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268 lines
10 KiB
268 lines
10 KiB
/* |
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IMPORTANT: READ BEFORE DOWNLOADING, COPYING, INSTALLING OR USING. |
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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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BSD 3-Clause License |
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Copyright (C) 2014, Olexa Bilaniuk, Hamid Bazargani & Robert Laganiere, all rights reserved. |
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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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* 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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* 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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* 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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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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/** |
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* Bilaniuk, Olexa, Hamid Bazargani, and Robert Laganiere. "Fast Target |
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* Recognition on Mobile Devices: Revisiting Gaussian Elimination for the |
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* Estimation of Planar Homographies." In Computer Vision and Pattern |
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* Recognition Workshops (CVPRW), 2014 IEEE Conference on, pp. 119-125. |
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* IEEE, 2014. |
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*/ |
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/* Include Guards */ |
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#ifndef __OPENCV_RHO_H__ |
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#define __OPENCV_RHO_H__ |
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/* Includes */ |
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#include <opencv2/core.hpp> |
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#include <stdint.h> |
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/* Defines */ |
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/* Flags */ |
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#ifndef RHO_FLAG_NONE |
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#define RHO_FLAG_NONE (0U<<0) |
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#endif |
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#ifndef RHO_FLAG_ENABLE_NR |
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#define RHO_FLAG_ENABLE_NR (1U<<0) |
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#endif |
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#ifndef RHO_FLAG_ENABLE_REFINEMENT |
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#define RHO_FLAG_ENABLE_REFINEMENT (1U<<1) |
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#endif |
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#ifndef RHO_FLAG_ENABLE_FINAL_REFINEMENT |
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#define RHO_FLAG_ENABLE_FINAL_REFINEMENT (1U<<2) |
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#endif |
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/* Namespace cv */ |
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namespace cv{ |
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/* Data structures */ |
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/** |
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* Homography Estimation context. |
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*/ |
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struct RHO_HEST; |
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typedef struct RHO_HEST RHO_HEST; |
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/* Functions */ |
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/** |
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* Initialize the estimator context, by allocating the aligned buffers |
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* internally needed. |
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* |
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* @return A pointer to the context if successful; NULL if an error occured. |
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*/ |
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Ptr<RHO_HEST> rhoInit(void); |
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/** |
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* Ensure that the estimator context's internal table for non-randomness |
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* criterion is at least of the given size, and uses the given beta. The table |
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* should be larger than the maximum number of matches fed into the estimator. |
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* |
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* A value of N of 0 requests deallocation of the table. |
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* |
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* @param [in] p The initialized estimator context |
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* @param [in] N If 0, deallocate internal table. If > 0, ensure that the |
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* internal table is of at least this size, reallocating if |
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* necessary. |
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* @param [in] beta The beta-factor to use within the table. |
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* @return 0 if unsuccessful; non-zero otherwise. |
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*/ |
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int rhoEnsureCapacity(Ptr<RHO_HEST> p, unsigned N, double beta); |
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/** |
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* Seeds the internal PRNG with the given seed. |
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* |
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* Although it is not required to call this function, since context |
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* initialization seeds itself with entropy from rand(), this function allows |
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* reproducible results by using a specified seed. |
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* |
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* @param [in] p The estimator context whose PRNG is to be seeded. |
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* @param [in] seed The 64-bit integer seed. |
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*/ |
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void rhoSeed(Ptr<RHO_HEST> p, uint64_t seed); |
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/** |
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* Estimates the homography using the given context, matches and parameters to |
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* PROSAC. |
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* |
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* The given context must have been initialized. |
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* |
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* The matches are provided as two arrays of N single-precision, floating-point |
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* (x,y) points. Points with corresponding offsets in the two arrays constitute |
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* a match. The homography estimation attempts to find the 3x3 matrix H which |
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* best maps the homogeneous-coordinate points in the source array to their |
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* corresponding homogeneous-coordinate points in the destination array. |
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* |
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* Note: At least 4 matches must be provided (N >= 4). |
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* Note: A point in either array takes up 2 floats. The first of two stores |
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* the x-coordinate and the second of the two stores the y-coordinate. |
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* Thus, the arrays resemble this in memory: |
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* |
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* src = [x0, y0, x1, y1, x2, y2, x3, y3, x4, y4, ...] |
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* Matches: | | | | | |
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* dst = [x0, y0, x1, y1, x2, y2, x3, y3, x4, y4, ...] |
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* Note: The matches are expected to be provided sorted by quality, or at |
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* least not be worse-than-random in ordering. |
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* |
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* A pointer to the base of an array of N bytes can be provided. It serves as |
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* an output mask to indicate whether the corresponding match is an inlier to |
