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Image Restoration and Denoising

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Chapter Seven Part II Image Restoration and Denoising Image Restoration Techniques Inverse of degradation process Depending on the knowledge of degradation, it ... – PowerPoint PPT presentation

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Title: Image Restoration and Denoising


1
Image Restoration and Denoising
  • Chapter Seven Part II

2
Image Restoration Techniques
  • Inverse of degradation process
  • Depending on the knowledge of degradation, it can
    be classified into

Deterministic Random
If prior knowledge about degradation is known If not known
Linear Non-linear
Restore the image by a filter e.g. Inverse Filtering Drawback ringing artifacts near edges Nonlinear function is used Ringing artifacts is reduced
3
Image Restoration Model
f(x,y)
? (x, y)
4
Image Restoration Model
  • In this model,
  • f(x,y) ? input image
  • h(x,y) ? degradation
  • f'(x,y) ? restored image
  • ?(x,y) ? additive noise
  • g(x,y) ? degraded image

5
Image Restoration Model
  • In spatial domain,
  • g(x,y) f(x,y) h(x,y)
  • and in frequency domain
  • G(k,l) F(k,l). H(k,l)
  • Where G,F and H are fourier transform of g,f and h

6
Linear Restoration Technique
  • They are quick and simple
  • But limited capabilities
  • It includes
  • Inverse Filter
  • Pseudo Inverse Filter
  • Wiener Filter
  • Constrained Least Square Filter

7
Inverse Filtering
  • If we know exact PSF and ignore noise effect,
    this approach can be used.
  • In practice PSF is unknown and degradation is
    affected by noise and hence this approach is not
    perfect.
  • Advantage - Simple

8
Inverse Filtering
  • From image restoration model
  • For simplicity, the co-ordinate of the image are
    ignored so that the above equation becomes
  • Then the error function becomes

9
Inverse Filtering
  • We wish to ignore ? and use to approximate
    under least square sense. Then the error function
    is given as
  • To find the minimum of , the above
    equation is differentiated wrt and equating
    it to zero

10
Inverse Filtering
  • Solving for , we get
  • Taking fourier transform on both sides we get
  • The restored image in spatial domain is obtained
    by taking Inverse Fourier Transform as

11
Inverse Filtering
12
Inverse Filtering
  • Advantages
  • It requires only blur PSF
  • It gives perfect reconstruction in the absence of
    noise
  • Drawbacks
  • It is not always possible to obtain an inverse
    (singular matrices)
  • If noise is present, inverse filter amplifies
    noise. (better option is wiener filter)

13
Inverse Filtering with Noise
14
Pseudo-Inverse Filtering
  • For an inverse filter,
  • Here H(k,l) represents the spectrum of the PSF.
  • The division of H(k,l) leads to large
    amplification at high frequencies and thus noise
    dominates over image

15
Pseudo-Inverse Filtering
  • To avoid this problem, a pseudo-inverse filter is
    defined as
  • The value of e affects the restored image
  • With no clear objective selection of e, the
    restored images are generally noisy and not
    suitable for further analysis

16
Pseudo-Inverse Filtering
17
Pseudo-Inverse Filtering with e 0.2
18
Pseudo-Inverse Filtering with e 0.02
19
Pseudo-Inverse Filtering with e 0.002
20
Pseudo-Inverse Filtering with e 0
21
SVD Approach for Pseudo-Inverse Filtering
  • SVD stands for Singular Value Decomposition
  • Using SVD any matrix can be decomposed into a
    series of eigen matrices
  • From image restoration model we have
  • The blur matrix is represented by H
  • H is decomposed into eigen matrices as
  • where U and V are unitary and D is diagonal
    matrix

22
SVD Approach for Pseudo-Inverse Filtering
  • Then the pseudo inverse of H is given by
  • The generalized inverse is the estimate is the
    result of multiplying H with g
  • R indicates the rank of the matrix
  • The resulting sequence estimation formula is
    given as

23
SVD Approach for Pseudo-Inverse Filtering
  • Advantage
  • Effective with noise amplification problem as we
    can interactively terminate the restoration
  • Computationally efficient if noise is space
    invariant
  • Disadvantage
  • Presence of noise can lead to numerical
    instability

24
Wiener Filter
  • The objective is to minimize the mean sqaure
    error
  • It has the capability of handling both the
    degradation function and noise
  • From the restoration model, the error between
    input image f(m,n) and the estimated image
    is given by

25
Wiener Filter
  • The square error is given by
  • The mean square error is given by

26
Wiener Filter
  • The objective of the Wiener filter is top
    minimize
  • Given a system we have
  • yhx v
  • h-blur function
  • x - original image
  • y observed image (degraded image)
  • v additive noise

27
Wiener Filter
  • The goal is to obtain g such that
  • is the restored image that minimizes mean
    square error
  • The deconvolution provides such a g(t)

28
Wiener Filter
  • The filter is described in frequency domain as
  • G and H are fourier transform of g and h
  • S mean power of spectral density of x
  • N mean power of spectral density of v
  • - complex conjugate

29
Wiener Filter
  • Drawback It requires prior knowledge of power
    spectral density of image which is unavailable in
    practice
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