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g(t- )
g(t- ) contributes only intensity, not phase (i.e., color), to the signal pulse.
E(t) g(t-)
0
time
The spectrogram tells the color and intensity of E(t) at the time .
There are a few ambiguities, but they are “trivial.”
The gate need not be—and should not be—significantly shorter than E(t).
Suppose we use a delta-function gate pulse:
Perhaps it’s time to ask how researchers in other fields deal with their waveforms…
Consider, for example, acoustic waveforms.
Most people think of acoustic waves in terms of a musical score.
2
E(t ) (t ) exp( i t ) dt
E ( ) exp( i )
2
2
E( ) = The Intensity.
No phase information!
The spectrogram resolves the dilemma! It doesn’t need the shorter event!
9. Measuring Ultrashort Laser Pulses II: FROG
The Musical Score and the Spectrogram Frequency-Resolved Optical Gating (FROG) 1D vs. 2D Phase Retrieval FROG as a 2D Phase-retrieval Problem
It’s a plot of frequency vs. time, with information on top about the intensity. The musical score lives in the “time-frequency domain.”
A mathematically rigorous form of a muscial score is the 搒 Spectrogram .
IFROG ( , )
and
2
? (t, W ) exp(i t iW ) dt dW E si g
So we must invert this integral equation and solve for Esig(t,W). This integral-inversion problem is the 2D phase-retrieval problem, for which the solution exists and is unique. Stark, Image Recovery, And simple algorithms exist for finding it.
These results are related to the Fundamental Theorem of Algebra.
Phase Retrieval and the Fundamental Theorem of Algebra
The Fundamental Theorem of Algebra states that all polynomials can be factored:
Frequency-Resolved Optical Gating Esig(t,) E(t) |E(t-)|
E(t)
E(t) contributes phase (i.e., color), to the signal pulse.
2
Signal pulse
E(t-)
|E(t- )|2 contributes only intensity, not phase (i.e., color), to the signal pulse.
Delay
FROG Traces for More Complex Pulses
Frequency
Time
Frequency Frequency
Delay Delay
Intensity
The FROG trace is a spectrogram of E(t).
Substituting for Esig(t,) in the expression for the FROG trace:
Esig(t,) E(t) |E(t–)|2
IFROG ( , )
yields:
2
Esi g (t , ) exp(i t ) dt
2
IFROG ( , )
where:
E( t ) g( t ) exp(i t ) dt
g(t–) |E(t–)|2
Second-harmonic-generation (SHG) FROG (and other geometries)
Measuring the shortest event ever created Single-shot FROG, XFROG, and TREEFROG
Autocorrelation and related techniques yield little information about the pulse.
The Spectrogram of a waveform E(t)
We must compute the spectrum of the product: E(t) g(t- ) E(t)
E(t) contributes phase (i.e., color), to the signal pulse.
If Esig(t,), is the 1D Fourier transform with respect to delay of some new signal field, Esig(t,W), then:
The input pulse, E(t), is easily obtained from Esig(t,W): E(t) Esig(t,)
fN-1 zN-1 + fN-2 zN-2 + … + f1 z + f0 =
fN-1 (z–z1 ) (z–z2 ) … (z–zN–1)
The Fundamental Theorem of Algebra fails for polynomials of two variables. Only a set of measure zero can be factored. fN-1,M-1 yN-1 zM-1 + fN-1,M-2 yN-1 zM-2 + … + f0,0 = ? Why does this matter? The existence of the 1D Fundamental Theorem of Algebra implies that 1D phase retrieval is impossible.
Stark, Image Recovery, Academic Press, 1987.
Given S(kx,ky), there is essentially one solution for E(x,y) . !!! It turns out that it’s possible to retrieve the 2D spectral phase!
The Fourier transform {F0 , … , FN-1} of a discrete 1D data set, { f0 , …, fN-1}, is:
Fk
m0
N 1
fmቤተ መጻሕፍቲ ባይዱe
imk
m 0
N 1
fm z
m
where z = e–ik polynomial!
The Fundamental Theorem of Algebra states that any polynomial, fN-1zN-1 + … + f0 , can be factored to yield: fN-1 (z–z1 ) (z–z2 ) … (z–zN–1) So the magnitude of the Fourier transform of our data can be written:
We assume that E(t) and E(x,y) are of finite extent.
2D Phase Retrieval: Suppose we measure S(kx,ky) and desire E(x,y):
S (k x , k y )
2
E ( x, y ) exp( ik x x ik y y) dxdy
0
/3
time
The signal pulse reflects the color of the gated pulse, E(t), at the time 2/3.
FROG Traces for Linearly Chirped Pulses
Frequency
Time Frequency