SlideShare a Scribd company logo
1 of 27
CHAPTER5
FOURIERTRANSFORMATION
Dr. Varun Kumar Ojha
and
Prof. (Dr.) Paramartha Dutta
Visva Bharati University
Santiniketan, West Bengal, India
Fourier Transformation
 Continuous & Discrete Fourier Transformation
 Properties of Fourier Transformation
 Fast Fourier Transformation
Back to Course Content Page
Click Here
Fourier Transformation ( 1-D Continuous
Signal)
Let f(x) is a continuous function of some variable then the Fourier
transformation of f(x) is F(u)
Here f(x) must be continuous & integralable
Inverse Fourier Transformation:
F(u) is a Fourier transform of signal f(x) so after inverse Fourier
transformation of F(u) we get f(x)
Fourier Transformation :
Fourier Transformation ( 1-D Continuous
Signal)
Fourier Transformation Pair
F(u) → Fourier Transform of signal f(x)
F(x) → Original Signal or Inverse Fourier Transform of F(u)
Here F(u) is a complex function contains real part & imaginary part
F(u) = R(u) + jI(u)
We have
Fourier Spectrum:
The phase angle:
Power Spectrum :
Fourier Transformation ( 2-D Continuous
Signal)
Forward Fourier Transformation:
Let f(x,y) is 2 dimensional signal with 2 variable
Inverse (Backward) Fourier Transformation:
Fourier Transformation ( 2-D Continuous
Signal)
Fourier Spectrum:
Phase angle :
Power Spectrum:
2-D Discrete Fourier
Transformation
Forward 2D discrete Fourier Transformation:
Let we have an Image of size MxN then F(u,v) is the F T of image f(x,y)
Where variable u = 0, 1, 2, …., M-1 and v = 0, 1, 2, …., N-1
Inverse (Backward) Fourier Transformation :
Where variable x = 0, 1, 2, …., M-1 and y = 0, 1, 2, …., N-1
 For a square image i.e. M = N and the
Fourier Transformation Pair is as follows
2-D Discrete Fourier
Transformation
Discrete F T Result
Original
Image
Transformed
Image
DFT
IDFT
Back to the chapter content
Click Here
Properties of Fourier
Transformation
 Seperability
 Translation
 Periodicity
 Conjugate
 Rotation
 Distributive
 Scaling
 Convolution
 Corelation
Seperability
The separbility property says that we can do 2D Fourier transformation as two
1 D Fourier Transformation
Inverse Fourier Transform
X represent row of
image so x is fixed
Fourier Transformation
along row
Seperability Cont…
2D Inverse Fourier transformation can also be viewed as two 1 D Inverse
Fourier Transformation
IDFT along rows
IDFT along columns
Advantage of Seperability:
Operation become much simpler and less time complexity
Seperability Concept
f(x,y) → Original
Image
F(x,v) → Intermediate
Coefficient of F T along row
F(x,v) → Intermediate
Coefficient of F T along row
Row Transform
Column Transform
F(u,v) → Complete
Coefficient of F T
N-1
N-1
(0,0)
N-1
N-1
(0,0)
N-1
N-1
(0,0)N-1
N-1
(0,0)
Translation
(x0.,y0)
Magnitude of FT
remains same
Additional Phase
Translation of x and y by x0 and y0 respectively.
Fourier Transform
Translation Cont..
Inverse Fourier Transform
Here sift x0, y0 does not change Fourier spectrum but it add some
phase sift diff
Periodicity
Periodicity property says that the Discrete Fourier Transform and Inverse
Discrete Fourier Transform are periodic with a period N
Proof:
So we can say that Discrete Fourier
Transform is periodic with N
Conjugate
 If f(x,y) is a real valued function then
F(u,v) = F* (-u, -v)
 Where F* indicate it complex conjugate
 Now Fourier Spectrum
|F(u,v)| = |F(-u,-v)|
 This property help to visualize Fourier
Spectrum
Rotation
 Let x = rcosθ and y = sinθ
 u = wcosø and v = sinø
  Then we have
f(x,y) = f(r,θ) in Spatial Domain
F(u,v) = F(w, ø) in Frequency Domain
  Now Rotated Image is f(r, θ + θ0 ) and
f(r, θ + θ0 ) ↔ F(w, ø + ø0)
 F(w, ø + ø0) is F T of Rotated image
Rotation Concept
Rectangle FT
FTRectangle inclined with
450
Angle
Distributivity
 DFT is distributive over addition but not on
multiplication
Scaling
 If a and b are two scaling quantity then
a f(x,y) ↔ a F(u,v)
 If f(x,y) is multiplied by scalar quantity a then
its F T is also multiplied by same scalar
quantity
  Scaling Individual dimension
 Convolution:
 Convolution in spatial domain is equivalent to
multiplication in frequency domain and vice
versa
 Correlation:
 Where f* and F* indicate conjugates of f and F
Correlation & Correlation
Back to the chapter content
Click Here
Fast Fourier Transformation
 A 2D Fourier transform
 Has complexity O(N4
)
 For a 1D Discrete F T complexity become O(N2
)
 Where we take for simplification. We have N
= 2N
no. of input and we assume N = 2M
Fast Fourier Transformation
 Re-write F(u) as
 We take
 Total complexity reduces to N log2
N
Back to the chapter content
Click Here

