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232 lines
9.7 KiB
C++
232 lines
9.7 KiB
C++
/*
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#
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# File : pde_TschumperleDeriche2d.cpp
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# ( C++ source file )
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#
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# Description : Implementation of the Tschumperlé-Deriche's Regularization
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# PDE, for 2D multivalued images, as described in the articles below.
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# This file is a part of the CImg Library project.
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# ( http://cimg.eu )
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#
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# (1) PDE-Based Regularization of Multivalued Images and Applications.
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# (D. Tschumperlé). PhD Thesis. University of Nice-Sophia Antipolis, December 2002.
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# (2) Diffusion PDE's on Vector-valued Images : Local Approach and Geometric Viewpoint.
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# (D. Tschumperlé and R. Deriche). IEEE Signal Processing Magazine, October 2002.
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# (3) Vector-Valued Image Regularization with PDE's : A Common Framework for Different Applications.
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# (D. Tschumperlé and R. Deriche). CVPR'2003, Computer Vision and Pattern Recognition,
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# Madison, United States, June 2003.
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#
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# This code can be used to perform image restoration, inpainting, magnification or flow visualization.
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#
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# Copyright : David Tschumperlé
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# ( http://tschumperle.users.greyc.fr/ )
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#
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# License : CeCILL v2.0
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# ( http://www.cecill.info/licences/Licence_CeCILL_V2-en.html )
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#
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# This software is governed by the CeCILL license under French law and
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# abiding by the rules of distribution of free software. You can use,
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# modify and/ or redistribute the software under the terms of the CeCILL
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# license as circulated by CEA, CNRS and INRIA at the following URL
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# "http://www.cecill.info".
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#
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# As a counterpart to the access to the source code and rights to copy,
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# modify and redistribute granted by the license, users are provided only
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# with a limited warranty and the software's author, the holder of the
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# economic rights, and the successive licensors have only limited
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# liability.
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#
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# In this respect, the user's attention is drawn to the risks associated
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# with loading, using, modifying and/or developing or reproducing the
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# software by the user in light of its specific status of free software,
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# that may mean that it is complicated to manipulate, and that also
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# therefore means that it is reserved for developers and experienced
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# professionals having in-depth computer knowledge. Users are therefore
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# encouraged to load and test the software's suitability as regards their
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# requirements in conditions enabling the security of their systems and/or
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# data to be ensured and, more generally, to use and operate it in the
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# same conditions as regards security.
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#
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# The fact that you are presently reading this means that you have had
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# knowledge of the CeCILL license and that you accept its terms.
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#
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*/
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#include "CImg.h"
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using namespace cimg_library;
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#ifndef cimg_imagepath
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#define cimg_imagepath "img/"
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#endif
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#undef min
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#undef max
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// Main procedure
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//----------------
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int main(int argc,char **argv) {
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// Read command line arguments
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//-----------------------------
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cimg_usage("Tschumperlé-Deriche's flow for 2D Image Restoration, Inpainting, Magnification or Flow visualization");
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const char *file_i = cimg_option("-i",cimg_imagepath "milla.bmp","Input image");
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const char *file_m = cimg_option("-m",(char*)NULL,"Mask image (if Inpainting)");
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const char *file_f = cimg_option("-f",(char*)NULL,"Flow image (if Flow visualization)");
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const char *file_o = cimg_option("-o",(char*)NULL,"Output file");
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const double zoom = cimg_option("-zoom",1.0,"Image magnification");
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const unsigned int nb_iter = cimg_option("-iter",100000,"Number of iterations");
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const double dt = cimg_option("-dt",20.0,"Adapting time step");
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const double alpha = cimg_option("-alpha",0.0,"Gradient smoothing");
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const double sigma = cimg_option("-sigma",0.5,"Structure tensor smoothing");
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const float a1 = cimg_option("-a1",0.5f,"Diffusion limiter along minimal variations");
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const float a2 = cimg_option("-a2",0.9f,"Diffusion limiter along maximal variations");
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const double noiseg = cimg_option("-ng",0.0,"Add gauss noise before aplying the algorithm");
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const double noiseu = cimg_option("-nu",0.0,"Add uniform noise before applying the algorithm");
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const double noises = cimg_option("-ns",0.0,"Add salt&pepper noise before applying the algorithm");
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const bool stflag = cimg_option("-stats",false,"Display image statistics at each iteration");
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const unsigned int save = cimg_option("-save",0,"Iteration saving step");
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const unsigned int visu = cimg_option("-visu",10,"Visualization step (0=no visualization)");
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const unsigned int init = cimg_option("-init",3,"Inpainting initialization (0=black, 1=white, 2=noise, 3=unchanged)");
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const unsigned int skip = cimg_option("-skip",1,"Step of image geometry computation");
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bool view_t = cimg_option("-d",false,"View tensor directions (useful for debug)");
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double xdt = 0;
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// Variable initialization
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//-------------------------
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CImg<> img, flow;
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CImg<int> mask;
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if (file_i) {
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img = CImg<>(file_i).resize(-100,-100,1,-100);
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if (file_m) mask = CImg<unsigned char>(file_m).resize(img.width(),img.height(),1,1);
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else if (zoom>1) {
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mask = CImg<int>(img.width(),img.height(),1,1,-1).
