Open Source Computer Vision Library https://opencv.org/
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#ifndef __OPENCV_ML_PRECOMP_HPP__
#define __OPENCV_ML_PRECOMP_HPP__
#include "opencv2/core.hpp"
#include "opencv2/ml.hpp"
#include "opencv2/core/core_c.h"
#include "opencv2/core/utility.hpp"
#include "opencv2/core/private.hpp"
#include <assert.h>
#include <float.h>
#include <limits.h>
#include <math.h>
#include <stdlib.h>
#include <stdio.h>
#include <string.h>
#include <time.h>
#include <vector>
/****************************************************************************************\
* Main struct definitions *
\****************************************************************************************/
/* log(2*PI) */
#define CV_LOG2PI (1.8378770664093454835606594728112)
namespace cv
{
namespace ml
{
using std::vector;
#define CV_DTREE_CAT_DIR(idx,subset) \
(2*((subset[(idx)>>5]&(1 << ((idx) & 31)))==0)-1)
template<typename _Tp> struct cmp_lt_idx
{
cmp_lt_idx(const _Tp* _arr) : arr(_arr) {}
bool operator ()(int a, int b) const { return arr[a] < arr[b]; }
const _Tp* arr;
};
template<typename _Tp> struct cmp_lt_ptr
{
cmp_lt_ptr() {}
bool operator ()(const _Tp* a, const _Tp* b) const { return *a < *b; }
};
static inline void setRangeVector(std::vector<int>& vec, int n)
{
vec.resize(n);
for( int i = 0; i < n; i++ )
vec[i] = i;
}
static inline void writeTermCrit(FileStorage& fs, const TermCriteria& termCrit)
{
if( (termCrit.type & TermCriteria::EPS) != 0 )
fs << "epsilon" << termCrit.epsilon;
if( (termCrit.type & TermCriteria::COUNT) != 0 )
fs << "iterations" << termCrit.maxCount;
}
static inline TermCriteria readTermCrit(const FileNode& fn)
{
TermCriteria termCrit;
double epsilon = (double)fn["epsilon"];
if( epsilon > 0 )
{
termCrit.type |= TermCriteria::EPS;
termCrit.epsilon = epsilon;
}
int iters = (int)fn["iterations"];
if( iters > 0 )
{
termCrit.type |= TermCriteria::COUNT;
termCrit.maxCount = iters;
}
return termCrit;
}
class DTreesImpl : public DTrees
{
public:
struct WNode
{
WNode()
{
class_idx = sample_count = depth = complexity = 0;
parent = left = right = split = defaultDir = -1;
Tn = INT_MAX;
value = maxlr = alpha = node_risk = tree_risk = tree_error = 0.;
}
int class_idx;
double Tn;
double value;
int parent;
int left;
int right;
int defaultDir;
int split;
int sample_count;
int depth;
double maxlr;
// global pruning data
int complexity;
double alpha;
double node_risk, tree_risk, tree_error;
};
struct WSplit
{
WSplit()
{
varIdx = inversed = next = 0;
quality = c = 0.f;
subsetOfs = -1;
}
int varIdx;
bool inversed;
float quality;
int next;
float c;
int subsetOfs;
};
struct WorkData
{
WorkData(const Ptr<TrainData>& _data);
Ptr<TrainData> data;
vector<WNode> wnodes;
vector<WSplit> wsplits;
vector<int> wsubsets;
vector<double> cv_Tn;
vector<double> cv_node_risk;
vector<double> cv_node_error;
vector<int> cv_labels;
vector<double> sample_weights;
vector<int> cat_responses;
vector<double> ord_responses;
vector<int> sidx;
int maxSubsetSize;
};
DTreesImpl();
virtual ~DTreesImpl();
virtual void clear();
String getDefaultModelName() const { return "opencv_ml_dtree"; }
bool isTrained() const { return !roots.empty(); }
bool isClassifier() const { return _isClassifier; }
int getVarCount() const { return varType.empty() ? 0 : (int)(varType.size() - 1); }
int getCatCount(int vi) const { return catOfs[vi][1] - catOfs[vi][0]; }
int getSubsetSize(int vi) const { return (getCatCount(vi) + 31)/32; }
virtual void setDParams(const Params& _params);
virtual Params getDParams() const;
virtual void startTraining( const Ptr<TrainData>& trainData, int flags );
virtual void endTraining();
virtual void initCompVarIdx();
virtual bool train( const Ptr<TrainData>& trainData, int flags );
virtual int addTree( const vector<int>& sidx );
virtual int addNodeAndTrySplit( int parent, const vector<int>& sidx );
virtual const vector<int>& getActiveVars();
virtual int findBestSplit( const vector<int>& _sidx );
virtual void calcValue( int nidx, const vector<int>& _sidx );
virtual WSplit findSplitOrdClass( int vi, const vector<int>& _sidx, double initQuality );
// simple k-means, slightly modified to take into account the "weight" (L1-norm) of each vector.
virtual void clusterCategories( const double* vectors, int n, int m, double* csums, int k, int* labels );
virtual WSplit findSplitCatClass( int vi, const vector<int>& _sidx, double initQuality, int* subset );
virtual WSplit findSplitOrdReg( int vi, const vector<int>& _sidx, double initQuality );
virtual WSplit findSplitCatReg( int vi, const vector<int>& _sidx, double initQuality, int* subset );
virtual int calcDir( int splitidx, const vector<int>& _sidx, vector<int>& _sleft, vector<int>& _sright );
virtual int pruneCV( int root );
virtual double updateTreeRNC( int root, double T, int fold );
virtual bool cutTree( int root, double T, int fold, double min_alpha );
virtual float predictTrees( const Range& range, const Mat& sample, int flags ) const;
virtual float predict( InputArray inputs, OutputArray outputs, int flags ) const;
virtual void writeTrainingParams( FileStorage& fs ) const;
virtual void writeParams( FileStorage& fs ) const;
virtual void writeSplit( FileStorage& fs, int splitidx ) const;
virtual void writeNode( FileStorage& fs, int nidx, int depth ) const;
virtual void writeTree( FileStorage& fs, int root ) const;
virtual void write( FileStorage& fs ) const;
virtual void readParams( const FileNode& fn );
virtual int readSplit( const FileNode& fn );
virtual int readNode( const FileNode& fn );
virtual int readTree( const FileNode& fn );
virtual void read( const FileNode& fn );
virtual const std::vector<int>& getRoots() const { return roots; }
virtual const std::vector<Node>& getNodes() const { return nodes; }
virtual const std::vector<Split>& getSplits() const { return splits; }
virtual const std::vector<int>& getSubsets() const { return subsets; }
Params params0, params;
vector<int> varIdx;
vector<int> compVarIdx;
vector<uchar> varType;
vector<Vec2i> catOfs;
vector<int> catMap;
vector<int> roots;
vector<Node> nodes;
vector<Split> splits;
vector<int> subsets;
vector<int> classLabels;
vector<float> missingSubst;
bool _isClassifier;
Ptr<WorkData> w;
};
}}
#endif /* __OPENCV_ML_PRECOMP_HPP__ */