Haar Wavelet
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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 represented in terms of an
orthonormal basis In mathematics, particularly linear algebra, an orthonormal basis for an inner product space V with finite Dimension (linear algebra), dimension is a Basis (linear algebra), basis for V whose vectors are orthonormal, that is, they are all unit vec ...
. The Haar sequence is now recognised as the first known wavelet basis and is extensively used as a teaching example. The Haar sequence was proposed in 1909 by
Alfréd Haar Alfréd Haar (; 11 October 1885, Budapest – 16 March 1933, Szeged) was a Kingdom of Hungary, Hungarian mathematician. In 1904 he began to study at the University of Göttingen. His doctorate was supervised by David Hilbert. The Haar me ...
. Haar used these functions to give an example of an orthonormal system for the space of square-integrable functions on the unit interval  , 1 The study of wavelets, and even the term "wavelet", did not come until much later. As a special case of the Daubechies wavelet, the Haar wavelet is also known as Db1. The Haar wavelet is also the simplest possible wavelet. The technical disadvantage of the Haar wavelet is that it is not continuous, and therefore not differentiable. This property can, however, be an advantage for the analysis of signals with sudden transitions ( discrete signals), such as monitoring of tool failure in machines. The Haar wavelet's mother wavelet function \psi(t) can be described as : \psi(t) = \begin 1 \quad & 0 \leq t < \frac,\\ -1 & \frac \leq t < 1,\\ 0 &\mbox \end Its scaling function \varphi(t) can be described as : \varphi(t) = \begin1 \quad & 0 \leq t < 1,\\0 &\mbox\end


Haar functions and Haar system

For every pair ''n'', ''k'' of integers in \mathbb, the Haar function ''ψ''''n'',''k'' is defined on the
real line A number line is a graphical representation of a straight line that serves as spatial representation of numbers, usually graduated like a ruler with a particular origin (geometry), origin point representing the number zero and evenly spaced mark ...
\mathbb by the formula : \psi_(t) = 2^ \psi(2^n t-k), \quad t \in \mathbb. This function is supported on the right-open interval , ''i.e.'', it vanishes outside that interval. It has integral 0 and norm 1 in the
Hilbert space In mathematics, a Hilbert space is a real number, real or complex number, complex inner product space that is also a complete metric space with respect to the metric induced by the inner product. It generalizes the notion of Euclidean space. The ...
  ''L''2(\mathbb), : \int_ \psi_(t) \, d t = 0, \quad \, \psi_\, ^2_ = \int_ \psi_(t)^2 \, d t = 1. The Haar functions are pairwise
orthogonal In mathematics, orthogonality (mathematics), orthogonality is the generalization of the geometric notion of ''perpendicularity''. Although many authors use the two terms ''perpendicular'' and ''orthogonal'' interchangeably, the term ''perpendic ...
, : \int_ \psi_(t) \psi_(t) \, d t = \delta_ \delta_, where \delta_ represents the
Kronecker delta In mathematics, the Kronecker delta (named after Leopold Kronecker) is a function of two variables, usually just non-negative integers. The function is 1 if the variables are equal, and 0 otherwise: \delta_ = \begin 0 &\text i \neq j, \\ 1 &\ ...
. Here is the reason for orthogonality: when the two supporting intervals I_ and I_ are not equal, then they are either disjoint, or else the smaller of the two supports, say I_, is contained in the lower or in the upper half of the other interval, on which the function \psi_ remains constant. It follows in this case that the product of these two Haar functions is a multiple of the first Haar function, hence the product has integral 0. The Haar system on the real line is the set of functions : \. It is complete in ''L''2(\mathbb): ''The Haar system on the line is an orthonormal basis in'' ''L''2(\mathbb).


Haar wavelet properties

The Haar wavelet has several notable properties:


