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{{Expert-subject|Mathematics|date=January 2010}} | |||
In the field of [[time–frequency analysis]], several signal formulations are used to represent the signal in a joint time–frequency domain.<ref>L. Cohen, "Time–Frequency Analysis," ''Prentice-Hall'', New York, 1995. ISBN 978-0135945322</ref>(See also [[time–frequency representation]]s<ref>B. Boashash, “Time-Frequency Concepts”, Chapter 1, pp. 3–28, in B. Boashash, ed,, Time-Frequency Signal Analysis & Processing: A Comprehensive Reference, Elsevier Science, Oxford, 2003; ISBN 008044335.</ref>). | |||
There are several methods and transforms called "time-frequency distributions" (TFDs), whose interconnections were organized by Leon Cohen.<ref>[[Leon Cohen|L. Cohen]], "Generalized phase-space distribution functions," ''Jour. Math. Phys.'', vol.7, pp. 781–786, 1966.</ref> | |||
<ref>L. Cohen, "Quantization Problem and Variational Principle in the Phase Space Formulation of Quantum Mechanics," ''Jour. Math. Phys.'', vol.7, pp. 1863–1866, 1976.</ref><ref>A. J. E. M. Janssen, "On the locus and spread of pseudo-density functions in the time frequency plane," ''Philips Journal of Research'', vol. 37, pp. 79–110, 1982.</ref><ref>B. Boashash, “Heuristic Formulation of Time-Frequency Distributions”, Chapter 2, pp. 29–58, in B. Boashash, editor, Time-Frequency Signal Analysis and Processing: A Comprehensive Reference, Elsevier Science, Oxford, 2003; ISBN 008044335.</ref> | |||
The most useful and popular methods form a class referred to as "quadratic" or [[bilinear time–frequency distribution]]s. A core member of this class is the [[Wigner–Ville distribution]] (WVD), as all other TFDs can be written as a smoothed or convolved versions of the WVD. Another popular member of this class is the [[spectrogram]] which is the square of the magnitude of the [[short-time Fourier transform]] (STFT). The spectrogram has the advantage of being positive and is easy to interpret, but also has disadvantages, like being irreversible, which means that once the spectrogram of a signal is computed, the original signal can't be extracted from the spectrogram. The theory and methodology for defining a TFD that verifies certain desirable properties is given in the "Theory of Quadratic TFDs".<ref>B. Boashash, “Theory of Quadratic TFDs”, Chapter 3, pp. 59–82, in B. Boashash, editor, Time-Frequency Signal Analysis & Processing: A Comprehensive Reference, Elsevier, Oxford, 2003; ISBN 0-08-044335-4.</ref> | |||
The scope of this article is to illustrate some elements of the procedure to transform one distribution into another. The method used to transform a distribution is borrowed from the [[phase space formulation]] of [[quantum mechanics]], even though the subject matter of this article is "signal processing". Noting that a signal can recovered from a particular distribution under certain conditions, given a certain TFD ''ρ''<sub>1</sub>(''t,f'') representing the signal in a joint time–frequency domain, another, different, TFD ''ρ''<sub>2</sub>(''t,f'') of the same signal can be obtained to calculate any other distribution, by simple smoothing or filtering; some of these relationships are shown below. A full treatment of the question can be given in Cohen's book. | |||
