image transforms and image enhancement in frequency …xlx/ee4830/notes/lec5.pdfimage transforms and...

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Image Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th , 2009 Lexing Xie thanks to G&W website, Mani Thomas, Min Wu and Wade Trappe for slide materials EE4830 Digital Image Processing http://www.ee.columbia.edu/~xlx/ee4830/

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Page 1: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

Image Transforms and Image Enhancement in Frequency Domain

Lecture 5, Feb 23th, 2009

Lexing Xie

thanks to G&W website, Mani Thomas, Min Wu and Wade Trappe for slide materials

EE4830 Digital Image Processing http://www.ee.columbia.edu/~xlx/ee4830/

Page 2: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

� Recap for lecture 4

� Observations from HW1

� Changes to HW2

Page 3: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

roadmap for today

� 2D-DFT definitions and intuitions

� DFT properties, applications

� pros and cons

� DCT

Page 4: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

the return of DFT

� Fourier transform: a continuous signal can be represented as a (countable) weighted sum of sinusoids.

Page 5: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

warm-up brainstorm

� Why do we need image transform?

Page 6: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

why transform?

� Better image processing� Take into account long-range correlations in space� Conceptual insights in spatial-frequency information.

what it means to be “smooth, moderate change, fast change, …”� Used for denoising, enhancement, restoration, …

� Fast computation: convolution vs. multiplication

� Alternative representation and sensing � Obtain transformed data as measurement in radiology images

(medical and astrophysics), inverse transform to recover image

� Efficient storage and transmission� Energy compaction� Pick a few “representatives” (basis)� Just store/send the “contribution” from each basis

?

Page 7: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

outline

� why transform

� 2D Fourier transform� a picture book for DFT and 2D-DFT

� properties

� implementation

� applications

� discrete cosine transform (DCT)� definition & visualization

� Implementation

next lecture: transform of all flavors, unitary transform, KLT, others …

Page 8: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

1-D continuous FT

real(g(ωx)) imag(g(ωx))

� 1D – FT

� 1D – DFT of length N

x

ω =0

ω =7

x

Page 9: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

1-D DFT in as basis expansion

Forward transform

Inverse transform

basis

n

u=0

u=7

real(A) imag(A)

n

Page 10: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

1-D DFT in matrix notations

N=16

n

u=0

u=7

real(A) imag(A)

n

Page 11: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

1-D DFT of different lengths

N=32

nu

real(A) imag(A)

N=8

N=16 N=64

Page 12: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

performing 1D DFT

real-valued input

Note: the coefficients in x and y on this slide are only meant for illustration purposes, which are not numerically accurate.

Page 13: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

another illustration of 1D-DFT

real-valued input

Note: the coefficients in x and y are not numerically accurate

Page 14: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

from 1D to 2D

1D 2D

?

signal

basis

transform coefficients

matrix form

Page 15: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

Computing 2D-DFT

DFT

IDFT

� Discrete, 2-D Fourier & inverse Fourier transforms are implemented in fft2 and ifft2, respectively

� fftshift: Move origin (DC component) to image center for display

� Example:

>> I = imread(‘test.png’); % Load grayscale image

>> F = fftshift(fft2(I)); % Shifted transform

>> imshow(log(abs(F)),[]); % Show log magnitude

>> imshow(angle(F),[]); % Show phase angle

Page 16: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

2-D Fourier basis

imagreal

real( ) imag( )

Page 17: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

2-D FT illustrated

imag

real

real-valued

Page 18: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

notes about 2D-DFT

� Output of the Fourier transform is a complex number� Decompose the complex number as the magnitude and phase

components

� In Matlab: u = real(z), v = imag(z), r = abs(z), andtheta = angle(z)

Page 19: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

Explaining 2D-DFT

fft2

ifft2

Page 20: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks
Page 21: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

observation 1: compacting energy

Page 22: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

The Phase of DFT

real(A) imag(A) angle(A)

20 40 600

0.2

0.4

0.6

0.8

1

0 20 40 60-4

-2

0

2

4

20 40 60

-2

0

2

20 40 600

0.2

0.4

0.6

0.8

1

0 20 40 60-4

-2

0

2

4

20 40 60 80 100 120

-2

0

2

20 40 600

0.2

0.4

0.6

0.8

1

0 20 40 60-4

-2

0

2

4

20 40 60

-2

0

2

Step function

abs(FFT(.)) angle(FFT(.))

