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1 Wavelets, Ridgelets, and Curvelets for Poisson Noise Removal 國立交通大學電子研究所 張瑞男 2008.12.11
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2 Outline Introduction of Wavelet Transform Variance Stabilization Transform of a Filtered Poisson Process (VST) Denoising by Multi-scale VST + Wavelets Ridgelets & Curvelets Conclusions
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3 Introduction of Wavelet Transform(10/18) Multiresolution Analysis The spanned spaces are nested: Wavelets span the differences between spaces w i. Wavelets and scaling functions should be orthogonal: simple calculation of coefficients.
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4 Introduction of Wavelet Transform(11/18)
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5 Introduction of Wavelet Transform(12/18) Multiresolution Formulation. ( Scaling coefficients) ( Wavelet coefficients )
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6 Introduction of Wavelet Transform(13/18) Discrete Wavelet Transform (DWT) Calculation: Using Multi-resolution Analysis:
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7 Introduction of Wavelet Transform(14/18) Basic idea of Fast Wavelet Transform (Mallat’s herringbone algorithm): Pyramid algorithm provides an efficient calculation. DWT (direct and inverse) can be thought of as a filtering process. After filtering, half of the samples can be eliminated: subsample the signal by two. Subsampling: Scale is doubled. Filtering: Resolution is halved.
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8 Introduction of Wavelet Transform(15/18) (a)A two-stage or two-scale FWT analysis bank and (b)its frequency splitting characteristics.
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9 Introduction of Wavelet Transform(16/18) Fast Wavelet Transform Inverse Fast Wavelet Transform
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10 Introduction of Wavelet Transform(17/18) A two-stage or two-scale FWT-1 synthesis bank.
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11 From http://www.cerm.unifi.it/EUcourse2001/Gunther_lecturenotes.pdf, p.10http://www.cerm.unifi.it/EUcourse2001/Gunther_lecturenotes.pdf Introduction of Wavelet Transform(18/18) Comparison of Transformations
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12 VST of a Filtered Poisson Process(1/4) Poisson process Filtered Poisson process assume Seek a transformation λ : intensity
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13 VST of a Filtered Poisson Process(2/4) Taylor expansion & approximation Solution
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14 VST of a Filtered Poisson Process(3/4) Square-root transformation Asymptotic property Simplified asymptotic analysis
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15 VST of a Filtered Poisson Process(4/4) Behavior of E[Z] and Var[Z]
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16 Denoising by MS-VST + Wavelets(1/14) Main steps (1) Transformation (UWT) (2) Detection by wavelet-domain hypothesis test (3) Iterative reconstruction (final estimation)
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17 Denoising by MS-VST + Wavelets(2/14) Undecimated wavelet transform (UWT)
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18 Denoising by MS-VST + Wavelets(3/14) MS-VST+Standard UWT
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19 Denoising by MS-VST + Wavelets(4/14) MS-VST+Standard UWT
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20 Denoising by MS-VST + Wavelets(5/14) Detection by wavelet-domain hypothesis test (hard threshold) p : false positive rate (FPR) : standard normal cdf
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21 Denoising by MS-VST + Wavelets(6/14) Iterative reconstruction (soft threshold) a constrained sparsity-promoting minimization problem
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22 Denoising by MS-VST + Wavelets(7/14) Iterative reconstruction hybrid steepest descent (HSD)
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Denoising by MS-VST + Wavelets(8/14) Iterative reconstruction hybrid steepest descent (HSD) 23 positive projection significant coefficient original coefficient gradient component updated coefficient
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24 Denoising by MS-VST + Wavelets(9/14) Algorithm of MS-VST + Standard UWT
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25 Denoising by MS-VST + Wavelets(10/14) Algorithm of MS-VST + Standard UWT
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26 Denoising by MS-VST + Wavelets(11/14) Applications and results Simulated Biological Image Restoration oringinal image observed photon-count image
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27 Denoising by MS-VST + Wavelets(12/14) Applications and results Simulated Biological Image Restoration denoised by Haar hypothesis tests MS-VST-denoised image
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28 Denoising by MS-VST + Wavelets(13/14) Applications and results Astronomical Image Restoration Galaxy image observed image
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29 Denoising by MS-VST + Wavelets(14/14) Applications and results Astronomical Image Restoration denoised by Haar hypothesis tests MS-VST-denoised image
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30 Ridgelets & Curvelets (1/11) Ridgelet Transform (Candes, 1998): Ridgelet function: The function is constant along lines. Transverse to these ridges, it is a wavelet.
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31 Ridgelets & Curvelets (2/11) The ridgelet coefficients of an object f are given by analysis of the Radon transform via:
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32 Ridgelets & Curvelets (3/11) Algorithm of MS-VST With Ridgelets
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33 Ridgelets & Curvelets (4/11) Results of MS-VST With Ridgelets Intensity Image Poisson Noise Image
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34 Ridgelets & Curvelets (5/11) Results of MS-VST With Ridgelets Intensity Image Poisson Noise Image
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35 Ridgelets & Curvelets (6/11) Results of MS-VST With Ridgelets denoised by MS-VST+UWT MS-VST + ridgelets
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36 Ridgelets & Curvelets (7/11) Curvelets Decomposition of the original image into subbands Spatial partitioning of each subband Appling the ridgelet transform
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37 Ridgelets & Curvelets (8/11) Algorithm of MS-VST With Curvelets
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38 Ridgelets & Curvelets (9/11) Algorithm of MS-VST With Curvelets
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39 Ridgelets & Curvelets (10/11) Results of MS-VST With Curvelets Natural Image Restoration Intensity Image Poisson Noise Image
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40 Ridgelets & Curvelets (11/11) Results of MS-VST With Curvelets Natural Image Restoration denoised by MS-VST+UWT MS-VST + curvelets
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41 Conclusions It is efficient and sensitive in detecting faint features at a very low-count rate. We have the choice to integrate the VST with the multiscale transform we believe to be the most suitable for restoring a given kind of morphological feature (isotropic, line-like, curvilinear, etc). The computation time is similar to that of a Gaussian denoising, which makes our denoising method capable of processing large data sets.
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42 Reference Bo Zhang, J. M. Fadili and J. L. Starck, "Wavelets, ridgelets, and curvelets for Poisson noise removal," IEEE Trans. Image Process., vol. 17, pp. 1093; 1093-1108; 1108, 07 2008. 2008. R.C. Gonzalez and R.E. Woods, “Digital Image Processing 2nd Edition, Chapter 7”,Prentice Hall, 2002
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