More Related Content

What's hot

Image Processing: Spatial filters
Image Processing: Spatial filtersImage Processing: Spatial filters
Image Processing: Spatial filtersA B Shinde
 
Image enhancement sharpening
Image enhancement  sharpeningImage enhancement  sharpening
Image enhancement sharpeningarulraj121
 
Digital Image Processing - Image Restoration
Digital Image Processing - Image RestorationDigital Image Processing - Image Restoration
Digital Image Processing - Image RestorationMathankumar S
 
Image Enhancement using Frequency Domain Filters
Image Enhancement using Frequency Domain FiltersImage Enhancement using Frequency Domain Filters
Image Enhancement using Frequency Domain FiltersKarthika Ramachandran
 
Image sampling and quantization
Image sampling and quantizationImage sampling and quantization
Image sampling and quantizationBCET, Balasore
 
Lecture 14 Properties of Fourier Transform for 2D Signal
Lecture 14 Properties of Fourier Transform for 2D SignalLecture 14 Properties of Fourier Transform for 2D Signal
Lecture 14 Properties of Fourier Transform for 2D SignalVARUN KUMAR
 
Lecture 16 KL Transform in Image Processing
Lecture 16 KL Transform in Image ProcessingLecture 16 KL Transform in Image Processing
Lecture 16 KL Transform in Image ProcessingVARUN KUMAR
 
Image Restoration
Image RestorationImage Restoration
Image RestorationPoonam Seth
 
Discrete Fourier Transform
Discrete Fourier TransformDiscrete Fourier Transform
Discrete Fourier TransformAbhishek Choksi
 
Sharpening using frequency Domain Filter
Sharpening using frequency Domain FilterSharpening using frequency Domain Filter
Sharpening using frequency Domain Filterarulraj121
 
Frequency Domain Image Enhancement Techniques
Frequency Domain Image Enhancement TechniquesFrequency Domain Image Enhancement Techniques
Frequency Domain Image Enhancement TechniquesDiwaker Pant
 
Digital Image Fundamentals
Digital Image FundamentalsDigital Image Fundamentals
Digital Image FundamentalsA B Shinde
 
Image trnsformations
Image trnsformationsImage trnsformations
Image trnsformationsJohn Williams
 
Histogram Processing
Histogram ProcessingHistogram Processing
Histogram ProcessingAmnaakhaan
 
Fidelity criteria in image compression
Fidelity criteria in image compressionFidelity criteria in image compression
Fidelity criteria in image compressionKadamPawan
 

What's hot (20)

03 image transform
03 image transform03 image transform
03 image transform
 
Image Processing: Spatial filters
Image Processing: Spatial filtersImage Processing: Spatial filters
Image Processing: Spatial filters
 
Histogram Equalization
Histogram EqualizationHistogram Equalization
Histogram Equalization
 
Image enhancement sharpening
Image enhancement  sharpeningImage enhancement  sharpening
Image enhancement sharpening
 
Digital Image Processing - Image Restoration
Digital Image Processing - Image RestorationDigital Image Processing - Image Restoration
Digital Image Processing - Image Restoration
 
Wiener Filter
Wiener FilterWiener Filter
Wiener Filter
 
Image Enhancement using Frequency Domain Filters
Image Enhancement using Frequency Domain FiltersImage Enhancement using Frequency Domain Filters
Image Enhancement using Frequency Domain Filters
 
Image sampling and quantization
Image sampling and quantizationImage sampling and quantization
Image sampling and quantization
 
Lecture 14 Properties of Fourier Transform for 2D Signal
Lecture 14 Properties of Fourier Transform for 2D SignalLecture 14 Properties of Fourier Transform for 2D Signal
Lecture 14 Properties of Fourier Transform for 2D Signal
 
Lecture 16 KL Transform in Image Processing
Lecture 16 KL Transform in Image ProcessingLecture 16 KL Transform in Image Processing
Lecture 16 KL Transform in Image Processing
 
Image enhancement
Image enhancementImage enhancement
Image enhancement
 
Image Restoration
Image RestorationImage Restoration
Image Restoration
 
Discrete Fourier Transform
Discrete Fourier TransformDiscrete Fourier Transform
Discrete Fourier Transform
 
Sharpening using frequency Domain Filter
Sharpening using frequency Domain FilterSharpening using frequency Domain Filter
Sharpening using frequency Domain Filter
 
Frequency Domain Image Enhancement Techniques
Frequency Domain Image Enhancement TechniquesFrequency Domain Image Enhancement Techniques
Frequency Domain Image Enhancement Techniques
 
Digital Image Fundamentals
Digital Image FundamentalsDigital Image Fundamentals
Digital Image Fundamentals
 
Image trnsformations
Image trnsformationsImage trnsformations
Image trnsformations
 
