cascadedetect.cpp 40.8 KB
Newer Older
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44
/*M///////////////////////////////////////////////////////////////////////////////////////
//
//  IMPORTANT: READ BEFORE DOWNLOADING, COPYING, INSTALLING OR USING.
//
//  By downloading, copying, installing or using the software you agree to this license.
//  If you do not agree to this license, do not download, install,
//  copy or use the software.
//
//
//                        Intel License Agreement
//                For Open Source Computer Vision Library
//
// Copyright (C) 2000, Intel Corporation, all rights reserved.
// Third party copyrights are property of their respective owners.
//
// Redistribution and use in source and binary forms, with or without modification,
// are permitted provided that the following conditions are met:
//
//   * Redistribution's of source code must retain the above copyright notice,
//     this list of conditions and the following disclaimer.
//
//   * Redistribution's in binary form must reproduce the above copyright notice,
//     this list of conditions and the following disclaimer in the documentation
//     and/or other materials provided with the distribution.
//
//   * The name of Intel Corporation may not be used to endorse or promote products
//     derived from this software without specific prior written permission.
//
// This software is provided by the copyright holders and contributors "as is" and
// any express or implied warranties, including, but not limited to, the implied
// warranties of merchantability and fitness for a particular purpose are disclaimed.
// In no event shall the Intel Corporation or contributors be liable for any direct,
// indirect, incidental, special, exemplary, or consequential damages
// (including, but not limited to, procurement of substitute goods or services;
// loss of use, data, or profits; or business interruption) however caused
// and on any theory of liability, whether in contract, strict liability,
// or tort (including negligence or otherwise) arising in any way out of
// the use of this software, even if advised of the possibility of such damage.
//
//M*/

#include "precomp.hpp"
#include <cstdio>

45 46
#include "cascadedetect.hpp"

47 48
#include <string>

49
#if defined (LOG_CASCADE_STATISTIC)
50 51
struct Logger
{
52
    enum { STADIES_NUM = 20 };
53

54 55 56 57
    int gid;
    cv::Mat mask;
    cv::Size sz0;
    int step;
58

59 60 61 62

    Logger() : gid (0), step(2) {}
    void setImage(const cv::Mat& image)
    {
63
     if (gid == 0)
64 65 66 67 68 69 70 71 72 73 74 75 76 77 78 79 80 81 82 83 84 85 86 87 88 89 90 91 92 93 94 95 96 97 98 99 100 101 102 103 104 105 106 107 108 109
         sz0 = image.size();

      mask.create(image.rows, image.cols * (STADIES_NUM + 1) + STADIES_NUM, CV_8UC1);
      mask = cv::Scalar(0);
      cv::Mat roi = mask(cv::Rect(cv::Point(0,0), image.size()));
      image.copyTo(roi);

      printf("%d) Size = (%d, %d)\n", gid, image.cols, image.rows);

      for(int i = 0; i < STADIES_NUM; ++i)
      {
          int x = image.cols + i * (image.cols + 1);
          cv::line(mask, cv::Point(x, 0), cv::Point(x, mask.rows-1), cv::Scalar(255));
      }

      if (sz0.width/image.cols > 2 && sz0.height/image.rows > 2)
          step = 1;
    }

    void setPoint(const cv::Point& p, int passed_stadies)
    {
        int cols = mask.cols / (STADIES_NUM + 1);

        passed_stadies = -passed_stadies;
        passed_stadies = (passed_stadies == -1) ? STADIES_NUM : passed_stadies;

        unsigned char* ptr = mask.ptr<unsigned char>(p.y) + cols + 1 + p.x;
        for(int i = 0; i < passed_stadies; ++i, ptr += cols + 1)
        {
            *ptr = 255;

            if (step == 2)
            {
                ptr[1] = 255;
                ptr[mask.step] = 255;
                ptr[mask.step + 1] = 255;
            }
        }
    };

    void write()
    {
        char buf[4096];
        sprintf(buf, "%04d.png", gid++);
        cv::imwrite(buf, mask);
    }
110 111

} logger;
112
#endif
113

114 115
namespace cv
{
A
Andrey Kamaev 已提交
116

117 118 119 120
// class for grouping object candidates, detected by Cascade Classifier, HOG etc.
// instance of the class is to be passed to cv::partition (see cxoperations.hpp)
class CV_EXPORTS SimilarRects
{
A
Andrey Kamaev 已提交
121
public:
122 123 124 125 126 127 128 129 130 131
    SimilarRects(double _eps) : eps(_eps) {}
    inline bool operator()(const Rect& r1, const Rect& r2) const
    {
        double delta = eps*(std::min(r1.width, r2.width) + std::min(r1.height, r2.height))*0.5;
        return std::abs(r1.x - r2.x) <= delta &&
        std::abs(r1.y - r2.y) <= delta &&
        std::abs(r1.x + r1.width - r2.x - r2.width) <= delta &&
        std::abs(r1.y + r1.height - r2.y - r2.height) <= delta;
    }
    double eps;
A
Andrey Kamaev 已提交
132 133
};

134

135
void groupRectangles(vector<Rect>& rectList, int groupThreshold, double eps, vector<int>* weights, vector<double>* levelWeights)
136 137 138 139 140 141 142 143 144 145 146 147
{
    if( groupThreshold <= 0 || rectList.empty() )
    {
        if( weights )
        {
            size_t i, sz = rectList.size();
            weights->resize(sz);
            for( i = 0; i < sz; i++ )
                (*weights)[i] = 1;
        }
        return;
    }
A
Andrey Kamaev 已提交
148

149 150
    vector<int> labels;
    int nclasses = partition(rectList, labels, SimilarRects(eps));
A
Andrey Kamaev 已提交
151

152 153
    vector<Rect> rrects(nclasses);
    vector<int> rweights(nclasses, 0);
A
Andrey Kamaev 已提交
154
    vector<int> rejectLevels(nclasses, 0);
155
    vector<double> rejectWeights(nclasses, DBL_MIN);
156 157 158 159 160 161 162 163 164 165
    int i, j, nlabels = (int)labels.size();
    for( i = 0; i < nlabels; i++ )
    {
        int cls = labels[i];
        rrects[cls].x += rectList[i].x;
        rrects[cls].y += rectList[i].y;
        rrects[cls].width += rectList[i].width;
        rrects[cls].height += rectList[i].height;
        rweights[cls]++;
    }
166
    if ( levelWeights && weights && !weights->empty() && !levelWeights->empty() )
A
Andrey Kamaev 已提交
167 168 169 170
    {
        for( i = 0; i < nlabels; i++ )
        {
            int cls = labels[i];
171 172 173 174 175 176 177
            if( (*weights)[i] > rejectLevels[cls] )
            {
                rejectLevels[cls] = (*weights)[i];
                rejectWeights[cls] = (*levelWeights)[i];
            }
            else if( ( (*weights)[i] == rejectLevels[cls] ) && ( (*levelWeights)[i] > rejectWeights[cls] ) )
                rejectWeights[cls] = (*levelWeights)[i];
A
Andrey Kamaev 已提交
178 179 180
        }
    }

