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// This file is part of OpenCV project.
// It is subject to the license terms in the LICENSE file found in the top-level directory
// of this distribution and at http://opencv.org/license.html.
#include "../precomp.hpp"
#include "detail/tracker_mil_model.hpp"
#include "detail/tracker_feature_haar.impl.hpp"
namespace cv {
inline namespace tracking {
namespace impl {
using cv::detail::tracking::internal::TrackerFeatureHAAR;
class TrackerMILImpl CV_FINAL : public TrackerMIL
{
public:
TrackerMILImpl(const TrackerMIL::Params& parameters);
virtual void init(InputArray image, const Rect& boundingBox) CV_OVERRIDE;
virtual bool update(InputArray image, Rect& boundingBox) CV_OVERRIDE;
void compute_integral(const Mat& img, Mat& ii_img);
TrackerMIL::Params params;
Ptr<TrackerMILModel> model;
Ptr<TrackerSampler> sampler;
Ptr<TrackerFeatureSet> featureSet;
};
TrackerMILImpl::TrackerMILImpl(const TrackerMIL::Params& parameters)
: params(parameters)
{
// nothing
}
void TrackerMILImpl::compute_integral(const Mat& img, Mat& ii_img)
{
Mat ii;
std::vector<Mat> ii_imgs;
integral(img, ii, CV_32F); // FIXIT split first
split(ii, ii_imgs);
ii_img = ii_imgs[0];
}
void TrackerMILImpl::init(InputArray image, const Rect& boundingBox)
{
sampler = makePtr<TrackerSampler>();
featureSet = makePtr<TrackerFeatureSet>();
Mat intImage;
compute_integral(image.getMat(), intImage);
TrackerSamplerCSC::Params CSCparameters;
CSCparameters.initInRad = params.samplerInitInRadius;
CSCparameters.searchWinSize = params.samplerSearchWinSize;
CSCparameters.initMaxNegNum = params.samplerInitMaxNegNum;
CSCparameters.trackInPosRad = params.samplerTrackInRadius;
CSCparameters.trackMaxPosNum = params.samplerTrackMaxPosNum;
CSCparameters.trackMaxNegNum = params.samplerTrackMaxNegNum;
Ptr<TrackerSamplerAlgorithm> CSCSampler = makePtr<TrackerSamplerCSC>(CSCparameters);
CV_Assert(sampler->addTrackerSamplerAlgorithm(CSCSampler));
//or add CSC sampler with default parameters
//sampler->addTrackerSamplerAlgorithm( "CSC" );
//Positive sampling
CSCSampler.staticCast<TrackerSamplerCSC>()->setMode(TrackerSamplerCSC::MODE_INIT_POS);
sampler->sampling(intImage, boundingBox);
std::vector<Mat> posSamples = sampler->getSamples();
//Negative sampling
CSCSampler.staticCast<TrackerSamplerCSC>()->setMode(TrackerSamplerCSC::MODE_INIT_NEG);
sampler->sampling(intImage, boundingBox);
std::vector<Mat> negSamples = sampler->getSamples();
CV_Assert(!posSamples.empty());
CV_Assert(!negSamples.empty());
//compute HAAR features
TrackerFeatureHAAR::Params HAARparameters;
HAARparameters.numFeatures = params.featureSetNumFeatures;
HAARparameters.rectSize = Size((int)boundingBox.width, (int)boundingBox.height);
HAARparameters.isIntegral = true;
Ptr<TrackerFeature> trackerFeature = makePtr<TrackerFeatureHAAR>(HAARparameters);
featureSet->addTrackerFeature(trackerFeature);
featureSet->extraction(posSamples);
const std::vector<Mat> posResponse = featureSet->getResponses();
featureSet->extraction(negSamples);
const std::vector<Mat> negResponse = featureSet->getResponses();
model = makePtr<TrackerMILModel>(boundingBox);
Ptr<TrackerStateEstimatorMILBoosting> stateEstimator = makePtr<TrackerStateEstimatorMILBoosting>(params.featureSetNumFeatures);
model->setTrackerStateEstimator(stateEstimator);
//Run model estimation and update
model.staticCast<TrackerMILModel>()->setMode(TrackerMILModel::MODE_POSITIVE, posSamples);
model->modelEstimation(posResponse);
model.staticCast<TrackerMILModel>()->setMode(TrackerMILModel::MODE_NEGATIVE, negSamples);
