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271 lines
9.5 KiB
271 lines
9.5 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) 2000-2008, Intel Corporation, all rights reserved. |
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// Copyright (C) 2009, Willow Garage Inc., 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 Intel Corporation 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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#if !defined HAVE_CUDA || defined(CUDA_DISABLER) |
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cv::cuda::OpticalFlowDual_TVL1_CUDA::OpticalFlowDual_TVL1_CUDA() { throw_no_cuda(); } |
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void cv::cuda::OpticalFlowDual_TVL1_CUDA::operator ()(const GpuMat&, const GpuMat&, GpuMat&, GpuMat&) { throw_no_cuda(); } |
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void cv::cuda::OpticalFlowDual_TVL1_CUDA::collectGarbage() {} |
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void cv::cuda::OpticalFlowDual_TVL1_CUDA::procOneScale(const GpuMat&, const GpuMat&, GpuMat&, GpuMat&) { throw_no_cuda(); } |
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#else |
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using namespace cv; |
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using namespace cv::cuda; |
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cv::cuda::OpticalFlowDual_TVL1_CUDA::OpticalFlowDual_TVL1_CUDA() |
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{ |
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tau = 0.25; |
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lambda = 0.15; |
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theta = 0.3; |
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nscales = 5; |
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warps = 5; |
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epsilon = 0.01; |
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iterations = 300; |
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scaleStep = 0.8; |
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useInitialFlow = false; |
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} |
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void cv::cuda::OpticalFlowDual_TVL1_CUDA::operator ()(const GpuMat& I0, const GpuMat& I1, GpuMat& flowx, GpuMat& flowy) |
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{ |
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CV_Assert( I0.type() == CV_8UC1 || I0.type() == CV_32FC1 ); |
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CV_Assert( I0.size() == I1.size() ); |
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CV_Assert( I0.type() == I1.type() ); |
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CV_Assert( !useInitialFlow || (flowx.size() == I0.size() && flowx.type() == CV_32FC1 && flowy.size() == flowx.size() && flowy.type() == flowx.type()) ); |
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CV_Assert( nscales > 0 ); |
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// allocate memory for the pyramid structure |
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I0s.resize(nscales); |
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I1s.resize(nscales); |
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u1s.resize(nscales); |
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u2s.resize(nscales); |
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I0.convertTo(I0s[0], CV_32F, I0.depth() == CV_8U ? 1.0 : 255.0); |
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I1.convertTo(I1s[0], CV_32F, I1.depth() == CV_8U ? 1.0 : 255.0); |
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if (!useInitialFlow) |
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{ |
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flowx.create(I0.size(), CV_32FC1); |
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flowy.create(I0.size(), CV_32FC1); |
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} |
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u1s[0] = flowx; |
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u2s[0] = flowy; |
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I1x_buf.create(I0.size(), CV_32FC1); |
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I1y_buf.create(I0.size(), CV_32FC1); |
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I1w_buf.create(I0.size(), CV_32FC1); |
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I1wx_buf.create(I0.size(), CV_32FC1); |
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I1wy_buf.create(I0.size(), CV_32FC1); |
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grad_buf.create(I0.size(), CV_32FC1); |
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rho_c_buf.create(I0.size(), CV_32FC1); |
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p11_buf.create(I0.size(), CV_32FC1); |
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p12_buf.create(I0.size(), CV_32FC1); |
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p21_buf.create(I0.size(), CV_32FC1); |
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p22_buf.create(I0.size(), CV_32FC1); |
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diff_buf.create(I0.size(), CV_32FC1); |
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// create the scales |
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for (int s = 1; s < nscales; ++s) |
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{ |
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cuda::resize(I0s[s-1], I0s[s], Size(), scaleStep, scaleStep); |
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cuda::resize(I1s[s-1], I1s[s], Size(), scaleStep, scaleStep); |
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if (I0s[s].cols < 16 || I0s[s].rows < 16) |
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{ |
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nscales = s; |
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break; |
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} |
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if (useInitialFlow) |
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{ |
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cuda::resize(u1s[s-1], u1s[s], Size(), scaleStep, scaleStep); |
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cuda::resize(u2s[s-1], u2s[s], Size(), scaleStep, scaleStep); |
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cuda::multiply(u1s[s], Scalar::all(scaleStep), u1s[s]); |
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cuda::multiply(u2s[s], Scalar::all(scaleStep), u2s[s]); |
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} |
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else |
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{ |
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u1s[s].create(I0s[s].size(), CV_32FC1); |
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u2s[s].create(I0s[s].size(), CV_32FC1); |
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} |
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} |
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if (!useInitialFlow) |
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{ |
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u1s[nscales-1].setTo(Scalar::all(0)); |
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u2s[nscales-1].setTo(Scalar::all(0)); |
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} |
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// pyramidal structure for computing the optical flow |
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for (int s = nscales - 1; s >= 0; --s) |
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{ |
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// compute the optical flow at the current scale |
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procOneScale(I0s[s], I1s[s], u1s[s], u2s[s]); |
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// if this was the last scale, finish now |
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if (s == 0) |
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break; |
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// otherwise, upsample the optical flow |
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// zoom the optical flow for the next finer scale |