Walsh transform
Walsh transformWalsh transform
Walsh transform
 
Histogram Processing
Histogram ProcessingHistogram Processing
Histogram Processing
 
Fidelity criteria in image compression
Fidelity criteria in image compressionFidelity criteria in image compression
Fidelity criteria in image compression
 

Similar to Chapter 5 Image Processing: Fourier Transformation

Chapter no4 image transform3
Chapter no4 image transform3Chapter no4 image transform3
Chapter no4 image transform3ShardaSalunkhe1
 
FourierTransform detailed power point presentation
FourierTransform detailed power point presentationFourierTransform detailed power point presentation
FourierTransform detailed power point presentationssuseracb8ba
 
Optics Fourier Transform Ii
Optics Fourier Transform IiOptics Fourier Transform Ii
Optics Fourier Transform Iidiarmseven
 
Optics Fourier Transform I
Optics Fourier Transform IOptics Fourier Transform I
Optics Fourier Transform Idiarmseven
 
FT1(SNU +BSH).pptx .
FT1(SNU +BSH).pptx                      .FT1(SNU +BSH).pptx                      .
FT1(SNU +BSH).pptx .happycocoman
 
Frequency domain methods
Frequency domain methods Frequency domain methods
Frequency domain methods thanhhoang2012
 
Lec 07 image enhancement in frequency domain i
Lec 07 image enhancement in frequency domain iLec 07 image enhancement in frequency domain i
Lec 07 image enhancement in frequency domain iAli Hassan
 
Presentation on fourier transformation
Presentation on fourier transformationPresentation on fourier transformation
Presentation on fourier transformationWasim Shah
 
Filtering in frequency domain
Filtering in frequency domainFiltering in frequency domain
Filtering in frequency domainGowriLatha1
 
Lec_4_Frequency Domain Filtering-I.pdf
Lec_4_Frequency Domain Filtering-I.pdfLec_4_Frequency Domain Filtering-I.pdf
Lec_4_Frequency Domain Filtering-I.pdfnagwaAboElenein
 
fouriertransformsiffatanjum-141026230143-conversion-gate01.pdf
fouriertransformsiffatanjum-141026230143-conversion-gate01.pdffouriertransformsiffatanjum-141026230143-conversion-gate01.pdf
fouriertransformsiffatanjum-141026230143-conversion-gate01.pdfsouravriku12
 
Seismic data processing lecture 4
Seismic data processing lecture 4Seismic data processing lecture 4
Seismic data processing lecture 4Amin khalil
 
Fourier transforms
Fourier transformsFourier transforms
Fourier transformsIffat Anjum
 
Digital Image Processing Module 3 Notess
Digital Image Processing Module 3 NotessDigital Image Processing Module 3 Notess
Digital Image Processing Module 3 Notessshivubhavv
 
Introduction to Fourier transform and signal analysis
Introduction to Fourier transform and signal analysisIntroduction to Fourier transform and signal analysis
Introduction to Fourier transform and signal analysis宗翰 謝
 

Similar to Chapter 5 Image Processing: Fourier Transformation (20)

Chapter no4 image transform3
Chapter no4 image transform3Chapter no4 image transform3
Chapter no4 image transform3
 
Fourier Transform
Fourier TransformFourier Transform
Fourier Transform
 
FourierTransform detailed power point presentation
FourierTransform detailed power point presentationFourierTransform detailed power point presentation
FourierTransform detailed power point presentation
 
Optics Fourier Transform Ii
Optics Fourier Transform IiOptics Fourier Transform Ii
Optics Fourier Transform Ii
 
Optics Fourier Transform I
Optics Fourier Transform IOptics Fourier Transform I
Optics Fourier Transform I
 
FT full.pptx .
FT full.pptx                                      .FT full.pptx                                      .
FT full.pptx .
 
FT1(SNU +BSH).pptx .
FT1(SNU +BSH).pptx                      .FT1(SNU +BSH).pptx                      .
FT1(SNU +BSH).pptx .
 
Ft3 new
Ft3 newFt3 new
Ft3 new
 
Frequency domain methods
Frequency domain methods Frequency domain methods
Frequency domain methods
 
Fourier transform
Fourier transformFourier transform
Fourier transform
 
Lec 07 image enhancement in frequency domain i
Lec 07 image enhancement in frequency domain iLec 07 image enhancement in frequency domain i
Lec 07 image enhancement in frequency domain i
 
Presentation on fourier transformation
Presentation on fourier transformationPresentation on fourier transformation
Presentation on fourier transformation
 
Filtering in frequency domain
Filtering in frequency domainFiltering in frequency domain
Filtering in frequency domain
 
Lec_4_Frequency Domain Filtering-I.pdf
Lec_4_Frequency Domain Filtering-I.pdfLec_4_Frequency Domain Filtering-I.pdf
Lec_4_Frequency Domain Filtering-I.pdf
 
fouriertransformsiffatanjum-141026230143-conversion-gate01.pdf
fouriertransformsiffatanjum-141026230143-conversion-gate01.pdffouriertransformsiffatanjum-141026230143-conversion-gate01.pdf
fouriertransformsiffatanjum-141026230143-conversion-gate01.pdf
 