Haar system on the unit interval and related systems

In this section, the discussion is restricted to the unit interval , 1and to the Haar functions that are supported on , 1 The system of functions considered by Haar in 1910, called the Haar system on , 1'' in this article, consists of the subset of Haar wavelets defined as :\, with the addition of the constant function 1 on , 1 In
Hilbert space In mathematics, a Hilbert space is a real number, real or complex number, complex inner product space that is also a complete metric space with respect to the metric induced by the inner product. It generalizes the notion of Euclidean space. The ...
terms, this Haar system on , 1is a complete orthonormal system, ''i.e.'', an
orthonormal basis In mathematics, particularly linear algebra, an orthonormal basis for an inner product space V with finite Dimension (linear algebra), dimension is a Basis (linear algebra), basis for V whose vectors are orthonormal, that is, they are all unit vec ...
, for the space ''L''2( , 1 of square integrable functions on the unit interval. The Haar system on , 1—with the constant function 1 as first element, followed with the Haar functions ordered according to the lexicographic ordering of couples — is further a monotone
Schauder basis In mathematics, a Schauder basis or countable basis is similar to the usual ( Hamel) basis of a vector space; the difference is that Hamel bases use linear combinations that are finite sums, while for Schauder bases they may be infinite sums. This ...
for the space ''L''''p''( , 1 when .see p. 3 in J. Lindenstrauss, L. Tzafriri, (1977), "Classical Banach Spaces I, Sequence Spaces", Ergebnisse der Mathematik und ihrer Grenzgebiete 92, Berlin: Springer-Verlag, . This basis is unconditional when . There is a related Rademacher system consisting of sums of Haar functions, :r_n(t) = 2^ \sum_^ \psi_(t), \quad t \in , 1 \ n \ge 0. Notice that , ''r''''n''(''t''),  = 1 on , 1). This is an orthonormal system but it is not complete. In the language of independent Bernoulli random variables">Independence (probability theory)">independent Bernoulli distribution">Bernoulli random variables with mean">Bernoulli distribution">Bernoulli random variables">Independence (probability theory)">independent Bernoulli distribution">Bernoulli random variables with mean 0. The Khintchine inequality expresses the fact that in all the spaces ''L''''p''( , 1, , the Rademacher sequence is Schauder basis#Definitions, equivalent to the unit vector basis in ℓ''2''. In particular, the Linear span#Closed linear span, closed linear span of the Rademacher sequence in ''L''''p''( , 1, , is
isomorphic In mathematics, an isomorphism is a structure-preserving mapping or morphism between two structures of the same type that can be reversed by an inverse mapping. Two mathematical structures are isomorphic if an isomorphism exists between the ...
to ℓ''2''.


The Faber–Schauder system

The Faber–Schauder systemFaber, Georg (1910), "Über die Orthogonalfunktionen des Herrn Haar", ''Deutsche Math.-Ver'' (in German) 19: 104–112. ; http://www-gdz.sub.uni-goettingen.de/cgi-bin/digbib.cgi?PPN37721857X ; http://resolver.sub.uni-goettingen.de/purl?GDZPPN002122553 is the family of continuous functions on , 1consisting of the constant function 1, and of multiples of indefinite integrals of the functions in the Haar system on  , 1 chosen to have norm 1 in the maximum norm. This system begins with ''s''0 = 1, then is the indefinite integral vanishing at 0 of the function 1, first element of the Haar system on , 1 Next, for every integer , functions are defined by the formula : s_(t) = 2^ \int_0^t \psi_(u) \, d u, \quad t \in , 1 \ 0 \le k < 2^n. These functions are continuous, piecewise linear, supported by the interval that also supports . The function is equal to 1 at the midpoint of the interval , linear on both halves of that interval. It takes values between 0 and 1 everywhere. The Faber–Schauder system is a
Schauder basis In mathematics, a Schauder basis or countable basis is similar to the usual ( Hamel) basis of a vector space; the difference is that Hamel bases use linear combinations that are finite sums, while for Schauder bases they may be infinite sums. This ...
for the space ''C''( , 1 of continuous functions on , 1 For every ''f'' in ''C''( , 1, the partial sum : f_ = a_0 s_0 + a_1 s_1 + \sum_^ \Bigl( \sum_^ a_ s_ \Bigr) \in C( , 1 of the series expansion of ''f'' in the Faber–Schauder system is the continuous piecewise linear function that agrees with ''f'' at the points , where . Next, the formula : f_ - f_ = \sum_^ \bigl( f(x_) - f_(x_) \bigr) s_ = \sum_^ a_ s_ gives a way to compute the expansion of ''f'' step by step. Since ''f'' is uniformly continuous, the sequence converges uniformly to ''f''. It follows that the Faber–Schauder series expansion of ''f'' converges in ''C''( , 1, and the sum of this series is equal to ''f''.


