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Anisotropic Diffusion for Speckle Reduction of SAR Image
Meihua Xie Department of mathematic and system science Science college, National university of defense technology
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Outline Anisotropic diffusion for image denoising Prior of SAR image
Speckle reduction of SAR image Fast algorithm based on CMG-PDE
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I. Anisotropic diffusion for image denoising
For denoising problem Whose PDE is
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I. Anisotropic diffusion for image denoising
The anisotropic diffusion equation can be written as where D is a diffusion tensor Eigenvalue Eigenvector, corresponding to the edge direction and gradient direction respectively.
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I. Anisotropic diffusion for image denoising
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I. Anisotropic diffusion for image denoising
In traditional equation, eigenvalues are often written as Eigenvector are often written as or
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I. Anisotropic diffusion for image denoising
The direction of edge is not right
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Our anisotropic diffusion for image denoising
Construction of eigenvector
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New anisotropic diffusion for image denosing
Construction of eigenvaule Edge direction Gradient direction Weight function Smooth region Edge region
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New anisotropic diffusion for image denosing
Hence, we obtain the following anisotropic diffusion equation Which can be solved by finite difference.
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The property of new diffusion tensor
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The property of new diffusion tensor
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Numerical results
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Numerical results (b) Anisotropic diffusion (d) Our method
(a) Blur image
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II.Prior of SAR Image Prior of SAR image
Imaging Model of Synthetic Aperture Radar (SAR) is speckle, which has a distribution with expectation of 1. Gamma Distribution Log-Gamma Distribution
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II.Prior of SAR Image Prior of SAR image Distribution of magnitude
Distribution of gradient of magnitude MSTAR Image
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II.Prior of SAR Image Prior of SAR image (a) A MSTAR Image
Target region Background region Shade region (a) A MSTAR Image (b) The curve of sorted magnitude
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III.Speckle reduction of SAR image
Speckle reduction model based on magnitude and gradient Diffusion based on magnitude Just use the information of magnitude will ignore the consistent of region, and led to false point. So we need to use gradient information still.
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III.Speckle reduction of SAR image
Speckle reduction model based on magnitude and gradient
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III.Speckle reduction of SAR image
Speckle reduction model based on magnitude and gradient Note: We can also construct a diffusion coefficient based on magnitude and gradient, but it is very difficult since there exists large difference between the distribution of magnitude and gradient.
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III.Speckle reduction of SAR image
Results
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III.Speckle reduction of SAR image
Speckle reduction model based on magnitude and gradient Results of Effective Number of Looks (ENL) Orignal Lee Frost GammaMAP SRAD Our method Ex1 9.77 11.47 42.33 50.023 135.17 199.65 Ex2 27.89 92.06 164.66 171.92 324.25 381.54 Ex3 3.17 11.21 48.33 77.06 90.04 95.84 Ex4 25.576 78.526 127.17 172.73 223.07 Ex5 1.238 4.877 9.735 9.749 186.77 Ex6 1.853 6.7244 9.439 121.35
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III.Speckle reduction of SAR image
Speckle reduction and target enhancement The above method just reduces noise but does not enhance target, to enhance the target we should use the prior of SAR image furthermore. The following regularization model is used to enhance the target usually, which uses the sparsity of SAR magnitude . The above equation is a compressed estimation of , which often cause the loss of power in image and miss some edge.
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III.Speckle reduction of SAR image
Speckle reduction and target enhancement (a) Original MSTAR Image (b) Image enhanced by regularization
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III.Speckle reduction of SAR image
Speckle reduction and target enhancement (a) Original Image (b) Image enhanced by regularization
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III.Speckle reduction of SAR image
Speckle reduction and target enhancement To reduces noise and enhance target simultaneously, we construct the following variation model Where And the construction of the third item is similarly to the above speckle reduction model. Note: is varied according to the points of image.
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III.Speckle reduction of SAR image
Results (b) Image enhanced by regularization (c) Image enhanced by our method (a) Original Image
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III.Speckle reduction of SAR image
Results (a) The 3dB main-lobe width (b) The target clutter ratio
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IV Fast algorithm based on CMG-PDE
For very large image, the solving of the above equation will be very slow. Here, we provide a method based on Cascadic Multigrid (CMG) and Partial Differential Equation (PDE) What is Cascadic Multigrid (CMG)? The main idea of CMG is similar to multigrid, which also solves the equation on coarse meshes and extrapolates the solution on coarse meshes to refined meshes; But, in CMG, the solution on coarse meshes does not be revised by the solution on refined meshes, which is different to the method of multigrid
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IV Fast algorithm based on CMG-PDE
The steps of the algorithm Firstly, divide the image into several different scale levels, and denote the resolution of each level; Secondly, solve the PDE equation on the coarse grid; Thirdly, using a nonlinear extrapolation method extrapolates the results on coarse grid to finer grid; Frothy, let the extrapolated results to be the initial value of PDE on coarser level and solve it.
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IV Fast algorithm based on CMG-PDE Original PDE Algorithm
Results Image Original PDE Algorithm CMG-PDE Lenna PSNR (dB) Time (s) 1148.5 Cameraman 1.1697e+003 Bacteria
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Thank You!
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