Seismic data processing lecture 4
Seismic data processing lecture 4Seismic data processing lecture 4
Seismic data processing lecture 4
 
Fourier transforms
Fourier transformsFourier transforms
Fourier transforms
 
Fourier transform
Fourier transformFourier transform
Fourier transform
 
Digital Image Processing Module 3 Notess
Digital Image Processing Module 3 NotessDigital Image Processing Module 3 Notess
Digital Image Processing Module 3 Notess
 
Introduction to Fourier transform and signal analysis
Introduction to Fourier transform and signal analysisIntroduction to Fourier transform and signal analysis
Introduction to Fourier transform and signal analysis
 

More from Varun Ojha

Chapter 6 Image Processing: Image Enhancement
Chapter 6 Image Processing: Image EnhancementChapter 6 Image Processing: Image Enhancement
Chapter 6 Image Processing: Image EnhancementVarun Ojha
 
Chapter 4 Image Processing: Image Transformation
Chapter 4 Image Processing: Image TransformationChapter 4 Image Processing: Image Transformation
Chapter 4 Image Processing: Image TransformationVarun Ojha
 
Chapter 2 Image Processing: Pixel Relation
Chapter 2 Image Processing: Pixel RelationChapter 2 Image Processing: Pixel Relation
Chapter 2 Image Processing: Pixel RelationVarun Ojha
 
Chapter 3 Image Processing: Basic Transformation
Chapter 3 Image Processing:  Basic TransformationChapter 3 Image Processing:  Basic Transformation
Chapter 3 Image Processing: Basic TransformationVarun Ojha
 
Chapter 1 introduction (Image Processing)
Chapter 1 introduction (Image Processing)Chapter 1 introduction (Image Processing)
Chapter 1 introduction (Image Processing)Varun Ojha
 
Neural Tree for Estimating the Uniaxial Compressive Strength of Rock Materials
Neural Tree for Estimating the Uniaxial Compressive Strength of Rock MaterialsNeural Tree for Estimating the Uniaxial Compressive Strength of Rock Materials
Neural Tree for Estimating the Uniaxial Compressive Strength of Rock MaterialsVarun Ojha
 
Metaheuristic Tuning of Type-II Fuzzy Inference System for Data Mining
Metaheuristic Tuning of Type-II Fuzzy Inference System for Data MiningMetaheuristic Tuning of Type-II Fuzzy Inference System for Data Mining
Metaheuristic Tuning of Type-II Fuzzy Inference System for Data MiningVarun Ojha
 
A Framework of Secured and Bio-Inspired Image Steganography Using Chaotic Enc...
A Framework of Secured and Bio-Inspired Image Steganography Using Chaotic Enc...A Framework of Secured and Bio-Inspired Image Steganography Using Chaotic Enc...
A Framework of Secured and Bio-Inspired Image Steganography Using Chaotic Enc...Varun Ojha
 
Dimensionality Reduction and Prediction of the Protein Macromolecule Dissolut...
Dimensionality Reduction and Prediction of the Protein Macromolecule Dissolut...Dimensionality Reduction and Prediction of the Protein Macromolecule Dissolut...
Dimensionality Reduction and Prediction of the Protein Macromolecule Dissolut...Varun Ojha
 
Ensemble of Heterogeneous Flexible Neural Tree for the approximation and feat...
Ensemble of Heterogeneous Flexible Neural Tree for the approximation and feat...Ensemble of Heterogeneous Flexible Neural Tree for the approximation and feat...
Ensemble of Heterogeneous Flexible Neural Tree for the approximation and feat...Varun Ojha
 
Simultaneous optimization of neural network weights and active nodes using me...
Simultaneous optimization of neural network weights and active nodes using me...Simultaneous optimization of neural network weights and active nodes using me...
Simultaneous optimization of neural network weights and active nodes using me...Varun Ojha
 
Design and analysis of algorithm
Design and analysis of algorithmDesign and analysis of algorithm
Design and analysis of algorithmVarun Ojha
 

More from Varun Ojha (12)

Chapter 6 Image Processing: Image Enhancement
Chapter 6 Image Processing: Image EnhancementChapter 6 Image Processing: Image Enhancement
Chapter 6 Image Processing: Image Enhancement
 
Chapter 4 Image Processing: Image Transformation
Chapter 4 Image Processing: Image TransformationChapter 4 Image Processing: Image Transformation
Chapter 4 Image Processing: Image Transformation
 
Chapter 2 Image Processing: Pixel Relation
Chapter 2 Image Processing: Pixel RelationChapter 2 Image Processing: Pixel Relation
Chapter 2 Image Processing: Pixel Relation
 
Chapter 3 Image Processing: Basic Transformation
Chapter 3 Image Processing:  Basic TransformationChapter 3 Image Processing:  Basic Transformation
Chapter 3 Image Processing: Basic Transformation
 