181 182 183 184 185 186 187 188 189
    for( i = 0; i < nclasses; i++ )
    {
        Rect r = rrects[i];
        float s = 1.f/rweights[i];
        rrects[i] = Rect(saturate_cast<int>(r.x*s),
             saturate_cast<int>(r.y*s),
             saturate_cast<int>(r.width*s),
             saturate_cast<int>(r.height*s));
    }
A
Andrey Kamaev 已提交
190

191 192 193
    rectList.clear();
    if( weights )
        weights->clear();
A
Andrey Kamaev 已提交
194 195 196
    if( levelWeights )
        levelWeights->clear();

197 198 199
    for( i = 0; i < nclasses; i++ )
    {
        Rect r1 = rrects[i];
200
        int n1 = levelWeights ? rejectLevels[i] : rweights[i];
A
Andrey Kamaev 已提交
201
        double w1 = rejectWeights[i];
202 203 204 205 206 207
        if( n1 <= groupThreshold )
            continue;
        // filter out small face rectangles inside large rectangles
        for( j = 0; j < nclasses; j++ )
        {
            int n2 = rweights[j];
A
Andrey Kamaev 已提交
208

209 210 211
            if( j == i || n2 <= groupThreshold )
                continue;
            Rect r2 = rrects[j];
A
Andrey Kamaev 已提交
212

213 214
            int dx = saturate_cast<int>( r2.width * eps );
            int dy = saturate_cast<int>( r2.height * eps );
A
Andrey Kamaev 已提交
215

216 217 218 219 220 221 222 223
            if( i != j &&
                r1.x >= r2.x - dx &&
                r1.y >= r2.y - dy &&
                r1.x + r1.width <= r2.x + r2.width + dx &&
                r1.y + r1.height <= r2.y + r2.height + dy &&
                (n2 > std::max(3, n1) || n1 < 3) )
                break;
        }
A
Andrey Kamaev 已提交
224

225 226 227 228 229
        if( j == nclasses )
        {
            rectList.push_back(r1);
            if( weights )
                weights->push_back(n1);
A
Andrey Kamaev 已提交
230 231
            if( levelWeights )
                levelWeights->push_back(w1);
232 233 234 235
        }
    }
}

236 237 238
class MeanshiftGrouping
{
public:
A
Andrey Kamaev 已提交
239 240
    MeanshiftGrouping(const Point3d& densKer, const vector<Point3d>& posV,
        const vector<double>& wV, double, int maxIter = 20)
241
    {
A
Andrey Kamaev 已提交
242
        densityKernel = densKer;
243 244
        weightsV = wV;
        positionsV = posV;
245
        positionsCount = (int)posV.size();
A
Andrey Kamaev 已提交
246
        meanshiftV.resize(positionsCount);
247
        distanceV.resize(positionsCount);
A
Andrey Kamaev 已提交
248 249 250 251 252 253 254 255
        iterMax = maxIter;

        for (unsigned i = 0; i<positionsV.size(); i++)
        {
            meanshiftV[i] = getNewValue(positionsV[i]);
            distanceV[i] = moveToMode(meanshiftV[i]);
            meanshiftV[i] -= positionsV[i];
        }
256
    }
A
Andrey Kamaev 已提交
257 258

    void getModes(vector<Point3d>& modesV, vector<double>& resWeightsV, const double eps)
259
    {
A
Andrey Kamaev 已提交
260 261 262 263 264 265 266 267 268 269 270 271 272 273 274 275 276 277 278 279 280 281 282
        for (size_t i=0; i <distanceV.size(); i++)
        {
            bool is_found = false;
            for(size_t j=0; j<modesV.size(); j++)
            {
                if ( getDistance(distanceV[i], modesV[j]) < eps)
                {
                    is_found=true;
                    break;
                }
            }
            if (!is_found)
            {
                modesV.push_back(distanceV[i]);
            }
        }

        resWeightsV.resize(modesV.size());

        for (size_t i=0; i<modesV.size(); i++)
        {
            resWeightsV[i] = getResultWeight(modesV[i]);
        }
283 284 285
    }

protected:
A
Andrey Kamaev 已提交
286 287
    vector<Point3d> positionsV;
    vector<double> weightsV;
288

A
Andrey Kamaev 已提交
289 290
    Point3d densityKernel;
    int positionsCount;
291

A
Andrey Kamaev 已提交
292 293 294 295
    vector<Point3d> meanshiftV;
    vector<Point3d> distanceV;
    int iterMax;
    double modeEps;
296

A
Andrey Kamaev 已提交
297
    Point3d getNewValue(const Point3d& inPt) const
298
    {
A
Andrey Kamaev 已提交
299 300 301 302 303 304 305 306 307 308 309 310 311 312 313 314 315 316 317 318 319 320 321 322 323 324 325 326 327 328 329
        Point3d resPoint(.0);
        Point3d ratPoint(.0);
        for (size_t i=0; i<positionsV.size(); i++)
        {
            Point3d aPt= positionsV[i];
            Point3d bPt = inPt;
            Point3d sPt = densityKernel;

            sPt.x *= exp(aPt.z);
            sPt.y *= exp(aPt.z);

            aPt.x /= sPt.x;
            aPt.y /= sPt.y;
            aPt.z /= sPt.z;

            bPt.x /= sPt.x;
            bPt.y /= sPt.y;
            bPt.z /= sPt.z;

            double w = (weightsV[i])*std::exp(-((aPt-bPt).dot(aPt-bPt))/2)/std::sqrt(sPt.dot(Point3d(1,1,1)));

            resPoint += w*aPt;

            ratPoint.x += w/sPt.x;
            ratPoint.y += w/sPt.y;
            ratPoint.z += w/sPt.z;
        }
        resPoint.x /= ratPoint.x;
        resPoint.y /= ratPoint.y;
        resPoint.z /= ratPoint.z;
        return resPoint;
330 331
    }

A
Andrey Kamaev 已提交
332
    double getResultWeight(const Point3d& inPt) const
333
    {
A
Andrey Kamaev 已提交
334 335 336 337 338 339 340 341 342 343 344 345 346 347 348 349 350 351
        double sumW=0;
        for (size_t i=0; i<positionsV.size(); i++)
        {
            Point3d aPt = positionsV[i];
            Point3d sPt = densityKernel;

            sPt.x *= exp(aPt.z);
            sPt.y *= exp(aPt.z);

            aPt -= inPt;

            aPt.x /= sPt.x;
            aPt.y /= sPt.y;
            aPt.z /= sPt.z;

            sumW+=(weightsV[i])*std::exp(-(aPt.dot(aPt))/2)/std::sqrt(sPt.dot(Point3d(1,1,1)));
        }
        return sumW;
352
    }
A
Andrey Kamaev 已提交
353 354

