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Removal of Artifacts

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Removal of Artifacts T-61.182, Biomedical Image Analysis Seminar presentation 19.2.2005 Hannu Laaksonen Vibhor Kumar Overview, part I Different types of noise Signal ... – PowerPoint PPT presentation

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Title: Removal of Artifacts


1
Removal of Artifacts
  • T-61.182, Biomedical Image Analysis
  • Seminar presentation 19.2.2005
  • Hannu Laaksonen
  • Vibhor Kumar

2
Overview, part I
  • Different types of noise
  • Signal dependent noise
  • Stationarity
  • Simple methods of noise removal
  • Averaging
  • Space-domain filtering
  • Frequency-domain filtering
  • Matrix representation of images

3
Introduction
  • Noise any part of the image that is of no
    interest
  • Removal of noise (artifacts) crucial for image
    analysis
  • Artifact removal should not cause distortions in
    the image

4
Different types of noise
  • Random noise
  • Probability density function, PDF
  • Gaussian, uniform, Poisson
  • Structured noise
  • Physiological interference
  • Other

5
Signal dependent noise
  • Noise might not be independent it may also
    depend on the signal itself
  • Poisson noise
  • Film-grain noise
  • Speckle noise

An image with Poisson noise
6
Stationarity
  • Strongly stationary
  • Stationary in the wide sense
  • Nonstationary
  • Quasistationary (block-wise stationary)
  • Short-time analysis
  • Cyclo-stationary

7
Synchronized or multiframe averaging
  • If several time instances of the image are
    available, the noise can be reduced by averaging
  • Synchronized averaging frames are acquired in
    the same phase
  • Changes (motion, displacement) between frames
    will cause distortion

8
Space-domain filters
  • Images often nonstationary as a whole, but ma be
    stationary in small segments
  • Moving-window filter
  • Sizes, shapes and weights vary
  • Parameters are estimated in the window and
    applied to the pixel in center

9
Examples of windows
10
Examples of space-domain filters
  • Mean filter
  • Mean of the values in window
  • Median filter
  • Median of the values in window
  • Nonlinear
  • Order-statistic filter
  • A large class of nonlinear filters

11
Filters in use
12
Frequency-domain filters
  • In natural images, usually the most important
    information is located at low frequencies
  • Frequency-domain filtering
  • 2D Fourier transform is calculated of the image
  • The transformed image passed through a transfer
    function (filter)
  • The image is then transformed back

13
Grid artifact removal
14
Matrix representation of image processing
  • Image may be presented as a matrix
  • f f(m,n) m 0,1,2,M-1 n 0,1,2,,N-1
  • Can be converted into vector by row ordering
  • f f1, f2, , fMT
  • Image properties can be calculated using matrix
    notation
  • Mean m Ef
  • Covariance s E(f - m)(f - m)T
  • Autocorrelation F Ef fT

15
Matrix representation of transforms
  • Several transforms may be expressed as FA f A,
    where A is a matrix constructed using basis
    functions
  • Fourier, Walsh-Hadamard and discrete cosine
    transforms
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