Chapter 1 introduction (Image Processing)
Chapter 1 introduction (Image Processing)Chapter 1 introduction (Image Processing)
Chapter 1 introduction (Image Processing)
 
Neural Tree for Estimating the Uniaxial Compressive Strength of Rock Materials
Neural Tree for Estimating the Uniaxial Compressive Strength of Rock MaterialsNeural Tree for Estimating the Uniaxial Compressive Strength of Rock Materials
Neural Tree for Estimating the Uniaxial Compressive Strength of Rock Materials
 
Metaheuristic Tuning of Type-II Fuzzy Inference System for Data Mining
Metaheuristic Tuning of Type-II Fuzzy Inference System for Data MiningMetaheuristic Tuning of Type-II Fuzzy Inference System for Data Mining
Metaheuristic Tuning of Type-II Fuzzy Inference System for Data Mining
 
A Framework of Secured and Bio-Inspired Image Steganography Using Chaotic Enc...
A Framework of Secured and Bio-Inspired Image Steganography Using Chaotic Enc...A Framework of Secured and Bio-Inspired Image Steganography Using Chaotic Enc...
A Framework of Secured and Bio-Inspired Image Steganography Using Chaotic Enc...
 
Dimensionality Reduction and Prediction of the Protein Macromolecule Dissolut...
Dimensionality Reduction and Prediction of the Protein Macromolecule Dissolut...Dimensionality Reduction and Prediction of the Protein Macromolecule Dissolut...
Dimensionality Reduction and Prediction of the Protein Macromolecule Dissolut...
 
Ensemble of Heterogeneous Flexible Neural Tree for the approximation and feat...
Ensemble of Heterogeneous Flexible Neural Tree for the approximation and feat...Ensemble of Heterogeneous Flexible Neural Tree for the approximation and feat...
Ensemble of Heterogeneous Flexible Neural Tree for the approximation and feat...
 
Simultaneous optimization of neural network weights and active nodes using me...
Simultaneous optimization of neural network weights and active nodes using me...Simultaneous optimization of neural network weights and active nodes using me...
Simultaneous optimization of neural network weights and active nodes using me...
 
Design and analysis of algorithm
Design and analysis of algorithmDesign and analysis of algorithm
Design and analysis of algorithm
 

Recently uploaded

Harnessing the Power of GenAI for BI and Reporting.pptx
Harnessing the Power of GenAI for BI and Reporting.pptxHarnessing the Power of GenAI for BI and Reporting.pptx
Harnessing the Power of GenAI for BI and Reporting.pptxParas Gupta
 
Northern New England Tableau User Group (TUG) May 2024
Northern New England Tableau User Group (TUG) May 2024Northern New England Tableau User Group (TUG) May 2024
Northern New England Tableau User Group (TUG) May 2024patrickdtherriault
 
Displacement, Velocity, Acceleration, and Second Derivatives
Displacement, Velocity, Acceleration, and Second DerivativesDisplacement, Velocity, Acceleration, and Second Derivatives
Displacement, Velocity, Acceleration, and Second Derivatives23050636
 
如何办理(UCLA毕业证书)加州大学洛杉矶分校毕业证成绩单学位证留信学历认证原件一样
如何办理(UCLA毕业证书)加州大学洛杉矶分校毕业证成绩单学位证留信学历认证原件一样如何办理(UCLA毕业证书)加州大学洛杉矶分校毕业证成绩单学位证留信学历认证原件一样
如何办理(UCLA毕业证书)加州大学洛杉矶分校毕业证成绩单学位证留信学历认证原件一样jk0tkvfv
 
社内勉強会資料_Object Recognition as Next Token Prediction
社内勉強会資料_Object Recognition as Next Token Prediction社内勉強会資料_Object Recognition as Next Token Prediction
社内勉強会資料_Object Recognition as Next Token PredictionNABLAS株式会社
 
Abortion Clinic in Kempton Park +27791653574 WhatsApp Abortion Clinic Service...
Abortion Clinic in Kempton Park +27791653574 WhatsApp Abortion Clinic Service...Abortion Clinic in Kempton Park +27791653574 WhatsApp Abortion Clinic Service...
Abortion Clinic in Kempton Park +27791653574 WhatsApp Abortion Clinic Service...mikehavy0
 
如何办理(Dalhousie毕业证书)达尔豪斯大学毕业证成绩单留信学历认证
如何办理(Dalhousie毕业证书)达尔豪斯大学毕业证成绩单留信学历认证如何办理(Dalhousie毕业证书)达尔豪斯大学毕业证成绩单留信学历认证
如何办理(Dalhousie毕业证书)达尔豪斯大学毕业证成绩单留信学历认证zifhagzkk
 
SAC 25 Final National, Regional & Local Angel Group Investing Insights 2024 0...
SAC 25 Final National, Regional & Local Angel Group Investing Insights 2024 0...SAC 25 Final National, Regional & Local Angel Group Investing Insights 2024 0...
SAC 25 Final National, Regional & Local Angel Group Investing Insights 2024 0...Elaine Werffeli
 