    Point3d moveToMode(Point3d aPt) const
355
    {
A
Andrey Kamaev 已提交
356 357 358 359 360 361 362 363 364 365 366
        Point3d bPt;
        for (int i = 0; i<iterMax; i++)
        {
            bPt = aPt;
            aPt = getNewValue(bPt);
            if ( getDistance(aPt, bPt) <= modeEps )
            {
                break;
            }
        }
        return aPt;
367 368 369 370
    }

    double getDistance(Point3d p1, Point3d p2) const
    {
A
Andrey Kamaev 已提交
371 372 373 374 375 376 377 378
        Point3d ns = densityKernel;
        ns.x *= exp(p2.z);
        ns.y *= exp(p2.z);
        p2 -= p1;
        p2.x /= ns.x;
        p2.y /= ns.y;
        p2.z /= ns.z;
        return p2.dot(p2);
379 380
    }
};
381
//new grouping function with using meanshift
A
Andrey Kamaev 已提交
382 383
static void groupRectangles_meanshift(vector<Rect>& rectList, double detectThreshold, vector<double>* foundWeights,
                                      vector<double>& scales, Size winDetSize)
384
{
385
    int detectionCount = (int)rectList.size();
386 387 388 389
    vector<Point3d> hits(detectionCount), resultHits;
    vector<double> hitWeights(detectionCount), resultWeights;
    Point2d hitCenter;

A
Andrey Kamaev 已提交
390
    for (int i=0; i < detectionCount; i++)
391 392 393 394 395 396 397 398 399 400 401 402 403 404 405 406 407
    {
        hitWeights[i] = (*foundWeights)[i];
        hitCenter = (rectList[i].tl() + rectList[i].br())*(0.5); //center of rectangles
        hits[i] = Point3d(hitCenter.x, hitCenter.y, std::log(scales[i]));
    }

    rectList.clear();
    if (foundWeights)
        foundWeights->clear();

    double logZ = std::log(1.3);
    Point3d smothing(8, 16, logZ);

    MeanshiftGrouping msGrouping(smothing, hits, hitWeights, 1e-5, 100);

    msGrouping.getModes(resultHits, resultWeights, 1);

A
Andrey Kamaev 已提交
408
    for (unsigned i=0; i < resultHits.size(); ++i)
409 410 411 412 413 414
    {

        double scale = exp(resultHits[i].z);
        hitCenter.x = resultHits[i].x;
        hitCenter.y = resultHits[i].y;
        Size s( int(winDetSize.width * scale), int(winDetSize.height * scale) );
A
Andrey Kamaev 已提交
415 416
        Rect resultRect( int(hitCenter.x-s.width/2), int(hitCenter.y-s.height/2),
            int(s.width), int(s.height) );
417

A
Andrey Kamaev 已提交
418
        if (resultWeights[i] > detectThreshold)
419 420 421 422 423 424
        {
            rectList.push_back(resultRect);
            foundWeights->push_back(resultWeights[i]);
        }
    }
}
425 426 427

void groupRectangles(vector<Rect>& rectList, int groupThreshold, double eps)
{
428
    groupRectangles(rectList, groupThreshold, eps, 0, 0);
429
}
430

431 432
void groupRectangles(vector<Rect>& rectList, vector<int>& weights, int groupThreshold, double eps)
{
433 434
    groupRectangles(rectList, groupThreshold, eps, &weights, 0);
}
435 436
//used for cascade detection algorithm for ROC-curve calculating
void groupRectangles(vector<Rect>& rectList, vector<int>& rejectLevels, vector<double>& levelWeights, int groupThreshold, double eps)
437
{
438
    groupRectangles(rectList, groupThreshold, eps, &rejectLevels, &levelWeights);
439
}
440
//can be used for HOG detection algorithm only
A
Andrey Kamaev 已提交
441 442
void groupRectangles_meanshift(vector<Rect>& rectList, vector<double>& foundWeights,
                               vector<double>& foundScales, double detectThreshold, Size winDetSize)
443
{
A
Andrey Kamaev 已提交
444
    groupRectangles_meanshift(rectList, detectThreshold, &foundWeights, foundScales, winDetSize);
445 446
}

A
Andrey Kamaev 已提交
447

448 449 450 451 452 453 454 455 456 457 458 459 460 461 462 463

FeatureEvaluator::~FeatureEvaluator() {}
bool FeatureEvaluator::read(const FileNode&) {return true;}
Ptr<FeatureEvaluator> FeatureEvaluator::clone() const { return Ptr<FeatureEvaluator>(); }
int FeatureEvaluator::getFeatureType() const {return -1;}
bool FeatureEvaluator::setImage(const Mat&, Size) {return true;}
bool FeatureEvaluator::setWindow(Point) { return true; }
double FeatureEvaluator::calcOrd(int) const { return 0.; }
int FeatureEvaluator::calcCat(int) const { return 0; }

//----------------------------------------------  HaarEvaluator ---------------------------------------

bool HaarEvaluator::Feature :: read( const FileNode& node )
{
    FileNode rnode = node[CC_RECTS];
    FileNodeIterator it = rnode.begin(), it_end = rnode.end();
A
Andrey Kamaev 已提交
464

465 466 467 468 469 470
    int ri;
    for( ri = 0; ri < RECT_NUM; ri++ )
    {
        rect[ri].r = Rect();
        rect[ri].weight = 0.f;
    }
A
Andrey Kamaev 已提交
471

472 473 474 475 476 477
    for(ri = 0; it != it_end; ++it, ri++)
    {
        FileNodeIterator it2 = (*it).begin();
        it2 >> rect[ri].r.x >> rect[ri].r.y >>
            rect[ri].r.width >> rect[ri].r.height >> rect[ri].weight;
    }
A
Andrey Kamaev 已提交
478

479 480 481 482 483 484 485 486 487 488 489 490 491 492 493 494 495 496
    tilted = (int)node[CC_TILTED] != 0;
    return true;
}

HaarEvaluator::HaarEvaluator()
{
    features = new vector<Feature>();
}
HaarEvaluator::~HaarEvaluator()
{
}

bool HaarEvaluator::read(const FileNode& node)
{
    features->resize(node.size());
    featuresPtr = &(*features)[0];
    FileNodeIterator it = node.begin(), it_end = node.end();
    hasTiltedFeatures = false;
A
Andrey Kamaev 已提交
497

498 499 500 501 502 503 504 505 506
    for(int i = 0; it != it_end; ++it, i++)
    {
        if(!featuresPtr[i].read(*it))
            return false;
        if( featuresPtr[i].tilted )
            hasTiltedFeatures = true;
    }
    return true;
}
A
Andrey Kamaev 已提交
507

508 509 510 511 512 513 514 515 516 517 518 519 520
Ptr<FeatureEvaluator> HaarEvaluator::clone() const
{
    HaarEvaluator* ret = new HaarEvaluator;
    ret->origWinSize = origWinSize;
    ret->features = features;
    ret->featuresPtr = &(*ret->features)[0];
    ret->hasTiltedFeatures = hasTiltedFeatures;
    ret->sum0 = sum0, ret->sqsum0 = sqsum0, ret->tilted0 = tilted0;
    ret->sum = sum, ret->sqsum = sqsum, ret->tilted = tilted;
    ret->normrect = normrect;
    memcpy( ret->p, p, 4*sizeof(p[0]) );
    memcpy( ret->pq, pq, 4*sizeof(pq[0]) );
    ret->offset = offset;
A
Andrey Kamaev 已提交
521
    ret->varianceNormFactor = varianceNormFactor;
522 523 524 525 526 527 528 529
    return ret;
}

bool HaarEvaluator::setImage( const Mat &image, Size _origWinSize )
{
    int rn = image.rows+1, cn = image.cols+1;
    origWinSize = _origWinSize;
    normrect = Rect(1, 1, origWinSize.width-2, origWinSize.height-2);
A
Andrey Kamaev 已提交
530