The Franklin system

The Franklin system is obtained from the Faber–Schauder system by the Gram–Schmidt orthonormalization procedure. Since the Franklin system has the same linear span as that of the Faber–Schauder system, this span is dense in ''C''( , 1, hence in ''L''2( , 1. The Franklin system is therefore an orthonormal basis for ''L''2( , 1, consisting of continuous piecewise linear functions. P. Franklin proved in 1928 that this system is a Schauder basis for ''C''( , 1. The Franklin system is also an unconditional Schauder basis for the space ''L''''p''( , 1 when .S. V. Bočkarev, ''Existence of a basis in the space of functions analytic in the disc, and some properties of Franklin's system''. Mat. Sb. 95 (1974), 3–18 (Russian). Translated in Math. USSR-Sb. 24 (1974), 1–16. The Franklin system provides a Schauder basis in the disk algebra ''A''(''D''). This was proved in 1974 by Bočkarev, after the existence of a basis for the disk algebra had remained open for more than forty years. Bočkarev's construction of a Schauder basis in ''A''(''D'') goes as follows: let ''f'' be a complex valued Lipschitz function on , π then ''f'' is the sum of a cosine series with absolutely summable coefficients. Let ''T''(''f'') be the element of ''A''(''D'') defined by the complex power series with the same coefficients, : \left\ \longrightarrow \left\. Bočkarev's basis for ''A''(''D'') is formed by the images under ''T'' of the functions in the Franklin system on  , π Bočkarev's equivalent description for the mapping ''T'' starts by extending ''f'' to an even Lipschitz function ''g''1 on minus;π, π identified with a Lipschitz function on the
unit circle In mathematics, a unit circle is a circle of unit radius—that is, a radius of 1. Frequently, especially in trigonometry, the unit circle is the circle of radius 1 centered at the origin (0, 0) in the Cartesian coordinate system in the Eucli ...
 T. Next, let ''g''2 be the conjugate function of ''g''1, and define ''T''(''f'') to be the function in ''A''(''D'') whose value on the boundary T of ''D'' is equal to . When dealing with 1-periodic continuous functions, or rather with continuous functions ''f'' on , 1such that , one removes the function from the Faber–Schauder system, in order to obtain the periodic Faber–Schauder system. The periodic Franklin system is obtained by orthonormalization from the periodic Faber–-Schauder system.See p. 161, III.D.20 and p. 192, III.E.17 in One can prove Bočkarev's result on ''A''(''D'') by proving that the periodic Franklin system on , 2πis a basis for a Banach space ''A''''r'' isomorphic to ''A''(''D''). The space ''A''''r'' consists of complex continuous functions on the unit circle T whose conjugate function is also continuous.


Haar matrix

The 2×2 Haar matrix that is associated with the Haar wavelet is : H_2 = \begin 1 & 1 \\ 1 & -1 \end. Using the discrete wavelet transform, one can transform any sequence (a_0,a_1,\dots,a_,a_) of even length into a sequence of two-component-vectors \left(\left(a_0,a_1\right),\left(a_2,a_3\right),\dots,\left(a_,a_\right)\right) . If one right-multiplies each vector with the matrix H_2 , one gets the result \left(\left(s_0,d_0\right),\dots,\left(s_n,d_n\right)\right) of one stage of the fast Haar-wavelet transform. Usually one separates the sequences ''s'' and ''d'' and continues with transforming the sequence ''s''. Sequence ''s'' is often referred to as the ''averages'' part, whereas ''d'' is known as the ''details'' part. If one has a sequence of length a multiple of four, one can build blocks of 4 elements and transform them in a similar manner with the 4×4 Haar matrix : H_4 = \begin 1 & 1 & 1 & 1 \\ 1 & 1 & -1 & -1 \\ 1 & -1 & 0 & 0\\ 0 & 0 & 1 & -1 \end, which combines two stages of the fast Haar-wavelet transform. Compare with a Walsh matrix, which is a non-localized 1/–1 matrix. Generally, the 2N×2N Haar matrix can be derived by the following equation. : H_ = \begin H_ \otimes , 1\\ I_ \otimes , -1\end :where I_ = \begin 1 & 0 & \dots & 0 \\ 0 & 1 & \dots & 0 \\ \vdots & \vdots & \ddots & \vdots \\ 0 & 0 & \dots & 1 \end and \otimes is the Kronecker product. The Kronecker product of A \otimes B, where A is an m×n matrix and B is a p×q matrix, is expressed as : A \otimes B = \begin a_B & \dots & a_B \\ \vdots & \ddots & \vdots \\ a_B & \dots & a_B\end. An un-normalized 8-point Haar matrix H_8 is shown below : H_ = \begin 1&1&1&1&1&1&1&1 \\ 1&1&1&1&-1&-1&-1&-1 \\ 1&1&-1&-1&0&0&0&0& \\ 0&0&0&0&1&1&-1&-1 \\ 1&-1&0&0&0&0&0&0& \\ 0&0&1&-1&0&0&0&0 \\ 0&0&0&0&1&-1&0&0& \\ 0&0&0&0&0&0&1&-1 \end. Note that, the above matrix is an un-normalized Haar matrix. The Haar matrix required by the Haar transform should be normalized. From the definition of the Haar matrix H, one can observe that, unlike the
Fourier transform In mathematics, the Fourier transform (FT) is an integral transform that takes a function as input then outputs another function that describes the extent to which various frequencies are present in the original function. The output of the tr ...
, H has only real elements (i.e., 1, -1 or 0) and is non-symmetric. Take the 8-point Haar matrix H_8 as an example. The first row of H_8 measures the average value, and the second row of H_8 measures a low frequency component of the input vector. The next two rows are sensitive to the first and second half of the input vector respectively, which corresponds to moderate frequency components. The remaining four rows are sensitive to the four section of the input vector, which corresponds to high frequency components.


