General Functions - PowerPoint PPT Presentation

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General Functions

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General Functions A non-periodic function can be represented as a sum of sin s and cos s of (possibly) all frequencies: F( ) is the spectrum of the function f(x) – PowerPoint PPT presentation

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Title: General Functions


1
General Functions
  • A non-periodic function can be represented as a
    sum of sins and coss of (possibly) all
    frequencies
  • F(?) is the spectrum of the function f(x)

2
Fourier Transform
  • F(?) is computed from f(x) by the Fourier
    Transform

3
Example Box Function
4
Box Function and Its Transform
5
Cosine and Its Transform
?
1
-1
If f(x) is even, so is F(?)
6
Sine and Its Transform
?
-1
1
-?
If f(x) is odd, so is F(?)
7
Delta Function and Its Transform
Fourier transform and inverse Fourier transform
are qualitatively the same, so knowing one
direction gives you the other
8
Shah Function and Its Transform
Moving the spikes closer together in the spatial
domain moves them farther apart in the frequency
domain!
9
Gaussian and Its Transform
10
Qualitative Properties
  • The spectrum of a functions tells us the relative
    amounts of high and low frequencies
  • Sharp edges give high frequencies
  • Smooth variations give low frequencies
  • A function is bandlimited if its spectrum has no
    frequencies above a maximum limit
  • sin, cos are bandlimited
  • Box, Gaussian, etc are not

11
Functions to Images
  • Images are 2D, discrete functions
  • 2D Fourier transform uses product of sins and
    coss (things carry over naturally)
  • Fourier transform of a discrete, quantized
    function will only contain discrete frequencies
    in quantized amounts
  • Numerical algorithm Fast Fourier Transform (FFT)
    computes discrete Fourier transforms

12
2D Discrete Fourier Transform
13
Filters
  • A filter is something that attenuates or enhances
    particular frequencies
  • Easiest to visualize in the frequency domain,
    where filtering is defined as multiplication
  • Here, F is the spectrum of the function, G is the
    spectrum of the filter, and H is the filtered
    function. Multiplication is point-wise

14
Qualitative Filters
F
G
H
Low-pass
?

High-pass
?

Band-pass
?

15
Low-Pass Filtered Image
16
High-Pass Filtered Image
17
Filtering in the Spatial Domain
  • Filtering the spatial domain is achieved by
    convolution
  • Qualitatively Slide the filter to each position,
    x, then sum up the function multiplied by the
    filter at that position

18
Convolution Example
19
Convolution Theorem
  • Convolution in the spatial domain is the same as
    multiplication in the frequency domain
  • Take a function, f, and compute its Fourier
    transform, F
  • Take a filter, g, and compute its Fourier
    transform, G
  • Compute HF?G
  • Take the inverse Fourier transform of H, to get h
  • Then hf?g
  • Multiplication in the spatial domain is the same
    as convolution in the frequency domain

20
Sampling in Spatial Domain
  • Sampling in the spatial domain is like
    multiplying by a spike function

?
21
Sampling in Frequency Domain
  • Sampling in the frequency domain is like
    convolving with a spike function

?
22
Reconstruction in Frequency Domain
  • To reconstruct, we must restore the original
    spectrum
  • That can be done by multiplying by a square pulse

?
23
Reconstruction in Spatial Domain
  • Multiplying by a square pulse in the frequency
    domain is the same as convolving with a sinc
    function in the spatial domain

?
24
Aliasing Due to Under-sampling
  • If the sampling rate is too low, high frequencies
    get reconstructed as lower frequencies
  • High frequencies from one copy get added to low
    frequencies from another

?
?
25
Aliasing Implications
  • There is a minimum frequency with which functions
    must be sampled the Nyquist frequency
  • Twice the maximum frequency present in the signal
  • Signals that are not bandlimited cannot be
    accurately sampled and reconstructed
  • Not all sampling schemes allow reconstruction
  • eg Sampling with a box

26
More Aliasing
  • Poor reconstruction also results in aliasing
  • Consider a signal reconstructed with a box filter
    in the spatial domain (which means using a sinc
    in the frequency domain)

?
?
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