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Open Source Computer Vision Library
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204 lines
7.7 KiB
204 lines
7.7 KiB
/*M/////////////////////////////////////////////////////////////////////////////////////// |
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// |
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// IMPORTANT: READ BEFORE DOWNLOADING, COPYING, INSTALLING OR USING. |
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// |
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// By downloading, copying, installing or using the software you agree to this license. |
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// If you do not agree to this license, do not download, install, |
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// copy or use the software. |
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// |
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// |
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// License Agreement |
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// For Open Source Computer Vision Library |
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// |
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// Copyright (C) 2013, OpenCV Foundation, all rights reserved. |
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// Third party copyrights are property of their respective owners. |
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// |
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// Redistribution and use in source and binary forms, with or without modification, |
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// are permitted provided that the following conditions are met: |
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// |
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// * Redistribution's of source code must retain the above copyright notice, |
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// this list of conditions and the following disclaimer. |
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// |
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// * Redistribution's in binary form must reproduce the above copyright notice, |
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// this list of conditions and the following disclaimer in the documentation |
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// and/or other materials provided with the distribution. |
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// |
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// * The name of the copyright holders may not be used to endorse or promote products |
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// derived from this software without specific prior written permission. |
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// |
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// This software is provided by the copyright holders and contributors "as is" and |
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// any express or implied warranties, including, but not limited to, the implied |
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// warranties of merchantability and fitness for a particular purpose are disclaimed. |
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// In no event shall the OpenCV Foundation or contributors be liable for any direct, |
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// indirect, incidental, special, exemplary, or consequential damages |
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// (including, but not limited to, procurement of substitute goods or services; |
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// loss of use, data, or profits; or business interruption) however caused |
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// and on any theory of liability, whether in contract, strict liability, |
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// or tort (including negligence or otherwise) arising in any way out of |
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// the use of this software, even if advised of the possibility of such damage. |
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// |
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//M*/ |
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#include "precomp.hpp" |
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#define dprintf(x) |
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#define print_matrix(x) |
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namespace cv |
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{ |
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double MinProblemSolver::Function::getGradientEps() const { return 1e-3; } |
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void MinProblemSolver::Function::getGradient(const double* x, double* grad) |
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{ |
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double eps = getGradientEps(); |
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int i, n = getDims(); |
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AutoBuffer<double> x_buf(n); |
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double* x_ = x_buf.data(); |
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for( i = 0; i < n; i++ ) |
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x_[i] = x[i]; |
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for( i = 0; i < n; i++ ) |
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{ |
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x_[i] = x[i] + eps; |
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double y1 = calc(x_); |
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x_[i] = x[i] - eps; |
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double y0 = calc(x_); |
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grad[i] = (y1 - y0)/(2*eps); |
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x_[i] = x[i]; |
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} |
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} |
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#define SEC_METHOD_ITERATIONS 4 |
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#define INITIAL_SEC_METHOD_SIGMA 0.1 |
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class ConjGradSolverImpl CV_FINAL : public ConjGradSolver |
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{ |
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public: |
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Ptr<Function> getFunction() const CV_OVERRIDE; |
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void setFunction(const Ptr<Function>& f) CV_OVERRIDE; |
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TermCriteria getTermCriteria() const CV_OVERRIDE; |
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ConjGradSolverImpl(); |
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void setTermCriteria(const TermCriteria& termcrit) CV_OVERRIDE; |
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double minimize(InputOutputArray x) CV_OVERRIDE; |
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protected: |
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Ptr<MinProblemSolver::Function> _Function; |
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TermCriteria _termcrit; |
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Mat_<double> d,r,buf_x,r_old; |
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Mat_<double> minimizeOnTheLine_buf1,minimizeOnTheLine_buf2; |
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private: |
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static void minimizeOnTheLine(Ptr<MinProblemSolver::Function> _f,Mat_<double>& x,const Mat_<double>& d,Mat_<double>& buf1,Mat_<double>& buf2); |
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}; |
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void ConjGradSolverImpl::minimizeOnTheLine(Ptr<MinProblemSolver::Function> _f,Mat_<double>& x,const Mat_<double>& d,Mat_<double>& buf1, |
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Mat_<double>& buf2){ |
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double sigma=INITIAL_SEC_METHOD_SIGMA; |
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buf1=0.0; |
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buf2=0.0; |