==General class== | |||
If we use the variable ''ω''=2''πf'', then, borrowing the notations used in the field of quantum mechanics, we can show that time–frequency representation, such as [[Wigner distribution function]] (WDF) and other [[bilinear time–frequency distribution]]s, can be expressed as | |||
: <math>C(t,\omega) = \dfrac{1}{4\pi^2}\iiint s^*(u-\dfrac{1}{2}\tau)s(u+\dfrac{1}{2}\tau)\phi(\theta,\tau)e^{-j\theta t-j\tau\omega+j\theta u}\, du\,d\tau\,d\theta ,</math> (1) | |||
where <math>\phi(\theta,\tau)</math> is a two dimensional function called the kernel, which determines the distribution and its properties (for a signal processing terminology and treatment of this question, the reader is referred to the references already cited in the introduction). | |||
For the kernel of the [[Wigner distribution function]] (WDF) is one. However, it is no particular significance should be attached to that since it is to write the general form so that the kernel of any distribution is one, in which case the kernel of the [[Wigner distribution function]] (WDF) would be something else. | |||
==Characteristic function formulation== | |||
The characteristic function is the double [[Fourier transform]] of the distribution. By inspection of Eq. (1), we can obtain that | |||
: <math>C(t,\omega) = \dfrac{1}{4\pi^2}\iint M(\theta,\tau)e^{-j\theta t-j\tau\omega}\, d\theta\,d\tau</math> (2) | |||
where | |||
: <math>\begin{alignat}{2} | |||
M(\theta,\tau) & = \phi(\theta,\tau)\int s^*(u-\dfrac{1}{2}\tau)s(u+\dfrac{1}{2}\tau)e^{j\theta u}\,du \\ | |||
& = \phi(\theta,\tau)A(\theta,\tau) \\ | |||
\end{alignat}</math> (3) | |||
and where <math>A(\theta,\tau)</math> is the symmetrical ambiguity function. The characteristic function may be appropriately called the generalized ambiguity function. | |||
==Transformation between distributions== | |||
To obtain that relationship suppose that there are two distributions, <math>C_1</math> and <math>C_2</math>, with corresponding kernels, <math>\phi_1</math> and <math>\phi_2</math>. Their characteristic functions are | |||
: <math>M_1(\phi,\tau) = \phi_1(\theta,\tau)\int s^*(u-\dfrac{1}{2}\tau)s(u+\dfrac{1}{2}\tau)e^{j\theta u}\, du</math> (4) | |||
: <math>M_2(\phi,\tau) = \phi_2(\theta,\tau)\int s^*(u-\dfrac{1}{2}\tau)s(u+\dfrac{1}{2}\tau)e^{j\theta u}\, du</math> (5) | |||
Divide one equation by the other to obtain | |||
: <math>M_1(\phi,\tau) = \dfrac{\phi_1(\theta,\tau)}{\phi_2(\theta,\tau)}M_2(\phi,\tau)</math> (6) | |||
This is an important relationship because it connects the characteristic functions. For the division to be proper the kernel cannot to be zero in a finite region. | |||
To obtain the relationship between the distributions take the double [[Fourier transform]] of both sides and use Eq. (2) | |||
: <math>C_1(t,\omega) = \dfrac{1}{4\pi^2}\iint \dfrac{\phi_1(\theta,\tau)}{\phi_2(\theta,\tau)}M_2(\theta,\tau)e^{-j\theta t-j\tau\omega}\, d\theta\,d\tau</math> (7) | |||
Now express <math>M_2</math> in terms of <math>C_2</math> to obtain | |||