531 532
    if (image.cols < origWinSize.width || image.rows < origWinSize.height)
        return false;
A
Andrey Kamaev 已提交
533

534 535 536 537 538 539 540 541
    if( sum0.rows < rn || sum0.cols < cn )
    {
        sum0.create(rn, cn, CV_32S);
        sqsum0.create(rn, cn, CV_64F);
        if (hasTiltedFeatures)
            tilted0.create( rn, cn, CV_32S);
    }
    sum = Mat(rn, cn, CV_32S, sum0.data);
542
    sqsum = Mat(rn, cn, CV_64F, sqsum0.data);
543 544 545 546 547 548 549 550 551 552 553 554

    if( hasTiltedFeatures )
    {
        tilted = Mat(rn, cn, CV_32S, tilted0.data);
        integral(image, sum, sqsum, tilted);
    }
    else
        integral(image, sum, sqsum);
    const int* sdata = (const int*)sum.data;
    const double* sqdata = (const double*)sqsum.data;
    size_t sumStep = sum.step/sizeof(sdata[0]);
    size_t sqsumStep = sqsum.step/sizeof(sqdata[0]);
A
Andrey Kamaev 已提交
555

556 557
    CV_SUM_PTRS( p[0], p[1], p[2], p[3], sdata, normrect, sumStep );
    CV_SUM_PTRS( pq[0], pq[1], pq[2], pq[3], sqdata, normrect, sqsumStep );
A
Andrey Kamaev 已提交
558

559 560 561 562 563 564 565 566 567 568
    size_t fi, nfeatures = features->size();

    for( fi = 0; fi < nfeatures; fi++ )
        featuresPtr[fi].updatePtrs( !featuresPtr[fi].tilted ? sum : tilted );
    return true;
}

bool  HaarEvaluator::setWindow( Point pt )
{
    if( pt.x < 0 || pt.y < 0 ||
569 570
        pt.x + origWinSize.width >= sum.cols ||
        pt.y + origWinSize.height >= sum.rows )
571 572 573 574 575 576 577 578 579 580 581 582 583 584
        return false;

    size_t pOffset = pt.y * (sum.step/sizeof(int)) + pt.x;
    size_t pqOffset = pt.y * (sqsum.step/sizeof(double)) + pt.x;
    int valsum = CALC_SUM(p, pOffset);
    double valsqsum = CALC_SUM(pq, pqOffset);

    double nf = (double)normrect.area() * valsqsum - (double)valsum * valsum;
    if( nf > 0. )
        nf = sqrt(nf);
    else
        nf = 1.;
    varianceNormFactor = 1./nf;
    offset = (int)pOffset;
585

586 587 588 589 590 591 592 593 594 595 596 597 598 599 600 601 602 603 604 605 606 607 608 609 610 611 612 613 614 615 616 617 618 619 620 621 622 623 624 625 626 627 628 629 630 631 632 633 634 635 636 637
    return true;
}

//----------------------------------------------  LBPEvaluator -------------------------------------
bool LBPEvaluator::Feature :: read(const FileNode& node )
{
    FileNode rnode = node[CC_RECT];
    FileNodeIterator it = rnode.begin();
    it >> rect.x >> rect.y >> rect.width >> rect.height;
    return true;
}

LBPEvaluator::LBPEvaluator()
{
    features = new vector<Feature>();
}
LBPEvaluator::~LBPEvaluator()
{
}

bool LBPEvaluator::read( const FileNode& node )
{
    features->resize(node.size());
    featuresPtr = &(*features)[0];
    FileNodeIterator it = node.begin(), it_end = node.end();
    for(int i = 0; it != it_end; ++it, i++)
    {
        if(!featuresPtr[i].read(*it))
            return false;
    }
    return true;
}

Ptr<FeatureEvaluator> LBPEvaluator::clone() const
{
    LBPEvaluator* ret = new LBPEvaluator;
    ret->origWinSize = origWinSize;
    ret->features = features;
    ret->featuresPtr = &(*ret->features)[0];
    ret->sum0 = sum0, ret->sum = sum;
    ret->normrect = normrect;
    ret->offset = offset;
    return ret;
}

bool LBPEvaluator::setImage( const Mat& image, Size _origWinSize )
{
    int rn = image.rows+1, cn = image.cols+1;
    origWinSize = _origWinSize;

    if( image.cols < origWinSize.width || image.rows < origWinSize.height )
        return false;
A
Andrey Kamaev 已提交
638

639 640 641 642
    if( sum0.rows < rn || sum0.cols < cn )
        sum0.create(rn, cn, CV_32S);
    sum = Mat(rn, cn, CV_32S, sum0.data);
    integral(image, sum);
A
Andrey Kamaev 已提交
643

644
    size_t fi, nfeatures = features->size();
A
Andrey Kamaev 已提交
645

646 647 648 649
    for( fi = 0; fi < nfeatures; fi++ )
        featuresPtr[fi].updatePtrs( sum );
    return true;
}
A
Andrey Kamaev 已提交
650

651 652 653
bool LBPEvaluator::setWindow( Point pt )
{
    if( pt.x < 0 || pt.y < 0 ||
654 655
        pt.x + origWinSize.width >= sum.cols ||
        pt.y + origWinSize.height >= sum.rows )
656 657 658
        return false;
    offset = pt.y * ((int)sum.step/sizeof(int)) + pt.x;
    return true;
A
Andrey Kamaev 已提交
659
}
660 661 662 663 664 665 666 667 668 669 670 671 672 673 674 675 676 677 678 679 680 681 682 683 684 685 686 687 688 689 690 691 692 693 694 695 696 697 698 699 700 701 702 703 704 705 706 707

//----------------------------------------------  HOGEvaluator ---------------------------------------
bool HOGEvaluator::Feature :: read( const FileNode& node )
{
    FileNode rnode = node[CC_RECT];
    FileNodeIterator it = rnode.begin();
    it >> rect[0].x >> rect[0].y >> rect[0].width >> rect[0].height >> featComponent;
    rect[1].x = rect[0].x + rect[0].width;
    rect[1].y = rect[0].y;
    rect[2].x = rect[0].x;
    rect[2].y = rect[0].y + rect[0].height;
    rect[3].x = rect[0].x + rect[0].width;
    rect[3].y = rect[0].y + rect[0].height;
    rect[1].width = rect[2].width = rect[3].width = rect[0].width;
    rect[1].height = rect[2].height = rect[3].height = rect[0].height;
    return true;
}

HOGEvaluator::HOGEvaluator()
{
    features = new vector<Feature>();
}

HOGEvaluator::~HOGEvaluator()
{
}

bool HOGEvaluator::read( const FileNode& node )
{
    features->resize(node.size());
    featuresPtr = &(*features)[0];
    FileNodeIterator it = node.begin(), it_end = node.end();
    for(int i = 0; it != it_end; ++it, i++)
    {
        if(!featuresPtr[i].read(*it))
            return false;
    }
    return true;
}