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dprintf(("before minimizeOnTheLine\n")); |
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dprintf(("x:\n")); |
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print_matrix(x); |
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dprintf(("d:\n")); |
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print_matrix(d); |
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for(int i=0;i<SEC_METHOD_ITERATIONS;i++){ |
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_f->getGradient((double*)x.data,(double*)buf1.data); |
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dprintf(("buf1:\n")); |
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print_matrix(buf1); |
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x=x+sigma*d; |
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_f->getGradient((double*)x.data,(double*)buf2.data); |
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dprintf(("buf2:\n")); |
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print_matrix(buf2); |
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double d1=buf1.dot(d), d2=buf2.dot(d); |
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if((d1-d2)==0){ |
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break; |
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} |
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double alpha=-sigma*d1/(d2-d1); |
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dprintf(("(buf2.dot(d)-buf1.dot(d))=%f\nalpha=%f\n",(buf2.dot(d)-buf1.dot(d)),alpha)); |
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x=x+(alpha-sigma)*d; |
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sigma=-alpha; |
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} |
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dprintf(("after minimizeOnTheLine\n")); |
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print_matrix(x); |
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} |
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double ConjGradSolverImpl::minimize(InputOutputArray x){ |
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CV_Assert(_Function.empty()==false); |
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dprintf(("termcrit:\n\ttype: %d\n\tmaxCount: %d\n\tEPS: %g\n",_termcrit.type,_termcrit.maxCount,_termcrit.epsilon)); |
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Mat x_mat=x.getMat(); |
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CV_Assert(MIN(x_mat.rows,x_mat.cols)==1); |
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int ndim=MAX(x_mat.rows,x_mat.cols); |
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CV_Assert(x_mat.type()==CV_64FC1); |
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if(d.cols!=ndim){ |
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d.create(1,ndim); |
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r.create(1,ndim); |
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r_old.create(1,ndim); |
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minimizeOnTheLine_buf1.create(1,ndim); |
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minimizeOnTheLine_buf2.create(1,ndim); |
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} |
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Mat_<double> proxy_x; |
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if(x_mat.rows>1){ |
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buf_x.create(1,ndim); |
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Mat_<double> proxy(ndim,1,buf_x.ptr<double>()); |
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x_mat.copyTo(proxy); |
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proxy_x=buf_x; |
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}else{ |
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proxy_x=x_mat; |
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} |
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_Function->getGradient(proxy_x.ptr<double>(),d.ptr<double>()); |
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d*=-1.0; |
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d.copyTo(r); |
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//here everything goes. check that everything is set properly |
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dprintf(("proxy_x\n"));print_matrix(proxy_x); |
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dprintf(("d first time\n"));print_matrix(d); |
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dprintf(("r\n"));print_matrix(r); |
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for(int count=0;count<_termcrit.maxCount;count++){ |
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minimizeOnTheLine(_Function,proxy_x,d,minimizeOnTheLine_buf1,minimizeOnTheLine_buf2); |
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r.copyTo(r_old); |
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_Function->getGradient(proxy_x.ptr<double>(),r.ptr<double>()); |
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r*=-1.0; |
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double r_norm_sq=norm(r); |
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if(_termcrit.type==(TermCriteria::MAX_ITER+TermCriteria::EPS) && r_norm_sq<_termcrit.epsilon){ |
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break; |
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} |
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r_norm_sq=r_norm_sq*r_norm_sq; |
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double beta=MAX(0.0,(r_norm_sq-r.dot(r_old))/r_norm_sq); |
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d=r+beta*d; |
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} |
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if(x_mat.rows>1){ |
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Mat(ndim, 1, CV_64F, proxy_x.ptr<double>()).copyTo(x); |
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} |
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return _Function->calc(proxy_x.ptr<double>()); |
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} |
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ConjGradSolverImpl::ConjGradSolverImpl(){ |
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_Function=Ptr<Function>(); |
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} |
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Ptr<MinProblemSolver::Function> ConjGradSolverImpl::getFunction()const{ |
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return _Function; |
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} |
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void ConjGradSolverImpl::setFunction(const Ptr<Function>& f){ |
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_Function=f; |
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} |
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TermCriteria ConjGradSolverImpl::getTermCriteria()const{ |
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return _termcrit; |
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} |
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void ConjGradSolverImpl::setTermCriteria(const TermCriteria& termcrit){ |
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CV_Assert((termcrit.type==(TermCriteria::MAX_ITER+TermCriteria::EPS) && termcrit.epsilon>0 && termcrit.maxCount>0) || |
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((termcrit.type==TermCriteria::MAX_ITER) && termcrit.maxCount>0)); |
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_termcrit=termcrit; |
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} |
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// both minRange & minError are specified by termcrit.epsilon; In addition, user may specify the number of iterations that the algorithm does. |
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Ptr<ConjGradSolver> ConjGradSolver::create(const Ptr<MinProblemSolver::Function>& f, TermCriteria termcrit){ |
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Ptr<ConjGradSolver> CG = makePtr<ConjGradSolverImpl>(); |
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CG->setFunction(f); |
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CG->setTermCriteria(termcrit); |
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return CG; |
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} |
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}
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