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Image Resolution Enhancement

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RADON TRANSFORM IN ROTATION INVARIANT TEXTURE FEATURES ESTIMATION. ALOGORITHM. Radon transform use for conversion of. rotation to translation. Translation invariant ... – PowerPoint PPT presentation

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Title: Image Resolution Enhancement


1
DIGITAL SIGNAL PROCESSINGIN ANALYSIS OF
BIOMEDICAL IMAGES
Prof. Aleš Procházka Institute of Chemical
Technology in Prague Department of Computing and
Control Engineering Digital Signal and Image
Processing Research Group
2
1. INTRODUCTION
  • MOTIVATION OF THE DSP RESEARCH GROUP
  • INTEGRATION ROLE OF SIGNAL
  • AND IMAGE PROCESSING IN
  • THE FRAME OF INFORMATION
  • ENGINEERING
  • Interdisciplinary area connecting
  • mathematics and engineering
  • control, measuring engineering, vision, speech
    processing,
  • biomedicine, environmental engineering
  • Fundament for data acquisition, system
    identification
  • and modelling, signal de-noising, feature
    extraction,
  • segmentation, classification, compression,
    prediction,
  • Similar mathematical background based on methods
    of
  • time-frequency and time-scale analysis in
    different areas

3
2. APPLICATIONS
INTERESTS OF DSP RESEARCH GROUP
Signal Prediction
Environmental Engineering
Biomedical Image Analysis
Remote Data Processing
4
3. TIME-FREQUENCY ANALYSIS
DISCRETE FOURIER TRANSFORM IN RESOLUTION
ENHANCEMENT
2-D DFT for k0,1,,N/2 1, l 0,1,,M/2
1 and f1(k)k/N , f2(l)l/M
1-D DFT for k0,1,,N/2 1 and f(k)k/N

5
4. TIME-SCALE ANALYSIS
WAVELET TRANSFORM IN SIGNAL PARTS DETECTION
  • Initial wavelet defined either in the
  • analytical form or by a dilation equation
  • Dilation and translation
  • coefficients a2m, bk 2m
  • Initial wavelet is a pass-band filter
  • Wavelet dilation corresponds
  • to its pass-band compression

6
5. DENOISING OF SIGNAL / IMAGE COMPONENTS
WAVELET TRANSFORM IN IMAGE DENOISING
  • ALGORITHM
  • Decomposition stage convolution of a given
    signal and the filter

  • downsampling by D
  • Coefficients
    - by rows and columns
  • thresholding

Magnetic resonance image
  • Reconstruction stage
  • row upsampling by
  • factor U and
  • row convolution
  • sum of the
  • corresponding
  • images
  • column upsampling
  • by factor U and
  • column convolution

7
6. MR IMAGE RESOLUTION ENHANCEMENT
WAVELET TRANSFORM IN IMAGE RESOLUTION ENHANCEMENT
I. Image Resolution Enhancement using DFT
  • MAGNETIC RESONANCE
  • IMAGES OF A HUMAN BRAIN
  • Original resolution
  • 512 x 512 pixels
  • Resolution enhancement
  • 1024 x 1024 pixels

II. Image Resolution Enhancement using DWT
  • CONCLUSIONS
  • DFT the structures and
  • edges are very smooth
  • DWT sharper edges
  • obtained
  • DFT and DWT
  • various methods to
  • enhance the resolution
  • can be applied

8
7. IMAGE RESTORATION
METHODS OF IMAGE COMPONENTS RESTORATION
  • METHODS
  • Detection of features of missing regions and
    their replacement by the
  • most similar ones
  • Multidirectional prediction of
  • missing image
  • parts
  • Multidemensional cubic and spline interpolation
  • Iterated wavelet interpolation

9
8. ITERATED WAVELET TRANSFORM IN IMAGE
RESTORATION
WAVELET TRANSFORM IN ITERATED INTERPOLATION
  • ALGORITHM
  • Image decomposition into a selected level
  • Wavelet coefficients thresholding
  • Image reconstruction
  • Replacement of values outside regions of interest
    by original values
  • The next iteration of image decomposition

10
9. IMAGE SEGMENTATION
WATERSHED TRANSFORM IN IMAGE SEGMENTATION
  • ALGORITHM
  • Image thresholding and denoising
  • Distance and watershed transform use
  • Extraction of individual segments
  • Analysis of image components
  • boundary signals and texture

11
10. FEATURE EXTRACTION AND CLASSIFICATION
RADON TRANSFORM IN ROTATION INVARIANT TEXTURE
FEATURES ESTIMATION
  • ALOGORITHM
  • Radon transform use for conversion of
  • rotation to translation
  • Translation invariant
  • wavelet transform
  • use for feature
  • estimation
  • Classification by
  • neural networks

12
11. FEATURE BASED SEGMENTATION
FEATURE BASED BIOMEDICAL IMAGE SEGMENTATION
  • PRINCIPLE
  • Each root pixel of the original image is
    associated with its feature
  • derived from its neighbourhood
  • Pixels are individually classified into
    selected number of levels

13
12. CONCLUSION
COLLABORATION
  • European Association for Signal and Image
    Processing
  • IEE London, IEEE
  • University of Cambridge, Brunel University, UK
  • University Las Palmas, Spain

SELECTED PAPERS
  • A. Procházka, I. Šindelárová, and J. Ptácek.
    Image De-noising and
  • Restoration using Wavelet Transform . In
    European Control Conference
  • ECC 2003 Conference Papers, Cambridge, UK,
    2003.
  • A. Procházka and J. Ptácek. Wavelet Transform
    Application in
  • Biomedical Image Recovery and Enhancement .
    In P. of 8th Multi-Conf.
  • Systemics, Cybernetics and Informatic,
    Orlando, USA, 2004
  • A. Procházka, A. Gavlasova, M. Mudrova. Rotation
    Invariant
  • Biomedical Object Recognition. In Proc. of
    the EUSIPCO Conf.,
  • EURASIP, Italy, 2006

14
Institute of Chemical Technology in
Prague Research Group of Digital Signal and Image
Processing
http // dsp.vscht.cz
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