Ptr<FeatureEvaluator> HOGEvaluator::clone() const
{
    HOGEvaluator* ret = new HOGEvaluator;
    ret->origWinSize = origWinSize;
    ret->features = features;
    ret->featuresPtr = &(*ret->features)[0];
    ret->offset = offset;
    ret->hist = hist;
A
Andrey Kamaev 已提交
708
    ret->normSum = normSum;
709 710 711 712 713 714 715 716 717 718 719 720 721 722 723 724 725 726 727 728 729 730 731 732 733 734
    return ret;
}

bool HOGEvaluator::setImage( const Mat& image, Size winSize )
{
    int rows = image.rows + 1;
    int cols = image.cols + 1;
    origWinSize = winSize;
    if( image.cols < origWinSize.width || image.rows < origWinSize.height )
        return false;
    hist.clear();
    for( int bin = 0; bin < Feature::BIN_NUM; bin++ )
    {
        hist.push_back( Mat(rows, cols, CV_32FC1) );
    }
    normSum.create( rows, cols, CV_32FC1 );

    integralHistogram( image, hist, normSum, Feature::BIN_NUM );

    size_t featIdx, featCount = features->size();

    for( featIdx = 0; featIdx < featCount; featIdx++ )
    {
        featuresPtr[featIdx].updatePtrs( hist, normSum );
    }
    return true;
735 736
}

737 738 739 740 741 742 743 744 745 746 747 748 749 750 751 752 753 754 755 756 757 758 759 760 761 762 763 764 765 766 767 768 769 770 771 772 773 774 775 776 777 778 779 780 781 782 783 784 785 786 787 788 789 790 791 792 793 794 795 796 797 798 799 800 801 802 803 804 805 806 807 808 809 810 811 812 813 814 815 816 817 818 819 820 821 822 823 824 825
bool HOGEvaluator::setWindow(Point pt)
{
    if( pt.x < 0 || pt.y < 0 ||
        pt.x + origWinSize.width >= hist[0].cols-2 ||
        pt.y + origWinSize.height >= hist[0].rows-2 )
        return false;
    offset = pt.y * ((int)hist[0].step/sizeof(float)) + pt.x;
    return true;
}

void HOGEvaluator::integralHistogram(const Mat &img, vector<Mat> &histogram, Mat &norm, int nbins) const
{
    CV_Assert( img.type() == CV_8U || img.type() == CV_8UC3 );
    int x, y, binIdx;

    Size gradSize(img.size());
    Size histSize(histogram[0].size());
    Mat grad(gradSize, CV_32F);
    Mat qangle(gradSize, CV_8U);

    AutoBuffer<int> mapbuf(gradSize.width + gradSize.height + 4);
    int* xmap = (int*)mapbuf + 1;
    int* ymap = xmap + gradSize.width + 2;

    const int borderType = (int)BORDER_REPLICATE;

    for( x = -1; x < gradSize.width + 1; x++ )
        xmap[x] = borderInterpolate(x, gradSize.width, borderType);
    for( y = -1; y < gradSize.height + 1; y++ )
        ymap[y] = borderInterpolate(y, gradSize.height, borderType);

    int width = gradSize.width;
    AutoBuffer<float> _dbuf(width*4);
    float* dbuf = _dbuf;
    Mat Dx(1, width, CV_32F, dbuf);
    Mat Dy(1, width, CV_32F, dbuf + width);
    Mat Mag(1, width, CV_32F, dbuf + width*2);
    Mat Angle(1, width, CV_32F, dbuf + width*3);

    float angleScale = (float)(nbins/CV_PI);

    for( y = 0; y < gradSize.height; y++ )
    {
        const uchar* currPtr = img.data + img.step*ymap[y];
        const uchar* prevPtr = img.data + img.step*ymap[y-1];
        const uchar* nextPtr = img.data + img.step*ymap[y+1];
        float* gradPtr = (float*)grad.ptr(y);
        uchar* qanglePtr = (uchar*)qangle.ptr(y);

        for( x = 0; x < width; x++ )
        {
            dbuf[x] = (float)(currPtr[xmap[x+1]] - currPtr[xmap[x-1]]);
            dbuf[width + x] = (float)(nextPtr[xmap[x]] - prevPtr[xmap[x]]);
        }
        cartToPolar( Dx, Dy, Mag, Angle, false );
        for( x = 0; x < width; x++ )
        {
            float mag = dbuf[x+width*2];
            float angle = dbuf[x+width*3];
            angle = angle*angleScale - 0.5f;
            int bidx = cvFloor(angle);
            angle -= bidx;
            if( bidx < 0 )
                bidx += nbins;
            else if( bidx >= nbins )
                bidx -= nbins;

            qanglePtr[x] = (uchar)bidx;
            gradPtr[x] = mag;
        }
    }
    integral(grad, norm, grad.depth());

    float* histBuf;
    const float* magBuf;
    const uchar* binsBuf;

    int binsStep = (int)( qangle.step / sizeof(uchar) );
    int histStep = (int)( histogram[0].step / sizeof(float) );
    int magStep = (int)( grad.step / sizeof(float) );
    for( binIdx = 0; binIdx < nbins; binIdx++ )
    {
        histBuf = (float*)histogram[binIdx].data;
        magBuf = (const float*)grad.data;
        binsBuf = (const uchar*)qangle.data;

        memset( histBuf, 0, histSize.width * sizeof(histBuf[0]) );
        histBuf += histStep + 1;
        for( y = 0; y < qangle.rows; y++ )
A
Andrey Kamaev 已提交
826
        {
827 828 829 830 831 832 833 834 835 836 837 838 839 840 841 842
            histBuf[-1] = 0.f;
            float strSum = 0.f;
            for( x = 0; x < qangle.cols; x++ )
            {
                if( binsBuf[x] == binIdx )
                    strSum += magBuf[x];
                histBuf[x] = histBuf[-histStep + x] + strSum;
            }
            histBuf += histStep;
            binsBuf += binsStep;
            magBuf += magStep;
        }
    }
}

Ptr<FeatureEvaluator> FeatureEvaluator::create( int featureType )
843 844
{
    return featureType == HAAR ? Ptr<FeatureEvaluator>(new HaarEvaluator) :
A
Andrey Kamaev 已提交
845
        featureType == LBP ? Ptr<FeatureEvaluator>(new LBPEvaluator) :
846 847
        featureType == HOG ? Ptr<FeatureEvaluator>(new HOGEvaluator) :
        Ptr<FeatureEvaluator>();
848
}
849

850 851 852 853 854 855 856
//---------------------------------------- Classifier Cascade --------------------------------------------

CascadeClassifier::CascadeClassifier()
{
}

CascadeClassifier::CascadeClassifier(const string& filename)
A
Andrey Kamaev 已提交
857 858
{
    load(filename);
859
}
860 861 862