Page 23: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

intuition of the FFT phase

� Amplitude: relative prominence of sinusoids� Phase: relative displacement of sinusoids

image DFT amplitude DFT phase

magnified

Page 24: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

another example: amplitude vs. phase

Adpated from http://robotics.eecs.berkeley.edu/~sastry/ee20/vision2/vision2.html

A = “Aron” P = “Phyllis”

log(abs(FA)) log(abs(FP))

angle(FA) angle(FP)

ifft2(abs(FA), angle(FP))

FA = fft2(A) FP = fft2(P)

ifft2(abs(FP), angle(FA))

Page 25: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

observation 2: amplitude vs. phase

Page 26: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

fast implementation of 2-D DFT

� 2 Dimensional DFT is separable

� 1D FFT: O(Nlog2N)

� 2D DFT naïve implementation: O(N4)

� 2D DFT as 1D FFT for each row and then for each column: O(N2log2N)

1-D DFT of f(m,n) w.r.t n

1-D DFT of F(m,v) w.r.t m

Page 27: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

Implement IDFT as DFT

DFT2

IDFT2

Page 28: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

Properties of 2D-DFT

Page 29: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks
Page 30: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

duality result

Page 31: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

outline

� why transform

� 2D Fourier transform

� a picture book for DFT and 2D-DFT

� properties

� implementation

� applications

� discrete cosine transform (DCT)

� definition & visualization

� implementation

Page 32: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

DFT application #1: fast Convolution

? ?O(N2)

Spatial filtering

?

f(x.y)*h(x.y)

Page 33: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

DFT application #1: fast convolution

O(N2·log2N) O(N2·log2N)O(N2)

Spatial filtering

O(N4)

f(x.y)*h(x.y)

Page 34: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

DFT application #2: feature correlation

� Find letter “a” in the following image

bw = imread('text.png'); a = imread(‘letter_a.png');

% Convolution is equivalent to correlation if you rotate the

convolution kernel by 180deg

C = real(ifft2(fft2(bw) .*fft2(rot90(a,2),256,256)));

% Use a threshold that's a little less than max.

% Display showing pixels over threshold.

thresh = .9*max(C(:)); figure, imshow(C > thresh)

from Matlab image processing demos.

Page 35: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

DFT application #3: image filters

� A zoology of image filters

� Smoothing / Sharpening / Others

� Support in time/space vs. support in frequencyc.f. “FIR / IIR”

� Definition: spatial domain/frequency domain

� Separable / Non-separable

Page 36: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

circular convolution and zero padding

Page 37: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

zero padded filter and response

� Zero-padding avoids wrapping error in filters

� It also increases frequency-domain resolution. i.e. interpolation in the frequency domain.

� A given spatial domain signal has a fixed spatial resolution, e.g. G0=75 dpi (dots-per-inch).

� The highest spatial frequency that this signal can represent is F0 = 37.5 cycles per inch, due to Nyquist theorem.

� F0 maps to digital frequency ω0=π, and an N0-75 point DFT gives frequency resolution of π/F0=0.084 rad

� Zero-padded signal increases the frequency resolution of the transformed signal, e.g., padding zero and taking N1=100 DFT gives a resolution of π/50=0.0628

� Note that zero-padding does NOT introduce new information, NEITHER does it increase the maximum frequency.

Page 38: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

zero padded filter and response

Page 39: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

smoothing filters: ideal low-pass

Page 40: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

butterworth filters

Page 41: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

Gaussian filters

Page 42: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

low-pass filter examples

Page 43: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

smoothing filter application 1

text enhancement

Page 44: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

smoothing filter application 2

beautify a photo

Page 45: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

high-pass filters

Page 46: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

sobel operator in frequency domain

Question:

Sobel vs. other high-pass filters?

Spatial vs frequency domain implementation?

Page 47: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

high-pass filter examples

Page 48: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

band-pass, band-reject filters

Page 49: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

outline

� why transform

� 2D Fourier transform

� a picture book for DFT and 2D-DFT

� properties

� implementation

� applications in enhancement, correlation

� discrete cosine transform (DCT)

� definition & visualization

� implementation

Page 50: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

Is DFT a Good (enough) Transform?