model->modelEstimation(negResponse);
model->modelUpdate();
}
bool TrackerMILImpl::update(InputArray image, Rect& boundingBox)
{
Mat intImage;
compute_integral(image.getMat(), intImage);
//get the last location [AAM] X(k-1)
Ptr<TrackerTargetState> lastLocation = model->getLastTargetState();
Rect lastBoundingBox((int)lastLocation->getTargetPosition().x, (int)lastLocation->getTargetPosition().y, lastLocation->getTargetWidth(),
lastLocation->getTargetHeight());
//sampling new frame based on last location
auto& samplers = sampler->getSamplers();
CV_Assert(!samplers.empty());
CV_Assert(samplers[0]);
samplers[0].staticCast<TrackerSamplerCSC>()->setMode(TrackerSamplerCSC::MODE_DETECT);
sampler->sampling(intImage, lastBoundingBox);
std::vector<Mat> detectSamples = sampler->getSamples();
if (detectSamples.empty())
return false;
/*//TODO debug samples
Mat f;
image.copyTo(f);
for( size_t i = 0; i < detectSamples.size(); i=i+10 )
{
Size sz;
Point off;
detectSamples.at(i).locateROI(sz, off);
rectangle(f, Rect(off.x,off.y,detectSamples.at(i).cols,detectSamples.at(i).rows), Scalar(255,0,0), 1);
}*/
//extract features from new samples
featureSet->extraction(detectSamples);
std::vector<Mat> response = featureSet->getResponses();
//predict new location
ConfidenceMap cmap;
model.staticCast<TrackerMILModel>()->setMode(TrackerMILModel::MODE_ESTIMATON, detectSamples);
model.staticCast<TrackerMILModel>()->responseToConfidenceMap(response, cmap);
model->getTrackerStateEstimator().staticCast<TrackerStateEstimatorMILBoosting>()->setCurrentConfidenceMap(cmap);
if (!model->runStateEstimator())
{
return false;
}
Ptr<TrackerTargetState> currentState = model->getLastTargetState();
boundingBox = Rect((int)currentState->getTargetPosition().x, (int)currentState->getTargetPosition().y, currentState->getTargetWidth(),
currentState->getTargetHeight());
/*//TODO debug
rectangle(f, lastBoundingBox, Scalar(0,255,0), 1);
rectangle(f, boundingBox, Scalar(0,0,255), 1);
imshow("f", f);
//waitKey( 0 );*/
//sampling new frame based on new location
//Positive sampling
samplers[0].staticCast<TrackerSamplerCSC>()->setMode(TrackerSamplerCSC::MODE_INIT_POS);
sampler->sampling(intImage, boundingBox);
std::vector<Mat> posSamples = sampler->getSamples();
//Negative sampling
samplers[0].staticCast<TrackerSamplerCSC>()->setMode(TrackerSamplerCSC::MODE_INIT_NEG);
sampler->sampling(intImage, boundingBox);
std::vector<Mat> negSamples = sampler->getSamples();
if (posSamples.empty() || negSamples.empty())
return false;
//extract features
featureSet->extraction(posSamples);
std::vector<Mat> posResponse = featureSet->getResponses();
featureSet->extraction(negSamples);
std::vector<Mat> negResponse = featureSet->getResponses();
//model estimate
model.staticCast<TrackerMILModel>()->setMode(TrackerMILModel::MODE_POSITIVE, posSamples);
model->modelEstimation(posResponse);
model.staticCast<TrackerMILModel>()->setMode(TrackerMILModel::MODE_NEGATIVE, negSamples);
model->modelEstimation(negResponse);
//model update
model->modelUpdate();
return true;
}
}} // namespace tracking::impl
TrackerMIL::Params::Params()
{
samplerInitInRadius = 3;
samplerSearchWinSize = 25;
samplerInitMaxNegNum = 65;
samplerTrackInRadius = 4;
samplerTrackMaxPosNum = 100000;
samplerTrackMaxNegNum = 65;
featureSetNumFeatures = 250;
}
TrackerMIL::TrackerMIL()
{
// nothing
}
TrackerMIL::~TrackerMIL()
{
// nothing
}
Ptr<TrackerMIL> TrackerMIL::create(const TrackerMIL::Params& parameters)
{
return makePtr<tracking::impl::TrackerMILImpl>(parameters);
}
} // namespace cv
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