CascadeClassifier::~CascadeClassifier()
{
A
Andrey Kamaev 已提交
863
}
864 865 866

bool CascadeClassifier::empty() const
{
867
    return oldCascade.empty() && data.stages.empty();
868 869 870 871 872
}

bool CascadeClassifier::load(const string& filename)
{
    oldCascade.release();
873 874
    data = Data();
    featureEvaluator.release();
A
Andrey Kamaev 已提交
875

876 877 878
    FileStorage fs(filename, FileStorage::READ);
    if( !fs.isOpened() )
        return false;
A
Andrey Kamaev 已提交
879

880 881
    if( read(fs.getFirstTopLevelNode()) )
        return true;
A
Andrey Kamaev 已提交
882

883
    fs.release();
A
Andrey Kamaev 已提交
884

885 886 887
    oldCascade = Ptr<CvHaarClassifierCascade>((CvHaarClassifierCascade*)cvLoad(filename.c_str(), 0, 0, 0));
    return !oldCascade.empty();
}
A
Andrey Kamaev 已提交
888 889

int CascadeClassifier::runAt( Ptr<FeatureEvaluator>& evaluator, Point pt, double& weight )
890 891
{
    CV_Assert( oldCascade.empty() );
A
Andrey Kamaev 已提交
892

893 894 895
    assert( data.featureType == FeatureEvaluator::HAAR ||
            data.featureType == FeatureEvaluator::LBP ||
            data.featureType == FeatureEvaluator::HOG );
896

A
Andrey Kamaev 已提交
897
    if( !evaluator->setWindow(pt) )
898 899 900 901
        return -1;
    if( data.isStumpBased )
    {
        if( data.featureType == FeatureEvaluator::HAAR )
A
Andrey Kamaev 已提交
902
            return predictOrderedStump<HaarEvaluator>( *this, evaluator, weight );
903
        else if( data.featureType == FeatureEvaluator::LBP )
A
Andrey Kamaev 已提交
904
            return predictCategoricalStump<LBPEvaluator>( *this, evaluator, weight );
905
        else if( data.featureType == FeatureEvaluator::HOG )
A
Andrey Kamaev 已提交
906
            return predictOrderedStump<HOGEvaluator>( *this, evaluator, weight );
907 908 909 910 911 912
        else
            return -2;
    }
    else
    {
        if( data.featureType == FeatureEvaluator::HAAR )
A
Andrey Kamaev 已提交
913
            return predictOrdered<HaarEvaluator>( *this, evaluator, weight );
914
        else if( data.featureType == FeatureEvaluator::LBP )
A
Andrey Kamaev 已提交
915
            return predictCategorical<LBPEvaluator>( *this, evaluator, weight );
916
        else if( data.featureType == FeatureEvaluator::HOG )
A
Andrey Kamaev 已提交
917
            return predictOrdered<HOGEvaluator>( *this, evaluator, weight );
918 919 920
        else
            return -2;
    }
921
}
A
Andrey Kamaev 已提交
922 923

bool CascadeClassifier::setImage( Ptr<FeatureEvaluator>& evaluator, const Mat& image )
924
{
A
Andrey Kamaev 已提交
925
    return empty() ? false : evaluator->setImage(image, data.origWinSize);
926
}
927

928 929 930 931 932 933 934 935 936
void CascadeClassifier::setMaskGenerator(Ptr<MaskGenerator> _maskGenerator)
{
    maskGenerator=_maskGenerator;
}
Ptr<CascadeClassifier::MaskGenerator> CascadeClassifier::getMaskGenerator()
{
    return maskGenerator;
}

937
void CascadeClassifier::setFaceDetectionMaskGenerator()
938 939
{
#ifdef HAVE_TEGRA_OPTIMIZATION
940
    setMaskGenerator(tegra::getCascadeClassifierMaskGenerator(*this));
941
#else
942
    setMaskGenerator(Ptr<CascadeClassifier::MaskGenerator>());
943 944 945
#endif
}

946
class CascadeClassifierInvoker : public ParallelLoopBody
947
{
948
public:
A
Andrey Kamaev 已提交
949
    CascadeClassifierInvoker( CascadeClassifier& _cc, Size _sz1, int _stripSize, int _yStep, double _factor,
950
        vector<Rect>& _vec, vector<int>& _levels, vector<double>& _weights, bool outputLevels, const Mat& _mask, Mutex* _mtx)
951
    {
952
        classifier = &_cc;
953
        processingRectSize = _sz1;
954 955
        stripSize = _stripSize;
        yStep = _yStep;
956 957
        scalingFactor = _factor;
        rectangles = &_vec;
958 959 960 961
        rejectLevels = outputLevels ? &_levels : 0;
        levelWeights = outputLevels ? &_weights : 0;
        mask = _mask;
        mtx = _mtx;
962
    }
A
Andrey Kamaev 已提交
963

964
    void operator()(const Range& range) const
965
    {
966
        Ptr<FeatureEvaluator> evaluator = classifier->featureEvaluator->clone();
967

968
        Size winSize(cvRound(classifier->data.origWinSize.width * scalingFactor), cvRound(classifier->data.origWinSize.height * scalingFactor));
969

970 971
        int y1 = range.start * stripSize;
        int y2 = min(range.end * stripSize, processingRectSize.height);
972
        for( int y = y1; y < y2; y += yStep )
973
        {
974
            for( int x = 0; x < processingRectSize.width; x += yStep )
975
            {
976
                if ( (!mask.empty()) && (mask.at<uchar>(Point(x,y))==0)) {
977 978 979
                    continue;
                }

980 981
                double gypWeight;
                int result = classifier->runAt(evaluator, Point(x, y), gypWeight);
982

983 984 985 986
#if defined (LOG_CASCADE_STATISTIC)

                logger.setPoint(Point(x, y), result);
#endif
987 988 989
                if( rejectLevels )
                {
                    if( result == 1 )
990
                        result =  -(int)classifier->data.stages.size();
991
                    if( classifier->data.stages.size() + result < 4 )
992
                    {
993
                        mtx->lock();
A
Andrey Kamaev 已提交
994
                        rectangles->push_back(Rect(cvRound(x*scalingFactor), cvRound(y*scalingFactor), winSize.width, winSize.height));
995
                        mtx->unlock();
996
                        rejectLevels->push_back(-result);
997
                        levelWeights->push_back(gypWeight);
998
                    }
A
Andrey Kamaev 已提交
999
                }
1000
                else if( result > 0 )
1001 1002
                {
                    mtx->lock();
1003
                    rectangles->push_back(Rect(cvRound(x*scalingFactor), cvRound(y*scalingFactor),
1004
                                               winSize.width, winSize.height));
1005 1006
                    mtx->unlock();
                }
1007
                if( result == 0 )
1008 1009
                    x += yStep;
            }
1010
        }
1011
    }
A
Andrey Kamaev 已提交
1012

1013
    CascadeClassifier* classifier;
1014
    vector<Rect>* rectangles;
1015
    Size processingRectSize;
1016
    int stripSize, yStep;
1017
    double scalingFactor;
1018
    vector<int> *rejectLevels;
1019
    vector<double> *levelWeights;
1020
    Mat mask;
1021
    Mutex* mtx;
1022
};
A
Andrey Kamaev 已提交
1023

