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730 lines
26 KiB
C
730 lines
26 KiB
C
/*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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// Intel License Agreement
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// For Open Source Computer Vision Library
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//
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// Copyright (C) 2000, Intel Corporation, 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 Intel Corporation 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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/*
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* File cvclassifier.h
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*
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* Classifier types
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*/
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#ifndef _CVCLASSIFIER_H_
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#define _CVCLASSIFIER_H_
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#include <cmath>
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#include "cxcore.h"
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#define CV_BOOST_API
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/* Convert matrix to vector */
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#define CV_MAT2VEC( mat, vdata, vstep, num ) \
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assert( (mat).rows == 1 || (mat).cols == 1 ); \
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(vdata) = ((mat).data.ptr); \
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if( (mat).rows == 1 ) \
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{ \
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(vstep) = CV_ELEM_SIZE( (mat).type ); \
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(num) = (mat).cols; \
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} \
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else \
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{ \
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(vstep) = (mat).step; \
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(num) = (mat).rows; \
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}
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/* Set up <sample> matrix header to be <num> sample of <trainData> samples matrix */
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#define CV_GET_SAMPLE( trainData, tdflags, num, sample ) \
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if( CV_IS_ROW_SAMPLE( tdflags ) ) \
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{ \
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cvInitMatHeader( &(sample), 1, (trainData).cols, \
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CV_MAT_TYPE( (trainData).type ), \
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((trainData).data.ptr + (num) * (trainData).step), \
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(trainData).step ); \
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} \
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else \
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{ \
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cvInitMatHeader( &(sample), (trainData).rows, 1, \
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CV_MAT_TYPE( (trainData).type ), \
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((trainData).data.ptr + (num) * CV_ELEM_SIZE( (trainData).type )), \
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(trainData).step ); \
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}
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#define CV_GET_SAMPLE_STEP( trainData, tdflags, sstep ) \
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(sstep) = ( ( CV_IS_ROW_SAMPLE( tdflags ) ) \
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? (trainData).step : CV_ELEM_SIZE( (trainData).type ) );
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#define CV_LOGRATIO_THRESHOLD 0.00001F
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/* log( val / (1 - val ) ) */
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CV_INLINE float cvLogRatio( float val );
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CV_INLINE float cvLogRatio( float val )
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{
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float tval;
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tval = MAX(CV_LOGRATIO_THRESHOLD, MIN( 1.0F - CV_LOGRATIO_THRESHOLD, (val) ));
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return logf( tval / (1.0F - tval) );
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}
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/* flags values for classifier consturctor flags parameter */
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/* each trainData matrix column is a sample */
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#define CV_COL_SAMPLE 0
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/* each trainData matrix row is a sample */
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#define CV_ROW_SAMPLE 1
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#ifndef CV_IS_ROW_SAMPLE
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# define CV_IS_ROW_SAMPLE( flags ) ( ( flags ) & CV_ROW_SAMPLE )
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#endif
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/* Classifier supports tune function */
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#define CV_TUNABLE (1 << 1)
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#define CV_IS_TUNABLE( flags ) ( (flags) & CV_TUNABLE )
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/* classifier fields common to all classifiers */
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#define CV_CLASSIFIER_FIELDS() \
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int flags; \
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float(*eval)( struct CvClassifier*, CvMat* ); \
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void (*tune)( struct CvClassifier*, CvMat*, int flags, CvMat*, CvMat*, CvMat*, \
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CvMat*, CvMat* ); \
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int (*save)( struct CvClassifier*, const char* file_name ); \
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void (*release)( struct CvClassifier** );
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typedef struct CvClassifier
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{
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CV_CLASSIFIER_FIELDS()
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} CvClassifier;
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#define CV_CLASSIFIER_TRAIN_PARAM_FIELDS()
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typedef struct CvClassifierTrainParams
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{
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CV_CLASSIFIER_TRAIN_PARAM_FIELDS()
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} CvClassifierTrainParams;
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/*
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Common classifier constructor:
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CvClassifier* cvCreateMyClassifier( CvMat* trainData,
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int flags,
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CvMat* trainClasses,
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CvMat* typeMask,
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CvMat* missedMeasurementsMask CV_DEFAULT(0),
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CvCompIdx* compIdx CV_DEFAULT(0),
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CvMat* sampleIdx CV_DEFAULT(0),
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CvMat* weights CV_DEFAULT(0),
