Questions tagged [wavelets]

For questions related to wavelets and wavelet theory.

A wavelet is a wave-like oscillation with an amplitude that begins at zero, increases, and then decreases back to zero. It can typically be visualized as a "brief oscillation" like one recorded by a seismograph or heart monitor. Generally, wavelets are intentionally crafted to have specific properties that make them useful for signal processing. Using a "reverse, shift, multiply and integrate" technique called convolution, wavelets can be combined with known portions of a damaged signal to extract information from the unknown portions.

For example, a wavelet could be created to have a frequency of middle C and a duration of a 32nd note. If that wavelet were to be convolved with a signal created from the recording of a song, then the resulting signal would be useful for determining when the middle C was being played in the song. Mathematically, the wavelet will correlate with the signal if the unknown signal contains information of similar frequency. This concept of correlation is at the core of many practical applications of wavelet theory.

As a mathematical tool, wavelets can be used to extract information from many different kinds of data, including-–but certainly not limited to--audio signals and images. Sets of wavelets are generally needed to analyze data fully. A set of "complementary" wavelets will decompose data without gaps or overlap so that the decomposition process is mathematically reversible. Thus, sets of complementary wavelets are useful in wavelet based compression/decompression algorithms where it is desirable to recover the original information with minimal loss.

In formal terms, that representation is a wavelet series representation of a square-integrable function with respect to either a complete, orthonormal set of basis functions, or an overcomplete set or frame of a vector space, for the Hilbert space of square integrable functions. That is accomplished through coherent states.

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. Those filter banks are called the wavelet and scaling coefficients and can contain either finite impulse response (FIR) or infinite impulse response (IIR) filters. The wavelets forming a continuous wavelet transform (CWT) are subject to the uncertainty principle of Fourier analysis respective sampling theory: Given a signal with some event in it, one cannot assign simultaneously an exact time and frequency response scale to that event. The product of the uncertainties of time and frequency response scale has a lower bound. Thus, in the scaleogram of a continuous wavelet transform of this signal, such an event marks an entire region in the time-scale plane instead of just one point. Also, discrete wavelet bases may be considered in the context of other forms of the uncertainty principle.

Wavelet transforms are divided into three classes: continuous, discrete and multiresolution.

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inner product with scaling function

$$ \int_0^1 sin(x)\phi(2^jx-k)dx $$ Are there any software that can compute the above integral where $\phi(x)$ is scaling function of db3 (or dbN) family, j scaling parameter and k translation parameter.
Ömer
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Sine-wave Phase shift

This is more of a doubt rather than question. Just correct me if I am wrong, tks So i have this question, (not exactly maths but my doubt is related to calculation understanding) The question here is the phase shift column when they say 1/(4f) are…
JackyBoi
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Wavelet Analysis: A notation problem in this paper

Because of my research work, I am reading this paper: PDE net. But I ran into a notation problem: In definition 2.1, I do not understand how $\textbf{q}[ \textbf{k} ]$ yields a real number. Therefore, I could not verify the authors' claims about the…
BM Yoon
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dilation operator on $L^2({\mathbb{R}})$ is continuous

Prove the statement let $D:\mathbb{R}^+\rightarrow L^2(\mathbb{R})$ defined by $D(a)=f_a$ and $f_a(x)=\frac{1}{\sqrt{a}}f(\frac{x}{a})$, where $f\in L^2(\mathbb{R})$ then the mapping $D$ is continuous on $\mathbb{R}^+.$
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Scaling function to form a multiresolution analysis

The book I read, give an excise to show that not every function can be a scaling function to form a MDA. Let $\phi(t) = \begin{cases} 1 - 2|t| & \text{if $|t|\leq 1/2$} \\ 0 & \text{otherwise} \\ \end{cases} $ So, if $V_{0} \not\subset…
dand1
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Scaling function in wavelet analysis

Prove that for a scaling function $\phi$, we have: $$\int_\Bbb R\phi_k^{'}(x) \ \phi_l(x) \ dx\;=\;\int_\Bbb R \phi_k(x) \ \phi_l^{'}(x) \ dx$$ where $\phi_l^{'}(x)$ and $\phi_k^{'}(x)$ denotes the derivatives of translated scaling function $\phi$.
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Let $\psi\in L_2(\mathbb{R})$ be an orthonormal wavelet and |$\widehat\psi$|be a continuous function. What is $\widehat\psi (2kπ)$?

Let $\psi \in L_2(\mathbb{R})$ be an orthonormal wavelet and $|\widehat\psi|$ be a continuous function. Then it is known that $\widehat\psi(0)=0$. Assume that $\psi\in L_2(\mathbb{R})$ and $\psi$ is continuous. What is $\widehat\psi(2k\pi)$ for…
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How can dilation parameter a in wavelet leads to sign reversal?

I am studying wavelets and it has been given that $$\psi_{a,b} = \frac{1}{\sqrt{|a|}} \psi (\frac{t-b}{a})$$ now the function $$ \psi(t)= \begin{cases} 1,& \text{if } 0\leq t<\frac 12\\ -1, & \text{if } \frac 12\leq t<1\\ 0&…
Userhanu
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Orthogonal Discrete-Time Filter Banks for Discrete Wavelet Transform

I am reading a textbook "Efficient Algorithms for Discrete Wavelet Transform". In that textbook (page 22), the authors are talking about filter banks for the discrete wavelet transform. Specifically, they mention that the impulse response is…
blair
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Daubechies wavelet for structural dynamic analysis

I am working on the structural dynamic response with Daubechies wavelet. The Equation of Motion of dynamic system with single degree of freedom can be described as $$ m\ddot{x}(t) +c\dot{x}(t)+k{x}(t)=f(t) $$ The dynamic displacement response…
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Wavelet transform and taking out of frequencies

We use a scaled wavelet and move it across the signal taking out frequencies so that they need not to be processed with a differently scaled wavelet. How does this show up in the math behind wavelet transform?
gimba
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Why is the dot product of 2 wavelet domain functions a real value?

I'm working on some code here, and here is what I have done. It is based on the work by Ng et al. An example of what this looks like is here. Background: Here, a "lighting cubemap" is a bunch of color values that sit on the faces of a cube. The…
bobobobo
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show that $Q(z)=1/2\sum_{k\in \mathbb{Z}}(-1)^k\overline{p}_{1-k}z^{k}$

Let $P(z)=\sum_{k\in \mathbb{Z}}p_{k}z^{k}$ and define $Q(z)=-z\overline{p(-z)}$. for $\left | z \right |=1$, show that $Q(z)=1/2\sum_{k\in \mathbb{Z}}(-1)^k\overline{p}_{1-k}z^{k}$.
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Explicit formula of scaling coefficient for scaling function

I want ti understand how to calculate the scaling coefficient given scaling function. In the book I read formula such formula for scaling function is proposed. $\phi(t) = \sum_{n} h(n) \sqrt2 \phi(2t-n)$ And next, in the example for Haar wavelet…
dand1
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