1024 1025
struct getRect { Rect operator ()(const CvAvgComp& e) const { return e.rect; } };

1026

1027
bool CascadeClassifier::detectSingleScale( const Mat& image, int stripCount, Size processingRectSize,
1028
                                           int stripSize, int yStep, double factor, vector<Rect>& candidates,
1029
                                           vector<int>& levels, vector<double>& weights, bool outputRejectLevels )
1030 1031 1032 1033
{
    if( !featureEvaluator->setImage( image, data.origWinSize ) )
        return false;

1034
#if defined (LOG_CASCADE_STATISTIC)
1035
    logger.setImage(image);
1036
#endif
1037

1038 1039 1040 1041 1042
    Mat currentMask;
    if (!maskGenerator.empty()) {
        currentMask=maskGenerator->generateMask(image);
    }

1043
    vector<Rect> candidatesVector;
1044
    vector<int> rejectLevels;
1045
    vector<double> levelWeights;
1046
    Mutex mtx;
1047 1048
    if( outputRejectLevels )
    {
1049 1050
        parallel_for_(Range(0, stripCount), CascadeClassifierInvoker( *this, processingRectSize, stripSize, yStep, factor,
            candidatesVector, rejectLevels, levelWeights, true, currentMask, &mtx));
1051
        levels.insert( levels.end(), rejectLevels.begin(), rejectLevels.end() );
1052
        weights.insert( weights.end(), levelWeights.begin(), levelWeights.end() );
1053 1054 1055
    }
    else
    {
1056 1057
         parallel_for_(Range(0, stripCount), CascadeClassifierInvoker( *this, processingRectSize, stripSize, yStep, factor,
            candidatesVector, rejectLevels, levelWeights, false, currentMask, &mtx));
1058
    }
1059
    candidates.insert( candidates.end(), candidatesVector.begin(), candidatesVector.end() );
1060

1061 1062 1063 1064 1065
#if defined (LOG_CASCADE_STATISTIC)
    logger.write();
#endif

    return true;
1066 1067 1068 1069 1070 1071 1072
}

bool CascadeClassifier::isOldFormatCascade() const
{
    return !oldCascade.empty();
}

1073

1074 1075 1076 1077 1078 1079 1080 1081 1082 1083 1084 1085
int CascadeClassifier::getFeatureType() const
{
    return featureEvaluator->getFeatureType();
}

Size CascadeClassifier::getOriginalWindowSize() const
{
    return data.origWinSize;
}

bool CascadeClassifier::setImage(const Mat& image)
{
K
Kirill Kornyakov 已提交
1086
    return featureEvaluator->setImage(image, data.origWinSize);
1087 1088
}

A
Andrey Kamaev 已提交
1089
void CascadeClassifier::detectMultiScale( const Mat& image, vector<Rect>& objects,
A
Alexey Kazakov 已提交
1090
                                          vector<int>& rejectLevels,
1091
                                          vector<double>& levelWeights,
1092
                                          double scaleFactor, int minNeighbors,
A
Andrey Kamaev 已提交
1093
                                          int flags, Size minObjectSize, Size maxObjectSize,
A
Alexey Kazakov 已提交
1094
                                          bool outputRejectLevels )
1095 1096
{
    const double GROUP_EPS = 0.2;
A
Andrey Kamaev 已提交
1097

1098
    CV_Assert( scaleFactor > 1 && image.depth() == CV_8U );
A
Andrey Kamaev 已提交
1099

1100 1101 1102
    if( empty() )
        return;

1103
    if( isOldFormatCascade() )
1104 1105 1106
    {
        MemStorage storage(cvCreateMemStorage(0));
        CvMat _image = image;
1107 1108
        CvSeq* _objects = cvHaarDetectObjectsForROC( &_image, oldCascade, storage, rejectLevels, levelWeights, scaleFactor,
                                              minNeighbors, flags, minObjectSize, maxObjectSize, outputRejectLevels );
1109 1110 1111 1112 1113 1114
        vector<CvAvgComp> vecAvgComp;
        Seq<CvAvgComp>(_objects).copyTo(vecAvgComp);
        objects.resize(vecAvgComp.size());
        std::transform(vecAvgComp.begin(), vecAvgComp.end(), objects.begin(), getRect());
        return;
    }
1115

1116
    objects.clear();
1117

1118 1119 1120 1121 1122
    if (!maskGenerator.empty()) {
        maskGenerator->initializeMask(image);
    }


1123 1124
    if( maxObjectSize.height == 0 || maxObjectSize.width == 0 )
        maxObjectSize = image.size();
A
Andrey Kamaev 已提交
1125

1126 1127
    Mat grayImage = image;
    if( grayImage.channels() > 1 )
1128 1129
    {
        Mat temp;
1130 1131
        cvtColor(grayImage, temp, CV_BGR2GRAY);
        grayImage = temp;
1132
    }
A
Andrey Kamaev 已提交
1133

1134
    Mat imageBuffer(image.rows + 1, image.cols + 1, CV_8U);
1135
    vector<Rect> candidates;
1136 1137 1138

    for( double factor = 1; ; factor *= scaleFactor )
    {
1139
        Size originalWindowSize = getOriginalWindowSize();
1140

1141
        Size windowSize( cvRound(originalWindowSize.width*factor), cvRound(originalWindowSize.height*factor) );
1142
        Size scaledImageSize( cvRound( grayImage.cols/factor ), cvRound( grayImage.rows/factor ) );
1143
        Size processingRectSize( scaledImageSize.width - originalWindowSize.width + 1, scaledImageSize.height - originalWindowSize.height + 1 );
A
Andrey Kamaev 已提交
1144

1145
        if( processingRectSize.width <= 0 || processingRectSize.height <= 0 )
1146
            break;
1147
        if( windowSize.width > maxObjectSize.width || windowSize.height > maxObjectSize.height )
1148
            break;
1149
        if( windowSize.width < minObjectSize.width || windowSize.height < minObjectSize.height )
1150
            continue;
A
Andrey Kamaev 已提交
1151

1152 1153 1154
        Mat scaledImage( scaledImageSize, CV_8U, imageBuffer.data );
        resize( grayImage, scaledImage, scaledImageSize, 0, 0, CV_INTER_LINEAR );

1155 1156 1157 1158 1159 1160 1161 1162 1163 1164
        int yStep;
        if( getFeatureType() == cv::FeatureEvaluator::HOG )
        {
            yStep = 4;
        }
        else
        {
            yStep = factor > 2. ? 1 : 2;
        }

1165
        int stripCount, stripSize;
1166

1167
    #ifdef HAVE_TBB
1168
        const int PTS_PER_THREAD = 1000;
1169
        stripCount = ((processingRectSize.width/yStep)*(processingRectSize.height + yStep-1)/yStep + PTS_PER_THREAD/2)/PTS_PER_THREAD;
1170
        stripCount = std::min(std::max(stripCount, 1), 100);
1171
        stripSize = (((processingRectSize.height + stripCount - 1)/stripCount + yStep-1)/yStep)*yStep;
1172 1173
    #else
        stripCount = 1;
1174
        stripSize = processingRectSize.height;
1175 1176
    #endif

