HOME

TheInfoList



OR:

:''Note: the Wigner distribution function is abbreviated here as WD rather than WDF as used at
Wigner distribution function The Wigner distribution function (WDF) is used in signal processing as a transform in time-frequency analysis. The WDF was first proposed in physics to account for quantum corrections to classical statistical mechanics in 1932 by Eugene Wigner, ...
'' A Modified Wigner distribution function is a variation of the
Wigner distribution function The Wigner distribution function (WDF) is used in signal processing as a transform in time-frequency analysis. The WDF was first proposed in physics to account for quantum corrections to classical statistical mechanics in 1932 by Eugene Wigner, ...
(WD) with reduced or removed cross-terms. The Wigner distribution (WD) was first proposed for corrections to classical statistical mechanics in 1932 by
Eugene Wigner Eugene Paul "E. P." Wigner ( hu, Wigner Jenő Pál, ; November 17, 1902 – January 1, 1995) was a Hungarian-American theoretical physicist who also contributed to mathematical physics. He received the Nobel Prize in Physics in 1963 "for his con ...
. The
Wigner distribution function The Wigner distribution function (WDF) is used in signal processing as a transform in time-frequency analysis. The WDF was first proposed in physics to account for quantum corrections to classical statistical mechanics in 1932 by Eugene Wigner, ...
, or Wigner–Ville distribution (WVD) for analytic signals, also has applications in time frequency analysis. The Wigner distribution gives better auto term localisation compared to the smeared out
spectrogram A spectrogram is a visual representation of the spectrum of frequencies of a signal as it varies with time. When applied to an audio signal, spectrograms are sometimes called sonographs, voiceprints, or voicegrams. When the data are represen ...
(SP). However, when applied to a signal with multi frequency components, cross terms appear due to its quadratic nature. Several methods have been proposed to reduce the cross terms. For example, in 1994 L. Stankovic proposed a novel technique, now mostly referred to as S-method, resulting in the reduction or removal of cross terms. The concept of the S-method is a combination between the spectrogram and the Pseudo Wigner Distribution (PWD), the windowed version of the WD. The original WD, the spectrogram, and the modified WDs all belong to the Cohen's class of bilinear time-frequency representations : :C_x(t, f)=\int_^\int_^W_x(\theta,\nu) \Pi(t - \theta,f - \nu)\, d\theta\, d\nu \quad = _x\,\ast\,\Pi(t,f) where \Pi \left(t, f\right) is Cohen's kernel function, which is often a low-pass function, and normally serves to mask out the interference in the original Wigner representation.


