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309 lines
14 KiB
309 lines
14 KiB
/* |
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By downloading, copying, installing or using the software you agree to this |
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license. 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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License Agreement |
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For Open Source Computer Vision Library |
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(3-clause BSD License) |
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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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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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* Redistributions 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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* Redistributions 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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* Neither the names of the copyright holders nor the names of the contributors |
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may be used to endorse or promote products derived from this software |
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without specific prior written permission. |
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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 |
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disclaimed. In no event shall copyright holders or contributors be liable for |
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any direct, 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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#ifndef __OPENCV_OPTFLOW_HPP__ |
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#define __OPENCV_OPTFLOW_HPP__ |
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#include "opencv2/core.hpp" |
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#include "opencv2/video.hpp" |
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/** |
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@defgroup optflow Optical Flow Algorithms |
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Dense optical flow algorithms compute motion for each point: |
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- cv::optflow::calcOpticalFlowSF |
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- cv::optflow::createOptFlow_DeepFlow |
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Motion templates is alternative technique for detecting motion and computing its direction. |
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See samples/motempl.py. |
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- cv::motempl::updateMotionHistory |
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- cv::motempl::calcMotionGradient |
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- cv::motempl::calcGlobalOrientation |
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- cv::motempl::segmentMotion |
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Functions reading and writing .flo files in "Middlebury" format, see: <http://vision.middlebury.edu/flow/code/flow-code/README.txt> |
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- cv::optflow::readOpticalFlow |
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- cv::optflow::writeOpticalFlow |
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*/ |
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#include "opencv2/optflow/pcaflow.hpp" |
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#include "opencv2/optflow/sparse_matching_gpc.hpp" |
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#include "opencv2/optflow/rlofflow.hpp" |
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namespace cv |
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{ |
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namespace optflow |
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{ |
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//! @addtogroup optflow |
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//! @{ |
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/** @overload */ |
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CV_EXPORTS_W void calcOpticalFlowSF( InputArray from, InputArray to, OutputArray flow, |
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int layers, int averaging_block_size, int max_flow); |
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/** @brief Calculate an optical flow using "SimpleFlow" algorithm. |
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@param from First 8-bit 3-channel image. |
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@param to Second 8-bit 3-channel image of the same size as prev |
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@param flow computed flow image that has the same size as prev and type CV_32FC2 |
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@param layers Number of layers |
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@param averaging_block_size Size of block through which we sum up when calculate cost function |
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for pixel |
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@param max_flow maximal flow that we search at each level |
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@param sigma_dist vector smooth spatial sigma parameter |
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@param sigma_color vector smooth color sigma parameter |
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@param postprocess_window window size for postprocess cross bilateral filter |
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@param sigma_dist_fix spatial sigma for postprocess cross bilateralf filter |
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@param sigma_color_fix color sigma for postprocess cross bilateral filter |
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@param occ_thr threshold for detecting occlusions |
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@param upscale_averaging_radius window size for bilateral upscale operation |
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@param upscale_sigma_dist spatial sigma for bilateral upscale operation |
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@param upscale_sigma_color color sigma for bilateral upscale operation |
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@param speed_up_thr threshold to detect point with irregular flow - where flow should be |
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recalculated after upscale |
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See @cite Tao2012 . And site of project - <http://graphics.berkeley.edu/papers/Tao-SAN-2012-05/>. |
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@note |
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- An example using the simpleFlow algorithm can be found at samples/simpleflow_demo.cpp |
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*/ |
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CV_EXPORTS_W void calcOpticalFlowSF( InputArray from, InputArray to, OutputArray flow, int layers, |
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int averaging_block_size, int max_flow, |
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double sigma_dist, double sigma_color, int postprocess_window, |
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double sigma_dist_fix, double sigma_color_fix, double occ_thr, |
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int upscale_averaging_radius, double upscale_sigma_dist, |
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double upscale_sigma_color, double speed_up_thr ); |
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/** @brief Fast dense optical flow based on PyrLK sparse matches interpolation. |
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@param from first 8-bit 3-channel or 1-channel image. |
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@param to second 8-bit 3-channel or 1-channel image of the same size as from |
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@param flow computed flow image that has the same size as from and CV_32FC2 type |
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@param grid_step stride used in sparse match computation. Lower values usually |