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CvClassifierTrainParams* trainParams CV_DEFAULT(0)
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)
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*/
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typedef CvClassifier* (*CvClassifierConstructor)( CvMat*, int, CvMat*, CvMat*, CvMat*,
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CvMat*, CvMat*, CvMat*,
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CvClassifierTrainParams* );
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typedef enum CvStumpType
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{
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CV_CLASSIFICATION = 0,
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CV_CLASSIFICATION_CLASS = 1,
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CV_REGRESSION = 2
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} CvStumpType;
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typedef enum CvStumpError
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{
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CV_MISCLASSIFICATION = 0,
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CV_GINI = 1,
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CV_ENTROPY = 2,
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CV_SQUARE = 3
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} CvStumpError;
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typedef struct CvStumpTrainParams
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{
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CV_CLASSIFIER_TRAIN_PARAM_FIELDS()
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CvStumpType type;
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CvStumpError error;
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} CvStumpTrainParams;
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typedef struct CvMTStumpTrainParams
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{
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CV_CLASSIFIER_TRAIN_PARAM_FIELDS()
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CvStumpType type;
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CvStumpError error;
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int portion; /* number of components calculated in each thread */
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int numcomp; /* total number of components */
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/* callback which fills <mat> with components [first, first+num[ */
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void (*getTrainData)( CvMat* mat, CvMat* sampleIdx, CvMat* compIdx,
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int first, int num, void* userdata );
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CvMat* sortedIdx; /* presorted samples indices */
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void* userdata; /* passed to callback */
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} CvMTStumpTrainParams;
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typedef struct CvStumpClassifier
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{
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CV_CLASSIFIER_FIELDS()
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int compidx;
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float lerror; /* impurity of the right node */
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float rerror; /* impurity of the left node */
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float threshold;
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float left;
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float right;
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} CvStumpClassifier;
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typedef struct CvCARTTrainParams
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{
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CV_CLASSIFIER_TRAIN_PARAM_FIELDS()
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/* desired number of internal nodes */
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int count;
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CvClassifierTrainParams* stumpTrainParams;
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CvClassifierConstructor stumpConstructor;
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/*
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* Split sample indices <idx>
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* on the "left" indices <left> and "right" indices <right>
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* according to samples components <compidx> values and <threshold>.
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*
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* NOTE: Matrices <left> and <right> must be allocated using cvCreateMat function
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* since they are freed using cvReleaseMat function
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*
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* If it is NULL then the default implementation which evaluates training
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* samples from <trainData> passed to classifier constructor is used
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*/
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void (*splitIdx)( int compidx, float threshold,
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CvMat* idx, CvMat** left, CvMat** right,
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void* userdata );
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void* userdata;
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} CvCARTTrainParams;
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typedef struct CvCARTClassifier
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{
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CV_CLASSIFIER_FIELDS()
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/* number of internal nodes */
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int count;
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/* internal nodes (each array of <count> elements) */
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int* compidx;
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float* threshold;
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int* left;
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int* right;
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/* leaves (array of <count>+1 elements) */
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float* val;
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} CvCARTClassifier;
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CV_BOOST_API
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void cvGetSortedIndices( CvMat* val, CvMat* idx, int sortcols CV_DEFAULT( 0 ) );
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CV_BOOST_API
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void cvReleaseStumpClassifier( CvClassifier** classifier );
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CV_BOOST_API
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float cvEvalStumpClassifier( CvClassifier* classifier, CvMat* sample );
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CV_BOOST_API
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CvClassifier* cvCreateStumpClassifier( CvMat* trainData,
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int flags,
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CvMat* trainClasses,
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CvMat* typeMask,
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CvMat* missedMeasurementsMask CV_DEFAULT(0),
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CvMat* compIdx CV_DEFAULT(0),
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CvMat* sampleIdx CV_DEFAULT(0),
