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5ff1fababc
ml: refactored tests * use parametrized tests where appropriate * use stable theRNG in most tests * use modern style with EXPECT_/ASSERT_ checks
187 lines
6.5 KiB
C++
187 lines
6.5 KiB
C++
// This file is part of OpenCV project.
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// It is subject to the license terms in the LICENSE file found in the top-level directory
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// of this distribution and at http://opencv.org/license.html.
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#include "test_precomp.hpp"
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namespace opencv_test { namespace {
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CV_ENUM(EM_START_STEP, EM::START_AUTO_STEP, EM::START_M_STEP, EM::START_E_STEP)
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CV_ENUM(EM_COV_MAT, EM::COV_MAT_GENERIC, EM::COV_MAT_DIAGONAL, EM::COV_MAT_SPHERICAL)
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typedef testing::TestWithParam< tuple<EM_START_STEP, EM_COV_MAT> > ML_EM_Params;
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TEST_P(ML_EM_Params, accuracy)
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{
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const int nclusters = 3;
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const int sizesArr[] = { 500, 700, 800 };
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const vector<int> sizes( sizesArr, sizesArr + sizeof(sizesArr) / sizeof(sizesArr[0]) );
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const int pointsCount = sizesArr[0] + sizesArr[1] + sizesArr[2];
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Mat means;
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vector<Mat> covs;
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defaultDistribs( means, covs, CV_64FC1 );
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Mat trainData(pointsCount, 2, CV_64FC1 );
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Mat trainLabels;
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generateData( trainData, trainLabels, sizes, means, covs, CV_64FC1, CV_32SC1 );
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Mat testData( pointsCount, 2, CV_64FC1 );
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Mat testLabels;
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generateData( testData, testLabels, sizes, means, covs, CV_64FC1, CV_32SC1 );
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Mat probs(trainData.rows, nclusters, CV_64FC1, cv::Scalar(1));
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Mat weights(1, nclusters, CV_64FC1, cv::Scalar(1));
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TermCriteria termCrit(cv::TermCriteria::COUNT + cv::TermCriteria::EPS, 100, FLT_EPSILON);
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int startStep = get<0>(GetParam());
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int covMatType = get<1>(GetParam());
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cv::Mat labels;
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Ptr<EM> em = EM::create();
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em->setClustersNumber(nclusters);
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em->setCovarianceMatrixType(covMatType);
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em->setTermCriteria(termCrit);
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if( startStep == EM::START_AUTO_STEP )
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em->trainEM( trainData, noArray(), labels, noArray() );
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else if( startStep == EM::START_E_STEP )
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em->trainE( trainData, means, covs, weights, noArray(), labels, noArray() );
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else if( startStep == EM::START_M_STEP )
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em->trainM( trainData, probs, noArray(), labels, noArray() );
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{
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SCOPED_TRACE("Train");
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float err = 1000;
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EXPECT_TRUE(calcErr( labels, trainLabels, sizes, err , false, false ));
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EXPECT_LE(err, 0.008f);
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}
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{
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SCOPED_TRACE("Test");
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float err = 1000;
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labels.create( testData.rows, 1, CV_32SC1 );
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for( int i = 0; i < testData.rows; i++ )
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{
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Mat sample = testData.row(i);
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Mat out_probs;
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labels.at<int>(i) = static_cast<int>(em->predict2( sample, out_probs )[1]);
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}
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EXPECT_TRUE(calcErr( labels, testLabels, sizes, err, false, false ));
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EXPECT_LE(err, 0.008f);
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}
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}
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INSTANTIATE_TEST_CASE_P(/**/, ML_EM_Params,
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testing::Combine(
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testing::Values(EM::START_AUTO_STEP, EM::START_M_STEP, EM::START_E_STEP),
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testing::Values(EM::COV_MAT_GENERIC, EM::COV_MAT_DIAGONAL, EM::COV_MAT_SPHERICAL)
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));
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//==================================================================================================
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TEST(ML_EM, save_load)
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{
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const int nclusters = 2;
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Mat_<double> samples(3, 1);
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samples << 1., 2., 3.;
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std::vector<double> firstResult;
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string filename = cv::tempfile(".xml");
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{
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Mat labels;
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Ptr<EM> em = EM::create();
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em->setClustersNumber(nclusters);
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em->trainEM(samples, noArray(), labels, noArray());