: <math>C_1(t,\omega) = \dfrac{1}{4\pi^2}\iiiint \dfrac{\phi_1(\theta,\tau)}{\phi_2(\theta,\tau)}C_2(t,\omega^')e^{j\theta(t^'-t)+j\tau(\omega^'-\omega)}\, d\theta\,d\tau\,dt^'\,d\omega^'</math> (8) | |||
This relationship can be written as | |||
: <math>C_1(t,\omega) = \iint g_{12}(t^'-t,\omega^'-\omega)C_2(t,\omega^')\,dt^'\,d\omega^'</math> (9) | |||
with | |||
: <math>g_{12}(t,\omega) = \dfrac{1}{4\pi^2}\iint \dfrac{\phi_1(\theta,\tau)}{\phi_2(\theta,\tau)}e^{j\theta t+j\tau\omega}\, d\theta\, d\tau</math> (10) | |||
==Relation of the spectrogram to other bilinear representations== | |||
Now we specialize to the case where one transform from an arbitrary representation to the spectrogram. In Eq. (9), both <math>C_1</math> to be the spectrogram and <math>C_2</math> to be arbitrary are set. In addition, to simplify notation, <math>\phi_{SP} = \phi_1</math>, <math>\phi = \phi_2</math>, and <math>g_{SP} = g_{12}</math> are set and written as | |||
: <math>C_{SP}(t,\omega) = \iint g_{SP}(t^'-t,\omega^'-\omega)C(t,\omega^')\,dt^'\,d\omega^'</math> (11) | |||
The kernel for the spectrogram with window, <math>h(t)</math>, is <math>A_h(-\theta,\tau)</math> and therefore | |||
: <math>\begin{alignat}{3} | |||
g_{SP}(t,\omega) & = \dfrac{1}{4\pi^2}\iint \dfrac{A_h(-\theta,\tau)}{\phi(\theta,\tau)}e^{j\theta t+j\tau\omega}\, d\theta\,d\tau \\ | |||
& = \dfrac{1}{4\pi^2}\iiint \dfrac{1}{\phi(\theta,\tau)}h^*(u-\dfrac{1}{2}\tau)h(u+\dfrac{1}{2}\tau)e^{j\theta t+j\tau\omega-j\theta u}\, du\,d\tau\,d\theta \\ | |||
& = \dfrac{1}{4\pi^2}\iiint h^*(u-\dfrac{1}{2}\tau)h(u+\dfrac{1}{2}\tau)\dfrac{\phi(\theta,\tau)}{\phi(\theta,\tau)\phi(-\theta,\tau)}e^{-j\theta t+j\tau\omega+j\theta u}\, du\,d\tau\,d\theta \\ | |||
\end{alignat}</math> (12) | |||
If taking the kernels for which <math>\phi(-\theta,\tau)\phi(\theta,\tau) = 1</math>, <math>g_{SP}(t,\omega)</math> is just the distribution of the window function, except that it is evaluated at <math>-\omega</math>. Therefore, | |||
: <math>g_{SP}(t,\omega) = C_h(t,-\omega)</math> (13) | |||
for kernels that satisfy <math>\phi(-\theta,\tau)\phi(\theta,\tau) = 1</math> | |||
and | |||
: <math>C_{SP}(t,\omega) = \iint C_s(t^',\omega^')C_h(t^'-t,\omega^'-\omega)\,dt^'\,d\omega^'</math> (14) | |||
for kernels that satisfy <math>\phi(-\theta,\tau)\phi(\theta,\tau) = 1</math> | |||
This was shown by Janssen[4]. For the case where <math>\phi(-\theta,\tau)\phi(\theta,\tau)</math> does not equal one, then | |||
: <math>C_{SP}(t,\omega) = \iiiint G(t^{''},\omega^{''})C_s(t^',\omega^')C_h(t^{''}+t^'-t,-\omega^{''}+\omega-\omega^')\,dt^'\,dt^{''}\,d\omega^\,d\omega^{''}</math> (15) | |||
where | |||
: <math>G(t,\omega) = \dfrac{1}{4\pi^2}\iint \dfrac{e^{-j\theta t-j\tau\omega}}{\phi(\theta,\tau)\phi(-\theta,\tau)}\, d\theta\,d\tau</math> (16) | |||
==References== | |||
{{Reflist}} | |||
{{DEFAULTSORT:Transformation between distributions in time-frequency analysis}} | |||
[[Category:Time–frequency analysis]] |
Revision as of 00:45, 20 August 2013
Template:Expert-subject In the field of time–frequency analysis, several signal formulations are used to represent the signal in a joint time–frequency domain.[1](See also time–frequency representations[2]).
