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For a Fourier series, the orthogonal basis functions ψ k ( t ) are sin ( k ω 0 t ) and cos ( k ω 0 t ) with frequencies of k ω 0 . For a Taylor'sseries, the nonorthogonal basis functions are simple monomials t k , and for many other expansions they are various polynomials. There areexpansions that use splines and even fractals.

For the wavelet expansion , a two-parameter system is constructed such that [link] becomes

f ( t ) = k j a j , k ψ j , k ( t )

where both j and k are integer indices and the ψ j , k ( t ) are the wavelet expansion functions that usually form an orthogonal basis.

The set of expansion coefficients a j , k are called the discrete wavelet transform (DWT) of f ( t ) and [link] is the inverse transform.

What is a wavelet system?

The wavelet expansion set is not unique. There are many different wavelets systems that can be used effectively, but all seem to have the following threegeneral characteristics [link] .

  1. A wavelet system is a set of building blocks to construct or represent a signal or function. It is a two-dimensional expansion set(usually a basis) for some class of one- (or higher) dimensional signals. In other words, if the wavelet set is given by ψ j , k ( t ) for indices of j , k = 1 , 2 , , a linear expansion would be f ( t ) = k j a j , k ψ j , k ( t ) for some set of coefficients a j , k .
  2. The wavelet expansion gives a time-frequency localization of the signal. This means most of the energy of the signal is well representedby a few expansion coefficients, a j , k .
  3. The calculation of the coefficients from the signal can be done efficiently . It turns out that many wavelet transforms (the set of expansion coefficients) can be calculated with O ( N ) operations. This means the number of floating-point multiplications and additions increaselinearly with the length of the signal. More general wavelet transforms require O ( N log ( N ) ) operations, the same as for the fast Fourier transform (FFT) [link] .

Virtually all wavelet systems have these very general characteristics. Where the Fourier series maps a one-dimensional function of a continuousvariable into a one-dimensional sequence of coefficients, the wavelet expansion maps it into a two-dimensional array of coefficients. We willsee that it is this two-dimensional representation that allows localizing the signal in both time and frequency. A Fourier series expansionlocalizes in frequency in that if a Fourier series expansion of a signal has only one large coefficient, then the signal is essentially a singlesinusoid at the frequency determined by the index of the coefficient. The simple time-domain representation of the signal itself gives thelocalization in time. If the signal is a simple pulse, the location of that pulse is the localization in time. A wavelet representation willgive the location in both time and frequency simultaneously. Indeed, a wavelet representation is much like a musical score where the location ofthe notes tells when the tones occur and what their frequencies are.

More specific characteristics of wavelet systems

There are three additional characteristics [link] , [link] that are more specific to wavelet expansions.

  1. All so-called first-generation wavelet systems are generated from a single scaling function or wavelet by simple scaling and translation . The two-dimensional parameterization is achieved from the function(sometimes called the generating wavelet or mother wavelet) ψ ( t ) by
    ψ j , k ( t ) = 2 j / 2 ψ ( 2 j t - k ) j , k Z
    where Z is the set of all integers and the factor 2 j / 2 maintains a constant norm independent of scale j . This parameterization of the time or space location by k and the frequency or scale (actually the logarithm of scale) by j turns out to be extraordinarily effective.
  2. Almost all useful wavelet systems also satisfy the multiresolution conditions. This means that if a set of signals can be represented by a weighted sum of ϕ ( t - k ) , then a larger set (including the original) can be represented by a weighted sum of ϕ ( 2 t - k ) . In other words, if the basic expansion signals are made half as wide and translated in steps halfas wide, they will represent a larger class of signals exactly or give a better approximation of any signal.
  3. The lower resolution coefficients can be calculated from the higher resolution coefficients by a tree-structured algorithm called a filter bank . This allows a very efficient calculation of the expansion coefficients (also known as the discrete wavelet transform) and relateswavelet transforms to an older area in digital signal processing.

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Source:  OpenStax, Wavelets and wavelet transforms. OpenStax CNX. Aug 06, 2015 Download for free at https://legacy.cnx.org/content/col11454/1.6
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