DAA Assignment Solution.pdf is the best1
DAA Assignment Solution.pdf is the best1DAA Assignment Solution.pdf is the best1
DAA Assignment Solution.pdf is the best1sinhaabhiyanshu
 
Capstone in Interprofessional Informatic // IMPACT OF COVID 19 ON EDUCATION
Capstone in Interprofessional Informatic  // IMPACT OF COVID 19 ON EDUCATIONCapstone in Interprofessional Informatic  // IMPACT OF COVID 19 ON EDUCATION
Capstone in Interprofessional Informatic // IMPACT OF COVID 19 ON EDUCATIONLakpaYanziSherpa
 
Jual Obat Aborsi Bandung (Asli No.1) Wa 082134680322 Klinik Obat Penggugur Ka...
Jual Obat Aborsi Bandung (Asli No.1) Wa 082134680322 Klinik Obat Penggugur Ka...Jual Obat Aborsi Bandung (Asli No.1) Wa 082134680322 Klinik Obat Penggugur Ka...
Jual Obat Aborsi Bandung (Asli No.1) Wa 082134680322 Klinik Obat Penggugur Ka...Klinik Aborsi
 
Jual obat aborsi Bandung ( 085657271886 ) Cytote pil telat bulan penggugur ka...
Jual obat aborsi Bandung ( 085657271886 ) Cytote pil telat bulan penggugur ka...Jual obat aborsi Bandung ( 085657271886 ) Cytote pil telat bulan penggugur ka...
Jual obat aborsi Bandung ( 085657271886 ) Cytote pil telat bulan penggugur ka...Klinik kandungan
 
如何办理(WashU毕业证书)圣路易斯华盛顿大学毕业证成绩单本科硕士学位证留信学历认证
如何办理(WashU毕业证书)圣路易斯华盛顿大学毕业证成绩单本科硕士学位证留信学历认证如何办理(WashU毕业证书)圣路易斯华盛顿大学毕业证成绩单本科硕士学位证留信学历认证
如何办理(WashU毕业证书)圣路易斯华盛顿大学毕业证成绩单本科硕士学位证留信学历认证acoha1
 
Ranking and Scoring Exercises for Research
Ranking and Scoring Exercises for ResearchRanking and Scoring Exercises for Research
Ranking and Scoring Exercises for ResearchRajesh Mondal
 
Seven tools of quality control.slideshare
Seven tools of quality control.slideshareSeven tools of quality control.slideshare
Seven tools of quality control.slideshareraiaryan448
 
原件一样(UWO毕业证书)西安大略大学毕业证成绩单留信学历认证
原件一样(UWO毕业证书)西安大略大学毕业证成绩单留信学历认证原件一样(UWO毕业证书)西安大略大学毕业证成绩单留信学历认证
原件一样(UWO毕业证书)西安大略大学毕业证成绩单留信学历认证pwgnohujw
 
Huawei Ransomware Protection Storage Solution Technical Overview Presentation...
Huawei Ransomware Protection Storage Solution Technical Overview Presentation...Huawei Ransomware Protection Storage Solution Technical Overview Presentation...
Huawei Ransomware Protection Storage Solution Technical Overview Presentation...LuisMiguelPaz5
 

Recently uploaded (20)

Harnessing the Power of GenAI for BI and Reporting.pptx
Harnessing the Power of GenAI for BI and Reporting.pptxHarnessing the Power of GenAI for BI and Reporting.pptx
Harnessing the Power of GenAI for BI and Reporting.pptx
 
Abortion pills in Jeddah |+966572737505 | get cytotec
Abortion pills in Jeddah |+966572737505 | get cytotecAbortion pills in Jeddah |+966572737505 | get cytotec
Abortion pills in Jeddah |+966572737505 | get cytotec
 
Northern New England Tableau User Group (TUG) May 2024
Northern New England Tableau User Group (TUG) May 2024Northern New England Tableau User Group (TUG) May 2024
Northern New England Tableau User Group (TUG) May 2024
 
Displacement, Velocity, Acceleration, and Second Derivatives
Displacement, Velocity, Acceleration, and Second DerivativesDisplacement, Velocity, Acceleration, and Second Derivatives
Displacement, Velocity, Acceleration, and Second Derivatives
 
如何办理(UCLA毕业证书)加州大学洛杉矶分校毕业证成绩单学位证留信学历认证原件一样
如何办理(UCLA毕业证书)加州大学洛杉矶分校毕业证成绩单学位证留信学历认证原件一样如何办理(UCLA毕业证书)加州大学洛杉矶分校毕业证成绩单学位证留信学历认证原件一样
如何办理(UCLA毕业证书)加州大学洛杉矶分校毕业证成绩单学位证留信学历认证原件一样
 
Abortion pills in Riyadh Saudi Arabia (+966572737505 buy cytotec
Abortion pills in Riyadh Saudi Arabia (+966572737505 buy cytotecAbortion pills in Riyadh Saudi Arabia (+966572737505 buy cytotec
Abortion pills in Riyadh Saudi Arabia (+966572737505 buy cytotec
 
社内勉強会資料_Object Recognition as Next Token Prediction
社内勉強会資料_Object Recognition as Next Token Prediction社内勉強会資料_Object Recognition as Next Token Prediction
社内勉強会資料_Object Recognition as Next Token Prediction
 
Abortion Clinic in Kempton Park +27791653574 WhatsApp Abortion Clinic Service...
Abortion Clinic in Kempton Park +27791653574 WhatsApp Abortion Clinic Service...Abortion Clinic in Kempton Park +27791653574 WhatsApp Abortion Clinic Service...
Abortion Clinic in Kempton Park +27791653574 WhatsApp Abortion Clinic Service...
 