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result in higher quality but slow down the algorithm. |
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@param k number of nearest-neighbor matches considered, when fitting a locally affine |
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model. Lower values can make the algorithm noticeably faster at the cost of |
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some quality degradation. |
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@param sigma parameter defining how fast the weights decrease in the locally-weighted affine |
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fitting. Higher values can help preserve fine details, lower values can help to get rid |
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of the noise in the output flow. |
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@param use_post_proc defines whether the ximgproc::fastGlobalSmootherFilter() is used |
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for post-processing after interpolation |
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@param fgs_lambda see the respective parameter of the ximgproc::fastGlobalSmootherFilter() |
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@param fgs_sigma see the respective parameter of the ximgproc::fastGlobalSmootherFilter() |
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*/ |
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CV_EXPORTS_W void calcOpticalFlowSparseToDense ( InputArray from, InputArray to, OutputArray flow, |
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int grid_step = 8, int k = 128, float sigma = 0.05f, |
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bool use_post_proc = true, float fgs_lambda = 500.0f, |
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float fgs_sigma = 1.5f ); |
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/** @brief DeepFlow optical flow algorithm implementation. |
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The class implements the DeepFlow optical flow algorithm described in @cite Weinzaepfel2013 . See |
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also <http://lear.inrialpes.fr/src/deepmatching/> . |
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Parameters - class fields - that may be modified after creating a class instance: |
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- member float alpha |
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Smoothness assumption weight |
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- member float delta |
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Color constancy assumption weight |
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- member float gamma |
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Gradient constancy weight |
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- member float sigma |
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Gaussian smoothing parameter |
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- member int minSize |
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Minimal dimension of an image in the pyramid (next, smaller images in the pyramid are generated |
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until one of the dimensions reaches this size) |
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- member float downscaleFactor |
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Scaling factor in the image pyramid (must be \< 1) |
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- member int fixedPointIterations |
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How many iterations on each level of the pyramid |
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- member int sorIterations |
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Iterations of Succesive Over-Relaxation (solver) |
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- member float omega |
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Relaxation factor in SOR |
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*/ |
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CV_EXPORTS_W Ptr<DenseOpticalFlow> createOptFlow_DeepFlow(); |
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//! Additional interface to the SimpleFlow algorithm - calcOpticalFlowSF() |
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CV_EXPORTS_W Ptr<DenseOpticalFlow> createOptFlow_SimpleFlow(); |
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//! Additional interface to the Farneback's algorithm - calcOpticalFlowFarneback() |
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CV_EXPORTS_W Ptr<DenseOpticalFlow> createOptFlow_Farneback(); |
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//! Additional interface to the SparseToDenseFlow algorithm - calcOpticalFlowSparseToDense() |
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CV_EXPORTS_W Ptr<DenseOpticalFlow> createOptFlow_SparseToDense(); |
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/** @brief "Dual TV L1" Optical Flow Algorithm. |
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The class implements the "Dual TV L1" optical flow algorithm described in @cite Zach2007 and |
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@cite Javier2012 . |
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Here are important members of the class that control the algorithm, which you can set after |
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constructing the class instance: |
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- member double tau |
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Time step of the numerical scheme. |
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- member double lambda |
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Weight parameter for the data term, attachment parameter. This is the most relevant |
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parameter, which determines the smoothness of the output. The smaller this parameter is, |
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the smoother the solutions we obtain. It depends on the range of motions of the images, so |
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its value should be adapted to each image sequence. |
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- member double theta |
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Weight parameter for (u - v)\^2, tightness parameter. It serves as a link between the |
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attachment and the regularization terms. In theory, it should have a small value in order |
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to maintain both parts in correspondence. The method is stable for a large range of values |
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of this parameter. |
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- member int nscales |
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Number of scales used to create the pyramid of images. |
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- member int warps |
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Number of warpings per scale. Represents the number of times that I1(x+u0) and grad( |
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I1(x+u0) ) are computed per scale. This is a parameter that assures the stability of the |
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method. It also affects the running time, so it is a compromise between speed and |
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accuracy. |
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- member double epsilon |
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Stopping criterion threshold used in the numerical scheme, which is a trade-off between |
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precision and running time. A small value will yield more accurate solutions at the |
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expense of a slower convergence. |
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- member int iterations |
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Stopping criterion iterations number used in the numerical scheme. |
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C. Zach, T. Pock and H. Bischof, "A Duality Based Approach for Realtime TV-L1 Optical Flow". |