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CvMat* weights CV_DEFAULT(0),
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CvClassifierTrainParams* trainParams CV_DEFAULT(0) );
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/*
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* cvCreateMTStumpClassifier
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*
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* Multithreaded stump classifier constructor
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* Includes huge train data support through callback function
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*/
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CV_BOOST_API
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CvClassifier* cvCreateMTStumpClassifier( CvMat* trainData,
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int flags,
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CvMat* trainClasses,
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CvMat* typeMask,
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CvMat* missedMeasurementsMask,
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CvMat* compIdx,
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CvMat* sampleIdx,
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CvMat* weights,
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CvClassifierTrainParams* trainParams );
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/*
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* cvCreateCARTClassifier
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*
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* CART classifier constructor
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*/
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CV_BOOST_API
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CvClassifier* cvCreateCARTClassifier( CvMat* trainData,
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int flags,
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CvMat* trainClasses,
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CvMat* typeMask,
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CvMat* missedMeasurementsMask,
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CvMat* compIdx,
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CvMat* sampleIdx,
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CvMat* weights,
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CvClassifierTrainParams* trainParams );
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CV_BOOST_API
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void cvReleaseCARTClassifier( CvClassifier** classifier );
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CV_BOOST_API
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float cvEvalCARTClassifier( CvClassifier* classifier, CvMat* sample );
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/****************************************************************************************\
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* Boosting *
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\****************************************************************************************/
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/*
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* CvBoostType
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*
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* The CvBoostType enumeration specifies the boosting type.
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*
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* Remarks
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* Four different boosting variants for 2 class classification problems are supported:
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* Discrete AdaBoost, Real AdaBoost, LogitBoost and Gentle AdaBoost.
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* The L2 (2 class classification problems) and LK (K class classification problems)
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* algorithms are close to LogitBoost but more numerically stable than last one.
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* For regression three different loss functions are supported:
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* Least square, least absolute deviation and huber loss.
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*/
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typedef enum CvBoostType
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{
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CV_DABCLASS = 0, /* 2 class Discrete AdaBoost */
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CV_RABCLASS = 1, /* 2 class Real AdaBoost */
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CV_LBCLASS = 2, /* 2 class LogitBoost */
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CV_GABCLASS = 3, /* 2 class Gentle AdaBoost */
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CV_L2CLASS = 4, /* classification (2 class problem) */
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CV_LKCLASS = 5, /* classification (K class problem) */
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CV_LSREG = 6, /* least squares regression */
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CV_LADREG = 7, /* least absolute deviation regression */
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CV_MREG = 8, /* M-regression (Huber loss) */
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} CvBoostType;
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/****************************************************************************************\
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* Iterative training functions *
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\****************************************************************************************/
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/*
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* CvBoostTrainer
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*
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* The CvBoostTrainer structure represents internal boosting trainer.
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*/
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typedef struct CvBoostTrainer CvBoostTrainer;
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/*
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* cvBoostStartTraining
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*
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* The cvBoostStartTraining function starts training process and calculates
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* response values and weights for the first weak classifier training.
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*
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* Parameters
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* trainClasses
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* Vector of classes of training samples classes. Each element must be 0 or 1 and
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* of type CV_32FC1.
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* weakTrainVals
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* Vector of response values for the first trained weak classifier.
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* Must be of type CV_32FC1.
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* weights
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* Weight vector of training samples for the first trained weak classifier.
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* Must be of type CV_32FC1.
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* type
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* Boosting type. CV_DABCLASS, CV_RABCLASS, CV_LBCLASS, CV_GABCLASS
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* types are supported.