如何办理(Dalhousie毕业证书)达尔豪斯大学毕业证成绩单留信学历认证
如何办理(Dalhousie毕业证书)达尔豪斯大学毕业证成绩单留信学历认证如何办理(Dalhousie毕业证书)达尔豪斯大学毕业证成绩单留信学历认证
如何办理(Dalhousie毕业证书)达尔豪斯大学毕业证成绩单留信学历认证
 
SAC 25 Final National, Regional & Local Angel Group Investing Insights 2024 0...
SAC 25 Final National, Regional & Local Angel Group Investing Insights 2024 0...SAC 25 Final National, Regional & Local Angel Group Investing Insights 2024 0...
SAC 25 Final National, Regional & Local Angel Group Investing Insights 2024 0...
 
Abortion pills in Riyadh Saudi Arabia| +966572737505 | Get Cytotec, Unwanted Kit
Abortion pills in Riyadh Saudi Arabia| +966572737505 | Get Cytotec, Unwanted KitAbortion pills in Riyadh Saudi Arabia| +966572737505 | Get Cytotec, Unwanted Kit
Abortion pills in Riyadh Saudi Arabia| +966572737505 | Get Cytotec, Unwanted Kit
 
DAA Assignment Solution.pdf is the best1
DAA Assignment Solution.pdf is the best1DAA Assignment Solution.pdf is the best1
DAA Assignment Solution.pdf is the best1
 
Capstone in Interprofessional Informatic // IMPACT OF COVID 19 ON EDUCATION
Capstone in Interprofessional Informatic  // IMPACT OF COVID 19 ON EDUCATIONCapstone in Interprofessional Informatic  // IMPACT OF COVID 19 ON EDUCATION
Capstone in Interprofessional Informatic // IMPACT OF COVID 19 ON EDUCATION
 
Jual Obat Aborsi Bandung (Asli No.1) Wa 082134680322 Klinik Obat Penggugur Ka...
Jual Obat Aborsi Bandung (Asli No.1) Wa 082134680322 Klinik Obat Penggugur Ka...Jual Obat Aborsi Bandung (Asli No.1) Wa 082134680322 Klinik Obat Penggugur Ka...
Jual Obat Aborsi Bandung (Asli No.1) Wa 082134680322 Klinik Obat Penggugur Ka...
 
Jual obat aborsi Bandung ( 085657271886 ) Cytote pil telat bulan penggugur ka...
Jual obat aborsi Bandung ( 085657271886 ) Cytote pil telat bulan penggugur ka...Jual obat aborsi Bandung ( 085657271886 ) Cytote pil telat bulan penggugur ka...
Jual obat aborsi Bandung ( 085657271886 ) Cytote pil telat bulan penggugur ka...
 
如何办理(WashU毕业证书)圣路易斯华盛顿大学毕业证成绩单本科硕士学位证留信学历认证
如何办理(WashU毕业证书)圣路易斯华盛顿大学毕业证成绩单本科硕士学位证留信学历认证如何办理(WashU毕业证书)圣路易斯华盛顿大学毕业证成绩单本科硕士学位证留信学历认证
如何办理(WashU毕业证书)圣路易斯华盛顿大学毕业证成绩单本科硕士学位证留信学历认证
 
Ranking and Scoring Exercises for Research
Ranking and Scoring Exercises for ResearchRanking and Scoring Exercises for Research
Ranking and Scoring Exercises for Research
 
Seven tools of quality control.slideshare
Seven tools of quality control.slideshareSeven tools of quality control.slideshare
Seven tools of quality control.slideshare
 
原件一样(UWO毕业证书)西安大略大学毕业证成绩单留信学历认证
原件一样(UWO毕业证书)西安大略大学毕业证成绩单留信学历认证原件一样(UWO毕业证书)西安大略大学毕业证成绩单留信学历认证
原件一样(UWO毕业证书)西安大略大学毕业证成绩单留信学历认证
 
Huawei Ransomware Protection Storage Solution Technical Overview Presentation...
Huawei Ransomware Protection Storage Solution Technical Overview Presentation...Huawei Ransomware Protection Storage Solution Technical Overview Presentation...
Huawei Ransomware Protection Storage Solution Technical Overview Presentation...
 