A
Andrey Kamaev 已提交
1177
        if( !detectSingleScale( scaledImage, stripCount, processingRectSize, stripSize, yStep, factor, candidates,
1178
            rejectLevels, levelWeights, outputRejectLevels ) )
1179 1180
            break;
    }
1181

A
Andrey Kamaev 已提交
1182

1183 1184 1185
    objects.resize(candidates.size());
    std::copy(candidates.begin(), candidates.end(), objects.begin());

1186 1187 1188 1189 1190 1191 1192 1193
    if( outputRejectLevels )
    {
        groupRectangles( objects, rejectLevels, levelWeights, minNeighbors, GROUP_EPS );
    }
    else
    {
        groupRectangles( objects, minNeighbors, GROUP_EPS );
    }
A
Alexey Kazakov 已提交
1194 1195 1196 1197 1198 1199 1200
}

void CascadeClassifier::detectMultiScale( const Mat& image, vector<Rect>& objects,
                                          double scaleFactor, int minNeighbors,
                                          int flags, Size minObjectSize, Size maxObjectSize)
{
    vector<int> fakeLevels;
1201
    vector<double> fakeWeights;
A
Andrey Kamaev 已提交
1202
    detectMultiScale( image, objects, fakeLevels, fakeWeights, scaleFactor,
A
Alexey Kazakov 已提交
1203
        minNeighbors, flags, minObjectSize, maxObjectSize, false );
A
Andrey Kamaev 已提交
1204
}
1205

1206
bool CascadeClassifier::Data::read(const FileNode &root)
1207
{
1208
    static const float THRESHOLD_EPS = 1e-5f;
A
Andrey Kamaev 已提交
1209

1210 1211 1212 1213 1214 1215
    // load stage params
    string stageTypeStr = (string)root[CC_STAGE_TYPE];
    if( stageTypeStr == CC_BOOST )
        stageType = BOOST;
    else
        return false;
1216

1217 1218 1219 1220 1221
    string featureTypeStr = (string)root[CC_FEATURE_TYPE];
    if( featureTypeStr == CC_HAAR )
        featureType = FeatureEvaluator::HAAR;
    else if( featureTypeStr == CC_LBP )
        featureType = FeatureEvaluator::LBP;
1222 1223 1224
    else if( featureTypeStr == CC_HOG )
        featureType = FeatureEvaluator::HOG;

1225 1226
    else
        return false;
1227

1228 1229 1230
    origWinSize.width = (int)root[CC_WIDTH];
    origWinSize.height = (int)root[CC_HEIGHT];
    CV_Assert( origWinSize.height > 0 && origWinSize.width > 0 );
1231

1232
    isStumpBased = (int)(root[CC_STAGE_PARAMS][CC_MAX_DEPTH]) == 1 ? true : false;
1233 1234 1235 1236 1237

    // load feature params
    FileNode fn = root[CC_FEATURE_PARAMS];
    if( fn.empty() )
        return false;
1238

1239 1240 1241
    ncategories = fn[CC_MAX_CAT_COUNT];
    int subsetSize = (ncategories + 31)/32,
        nodeStep = 3 + ( ncategories>0 ? subsetSize : 1 );
1242

1243 1244 1245 1246
    // load stages
    fn = root[CC_STAGES];
    if( fn.empty() )
        return false;
1247

1248 1249 1250
    stages.reserve(fn.size());
    classifiers.clear();
    nodes.clear();
1251

1252
    FileNodeIterator it = fn.begin(), it_end = fn.end();
1253

1254 1255 1256 1257
    for( int si = 0; it != it_end; si++, ++it )
    {
        FileNode fns = *it;
        Stage stage;
1258
        stage.threshold = (float)fns[CC_STAGE_THRESHOLD] - THRESHOLD_EPS;
1259 1260 1261 1262 1263 1264 1265
        fns = fns[CC_WEAK_CLASSIFIERS];
        if(fns.empty())
            return false;
        stage.ntrees = (int)fns.size();
        stage.first = (int)classifiers.size();
        stages.push_back(stage);
        classifiers.reserve(stages[si].first + stages[si].ntrees);
1266

1267 1268 1269 1270 1271 1272 1273 1274
        FileNodeIterator it1 = fns.begin(), it1_end = fns.end();
        for( ; it1 != it1_end; ++it1 ) // weak trees
        {
            FileNode fnw = *it1;
            FileNode internalNodes = fnw[CC_INTERNAL_NODES];
            FileNode leafValues = fnw[CC_LEAF_VALUES];
            if( internalNodes.empty() || leafValues.empty() )
                return false;
1275

1276 1277 1278
            DTree tree;
            tree.nodeCount = (int)internalNodes.size()/nodeStep;
            classifiers.push_back(tree);
1279

1280 1281 1282 1283
            nodes.reserve(nodes.size() + tree.nodeCount);
            leaves.reserve(leaves.size() + leafValues.size());
            if( subsetSize > 0 )
                subsets.reserve(subsets.size() + tree.nodeCount*subsetSize);
1284 1285 1286 1287

            FileNodeIterator internalNodesIter = internalNodes.begin(), internalNodesEnd = internalNodes.end();

            for( ; internalNodesIter != internalNodesEnd; ) // nodes
1288 1289
            {
                DTreeNode node;
1290 1291 1292
                node.left = (int)*internalNodesIter; ++internalNodesIter;
                node.right = (int)*internalNodesIter; ++internalNodesIter;
                node.featureIdx = (int)*internalNodesIter; ++internalNodesIter;
1293 1294
                if( subsetSize > 0 )
                {
1295 1296
                    for( int j = 0; j < subsetSize; j++, ++internalNodesIter )
                        subsets.push_back((int)*internalNodesIter);
1297 1298 1299 1300
                    node.threshold = 0.f;
                }
                else
                {
1301
                    node.threshold = (float)*internalNodesIter; ++internalNodesIter;
1302 1303 1304
                }
                nodes.push_back(node);
            }
1305 1306 1307 1308 1309

            internalNodesIter = leafValues.begin(), internalNodesEnd = leafValues.end();

            for( ; internalNodesIter != internalNodesEnd; ++internalNodesIter ) // leaves
                leaves.push_back((float)*internalNodesIter);
1310 1311 1312
        }
    }

1313 1314 1315 1316 1317 1318 1319 1320
    return true;
}

bool CascadeClassifier::read(const FileNode& root)
{
    if( !data.read(root) )
        return false;

1321
    // load features
1322 1323
    featureEvaluator = FeatureEvaluator::create(data.featureType);
    FileNode fn = root[CC_FEATURES];
1324 1325
    if( fn.empty() )
        return false;
A
Andrey Kamaev 已提交
1326

1327
    return featureEvaluator->read(fn);
1328
}
A
Andrey Kamaev 已提交
1329

1330
template<> void Ptr<CvHaarClassifierCascade>::delete_obj()
A
Andrey Kamaev 已提交
1331
{ cvReleaseHaarClassifierCascade(&obj); }
1332 1333

} // namespace cv