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Javier Sanchez, Enric Meinhardt-Llopis and Gabriele Facciolo. "TV-L1 Optical Flow Estimation". |
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*/ |
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class CV_EXPORTS_W DualTVL1OpticalFlow : public DenseOpticalFlow |
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{ |
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public: |
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//! @brief Time step of the numerical scheme |
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/** @see setTau */ |
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CV_WRAP virtual double getTau() const = 0; |
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/** @copybrief getTau @see getTau */ |
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CV_WRAP virtual void setTau(double val) = 0; |
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//! @brief Weight parameter for the data term, attachment parameter |
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/** @see setLambda */ |
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CV_WRAP virtual double getLambda() const = 0; |
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/** @copybrief getLambda @see getLambda */ |
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CV_WRAP virtual void setLambda(double val) = 0; |
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//! @brief Weight parameter for (u - v)^2, tightness parameter |
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/** @see setTheta */ |
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CV_WRAP virtual double getTheta() const = 0; |
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/** @copybrief getTheta @see getTheta */ |
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CV_WRAP virtual void setTheta(double val) = 0; |
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//! @brief coefficient for additional illumination variation term |
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/** @see setGamma */ |
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CV_WRAP virtual double getGamma() const = 0; |
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/** @copybrief getGamma @see getGamma */ |
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CV_WRAP virtual void setGamma(double val) = 0; |
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//! @brief Number of scales used to create the pyramid of images |
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/** @see setScalesNumber */ |
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CV_WRAP virtual int getScalesNumber() const = 0; |
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/** @copybrief getScalesNumber @see getScalesNumber */ |
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CV_WRAP virtual void setScalesNumber(int val) = 0; |
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//! @brief Number of warpings per scale |
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/** @see setWarpingsNumber */ |
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CV_WRAP virtual int getWarpingsNumber() const = 0; |
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/** @copybrief getWarpingsNumber @see getWarpingsNumber */ |
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CV_WRAP virtual void setWarpingsNumber(int val) = 0; |
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//! @brief Stopping criterion threshold used in the numerical scheme, which is a trade-off between precision and running time |
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/** @see setEpsilon */ |
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CV_WRAP virtual double getEpsilon() const = 0; |
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/** @copybrief getEpsilon @see getEpsilon */ |
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CV_WRAP virtual void setEpsilon(double val) = 0; |
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//! @brief Inner iterations (between outlier filtering) used in the numerical scheme |
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/** @see setInnerIterations */ |
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CV_WRAP virtual int getInnerIterations() const = 0; |
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/** @copybrief getInnerIterations @see getInnerIterations */ |
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CV_WRAP virtual void setInnerIterations(int val) = 0; |
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//! @brief Outer iterations (number of inner loops) used in the numerical scheme |
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/** @see setOuterIterations */ |
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CV_WRAP virtual int getOuterIterations() const = 0; |
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/** @copybrief getOuterIterations @see getOuterIterations */ |
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CV_WRAP virtual void setOuterIterations(int val) = 0; |
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//! @brief Use initial flow |
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/** @see setUseInitialFlow */ |
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CV_WRAP virtual bool getUseInitialFlow() const = 0; |
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/** @copybrief getUseInitialFlow @see getUseInitialFlow */ |
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CV_WRAP virtual void setUseInitialFlow(bool val) = 0; |
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//! @brief Step between scales (<1) |
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/** @see setScaleStep */ |
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CV_WRAP virtual double getScaleStep() const = 0; |
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/** @copybrief getScaleStep @see getScaleStep */ |
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CV_WRAP virtual void setScaleStep(double val) = 0; |
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//! @brief Median filter kernel size (1 = no filter) (3 or 5) |
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/** @see setMedianFiltering */ |
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CV_WRAP virtual int getMedianFiltering() const = 0; |
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/** @copybrief getMedianFiltering @see getMedianFiltering */ |
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CV_WRAP virtual void setMedianFiltering(int val) = 0; |
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/** @brief Creates instance of cv::DualTVL1OpticalFlow*/ |
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CV_WRAP static Ptr<DualTVL1OpticalFlow> create( |
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double tau = 0.25, |
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double lambda = 0.15, |
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double theta = 0.3, |
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int nscales = 5, |
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int warps = 5, |
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double epsilon = 0.01, |
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int innnerIterations = 30, |
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int outerIterations = 10, |
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double scaleStep = 0.8, |
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double gamma = 0.0, |
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int medianFiltering = 5, |
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bool useInitialFlow = false); |
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}; |
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/** @brief Creates instance of cv::DenseOpticalFlow |
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*/ |
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CV_EXPORTS_W Ptr<DualTVL1OpticalFlow> createOptFlow_DualTVL1(); |
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//! @} |
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} //optflow |
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} |
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#include "opencv2/optflow/motempl.hpp" |
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#endif
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