Chapter 5 Image Processing: Fourier Transformation

  • 1. CHAPTER5 FOURIERTRANSFORMATION Dr. Varun Kumar Ojha and Prof. (Dr.) Paramartha Dutta Visva Bharati University Santiniketan, West Bengal, India
  • 2. Fourier Transformation  Continuous & Discrete Fourier Transformation  Properties of Fourier Transformation  Fast Fourier Transformation Back to Course Content Page Click Here
  • 3. Fourier Transformation ( 1-D Continuous Signal) Let f(x) is a continuous function of some variable then the Fourier transformation of f(x) is F(u) Here f(x) must be continuous & integralable Inverse Fourier Transformation: F(u) is a Fourier transform of signal f(x) so after inverse Fourier transformation of F(u) we get f(x) Fourier Transformation :
  • 4. Fourier Transformation ( 1-D Continuous Signal) Fourier Transformation Pair F(u) → Fourier Transform of signal f(x) F(x) → Original Signal or Inverse Fourier Transform of F(u) Here F(u) is a complex function contains real part & imaginary part F(u) = R(u) + jI(u) We have Fourier Spectrum: The phase angle: Power Spectrum :
  • 5. Fourier Transformation ( 2-D Continuous Signal) Forward Fourier Transformation: Let f(x,y) is 2 dimensional signal with 2 variable Inverse (Backward) Fourier Transformation:
  • 6. Fourier Transformation ( 2-D Continuous Signal) Fourier Spectrum: Phase angle : Power Spectrum:
  • 7. 2-D Discrete Fourier Transformation Forward 2D discrete Fourier Transformation: Let we have an Image of size MxN then F(u,v) is the F T of image f(x,y) Where variable u = 0, 1, 2, …., M-1 and v = 0, 1, 2, …., N-1 Inverse (Backward) Fourier Transformation : Where variable x = 0, 1, 2, …., M-1 and y = 0, 1, 2, …., N-1
  • 8.  For a square image i.e. M = N and the Fourier Transformation Pair is as follows 2-D Discrete Fourier Transformation
  • 9. Discrete F T Result Original Image Transformed Image DFT IDFT
  • 10. Back to the chapter content Click Here
  • 11. Properties of Fourier Transformation  Seperability  Translation  Periodicity  Conjugate  Rotation  Distributive  Scaling  Convolution  Corelation
  • 12. Seperability The separbility property says that we can do 2D Fourier transformation as two 1 D Fourier Transformation Inverse Fourier Transform X represent row of image so x is fixed Fourier Transformation along row
  • 13. Seperability Cont… 2D Inverse Fourier transformation can also be viewed as two 1 D Inverse Fourier Transformation IDFT along rows IDFT along columns Advantage of Seperability: Operation become much simpler and less time complexity
  • 14. Seperability Concept f(x,y) → Original Image F(x,v) → Intermediate Coefficient of F T along row F(x,v) → Intermediate Coefficient of F T along row Row Transform Column Transform F(u,v) → Complete Coefficient of F T N-1 N-1 (0,0) N-1 N-1 (0,0) N-1 N-1 (0,0)N-1 N-1 (0,0)
  • 15. Translation (x0.,y0) Magnitude of FT remains same Additional Phase Translation of x and y by x0 and y0 respectively. Fourier Transform
  • 16. Translation Cont.. Inverse Fourier Transform Here sift x0, y0 does not change Fourier spectrum but it add some phase sift diff
  • 17. Periodicity Periodicity property says that the Discrete Fourier Transform and Inverse Discrete Fourier Transform are periodic with a period N Proof: So we can say that Discrete Fourier Transform is periodic with N
  • 18. Conjugate  If f(x,y) is a real valued function then F(u,v) = F* (-u, -v)  Where F* indicate it complex conjugate  Now Fourier Spectrum |F(u,v)| = |F(-u,-v)|  This property help to visualize Fourier Spectrum
  • 19. Rotation  Let x = rcosθ and y = sinθ  u = wcosø and v = sinø   Then we have f(x,y) = f(r,θ) in Spatial Domain F(u,v) = F(w, ø) in Frequency Domain   Now Rotated Image is f(r, θ + θ0 ) and f(r, θ + θ0 ) ↔ F(w, ø + ø0)  F(w, ø + ø0) is F T of Rotated image
  • 20. Rotation Concept Rectangle FT FTRectangle inclined with 450 Angle
  • 21. Distributivity  DFT is distributive over addition but not on multiplication
  • 22. Scaling  If a and b are two scaling quantity then a f(x,y) ↔ a F(u,v)  If f(x,y) is multiplied by scalar quantity a then its F T is also multiplied by same scalar quantity   Scaling Individual dimension
  • 23.  Convolution:  Convolution in spatial domain is equivalent to multiplication in frequency domain and vice versa  Correlation:  Where f* and F* indicate conjugates of f and F Correlation & Correlation
  • 24. Back to the chapter content Click Here
  • 25. Fast Fourier Transformation  A 2D Fourier transform  Has complexity O(N4 )  For a 1D Discrete F T complexity become O(N2 )  Where we take for simplification. We have N = 2N no. of input and we assume N = 2M
  • 26. Fast Fourier Transformation  Re-write F(u) as  We take  Total complexity reduces to N log2 N
  • 27. Back to the chapter content Click Here