Mathematical definition

*Wigner distribution : W_x(t,f) = \int_^\infty x(t+\tau/2) x^*(t-\tau/2) e^ \, d\tau Cohen's kernel function : \Pi (t,f) = \delta_ (t,f) *Spectrogram :SP_x (t,f) = , ST_x (t,f), ^2 = ST_x (t,f)\,ST_x^* (t,f) where ST_x is the
short-time Fourier transform The short-time Fourier transform (STFT), is a Fourier-related transform used to determine the sinusoidal frequency and phase content of local sections of a signal as it changes over time. In practice, the procedure for computing STFTs is to divi ...
of x. : ST_x(t,f) = \int_^\infty x(\tau) w^*(t-\tau) e^ \, d\tau Cohen's kernel function : \Pi (t,f) = W_h(t,f) which is the WD of the window function itself. This can be verified by applying the convolution property of the
Wigner distribution function The Wigner distribution function (WDF) is used in signal processing as a transform in time-frequency analysis. The WDF was first proposed in physics to account for quantum corrections to classical statistical mechanics in 1932 by Eugene Wigner, ...
. The spectrogram cannot produce interference since it is a positive-valued quadratic distribution.
* Modified form I W_x(t,f) = \int_^B w(\tau)x(t+\tau/2) x^*(t-\tau/2) e^ \, d\tau Can't solve the cross term problem, however it can solve the problem of 2 components time difference larger than window size B. * Modified form II W_x(t,f) = \int_^B w(\eta)X(f+\eta/2) X^*(f-\eta/2) e^ \, d\eta * Modified form III (Pseudo L-Wigner Distribution) W_x(t,f) = \int_^\infty w(\tau)x^L(r+\tau/2L) \overline e^ \, d\tau Where L is any integer greater than 0 Increase L can reduce the influence of cross term (however it can't eliminate completely ) For example, for L=2, the dominant third term is divided by 4 ( which is equivalent to 12dB ). This gives a significant improvement over the Wigner Distribution. Properties of L-Wigner Distribution: # The L-Wigner Distribution is always real. # If the signal is time shifted x(t-t0) '','' then its LWD is time shifted as well, LWD: W_x(t-t0,f) # The LWD of a modulated signal x(t)\exp(j\omega_0 t) is shifted in frequency LWD: W_x(t,f-f0) # Is the signal x(t) is time limited, i.e., x(t)=0 for \left\vert t \right\vert >T, then the L-Wigner distribution is time limited, LWD: W_x(t,f)=0 for\left\vert t \right\vert >T # If the signal x(t) is band limited with f_m ( F(f)=0 for \left\vert f \right\vert > f_m ), then LWD: W_x(t,f) is limited in the frequency domain by f_m as well. # Integral of L-Wigner distribution over frequency is equal to the generalized signal power: \int_^\infty W_x(t, f)df = \left\vert x(t) \right\vert ^ # Integral of LWD: W_x(t,f) over time and frequency is equal to the 2L^ power of the 2L^ norm of signal x(t) : \int_^\infty \int_^\infty W_x(t,f)dtdf = \int_^\infty \left\vert x(t) \right\vert ^ dt = \lVert x(t) \rVert _ ^ # The integral over time is: \int_^\infty W_x(t,f)dt = \left\vert F_L(f) \right\vert ^2=\left\vert \underbrace_ \right\vert ^2 # For a large value of L(L\rightarrow \infty) We may neglect all values of LWD: W_x(t,f) , Comparing them to the one at the points (t_m, f_m) , where the distribution reaches its essential supremum: \lim_ (W_x(t,f)/W_x(t_m,f_m)) = \begin 0, & \textf \neq f_m\textt\neq t_m\text \\ 1, & \textf=f_m\text t=t_m\end
* Modified form IV (Polynomial Wigner Distribution Function) W_x(t,f) = \int_^B textstyle \prod_^ \displaystyle x(t+d_l \tau) x^*(t- d_ \tau)e^ \, d\tau When q=2 and d_l=d_=0.5 , it becomes the original Wigner distribution function. It can avoid the cross term when the order of phase of the exponential function is no larger than q/2+1 However the cross term between two components cannot be removed. d_l should be chosen properly such that \textstyle \prod_^ \displaystyle x(t+d_l \tau) x^*(t-d_\tau)=\exp\big(j2\pi\textstyle \sum_^ n a_n t^\tau \displaystyle\big) W_x(t,f) = \int_^\infty \exp\Bigl(-j2\pi (f-\sum_^na_nt^)\tau\Bigr)d\tau \cong \delta\bigl(f-\sum_^na_nt^\bigr) If x(t)=\exp\bigl(j2\pi\sum_^a_nt^n\bigr) when q=2 , x(t+d_l \tau) x^*(t-d_\tau)=\exp\bigl(j2\pi\sum_^na_nt^\tau\bigr) a_2(t+d_l\tau)^2+a_1(t+d_l\tau)-a_2(t-d_\tau)^2-a_1(t-d_\tau)=2a_2t\tau+a_1\tau \Longrightarrow d_l+d_=1, d_l-d_=0 \Longrightarrow d_l=d_=1/2 *Pseudo Wigner distribution : PW_x(t,f) = \int_^\infty w(\tau/2) w^*(-\tau/2) x(t+\tau/2) x^*(t-\tau/2) e^ \, d\tau Cohen's kernel function : \Pi (t,f) = \delta_0 (t)\,W_h(t,f) which is concentred on the frequency axis. Note that the pseudo Wigner can also be written as the Fourier transform of the “spectral-correlation” of the STFT : PW_x(t,f) = \int_^\infty ST_x(t, f+\nu/2) ST_x^*(t, f-\nu/2) e^ \, d\nu *Smoothed pseudo Wigner distribution : In the pseudo Wigner the time windowing acts as a frequency direction smoothing. Therefore, it suppresses the Wigner distribution interference components that oscillate in the frequency direction. Time direction smoothing can be implemented by a time-convolution of the PWD with a lowpass function q : : SPW_x(t,f) = q\,\ast\, PW_x (.,f)(t) = \int_^\infty q(t-u) \int_^\infty w(\tau/2) w^*(-\tau/2) x(u+\tau/2) x^*(u-\tau/2) e^ \, d\tau\, du Cohen's kernel function : \Pi (t,f) = q(t)\, W(f) where W is the Fourier transform of the window w. Thus the kernel corresponding to the smoothed pseudo Wigner distribution has a separable form. Note that even if the SPWD and the S-Method both smoothes the WD in the time domain, they are not equivalent in general. *S-method : SM(t,f) = \int_^\infty ST_x(t, f+\nu/2) ST_x^*(t, f-\nu/2) G(\nu) e^ \, d\nu Cohen's kernel function : \Pi (t,f) = g(t)\, W_h(t,f) The S-method limits the range of the integral of the PWD with a low-pass windowing function g(t) of Fourier transform G(f). This results in the cross-term removal, without blurring the auto-terms that are well-concentred along the frequency axis. The S-method strikes a balance in smoothing between the pseudo-Wigner distribution PW_x math>g(t) = 1and the power spectrogram SP_x math>g(t) = \delta_0 (t) Note that in the original 1994 paper, Stankovic defines the S-methode with a modulated version of the short-time Fourier transform : : SM(t,f) = \int_^\infty \tilde_x(t,f+\nu) \tilde_x^*(t,f-\nu) P(\nu)\, d\nu where : \tilde_x(t,f) = \int_^\infty x(t+\tau) w^*(\tau) e^ \, d\tau \quad = ST_x(t,f)\,e^{j2\pi f t} Even in this case we still have : \Pi (t,f) = p(2t)\, W_h(t,f)


