| 123456789101112131415161718192021222324252627282930313233343536373839404142434445464748495051525354555657585960616263646566676869707172737475767778798081828384858687888990919293949596979899100101102103104105106107108109110111112113114115116117118119120121122123124125126127128129130131132133134135136137138139140141142143144145146147148149150151152153154155156157158159160161162163164165166167168169170171172173174175176177178179180181182183184185186187188189190191 | // This file is part of OpenCV project.// It is subject to the license terms in the LICENSE file found in the top-level directory// of this distribution and at http://opencv.org/license.html.// Copyright (c) 2011,2012. Philipp Wagner <bytefish[at]gmx[dot]de>.// Third party copyrights are property of their respective owners.#ifndef __OPENCV_FACEREC_HPP__#define __OPENCV_FACEREC_HPP__#include "opencv2/face.hpp"#include "opencv2/core.hpp"namespace cv { namespace face {//! @addtogroup face//! @{// base for two classesclass CV_EXPORTS_W BasicFaceRecognizer : public FaceRecognizer{public:    /** @see setNumComponents */    CV_WRAP int getNumComponents() const;    /** @copybrief getNumComponents @see getNumComponents */    CV_WRAP void setNumComponents(int val);    /** @see setThreshold */    CV_WRAP double getThreshold() const;    /** @copybrief getThreshold @see getThreshold */    CV_WRAP void setThreshold(double val);    CV_WRAP std::vector<cv::Mat> getProjections() const;    CV_WRAP cv::Mat getLabels() const;    CV_WRAP cv::Mat getEigenValues() const;    CV_WRAP cv::Mat getEigenVectors() const;    CV_WRAP cv::Mat getMean() const;    virtual void read(const FileNode& fn);    virtual void write(FileStorage& fs) const;    virtual bool empty() const;    using FaceRecognizer::read;    using FaceRecognizer::write;protected:    int _num_components;    double _threshold;    std::vector<Mat> _projections;    Mat _labels;    Mat _eigenvectors;    Mat _eigenvalues;    Mat _mean;};class CV_EXPORTS_W EigenFaceRecognizer : public BasicFaceRecognizer{public:    /**    @param num_components The number of components (read: Eigenfaces) kept for this Principal    Component Analysis. As a hint: There's no rule how many components (read: Eigenfaces) should be    kept for good reconstruction capabilities. It is based on your input data, so experiment with the    number. Keeping 80 components should almost always be sufficient.    @param threshold The threshold applied in the prediction.    ### Notes:    -   Training and prediction must be done on grayscale images, use cvtColor to convert between the        color spaces.    -   **THE EIGENFACES METHOD MAKES THE ASSUMPTION, THAT THE TRAINING AND TEST IMAGES ARE OF EQUAL        SIZE.** (caps-lock, because I got so many mails asking for this). You have to make sure your        input data has the correct shape, else a meaningful exception is thrown. Use resize to resize        the images.    -   This model does not support updating.    ### Model internal data:    -   num_components see EigenFaceRecognizer::create.    -   threshold see EigenFaceRecognizer::create.    -   eigenvalues The eigenvalues for this Principal Component Analysis (ordered descending).    -   eigenvectors The eigenvectors for this Principal Component Analysis (ordered by their        eigenvalue).    -   mean The sample mean calculated from the training data.    -   projections The projections of the training data.    -   labels The threshold applied in the prediction. If the distance to the nearest neighbor is        larger than the threshold, this method returns -1.     */    CV_WRAP static Ptr<EigenFaceRecognizer> create(int num_components = 0, double threshold = DBL_MAX);};class CV_EXPORTS_W FisherFaceRecognizer : public BasicFaceRecognizer{public:    /**    @param num_components The number of components (read: Fisherfaces) kept for this Linear    Discriminant Analysis with the Fisherfaces criterion. It's useful to keep all components, that    means the number of your classes c (read: subjects, persons you want to recognize). If you leave    this at the default (0) or set it to a value less-equal 0 or greater (c-1), it will be set to the    correct number (c-1) automatically.    @param threshold The threshold applied in the prediction. If the distance to the nearest neighbor    is larger than the threshold, this method returns -1.    ### Notes:    -   Training and prediction must be done on grayscale images, use cvtColor to convert between the        color spaces.    -   **THE FISHERFACES METHOD MAKES THE ASSUMPTION, THAT THE TRAINING AND TEST IMAGES ARE OF EQUAL        SIZE.** (caps-lock, because I got so many mails asking for this). You have to make sure your        input data has the correct shape, else a meaningful exception is thrown. Use resize to resize        the images.    -   This model does not support updating.    ### Model internal data:    -   num_components see FisherFaceRecognizer::create.    -   threshold see FisherFaceRecognizer::create.    -   eigenvalues The eigenvalues for this Linear Discriminant Analysis (ordered descending).    -   eigenvectors The eigenvectors for this Linear Discriminant Analysis (ordered by their        eigenvalue).    -   mean The sample mean calculated from the training data.    -   projections The projections of the training data.    -   labels The labels corresponding to the projections.     */    CV_WRAP static Ptr<FisherFaceRecognizer> create(int num_components = 0, double threshold = DBL_MAX);};class CV_EXPORTS_W LBPHFaceRecognizer : public FaceRecognizer{public:    /** @see setGridX */    CV_WRAP virtual int getGridX() const = 0;    /** @copybrief getGridX @see getGridX */    CV_WRAP virtual void setGridX(int val) = 0;    /** @see setGridY */    CV_WRAP virtual int getGridY() const = 0;    /** @copybrief getGridY @see getGridY */    CV_WRAP virtual void setGridY(int val) = 0;    /** @see setRadius */    CV_WRAP virtual int getRadius() const = 0;    /** @copybrief getRadius @see getRadius */    CV_WRAP virtual void setRadius(int val) = 0;    /** @see setNeighbors */    CV_WRAP virtual int getNeighbors() const = 0;    /** @copybrief getNeighbors @see getNeighbors */    CV_WRAP virtual void setNeighbors(int val) = 0;    /** @see setThreshold */    CV_WRAP virtual double getThreshold() const = 0;    /** @copybrief getThreshold @see getThreshold */    CV_WRAP virtual void setThreshold(double val) = 0;    CV_WRAP virtual std::vector<cv::Mat> getHistograms() const = 0;    CV_WRAP virtual cv::Mat getLabels() const = 0;    /**    @param radius The radius used for building the Circular Local Binary Pattern. The greater the    radius, the smoother the image but more spatial information you can get.    @param neighbors The number of sample points to build a Circular Local Binary Pattern from. An    appropriate value is to use `8` sample points. Keep in mind: the more sample points you include,    the higher the computational cost.    @param grid_x The number of cells in the horizontal direction, 8 is a common value used in    publications. The more cells, the finer the grid, the higher the dimensionality of the resulting    feature vector.    @param grid_y The number of cells in the vertical direction, 8 is a common value used in    publications. The more cells, the finer the grid, the higher the dimensionality of the resulting    feature vector.    @param threshold The threshold applied in the prediction. If the distance to the nearest neighbor    is larger than the threshold, this method returns -1.    ### Notes:    -   The Circular Local Binary Patterns (used in training and prediction) expect the data given as        grayscale images, use cvtColor to convert between the color spaces.    -   This model supports updating.    ### Model internal data:    -   radius see LBPHFaceRecognizer::create.    -   neighbors see LBPHFaceRecognizer::create.    -   grid_x see LLBPHFaceRecognizer::create.    -   grid_y see LBPHFaceRecognizer::create.    -   threshold see LBPHFaceRecognizer::create.    -   histograms Local Binary Patterns Histograms calculated from the given training data (empty if        none was given).    -   labels Labels corresponding to the calculated Local Binary Patterns Histograms.     */    CV_WRAP static Ptr<LBPHFaceRecognizer> create(int radius=1, int neighbors=8, int grid_x=8, int grid_y=8, double threshold = DBL_MAX);};//! @}}} //namespace cv::face#endif //__OPENCV_FACEREC_HPP__
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