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*
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* Return Values
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* The return value is a pointer to internal trainer structure which is used
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* to perform next training iterations.
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*
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* Remarks
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* weakTrainVals and weights must be allocated before calling the function
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* and of the same size as trainingClasses. Usually weights should be initialized
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* with 1.0 value.
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* The function calculates response values and weights for the first weak
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* classifier training and stores them into weakTrainVals and weights
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* respectively.
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* Note, the training of the weak classifier using weakTrainVals, weight,
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* trainingData is outside of this function.
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*/
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CV_BOOST_API
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CvBoostTrainer* cvBoostStartTraining( CvMat* trainClasses,
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CvMat* weakTrainVals,
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CvMat* weights,
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CvMat* sampleIdx,
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CvBoostType type );
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/*
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* cvBoostNextWeakClassifier
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*
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* The cvBoostNextWeakClassifier function performs next training
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* iteration and caluclates response values and weights for the next weak
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* classifier training.
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*
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* Parameters
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* weakEvalVals
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* Vector of values obtained by evaluation of each sample with
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* the last trained weak classifier (iteration i). Must be of CV_32FC1 type.
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* trainClasses
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* Vector of classes of training samples. Each element must be 0 or 1,
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* and of type CV_32FC1.
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* weakTrainVals
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* Vector of response values for the next weak classifier training
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* (iteration i+1). Must be of type CV_32FC1.
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* weights
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* Weight vector of training samples for the next weak classifier training
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* (iteration i+1). Must be of type CV_32FC1.
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* trainer
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* A pointer to internal trainer returned by the cvBoostStartTraining
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* function call.
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*
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* Return Values
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* The return value is the coefficient for the last trained weak classifier.
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*
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* Remarks
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* weakTrainVals and weights must be exactly the same vectors as used in
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* the cvBoostStartTraining function call and should not be modified.
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* The function calculates response values and weights for the next weak
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* classifier training and stores them into weakTrainVals and weights
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* respectively.
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* Note, the training of the weak classifier of iteration i+1 using
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* weakTrainVals, weight, trainingData is outside of this function.
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*/
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CV_BOOST_API
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float cvBoostNextWeakClassifier( CvMat* weakEvalVals,
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CvMat* trainClasses,
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CvMat* weakTrainVals,
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CvMat* weights,
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CvBoostTrainer* trainer );
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/*
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* cvBoostEndTraining
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*
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* The cvBoostEndTraining function finishes training process and releases
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* internally allocated memory.
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*
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* Parameters
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* trainer
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* A pointer to a pointer to internal trainer returned by the cvBoostStartTraining
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* function call.
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*/
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CV_BOOST_API
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void cvBoostEndTraining( CvBoostTrainer** trainer );
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/****************************************************************************************\
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* Boosted tree models *
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\****************************************************************************************/
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/*
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* CvBtClassifier
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*
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* The CvBtClassifier structure represents boosted tree model.
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*
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* Members
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* flags
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* Flags. If CV_IS_TUNABLE( flags ) != 0 then the model supports tuning.
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* eval
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* Evaluation function. Returns sample predicted class (0, 1, etc.)
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* for classification or predicted value for regression.
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* tune
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* Tune function. If the model supports tuning then tune call performs
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* one more boosting iteration if passed to the function flags parameter
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* is CV_TUNABLE otherwise releases internally allocated for tuning memory
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* and makes the model untunable.
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* NOTE: Since tuning uses the pointers to parameters,
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* passed to the cvCreateBtClassifier function, they should not be modified
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* or released between tune calls.
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* save
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* This function stores the model into given file.
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* release
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* This function releases the model.
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* type
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* Boosted tree model type.
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* numclasses
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* Number of classes for CV_LKCLASS type or 1 for all other types.
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* numiter
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* Number of iterations. Number of weak classifiers is equal to number
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* of iterations for all types except CV_LKCLASS. For CV_LKCLASS type
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* number of weak classifiers is (numiter * numclasses).