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resize((int)(img.width()*zoom),(int)(img.height()*zoom),1,1,4) + 1;
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img.resize((int)(img.width()*zoom),(int)(img.height()*zoom),1,-100,3);
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}
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} else {
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if (file_f) {
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flow = CImg<>(file_f);
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img = CImg<>((int)(flow.width()*zoom),(int)(flow.height()*zoom),1,1,0).noise(100,2);
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flow.resize(img.width(),img.height(),1,2,3);
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} else
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throw CImgException("You need to specify at least one input image (option -i), or one flow image (option -f)");
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}
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img.noise(noiseg,0).noise(noiseu,1).noise(noises,2);
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float initial_min, initial_max = img.max_min(initial_min);
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if (mask && init!=3)
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cimg_forXYC(img,x,y,k) if (mask(x,y))
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img(x,y,k) = (float)((init?
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(init==1?initial_max:((initial_max - initial_min)*cimg::rand())):
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initial_min));
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CImgDisplay disp;
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if (visu) disp.assign(img,"Iterated Image");
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CImg<> G(img.width(),img.height(),1,3,0), T(G), veloc(img), val(2), vec(2,2);
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// PDE main iteration loop
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//-------------------------
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for (unsigned int iter = 0; iter<nb_iter &&
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(!disp || (!disp.is_closed() && !disp.is_keyQ() && !disp.is_keyESC())); ++iter) {
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std::printf("\riter %u , xdt = %g ",iter,xdt); std::fflush(stdout);
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if (stflag) img.print();
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if (disp && disp.is_keySPACE()) { view_t = !view_t; disp.set_key(); }
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if (!(iter%skip)) {
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// Compute the tensor field T, used to drive the diffusion
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//---------------------------------------------------------
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// When using PDE for flow visualization
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if (flow) cimg_forXY(flow,x,y) {
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const float
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u = flow(x,y,0,0),
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v = flow(x,y,0,1),
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n = (float)std::sqrt((double)(u*u + v*v)),
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nn = (n!=0)?n:1;
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T(x,y,0) = u*u/nn;
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T(x,y,1) = u*v/nn;
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T(x,y,2) = v*v/nn;
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} else {
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// Compute structure tensor field G
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CImgList<> grad = img.get_gradient();
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if (alpha!=0) cimglist_for(grad,l) grad[l].blur((float)alpha);
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G.fill(0);
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cimg_forXYC(img,x,y,k) {
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const float ix = grad[0](x,y,k), iy = grad[1](x,y,k);
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G(x,y,0) += ix*ix;
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G(x,y,1) += ix*iy;
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G(x,y,2) += iy*iy;
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}
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if (sigma!=0) G.blur((float)sigma);
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// When using PDE for image restoration, inpainting or zooming
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T.fill(0);
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if (!mask) cimg_forXY(G,x,y) {
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G.get_tensor_at(x,y).symmetric_eigen(val,vec);
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const float
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l1 = (float)std::pow(1.0f + val[0] + val[1],-a1),
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l2 = (float)std::pow(1.0f + val[0] + val[1],-a2),
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ux = vec(1,0),
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uy = vec(1,1);
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T(x,y,0) = l1*ux*ux + l2*uy*uy;
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T(x,y,1) = l1*ux*uy - l2*ux*uy;
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T(x,y,2) = l1*uy*uy + l2*ux*ux;
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}
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else cimg_forXY(G,x,y) if (mask(x,y)) {
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G.get_tensor_at(x,y).symmetric_eigen(val,vec);
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const float
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ux = vec(1,0),
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uy = vec(1,1);
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T(x,y,0) = ux*ux;
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T(x,y,1) = ux*uy;
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T(x,y,2) = uy*uy;
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}
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}
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}
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// Compute the PDE velocity and update the iterated image
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//--------------------------------------------------------
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CImg_3x3(I,float);
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veloc.fill(0);
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cimg_forC(img,k) cimg_for3x3(img,x,y,0,k,I,float) {
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const float
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a = T(x,y,0),
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b = T(x,y,1),
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c = T(x,y,2),
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ixx = Inc + Ipc - 2*Icc,
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iyy = Icn + Icp - 2*Icc,
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ixy = 0.25f*(Ipp + Inn - Ipn - Inp);
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veloc(x,y,k) = a*ixx + 2*b*ixy + c*iyy;
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}
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if (dt>0) {
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float m, M = veloc.max_min(m);
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xdt = dt/std::max(cimg::abs(m),cimg::abs(M));
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} else xdt=-dt;
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img+=veloc*xdt;
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img.cut((float)initial_min,(float)initial_max);
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// Display and save iterations
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if (disp && !(iter%visu)) {
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if (!view_t) img.display(disp);
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else {
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const unsigned char white[3] = {255,255,255};
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CImg<unsigned char> nvisu = img.get_resize(disp.width(),disp.height()).normalize(0,255);
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CImg<> isophotes(img.width(),img.height(),1,2,0);
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cimg_forXY(img,x,y) if (!mask || mask(x,y)) {
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T.get_tensor_at(x,y).symmetric_eigen(val,vec);
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isophotes(x,y,0) = vec(0,0);
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isophotes(x,y,1) = vec(0,1);
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}
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nvisu.draw_quiver(isophotes,white,0.5f,10,9,0).display(disp);
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}
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}
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if (save && file_o && !(iter%save)) img.save(file_o,iter);
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if (disp) disp.resize().display(img);
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}
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// Save result and exit.
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if (file_o) img.save(file_o);
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return 0;
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}
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