Open Source Computer Vision Library https://opencv.org/
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#include "test_precomp.hpp"
using namespace cv;
using namespace std;
const int angularBins=12;
const int radialBins=4;
const float minRad=0.2f;
const float maxRad=2;
const int NSN=5;//10;//20; //number of shapes per class
const int NP=120; //number of points sympliying the contour
const float CURRENT_MAX_ACCUR=95; //99% and 100% reached in several tests, 95 is fixed as minimum boundary
class CV_ShapeTest : public cvtest::BaseTest
{
public:
CV_ShapeTest();
~CV_ShapeTest();
protected:
void run(int);
private:
void mpegTest();
void listShapeNames(vector<string> &listHeaders);
vector<Point2f> convertContourType(const Mat &, int n=0 );
float computeShapeDistance(vector <Point2f>& queryNormal,
vector <Point2f>& queryFlipped1,
vector <Point2f>& queryFlipped2,
vector<Point2f>& testq);
void displayMPEGResults();
};
CV_ShapeTest::CV_ShapeTest()
{
}
CV_ShapeTest::~CV_ShapeTest()
{
}
vector <Point2f> CV_ShapeTest::convertContourType(const Mat& currentQuery, int n)
{
vector<vector<Point> > _contoursQuery;
vector <Point2f> contoursQuery;
findContours(currentQuery, _contoursQuery, RETR_LIST, CHAIN_APPROX_NONE);
for (size_t border=0; border<_contoursQuery.size(); border++)
{
for (size_t p=0; p<_contoursQuery[border].size(); p++)
{
contoursQuery.push_back(Point2f((float)_contoursQuery[border][p].x,
(float)_contoursQuery[border][p].y));
}
}
// In case actual number of points is less than n
for (int add=(int)contoursQuery.size()-1; add<n; add++)
{
contoursQuery.push_back(contoursQuery[contoursQuery.size()-add+1]); //adding dummy values
}
// Uniformly sampling
random_shuffle(contoursQuery.begin(), contoursQuery.end());
int nStart=n;
vector<Point2f> cont;
for (int i=0; i<nStart; i++)
{
cont.push_back(contoursQuery[i]);
}
return cont;
}
void CV_ShapeTest::listShapeNames( vector<string> &listHeaders)
{
listHeaders.push_back("apple"); //ok
listHeaders.push_back("children"); // ok
listHeaders.push_back("device7"); // ok
listHeaders.push_back("Heart"); // ok
listHeaders.push_back("teddy"); // ok
}
float CV_ShapeTest::computeShapeDistance(vector <Point2f>& query1, vector <Point2f>& query2,
vector <Point2f>& query3, vector <Point2f>& testq)
{
//waitKey(0);
Ptr <ShapeContextDistanceExtractor> mysc = createShapeContextDistanceExtractor(angularBins, radialBins, minRad, maxRad);
//Ptr <HistogramCostExtractor> cost = createNormHistogramCostExtractor(cv::DIST_L1);
Ptr <HistogramCostExtractor> cost = createChiHistogramCostExtractor(30,0.15f);
//Ptr <HistogramCostExtractor> cost = createEMDHistogramCostExtractor();
//Ptr <HistogramCostExtractor> cost = createEMDL1HistogramCostExtractor();
mysc->setIterations(1);
mysc->setCostExtractor( cost );
//mysc->setTransformAlgorithm(createAffineTransformer(true));
mysc->setTransformAlgorithm( createThinPlateSplineShapeTransformer() );
//mysc->setImageAppearanceWeight(1.6);
//mysc->setImageAppearanceWeight(0.0);
//mysc->setImages(im1,imtest);
return ( std::min( mysc->computeDistance(query1, testq),
std::min(mysc->computeDistance(query2, testq), mysc->computeDistance(query3, testq) )));
}
void CV_ShapeTest::mpegTest()
{
string baseTestFolder="shape/mpeg_test/";
string path = cvtest::TS::ptr()->get_data_path() + baseTestFolder;
vector<string> namesHeaders;
listShapeNames(namesHeaders);
// distance matrix //