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* numfeatures
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* Number of features in sample.
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* trees
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* Stores weak classifiers when the model does not support tuning.
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* seq
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* Stores weak classifiers when the model supports tuning.
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* trainer
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* Pointer to internal tuning parameters if the model supports tuning.
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*/
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typedef struct CvBtClassifier
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{
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CV_CLASSIFIER_FIELDS()
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CvBoostType type;
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int numclasses;
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int numiter;
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int numfeatures;
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union
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{
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CvCARTClassifier** trees;
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CvSeq* seq;
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};
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void* trainer;
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} CvBtClassifier;
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/*
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* CvBtClassifierTrainParams
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*
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* The CvBtClassifierTrainParams structure stores training parameters for
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* boosted tree model.
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*
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* Members
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* type
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* Boosted tree model type.
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* numiter
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* Desired number of iterations.
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* param
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* Parameter Model Type Parameter Meaning
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* param[0] Any Shrinkage factor
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* param[1] CV_MREG alpha. (1-alpha) determines "break-down" point of
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* the training procedure, i.e. the fraction of samples
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* that can be arbitrary modified without serious
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* degrading the quality of the result.
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* CV_DABCLASS, Weight trimming factor.
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* CV_RABCLASS,
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* CV_LBCLASS,
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* CV_GABCLASS,
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* CV_L2CLASS,
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* CV_LKCLASS
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* numsplits
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* Desired number of splits in each tree.
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*/
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typedef struct CvBtClassifierTrainParams
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{
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CV_CLASSIFIER_TRAIN_PARAM_FIELDS()
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CvBoostType type;
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int numiter;
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float param[2];
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int numsplits;
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} CvBtClassifierTrainParams;
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/*
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* cvCreateBtClassifier
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*
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* The cvCreateBtClassifier function creates boosted tree model.
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*
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* Parameters
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* trainData
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* Matrix of feature values. Must have CV_32FC1 type.
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* flags
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* Determines how samples are stored in trainData.
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* One of CV_ROW_SAMPLE or CV_COL_SAMPLE.
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* Optionally may be combined with CV_TUNABLE to make tunable model.
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* trainClasses
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* Vector of responses for regression or classes (0, 1, 2, etc.) for classification.
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* typeMask,
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* missedMeasurementsMask,
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* compIdx
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* Not supported. Must be NULL.
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* sampleIdx
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* Indices of samples used in training. If NULL then all samples are used.
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* For CV_DABCLASS, CV_RABCLASS, CV_LBCLASS and CV_GABCLASS must be NULL.
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* weights
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* Not supported. Must be NULL.
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* trainParams
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* A pointer to CvBtClassifierTrainParams structure. Training parameters.
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* See CvBtClassifierTrainParams description for details.
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*
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* Return Values
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* The return value is a pointer to created boosted tree model of type CvBtClassifier.
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*
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* Remarks
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* The function performs trainParams->numiter training iterations.
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* If CV_TUNABLE flag is specified then created model supports tuning.
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* In this case additional training iterations may be performed by
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* tune function call.
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*/
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CV_BOOST_API
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CvClassifier* cvCreateBtClassifier( CvMat* trainData,
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int flags,
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CvMat* trainClasses,
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CvMat* typeMask,
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CvMat* missedMeasurementsMask,
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CvMat* compIdx,
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CvMat* sampleIdx,
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CvMat* weights,
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CvClassifierTrainParams* trainParams );
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/*
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* cvCreateBtClassifierFromFile
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*
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* The cvCreateBtClassifierFromFile function restores previously saved
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* boosted tree model from file.
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*
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* Parameters
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* filename
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* The name of the file with boosted tree model.
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*
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* Remarks
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* The restored model does not support tuning.
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*/
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CV_BOOST_API
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CvClassifier* cvCreateBtClassifierFromFile( const char* filename );
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/****************************************************************************************\
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* Utility functions *
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\****************************************************************************************/
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/*
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* cvTrimWeights
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|
*
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* The cvTrimWeights function performs weight trimming.