Haar transform

The Haar transform is the simplest of the wavelet transforms. This transform cross-multiplies a function against the Haar wavelet with various shifts and stretches, like the Fourier transform cross-multiplies a function against a sine wave with two phases and many stretches.The Haar Transform
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Introduction

The Haar transform is one of the oldest transform functions, proposed in 1910 by the Hungarian mathematician
Alfréd Haar Alfréd Haar (; 11 October 1885, Budapest – 16 March 1933, Szeged) was a Kingdom of Hungary, Hungarian mathematician. In 1904 he began to study at the University of Göttingen. His doctorate was supervised by David Hilbert. The Haar me ...
. It is found effective in applications such as signal and image compression in electrical and computer engineering as it provides a simple and computationally efficient approach for analysing the local aspects of a signal. The Haar transform is derived from the Haar matrix. An example of a 4×4 Haar transformation matrix is shown below. :H_4 = \frac \begin 1 & 1 & 1 & 1 \\ 1 & 1 & -1 & -1 \\ \sqrt & -\sqrt & 0 & 0 \\ 0 & 0 & \sqrt & -\sqrt\end The Haar transform can be thought of as a sampling process in which rows of the transformation matrix act as samples of finer and finer resolution. Compare with the Walsh transform, which is also 1/–1, but is non-localized.


Property

The Haar transform has the following properties # No need for multiplications. It requires only additions and there are many elements with zero value in the Haar matrix, so the computation time is short. It is faster than Walsh transform, whose matrix is composed of +1 and −1. # Input and output length are the same. However, the length should be a power of 2, i.e. N = 2^k, k\in \mathbb. # It can be used to analyse the localized feature of signals. Due to the
orthogonal In mathematics, orthogonality (mathematics), orthogonality is the generalization of the geometric notion of ''perpendicularity''. Although many authors use the two terms ''perpendicular'' and ''orthogonal'' interchangeably, the term ''perpendic ...
property of the Haar function, the frequency components of input signal can be analyzed.


Haar transform and Inverse Haar transform

The Haar transform ''y''''n'' of an n-input function ''x''''n'' is : y_n = H_n x_n The Haar transform matrix is real and orthogonal. Thus, the inverse Haar transform can be derived by the following equations. : H = H^*, H^ = H^T, \text HH^T = I : where I is the identity matrix. For example, when n = 4 : H_4^H_4 = \frac\begin 1&1&\sqrt&0 \\ 1&1&-\sqrt&0 \\ 1&-1&0&\sqrt \\ 1&-1&0&-\sqrt\end \cdot\; \frac\begin 1&1&1&1 \\ 1&1&-1&-1 \\ \sqrt&-\sqrt&0&0 \\ 0&0&\sqrt&-\sqrt\end = \begin 1&0&0&0 \\ 0&1&0&0 \\ 0&0&1&0 \\ 0&0&0&1 \end Thus, the inverse Haar transform is : x_ = H^y_


Example

The Haar transform coefficients of a n=4-point signal x_ = ,2,3,4 can be found as : y_ = H_4 x_4 = \frac\begin 1&1&1&1 \\ 1&1&-1&-1 \\ \sqrt&-\sqrt&0&0 \\ 0&0&\sqrt&-\sqrt\end \begin 1 \\ 2 \\ 3 \\ 4\end = \begin 5 \\ -2 \\ -1/\sqrt \\ -1/\sqrt\end The input signal can then be perfectly reconstructed by the inverse Haar transform : \hat = H_^y_ = \frac\begin 1&1&\sqrt&0 \\ 1&1&-\sqrt&0 \\ 1&-1&0&\sqrt \\ 1&-1&0&-\sqrt\end \begin 5 \\ -2 \\ -1/\sqrt \\ -1/\sqrt\end = \begin 1 \\ 2 \\ 3 \\ 4 \end


See also

* Dimension reduction * Walsh matrix * Walsh transform * Wavelet * Chirplet *
Signal A signal is both the process and the result of transmission of data over some media accomplished by embedding some variation. Signals are important in multiple subject fields including signal processing, information theory and biology. In ...
* Haar-like feature * Strömberg wavelet * Dyadic transformation


Notes


References

* * Charles K. Chui, ''An Introduction to Wavelets'', (1992), Academic Press, San Diego, * English Translation of Haar's seminal article


External links

*
Free Haar wavelet filtering implementation and interactive demo

Free Haar wavelet denoising and lossy signal compression


Haar transform

* * * * * {{DEFAULTSORT:Haar Wavelet Orthogonal wavelets