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Lecture 12 Convolutions and summary of course Remember Phils Problems and your notes = everything Today Convolutions.

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Presentation on theme: "Lecture 12 Convolutions and summary of course Remember Phils Problems and your notes = everything Today Convolutions."— Presentation transcript:

1 Lecture 12 Convolutions and summary of course http://www.hep.shef.ac.uk/Phil/PHY226.htm Remember Phils Problems and your notes = everything Today Convolutions Some examples Summary of course up to this point

2 Convolutions Imagine that we try to measure a delta function in some way … Despite the fact that the true signal is a spike, our measuring system will always render a signal that is ‘instrumentally limited’ by something often called the ‘resolution function’. True signal Detected signal True signal Convolved signal Resolution function If the resolution function g(t) is similar to the true signal f(t), the output function c(t) can effectively mask the true signal. http://www.jhu.edu/~signals/convolve/index.html

3 Convolutions

4 Deconvolutions We have a problem! We can measure the resolution function (by studying what we believe to be a point source or a sharp line. We can measure the convolution. What we want to know is the true signal! This happens so often that there is a word for it – we want to ‘deconvolve’ our signal. There is however an important result called the ‘Convolution Theorem’ which allows us to gain an insight into the convolution process. The convolution theorem states that:- i.e. the FT of a convolution is the product of the FTs of the original functions. We therefore find the FT of the observed signal, c(x), and of the resolution function, g(x), and use the result that in order to find f(x). If then taking the inverse transform,

5 Deconvolutions Of course the Convolution theorem is valid for any other pair of Fourier transforms so not only does ….. and therefore allowing f(x) to be determined from the FT but also and therefore allowing f(t) to be determined from the FT

6 Example of convolution I have a true signal between 0 < x < ∞ which I detect using a device with a Gaussian resolution function given by What is the frequency distribution of the detected signal function C(ω) given that ? Let’s find F(ω) first for the true signal … Let’s find G(ω) now for the resolution signal …

7 So if then ….. Example of convolution What is the frequency distribution of the detected signal function C(ω) given that ? Let’s find G(ω) now for the resolution signal … so We solved this in lecture 10 so let’s go straight to the answer and …..

8 Example of convolution Detection of Dark Matter using NaI(Tl) crystal Sodium iodide crystal PMT Caesium iodide coating (turns tiny light signals into single electrons) Dynode stages (amplify single electrons) The PMT therefore turns a tiny light pulse into an electrical signal which we view on an oscilloscope

9 Example of convolution Detection of Dark Matter using NaI(Tl) crystal Single photoelectron pulse 10ns pulse duration 8mV pulse height Net pulse produced by the crystal following particle interaction 400ns pulse duration 1200mV pulse height The rate of light production is convolved with the single electron pulse to yield a net pulse shape By deconvolving the pulse shape we can discriminate between events since neutrons and gammas for example give off light at different rates

10 Dirac Delta Function The delta function  (x) has the value zero everywhere except at x = 0 where its value is infinitely large in such a way that its total integral is 1.  (x – x 0 ) is a spike centred at x = x 0  (x) is a spike centred at x = 0 Formally, for any function f(x) For example

11 Minima in diffraction pattern occur at:- Examples of Fourier Transforms: Diffraction Consider a small slit width ‘a’ illuminated by light of wavelength λ. where m is an integer. Taken from PHY102 Waves and Quanta Intensity We now can rewrite as

12 At the slit, if the light amplitude is f(x), then the light intensity |f(x)| 2, will be similar to the ‘top hat’ function from example 1. The diffraction pattern on a distant screen, the intensity at any point has a sinc 2 distribution and is given by the Fraunhofer diffraction equation which is related to the Fourier transform squared: |F(k)| 2. Examples of Fourier Transforms: Diffraction X domain K domain 

13 Convolutions Example in Optics: Diffraction We’ve said that the Fraunhofer diffraction pattern from a single slit is the modulus squared of the Fourier transform of the scattering function. For double slit diffraction, the scattering function at the screen is a convolution of two functions. Here we convolve a top hat function with 2 delta functions so as to yield the characteristic equation representative of light intensity produced from infinitely narrow slits.

14 Convolutions Example in Optics: Diffraction Consider two delta functions convolved with the single slit ‘top hat’ function: single ‘top hat’ function two delta functions convolution Let us find the Fourier transforms of f and g, and their moduli squared. From earlier, we know that the FT of a top hat function is a sinc function: so This example is specially useful because the convolution of a true signal with a delta function is the only time that you can simply express the convolution

15 Convolutions Example in Optics: Diffraction For the two delta functions we have:- So These are the familiar cos 2 fringes we expect for two ‘infinitely narrow’ slits.

16 Convolutions Example in Optics: Diffraction The diffraction pattern observed for the double slits will be the modulus squared of the Fourier transform of the whole diffracting aperture, i.e. the convolution of the delta functions with the top hat function. Hence We see cos 2 fringes modulated by a sinc 2 envelope as expected

17 (a) Double slits, separation 2d, infinitely narrow (b) A single slit of finite width 2 a (c) Double slits of separation 2d, width 2aConvolutions We see cos 2 fringes modulated by a sinc 2 envelope as expected

18 Fringe patterns for double slits of different widths (a) d = 50, a = (b) d = 50, a = 5 (c) d = 50, a = 10 Double-slit Interference: Slits of finite width Slits are 2d apart Slit width is 2a

19 Parseval’s Theorem At the end of the Fourier series lectures, we very very briefly met Parseval’s theorem which states that the total energy in a wavefunction is equal to the sum of the energy in each harmonic mode. It can be shown that it is also true to say ….. For example, when are considering Fraunhofer diffraction, for f(x) and F(k) this formula means the total amount of light forming a diffraction pattern on the screen is equal to the total amount of light passing through the apertures; or for F(w) and f(t), the total amount of light that is recorded by the spectrometer (dispersed according to frequency) is equal to the total amount of light that entered the detector in that time interval. Relating f(x) and F(k), or F(  ) and f(t)

20 Convolving Two Gaussians has FT Similarly has FT Remember when we calculated the FT of a Gaussian ? Very often we must convolve a true signal and resolution function both of which are Gaussians …..

21 Convolving Two Gaussians So their convolution c(x) has FT where This is just the FT of a single Gaussian c(x) where ….. Soso Therefore

22 The value of  is dominated by whichever is the smaller of a or b, and is always smaller then either of them. Since we found that the full width of the Gaussian f(x) is in lecture 9, it is the widest Gaussian that dominates, and the convolution of two Gaussians is always wider than either of the two starting Gaussians. Convolving Two Gaussians This is an important result: we have shown that the convolution of two Gaussians characterised by a and b is also a Gaussian and is characterised by .

23 Convolving Two Gaussians Depending on the experiment, physicists and especially astronomers sometimes assume that both the detected signal and the resolution functions are Gaussians and use this relation in order to estimate the true width of their signal.


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