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cuda::resize(u1s[s], u1s[s - 1], I0s[s - 1].size()); |
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cuda::resize(u2s[s], u2s[s - 1], I0s[s - 1].size()); |
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// scale the optical flow with the appropriate zoom factor |
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cuda::multiply(u1s[s - 1], Scalar::all(1/scaleStep), u1s[s - 1]); |
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cuda::multiply(u2s[s - 1], Scalar::all(1/scaleStep), u2s[s - 1]); |
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} |
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} |
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namespace tvl1flow |
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{ |
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void centeredGradient(PtrStepSzf src, PtrStepSzf dx, PtrStepSzf dy); |
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void warpBackward(PtrStepSzf I0, PtrStepSzf I1, PtrStepSzf I1x, PtrStepSzf I1y, PtrStepSzf u1, PtrStepSzf u2, PtrStepSzf I1w, PtrStepSzf I1wx, PtrStepSzf I1wy, PtrStepSzf grad, PtrStepSzf rho); |
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void estimateU(PtrStepSzf I1wx, PtrStepSzf I1wy, |
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PtrStepSzf grad, PtrStepSzf rho_c, |
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PtrStepSzf p11, PtrStepSzf p12, PtrStepSzf p21, PtrStepSzf p22, |
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PtrStepSzf u1, PtrStepSzf u2, PtrStepSzf error, |
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float l_t, float theta, bool calcError); |
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void estimateDualVariables(PtrStepSzf u1, PtrStepSzf u2, PtrStepSzf p11, PtrStepSzf p12, PtrStepSzf p21, PtrStepSzf p22, float taut); |
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} |
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void cv::cuda::OpticalFlowDual_TVL1_CUDA::procOneScale(const GpuMat& I0, const GpuMat& I1, GpuMat& u1, GpuMat& u2) |
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{ |
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using namespace tvl1flow; |
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const double scaledEpsilon = epsilon * epsilon * I0.size().area(); |
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CV_DbgAssert( I1.size() == I0.size() ); |
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CV_DbgAssert( I1.type() == I0.type() ); |
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CV_DbgAssert( u1.size() == I0.size() ); |
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CV_DbgAssert( u2.size() == u1.size() ); |
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GpuMat I1x = I1x_buf(Rect(0, 0, I0.cols, I0.rows)); |
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GpuMat I1y = I1y_buf(Rect(0, 0, I0.cols, I0.rows)); |
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centeredGradient(I1, I1x, I1y); |
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GpuMat I1w = I1w_buf(Rect(0, 0, I0.cols, I0.rows)); |
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GpuMat I1wx = I1wx_buf(Rect(0, 0, I0.cols, I0.rows)); |
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GpuMat I1wy = I1wy_buf(Rect(0, 0, I0.cols, I0.rows)); |
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GpuMat grad = grad_buf(Rect(0, 0, I0.cols, I0.rows)); |
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GpuMat rho_c = rho_c_buf(Rect(0, 0, I0.cols, I0.rows)); |
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GpuMat p11 = p11_buf(Rect(0, 0, I0.cols, I0.rows)); |
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GpuMat p12 = p12_buf(Rect(0, 0, I0.cols, I0.rows)); |
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GpuMat p21 = p21_buf(Rect(0, 0, I0.cols, I0.rows)); |
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GpuMat p22 = p22_buf(Rect(0, 0, I0.cols, I0.rows)); |
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p11.setTo(Scalar::all(0)); |
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p12.setTo(Scalar::all(0)); |
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p21.setTo(Scalar::all(0)); |
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p22.setTo(Scalar::all(0)); |
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GpuMat diff = diff_buf(Rect(0, 0, I0.cols, I0.rows)); |
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const float l_t = static_cast<float>(lambda * theta); |
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const float taut = static_cast<float>(tau / theta); |
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for (int warpings = 0; warpings < warps; ++warpings) |
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{ |
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warpBackward(I0, I1, I1x, I1y, u1, u2, I1w, I1wx, I1wy, grad, rho_c); |
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double error = std::numeric_limits<double>::max(); |
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double prevError = 0.0; |
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for (int n = 0; error > scaledEpsilon && n < iterations; ++n) |
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{ |
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// some tweaks to make sum operation less frequently |
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bool calcError = (epsilon > 0) && (n & 0x1) && (prevError < scaledEpsilon); |
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estimateU(I1wx, I1wy, grad, rho_c, p11, p12, p21, p22, u1, u2, diff, l_t, static_cast<float>(theta), calcError); |
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if (calcError) |
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{ |
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error = cuda::sum(diff, norm_buf)[0]; |
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prevError = error; |
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} |
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else |
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{ |
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error = std::numeric_limits<double>::max(); |
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prevError -= scaledEpsilon; |
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} |
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estimateDualVariables(u1, u2, p11, p12, p21, p22, taut); |
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} |
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} |
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} |
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void cv::cuda::OpticalFlowDual_TVL1_CUDA::collectGarbage() |
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{ |
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I0s.clear(); |
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I1s.clear(); |
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u1s.clear(); |
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u2s.clear(); |
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I1x_buf.release(); |
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I1y_buf.release(); |
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I1w_buf.release(); |
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I1wx_buf.release(); |
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I1wy_buf.release(); |
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grad_buf.release(); |
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rho_c_buf.release(); |
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p11_buf.release(); |
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p12_buf.release(); |
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p21_buf.release(); |
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p22_buf.release(); |
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diff_buf.release(); |
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norm_buf.release(); |
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} |
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#endif // !defined HAVE_CUDA || defined(CUDA_DISABLER)
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