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|
*
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* Parameters
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* weights
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|
* Weights vector.
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* idx
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|
* Indices vector of weights that should be considered.
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* If it is NULL then all weights are used.
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* factor
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|
* Weight trimming factor. Must be in [0, 1] range.
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|
*
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* Return Values
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|
* The return value is a vector of indices. If all samples should be used then
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* it is equal to idx. In other case the cvReleaseMat function should be called
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|
* to release it.
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|
*
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|
* Remarks
|
|
*/
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|
CV_BOOST_API
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|
CvMat* cvTrimWeights( CvMat* weights, CvMat* idx, float factor );
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|
|
|
/*
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|
* cvReadTrainData
|
|
*
|
|
* The cvReadTrainData function reads feature values and responses from file.
|
|
*
|
|
* Parameters
|
|
* filename
|
|
* The name of the file to be read.
|
|
* flags
|
|
* One of CV_ROW_SAMPLE or CV_COL_SAMPLE. Determines how feature values
|
|
* will be stored.
|
|
* trainData
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|
* A pointer to a pointer to created matrix with feature values.
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|
* cvReleaseMat function should be used to destroy created matrix.
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|
* trainClasses
|
|
* A pointer to a pointer to created matrix with response values.
|
|
* cvReleaseMat function should be used to destroy created matrix.
|
|
*
|
|
* Remarks
|
|
* File format:
|
|
* ============================================
|
|
* m n
|
|
* value_1_1 value_1_2 ... value_1_n response_1
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|
* value_2_1 value_2_2 ... value_2_n response_2
|
|
* ...
|
|
* value_m_1 value_m_2 ... value_m_n response_m
|
|
* ============================================
|
|
* m
|
|
* Number of samples
|
|
* n
|
|
* Number of features in each sample
|
|
* value_i_j
|
|
* Value of j-th feature of i-th sample
|
|
* response_i
|
|
* Response value of i-th sample
|
|
* For classification problems responses represent classes (0, 1, etc.)
|
|
* All values and classes are integer or real numbers.
|
|
*/
|
|
CV_BOOST_API
|
|
void cvReadTrainData( const char* filename,
|
|
int flags,
|
|
CvMat** trainData,
|
|
CvMat** trainClasses );
|
|
|
|
|
|
/*
|
|
* cvWriteTrainData
|
|
*
|
|
* The cvWriteTrainData function stores feature values and responses into file.
|
|
*
|
|
* Parameters
|
|
* filename
|
|
* The name of the file.
|
|
* flags
|
|
* One of CV_ROW_SAMPLE or CV_COL_SAMPLE. Determines how feature values
|
|
* are stored.
|
|
* trainData
|
|
* Feature values matrix.
|
|
* trainClasses
|
|
* Response values vector.
|
|
* sampleIdx
|
|
* Vector of idicies of the samples that should be stored. If it is NULL
|
|
* then all samples will be stored.
|
|
*
|
|
* Remarks
|
|
* See the cvReadTrainData function for file format description.
|
|
*/
|
|
CV_BOOST_API
|
|
void cvWriteTrainData( const char* filename,
|
|
int flags,
|
|
CvMat* trainData,
|
|
CvMat* trainClasses,
|
|
CvMat* sampleIdx );
|
|
|
|
/*
|
|
* cvRandShuffle
|
|
*
|
|
* The cvRandShuffle function perfroms random shuffling of given vector.
|
|
*
|
|
* Parameters
|
|
* vector
|
|
* Vector that should be shuffled.
|
|
* Must have CV_8UC1, CV_16SC1, CV_32SC1 or CV_32FC1 type.
|
|
*/
|
|
CV_BOOST_API
|
|
void cvRandShuffleVec( CvMat* vector );
|
|
|
|
#endif /* _CVCLASSIFIER_H_ */
|