There are several methods and transforms called "time-frequency distributions" (TFDs), whose interconnections were organized by Leon Cohen.[3] [4][5][6]
The most useful and popular methods form a class referred to as "quadratic" or bilinear time–frequency distributions. A core member of this class is the Wigner–Ville distribution (WVD), as all other TFDs can be written as a smoothed or convolved versions of the WVD. Another popular member of this class is the spectrogram which is the square of the magnitude of the short-time Fourier transform (STFT). The spectrogram has the advantage of being positive and is easy to interpret, but also has disadvantages, like being irreversible, which means that once the spectrogram of a signal is computed, the original signal can't be extracted from the spectrogram. The theory and methodology for defining a TFD that verifies certain desirable properties is given in the "Theory of Quadratic TFDs".[7]
The scope of this article is to illustrate some elements of the procedure to transform one distribution into another. The method used to transform a distribution is borrowed from the phase space formulation of quantum mechanics, even though the subject matter of this article is "signal processing". Noting that a signal can recovered from a particular distribution under certain conditions, given a certain TFD ρ1(t,f) representing the signal in a joint time–frequency domain, another, different, TFD ρ2(t,f) of the same signal can be obtained to calculate any other distribution, by simple smoothing or filtering; some of these relationships are shown below. A full treatment of the question can be given in Cohen's book.
General class
If we use the variable ω=2πf, then, borrowing the notations used in the field of quantum mechanics, we can show that time–frequency representation, such as Wigner distribution function (WDF) and other bilinear time–frequency distributions, can be expressed as
where is a two dimensional function called the kernel, which determines the distribution and its properties (for a signal processing terminology and treatment of this question, the reader is referred to the references already cited in the introduction).
For the kernel of the Wigner distribution function (WDF) is one. However, it is no particular significance should be attached to that since it is to write the general form so that the kernel of any distribution is one, in which case the kernel of the Wigner distribution function (WDF) would be something else.
Characteristic function formulation
The characteristic function is the double Fourier transform of the distribution. By inspection of Eq. (1), we can obtain that
where
and where is the symmetrical ambiguity function. The characteristic function may be appropriately called the generalized ambiguity function.
Transformation between distributions
To obtain that relationship suppose that there are two distributions, and , with corresponding kernels, and . Their characteristic functions are
Divide one equation by the other to obtain
This is an important relationship because it connects the characteristic functions. For the division to be proper the kernel cannot to be zero in a finite region.
To obtain the relationship between the distributions take the double Fourier transform of both sides and use Eq. (2)
Now express in terms of to obtain
This relationship can be written as
with
Relation of the spectrogram to other bilinear representations
Now we specialize to the case where one transform from an arbitrary representation to the spectrogram. In Eq. (9), both to be the spectrogram and to be arbitrary are set. In addition, to simplify notation, , , and are set and written as
The kernel for the spectrogram with window, , is and therefore
If taking the kernels for which , is just the distribution of the window function, except that it is evaluated at . Therefore,
and
This was shown by Janssen[4]. For the case where does not equal one, then
where
References
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- ↑ L. Cohen, "Time–Frequency Analysis," Prentice-Hall, New York, 1995. ISBN 978-0135945322
- ↑ B. Boashash, “Time-Frequency Concepts”, Chapter 1, pp. 3–28, in B. Boashash, ed,, Time-Frequency Signal Analysis & Processing: A Comprehensive Reference, Elsevier Science, Oxford, 2003; ISBN 008044335.
- ↑ L. Cohen, "Generalized phase-space distribution functions," Jour. Math. Phys., vol.7, pp. 781–786, 1966.
- ↑ L. Cohen, "Quantization Problem and Variational Principle in the Phase Space Formulation of Quantum Mechanics," Jour. Math. Phys., vol.7, pp. 1863–1866, 1976.
- ↑ A. J. E. M. Janssen, "On the locus and spread of pseudo-density functions in the time frequency plane," Philips Journal of Research, vol. 37, pp. 79–110, 1982.
- ↑ B. Boashash, “Heuristic Formulation of Time-Frequency Distributions”, Chapter 2, pp. 29–58, in B. Boashash, editor, Time-Frequency Signal Analysis and Processing: A Comprehensive Reference, Elsevier Science, Oxford, 2003; ISBN 008044335.
- ↑ B. Boashash, “Theory of Quadratic TFDs”, Chapter 3, pp. 59–82, in B. Boashash, editor, Time-Frequency Signal Analysis & Processing: A Comprehensive Reference, Elsevier, Oxford, 2003; ISBN 0-08-044335-4.