented text is intended for engineers and applied mathematicians who must write computer programs to perform wavelet and related analysis on real data. It contains an overview of mathematical prerequisites and proceeds to describe hands-on programming techniques to implement special programs for signal analysis and other applications. From the table of contents: - Mathematical Preliminaries - Programming Techniques - The Discrete Fourier Transform - Local Trigonometric Transforms - Quadrature Filters - The Discrete Wavelet Transform - Wavelet Packets - The Best Basis Algorithm - Multidimensional Library Trees - Time-Frequency Analysis - Some Applications - Solutions to Some of the Exercises - List of Symbols - Quadrature Filter Coefficients

Mladen Victor Wickerhauser is professor of mathematics and statistics at Washington University, St. Louis. He holds a PhD from Yale University. Professor Wickerhauser’s research interests include harmonic analysis, wavelets, and numerical algorithms for data compression. He has six US patents and 118 publications, one of which led to an algorithm used by the FBI to encode fingerprint images.

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