wavelet
Motivation
Wavelets can be used to analyze functions
in L2(ℝ) (the space of all Lebesgue absolutely square integrable functions defined on the real numbers to the complex numbers
) in much the same way the complex exponentials
are used in the Fourier transform
, but wavelets offer the advantage of not only describing the frequency content of a function, but also providing information on the time localization of that frequency content.
Definition
A (more properly, an orthonormal dyadic) wavelet is a function ψ(t)∈L2(ℝ) such that the family of functions
ψjk≡2j/2ψ(2jt-k), |
where j,k∈ℤ, is an orthonormal basis in the Hilbert space L2(ℝ).
Notes
The scaling factor of 2j/2 ensures that ∥ψjk∥=∥ψ∥=1. These type of wavelets (the most popular), are known as dyadic wavelets because the scaling factor is a power of 2. It is not obvious from the definition that wavelets even exist, or how to construct one; the Haar wavelet is the standard example of a wavelet, and one technique used to construct wavelets. Generally, wavelets are constructed from a multiresolution analysis, but they can also be generated using wavelet sets.
Title | wavelet |
Canonical name | Wavelet |
Date of creation | 2013-03-22 14:26:41 |
Last modified on | 2013-03-22 14:26:41 |
Owner | swiftset (1337) |
Last modified by | swiftset (1337) |
Numerical id | 11 |
Author | swiftset (1337) |
Entry type | Definition |
Classification | msc 65T60 |
Classification | msc 46C99 |
Related topic | FourierTransform |
Related topic | MultiresolutionAnalysis |
Related topic | WaveletSet2 |
Defines | wavelet |
Defines | orthonormal dyadic wavelet |