See also

* Time-frequency representation *
Wigner distribution function The Wigner distribution function (WDF) is used in signal processing as a transform in time-frequency analysis. The WDF was first proposed in physics to account for quantum corrections to classical statistical mechanics in 1932 by Eugene Wigner, ...
*
Bilinear time–frequency distribution Bilinear time–frequency distributions, or quadratic time–frequency distributions, arise in a sub-field of signal analysis and signal processing called time–frequency signal processing, and, in the statistical analysis of time series data. S ...
*
Short-time Fourier transform The short-time Fourier transform (STFT), is a Fourier-related transform used to determine the sinusoidal frequency and phase content of local sections of a signal as it changes over time. In practice, the procedure for computing STFTs is to divi ...
*
Gabor transform The Gabor transform, named after Dennis Gabor, is a special case of the short-time Fourier transform. It is used to determine the sinusoidal frequency and phase content of local sections of a signal as it changes over time. The function to be tra ...


References

*P. Gonçalves and R. Baraniuk, “Pseudo Affine Wigner Distributions : Definition and Kernel Formulation”, IEEE Transactions on Signal Processing, vol. 46, no. 6, Jun. 1998 *L. Stankovic, “A Method for Time-Frequency Analysis”, IEEE Transactions on Signal Processing, vol. 42, no. 1, Jan. 1994 *L. J. Stankovic, S. Stankovic, and E. Fakultet, “An analysis of instantaneous frequency representation using time frequency distributions-generalized Wigner distribution,” ''IEEE Trans. on Signal Processing,'' pp. 549-552, vol. 43, no. 2, Feb. 1995 Signal processing Transforms