Mat distanceMat=Mat::zeros(NSN*(int)namesHeaders.size(), NSN*(int)namesHeaders.size(), CV_32F);
// query contours (normal v flipped, h flipped) and testing contour //
vector<Point2f> contoursQuery1, contoursQuery2, contoursQuery3, contoursTesting;
// reading query and computing its properties //
int counter=0;
const int loops=NSN*(int)namesHeaders.size()*NSN*(int)namesHeaders.size();
for (size_t n=0; n<namesHeaders.size(); n++)
{
for (int i=1; i<=NSN; i++)
{
// read current image //
stringstream thepathandname;
thepathandname<<path+namesHeaders[n]<<"-"<<i<<".png";
Mat currentQuery, flippedHQuery, flippedVQuery;
currentQuery=imread(thepathandname.str(), IMREAD_GRAYSCALE);
Mat currentQueryBuf=currentQuery.clone();
flip(currentQuery, flippedHQuery, 0);
flip(currentQuery, flippedVQuery, 1);
// compute border of the query and its flipped versions //
vector<Point2f> origContour;
contoursQuery1=convertContourType(currentQuery, NP);
origContour=contoursQuery1;
contoursQuery2=convertContourType(flippedHQuery, NP);
contoursQuery3=convertContourType(flippedVQuery, NP);
// compare with all the rest of the images: testing //
for (size_t nt=0; nt<namesHeaders.size(); nt++)
{
for (int it=1; it<=NSN; it++)
{
// skip self-comparisson //
counter++;
if (nt==n && it==i)
{
distanceMat.at<float>(NSN*(int)n+i-1,
NSN*(int)nt+it-1)=0;
continue;
}
// read testing image //
stringstream thetestpathandname;
thetestpathandname<<path+namesHeaders[nt]<<"-"<<it<<".png";
Mat currentTest;
currentTest=imread(thetestpathandname.str().c_str(), 0);
// compute border of the testing //
contoursTesting=convertContourType(currentTest, NP);
// compute shape distance //
std::cout<<std::endl<<"Progress: "<<counter<<"/"<<loops<<": "<<100*double(counter)/loops<<"% *******"<<std::endl;
std::cout<<"Computing shape distance between "<<namesHeaders[n]<<i<<
" and "<<namesHeaders[nt]<<it<<": ";
distanceMat.at<float>(NSN*(int)n+i-1, NSN*(int)nt+it-1)=
computeShapeDistance(contoursQuery1, contoursQuery2, contoursQuery3, contoursTesting);
std::cout<<distanceMat.at<float>(NSN*(int)n+i-1, NSN*(int)nt+it-1)<<std::endl;
}
}
}
}
// save distance matrix //
FileStorage fs(cvtest::TS::ptr()->get_data_path() + baseTestFolder + "distanceMatrixMPEGTest.yml", FileStorage::WRITE);
fs << "distanceMat" << distanceMat;
}
const int FIRST_MANY=2*NSN;
void CV_ShapeTest::displayMPEGResults()
{
string baseTestFolder="shape/mpeg_test/";
Mat distanceMat;
FileStorage fs(cvtest::TS::ptr()->get_data_path() + baseTestFolder + "distanceMatrixMPEGTest.yml", FileStorage::READ);
vector<string> namesHeaders;
listShapeNames(namesHeaders);
// Read generated MAT //
fs["distanceMat"]>>distanceMat;
int corrects=0;
int divi=0;
for (int row=0; row<distanceMat.rows; row++)
{
if (row%NSN==0) //another group
{
divi+=NSN;
}
for (int col=divi-NSN; col<divi; col++)
{
int nsmall=0;
for (int i=0; i<distanceMat.cols; i++)
{
if (distanceMat.at<float>(row,col)>distanceMat.at<float>(row,i))
{
nsmall++;
}
}
if (nsmall<=FIRST_MANY)
{
corrects++;
}
}
}
float porc = 100*float(corrects)/(NSN*distanceMat.rows);
std::cout<<"%="<<porc<<std::endl;
if (porc >= CURRENT_MAX_ACCUR)
ts->set_failed_test_info(cvtest::TS::OK);
else
ts->set_failed_test_info(cvtest::TS::FAIL_BAD_ACCURACY);
//done
}
void CV_ShapeTest::run( int /*start_from*/ )
{
mpegTest();
displayMPEGResults();
ts->set_failed_test_info(cvtest::TS::OK);
}
TEST(Shape_SCD, regression) { CV_ShapeTest test; test.safe_run(); }