� Theory

� Implementation

� Application

Page 51: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

The Desirables for Image Transforms

� Theory� Inverse transform available� Energy conservation (Parsevell)� Good for compacting energy� Orthonormal, complete basis� (sort of) shift- and rotation invariant

� Implementation� Real-valued� Separable� Fast to compute w. butterfly-like structure� Same implementation for forward and

inverse transform

� Application� Useful for image enhancement� Capture perceptually meaningful structures

in images

DFT ???YY

?YY

N YYY

YY

Page 52: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

DCT defined w.r.t DFT

1D-DFT

real(a) imag(a)

n=7

u=0

u=7

u=0

u=7

1D-DCT

a

Page 53: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

1-D Discrete Cosine Transform (DCT)

� Transform matrix A

� a(k,n) = α(0) for k=0

� a(k,n) = α(k) cos[π(2n+1)/2N] for k>0

� A is real and orthogonal

� rows of A form orthonormal basis

� A is not symmetric!

� DCT is not the real part of unitary DFT!

Nk

N

N

knkkZnz

N

knknzkZ

N

k

N

n

2)(,

1)0(

2

)12(cos)()()(

2

)12(cos)()()(

1

0

1

0

==

+⋅=

+⋅=

∑−

=

=

αα

πα

πα

Page 54: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

1-D DCT

k

Z(k)

Transform coeff.

1.0

0.0

-1.0

1.0

0.0

-1.0

1.0

0.0

-1.0

1.0

0.0

-1.0

1.0

0.0

-1.0

1.0

0.0

-1.0

1.0

0.0

-1.0

1.0

0.0

-1.0

Basis vectors

100

0

-100

100

0

-100

100

0

-100

100

0

-100

100

0

-100

100

0

-100

100

0

-100

100

0

-100u=0

u=0 to 1

u=0 to 4

u=0 to 5

u=0 to 2

u=0 to 3

u=0 to 6

u=0 to 7

Reconstructions

n

z(n)

Original signal

Page 55: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

DFT and DCT in Matrix Notations

Matrix notation for 1D transform

1D-DFT

real(A) imag(A)

1D-DCT

AN=32

Page 56: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

From 1D-DCT to 2D-DCT

n=7

u=0

u=7

� Rows of A form a set of orthonormal basis

� A is not symmetric!

� DCT is not the real part of unitary DFT!

Page 57: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

basis images: DFT (real) vs DCT

Page 58: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

Periodicity Implied by DFT and DCT

Page 59: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

DFT and DCT on Lena

DFT2 DCT2

Shift low-freq to the center

Assume periodic and zero-padded … Assume reflection …

Page 60: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

Using FFT to implement fast DCT

� Reorder odd and even elements

� Split the DCT sum into odd and even terms

12

0for )12()1(~

)2()(~−≤≤

+=−−

= Nn

nznNz

nznz

{ }[ ] )(~)(Re

)(~)(Re 2

)14(cos)(~)(

2

)1'44(cos)'(~

2

)14(cos)(~)(

2

)34(cos)1(~

2

)14(cos)(~)(

2

)34(cos)12(

2

)14(cos)2()()(

2/

1

0

/22/1

0

1

2/'

12/

0

12/

0

12/

0

12/

0

12/

0

N

Nkj

N

n

NnkjNkjN

n

N

Nn

N

n

N

n

N

n

N

n

N

n

nzDFTek

enzekN

knnzk

N

knNnz

N

knnzk

N

knnNz

N

knnzk

N

knnz

N

knnzkkZ

π

ππ

α

απ

α

ππα

ππα

ππα

=

−−−

=

=

=

=

=

=

=

=

⋅=

+⋅=

−−⋅+

+⋅=

+⋅−−+

+⋅=

+⋅++

+⋅=

∑∑

∑∑

∑∑

∑∑

Page 61: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

The Desirables for Image Transforms

� Theory� Inverse transform available� Energy conservation (Parsevell)� Good for compacting energy� Orthonormal, complete basis� (sort of) shift- and rotation invariant

� Implementation� Real-valued� Separable� Fast to compute w. butterfly-like structure� Same implementation for forward and

inverse transform

� Application� Useful for image enhancement� Capture perceptually meaningful structures

in images

DFT ???�

?�

x

DCT�

?�

Page 62: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks

Summary of Lecture 5

� Why we need image transform

� DFT revisited� Definitions, properties, observations, implementations, applications

� What do we need for a transform

� DCT

� Coming in Lecture 6: � Unitary transforms, KL transform, DCT

� examples and optimality for DCT and KLT, other transform flavors, Wavelets, Applications

� Readings: G&W chapter 4, chapter 5 of Jain has been posted on Courseworks

� “Transforms” that do not belong to lectures 5-6:Rodon transform, Hough transform, …

Page 63: Image Transforms and Image Enhancement in Frequency …xlx/ee4830/notes/lec5.pdfImage Transforms and Image Enhancement in Frequency Domain Lecture 5, Feb 23 th, 2009 LexingXie thanks