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Continuous wavelets {{Unreferenced, date=December 2009 In numerical analysis, continuous wavelets are functions used by the continuous wavelet transform. These functions are defined as analytical expressions, as functions either of time or of frequency. Most of the co ...
of
compact support In mathematics, the support of a real-valued function f is the subset of the function domain containing the elements which are not mapped to zero. If the domain of f is a topological space, then the support of f is instead defined as the smallest ...
alpha can be built, which are related to the
beta distribution In probability theory and statistics, the beta distribution is a family of continuous probability distributions defined on the interval , 1in terms of two positive parameters, denoted by ''alpha'' (''α'') and ''beta'' (''β''), that appear as ...
. The process is derived from probability distributions using blur derivative. These new wavelets have just one cycle, so they are termed unicycle wavelets. They can be viewed as a ''soft variety'' of
Haar wavelet In mathematics, the Haar wavelet is a sequence of rescaled "square-shaped" functions which together form a wavelet family or basis. Wavelet analysis is similar to Fourier analysis in that it allows a target function over an interval to be represe ...
s whose shape is fine-tuned by two parameters \alpha and \beta. Closed-form expressions for beta wavelets and scale functions as well as their spectra are derived. Their importance is due to the
Central Limit Theorem In probability theory, the central limit theorem (CLT) establishes that, in many situations, when independent random variables are summed up, their properly normalized sum tends toward a normal distribution even if the original variables themselv ...
by Gnedenko and Kolmogorov applied for
compactly supported In mathematics, the support of a real-valued function f is the subset of the function domain containing the elements which are not mapped to zero. If the domain of f is a topological space, then the support of f is instead defined as the smalles ...
signals.


Beta distribution

The
beta distribution In probability theory and statistics, the beta distribution is a family of continuous probability distributions defined on the interval , 1in terms of two positive parameters, denoted by ''alpha'' (''α'') and ''beta'' (''β''), that appear as ...
is a continuous probability distribution defined over the interval 0\leq t\leq 1. It is characterised by a couple of parameters, namely \alpha and \beta according to: P(t)=\fract^\cdot (1-t)^,\quad 1\leq \alpha ,\beta \leq +\infty . The normalising factor is B(\alpha ,\beta )=\frac, where \Gamma (\cdot ) is the generalised factorial function of Euler and B(\cdot ,\cdot ) is the
Beta function In mathematics, the beta function, also called the Euler integral of the first kind, is a special function that is closely related to the gamma function and to binomial coefficients. It is defined by the integral : \Beta(z_1,z_2) = \int_0^1 t^(1 ...
.


Gnedenko-Kolmogorov central limit theorem revisited

Let p_(t) be a probability density of the random variable t_, i=1,2,3..N i.e. p_(t)\ge 0, (\forall t) and \int_^p_(t)dt=1. Suppose that all variables are independent. The mean and the variance of a given random variable t_ are, respectively m_=\int_^\tau \cdot p_(\tau )d\tau , \sigma _^=\int_^(\tau -m_)^\cdot p_(\tau )d\tau . The mean and variance of t are therefore m=\sum_^m_ and \sigma^2 =\sum_^\sigma _^. The density p(t) of the random variable corresponding to the sum t=\sum_^t_ is given by the Central Limit Theorem for distributions of compact support (Gnedenko and Kolmogorov). Let \ be distributions such that Supp\=(a_,b_)(\forall i). Let a=\sum_^a_<+\infty , and b=\sum_^b_<+\infty. Without loss of generality assume that a=0 and b=1. The random variable t holds, as N\rightarrow \infty , p(t)\approx \begin , \\otherwise \end where \alpha =\frac, and \beta =\frac.


Beta wavelets

Since P(\cdot , \alpha ,\beta ) is
unimodal In mathematics, unimodality means possessing a unique mode. More generally, unimodality means there is only a single highest value, somehow defined, of some mathematical object. Unimodal probability distribution In statistics, a unimodal pr ...
, the wavelet generated by \psi _(t, \alpha ,\beta )=(-1)\frac has only one-cycle (a negative half-cycle and a positive half-cycle). The main features of beta wavelets of parameters \alpha and \beta are: Supp(\psi )= -\sqrt\sqrt,\sqrt \sqrt ,b lengthSupp(\psi )=T(\alpha ,\beta )=(\alpha +\beta )\sqrt. The parameter R=b/, a, =\beta / \alpha is referred to as “cyclic balance”, and is defined as the ratio between the lengths of the causal and non-causal piece of the wavelet. The instant of transition t_ from the first to the second half cycle is given by t_=\frac\sqrt. The (unimodal) scale function associated with the wavelets is given by \phi _(t, \alpha ,\beta )=\frac\cdot (t-a)^\cdot (b-t)^, a\leq t\leq b . A closed-form expression for first-order beta wavelets can easily be derived. Within their support, \psi_(t, \alpha ,\beta ) =\frac \cdot frac-\frac\cdot(t-a)^ \cdot(b-t)^


Beta wavelet spectrum

The beta wavelet spectrum can be derived in terms of the Kummer hypergeometric function. Let \psi _(t, \alpha ,\beta )\leftrightarrow \Psi _(\omega , \alpha ,\beta ) denote the Fourier transform pair associated with the wavelet. This spectrum is also denoted by \Psi _(\omega) for short. It can be proved by applying properties of the Fourier transform that \Psi _(\omega ) =-j\omega \cdot M(\alpha ,\alpha +\beta ,-j\omega (\alpha +\beta )\sqrt)\cdot exp\ where M(\alpha ,\alpha +\beta ,j\nu )=\frac\cdot \int_^e^t^(1-t)^dt. Only symmetrical (\alpha =\beta ) cases have zeroes in the spectrum. A few asymmetric (\alpha \neq \beta ) beta wavelets are shown in Fig. Inquisitively, they are parameter-symmetrical in the sense that they hold , \Psi _(\omega , \alpha ,\beta ), =, \Psi _(\omega , \beta ,\alpha ), . Higher derivatives may also generate further beta wavelets. Higher order beta wavelets are defined by \psi _(t, \alpha ,\beta )=(-1)^\frac. This is henceforth referred to as an N-order beta wavelet. They exist for order N\leq Min(\alpha ,\beta )-1. After some algebraic handling, their closed-form expression can be found: \Psi _(t, \alpha ,\beta ) =\frac \sum_^sgn(2n-N)\cdot \frac(t-a)^ \cdot \frac(b-t)^.


Application

Wavelet theory is applicable to several subjects. All wavelet transforms may be considered forms of time-frequency representation for continuous-time (analog) signals and so are related to harmonic analysis. Almost all practically useful discrete wavelet transforms use discrete-time filter banks. Similarly, Beta wavelet and its derivative are utilized in several real-time engineering applications such as image compression, bio-medical signal compression, image recognition ref name=ix-conf-paper> etc.


References

{{Reflist


Further reading

* W.B. Davenport, Probability and Random Processes, McGraw-Hill, Kogakusha, Tokyo, 1970.


External links

*https://jcis.sbrt.org.br/jcis/issue/view/27 * http://www.de.ufpe.br/~hmo/WEBLET.html * http://www.de.ufpe.br/~hmo/beta.html Continuous wavelets