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* the returned homography, if any. A zero indicates an outlier; A non-zero |
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* value indicates an inlier. |
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* |
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* The PROSAC estimator requires a few parameters of its own. These are: |
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* |
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* - The maximum distance that a source point projected onto the destination |
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* plane can be from its putative match and still be considered an |
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* inlier. Must be non-negative. |
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* A sane default is 3.0. |
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* - The maximum number of PROSAC iterations. This corresponds to the |
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* largest number of samples that will be drawn and tested. |
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* A sane default is 2000. |
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* - The RANSAC convergence parameter. This corresponds to the number of |
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* iterations after which PROSAC will start sampling like RANSAC. |
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* A sane default is 2000. |
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* - The confidence threshold. This corresponds to the probability of |
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* finding a correct solution. Must be bounded by [0, 1]. |
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* A sane default is 0.995. |
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* - The minimum number of inliers acceptable. Only a solution with at |
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* least this many inliers will be returned. The minimum is 4. |
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* A sane default is 10% of N. |
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* - The beta-parameter for the non-randomness termination criterion. |
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* Ignored if non-randomness criterion disabled, otherwise must be |
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* bounded by (0, 1). |
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* A sane default is 0.35. |
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* - Optional flags to control the estimation. Available flags are: |
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* HEST_FLAG_NONE: |
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* No special processing. |
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* HEST_FLAG_ENABLE_NR: |
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* Enable non-randomness criterion. If set, the beta parameter |
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* must also be set. |
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* HEST_FLAG_ENABLE_REFINEMENT: |
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* Enable refinement of each new best model, as they are found. |
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* HEST_FLAG_ENABLE_FINAL_REFINEMENT: |
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* Enable one final refinement of the best model found before |
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* returning it. |
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* |
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* The PROSAC estimator optionally accepts an extrinsic initial guess of H. |
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* |
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* The PROSAC estimator outputs a final estimate of H provided it was able to |
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* find one with a minimum of supporting inliers. If it was not, it outputs |
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* the all-zero matrix. |
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* |
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* The extrinsic guess at and final estimate of H are both in the same form: |
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* A 3x3 single-precision floating-point matrix with step 3. Thus, it is a |
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* 9-element array of floats, with the elements as follows: |
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* |
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* [ H00, H01, H02, |
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* H10, H11, H12, |
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* H20, H21, 1.0 ] |
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* |
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* Notice that the homography is normalized to H22 = 1.0. |
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* |
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* The function returns the number of inliers if it was able to find a |
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* homography with at least the minimum required support, and 0 if it was not. |
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* |
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* |
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* @param [in/out] p The context to use for homography estimation. Must |
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* be already initialized. Cannot be NULL. |
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* @param [in] src The pointer to the source points of the matches. |
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* Must be aligned to 4 bytes. Cannot be NULL. |
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* @param [in] dst The pointer to the destination points of the matches. |
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* Must be aligned to 4 bytes. Cannot be NULL. |
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* @param [out] inl The pointer to the output mask of inlier matches. |
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* Must be aligned to 4 bytes. May be NULL. |
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* @param [in] N The number of matches. Minimum 4. |
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* @param [in] maxD The maximum distance. Minimum 0. |
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* @param [in] maxI The maximum number of PROSAC iterations. |
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* @param [in] rConvg The RANSAC convergence parameter. |
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* @param [in] cfd The required confidence in the solution. |
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* @param [in] minInl The minimum required number of inliers. Minimum 4. |
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* @param [in] beta The beta-parameter for the non-randomness criterion. |
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* @param [in] flags A union of flags to fine-tune the estimation. |
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* @param [in] guessH An extrinsic guess at the solution H, or NULL if |
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* none provided. |
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* @param [out] finalH The final estimation of H, or the zero matrix if |
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* the minimum number of inliers was not met. |
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* Cannot be NULL. |
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* @return The number of inliers if the minimum number of |
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* inliers for acceptance was reached; 0 otherwise. |
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*/ |
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unsigned rhoHest(Ptr<RHO_HEST> p, /* Homography estimation context. */ |
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const float* src, /* Source points */ |
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const float* dst, /* Destination points */ |
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char* inl, /* Inlier mask */ |
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unsigned N, /* = src.length = dst.length = inl.length */ |
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float maxD, /* 3.0 */ |
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unsigned maxI, /* 2000 */ |
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unsigned rConvg, /* 2000 */ |
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double cfd, /* 0.995 */ |
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unsigned minInl, /* 4 */ |
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double beta, /* 0.35 */ |
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unsigned flags, /* 0 */ |
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const float* guessH, /* Extrinsic guess, NULL if none provided */ |
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float* finalH); /* Final result. */ |
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/* End Namespace cv */ |
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} |
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#endif
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