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2D Image Fourier Spectrum
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Fourier Transform -- Examples
Image Fourier spectrum
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Phase and Magnitude Curious fact Demonstration
All natural images have very similar magnitude transform. So why do they look different…? Demonstration Take two pictures, swap the phase transforms, compute the inverse - what does the result look like? Phase in images matters a lot (more than magnitude)
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Slide: Freeman & Durand
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Slide: Freeman & Durand
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Reconstruction with zebra phase, cheetah magnitude
Slide: Freeman & Durand
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Reconstruction with cheetah phase, zebra magnitude
Slide: Freeman & Durand
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Convolution
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Spatial Filtering Operations
Example 3 x 3 h(x,y) = 1/9 S f(n,m) (n,m) in the 3x3 neighborhood of (x,y)
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Noise Cleaning Salt & Pepper Noise 3 X 3 Average 5 X 5 Average
Median
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Noise Cleaning Salt & Pepper Noise 3 X 3 Average 5 X 5 Average
Median
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Gradient magnitude x derivative y derivative
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Vertical edges Horizontal edges Edge Detection Image
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Convolution Properties
Commutative: f*g = g*f Associative: (f*g)*h = f*(g*h) Homogeneous: f*(g)= f*g Additive (Distributive): f*(g+h)= f*g+f*h Shift-Invariant f*g(x-x0,y-yo)= (f*g) (x-x0,y-yo)
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The Convolution Theorem
and similarly:
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Going back to the Noise Cleaning example…
3 X 3 Average Salt & Pepper Noise Convolution with a rect Multiplication with a sinc in the Fourier domain = LPF (Low-Pass Filter) 7 X 7 Average 5 X 5 Average Wider rect Narrower sinc = Stronger LPF
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Examples What is the Fourier Transform of ? *
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Image Domain Frequency Domain
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(developed on the board) Nyquist frequency, Aliasing, etc…
The Sampling Theorem (developed on the board) Nyquist frequency, Aliasing, etc…
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Multi-Scale Image Representation
Gaussian pyramids Laplacian Pyramids Wavelet Pyramids Good for: - pattern matching - motion analysis - image compression - other applications
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Image Pyramid High resolution Low resolution
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Fast Pattern Matching search search search search
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The Gaussian Pyramid Low resolution down-sample blur down-sample blur
High resolution
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- = - = - = The Laplacian Pyramid Gaussian Pyramid Laplacian Pyramid
expand - = expand - = expand - =
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Laplacian ~ Difference of Gaussians
- = DOG = Difference of Gaussians More details on Gaussian and Laplacian pyramids can be found in the paper by Burt and Adelson (link will appear on the website).
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Computerized Tomography (CT)
f(x,y) u v F(u,v)
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Computerized Tomography
Original (simulated) 2D image 8 projections- Frequency Domain 120 projections- Frequency Domain Reconstruction from 8 projections Reconstruction from 120 projections
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End of Lesson... Exercise#1 -- will be posted on the website.
(Theoretical exercise: To be done and submitted individually)
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