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for( int i = 0; i < samples.rows; i++)
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{
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Vec2d res = em->predict2(samples.row(i), noArray());
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firstResult.push_back(res[1]);
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}
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{
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FileStorage fs = FileStorage(filename, FileStorage::WRITE);
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ASSERT_NO_THROW(fs << "em" << "{");
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ASSERT_NO_THROW(em->write(fs));
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ASSERT_NO_THROW(fs << "}");
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}
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}
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{
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Ptr<EM> em;
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ASSERT_NO_THROW(em = Algorithm::load<EM>(filename));
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for( int i = 0; i < samples.rows; i++)
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{
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SCOPED_TRACE(i);
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Vec2d res = em->predict2(samples.row(i), noArray());
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EXPECT_DOUBLE_EQ(firstResult[i], res[1]);
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}
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}
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remove(filename.c_str());
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}
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//==================================================================================================
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TEST(ML_EM, classification)
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{
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// This test classifies spam by the following way:
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// 1. estimates distributions of "spam" / "not spam"
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// 2. predict classID using Bayes classifier for estimated distributions.
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string dataFilename = findDataFile("spambase.data");
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Ptr<TrainData> data = TrainData::loadFromCSV(dataFilename, 0);
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ASSERT_FALSE(data.empty());
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Mat samples = data->getSamples();
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ASSERT_EQ(samples.cols, 57);
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Mat responses = data->getResponses();
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vector<int> trainSamplesMask(samples.rows, 0);
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const int trainSamplesCount = (int)(0.5f * samples.rows);
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const int testSamplesCount = samples.rows - trainSamplesCount;
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for(int i = 0; i < trainSamplesCount; i++)
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trainSamplesMask[i] = 1;
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RNG &rng = cv::theRNG();
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for(size_t i = 0; i < trainSamplesMask.size(); i++)
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{
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int i1 = rng(static_cast<unsigned>(trainSamplesMask.size()));
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int i2 = rng(static_cast<unsigned>(trainSamplesMask.size()));
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std::swap(trainSamplesMask[i1], trainSamplesMask[i2]);
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}
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Mat samples0, samples1;
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for(int i = 0; i < samples.rows; i++)
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{
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if(trainSamplesMask[i])
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{
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Mat sample = samples.row(i);
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int resp = (int)responses.at<float>(i);
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if(resp == 0)
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samples0.push_back(sample);
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else
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samples1.push_back(sample);
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}
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}
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Ptr<EM> model0 = EM::create();
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model0->setClustersNumber(3);
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model0->trainEM(samples0, noArray(), noArray(), noArray());
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Ptr<EM> model1 = EM::create();
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model1->setClustersNumber(3);
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model1->trainEM(samples1, noArray(), noArray(), noArray());
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// confusion matrices
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Mat_<int> trainCM(2, 2, 0);
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Mat_<int> testCM(2, 2, 0);
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const double lambda = 1.;
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for(int i = 0; i < samples.rows; i++)
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{
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Mat sample = samples.row(i);
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double sampleLogLikelihoods0 = model0->predict2(sample, noArray())[0];
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double sampleLogLikelihoods1 = model1->predict2(sample, noArray())[0];
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int classID = (sampleLogLikelihoods0 >= lambda * sampleLogLikelihoods1) ? 0 : 1;
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int resp = (int)responses.at<float>(i);
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EXPECT_TRUE(resp == 0 || resp == 1);
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if(trainSamplesMask[i])
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trainCM(resp, classID)++;
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else
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testCM(resp, classID)++;
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}
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EXPECT_LE((double)(trainCM(1,0) + trainCM(0,1)) / trainSamplesCount, 0.23);
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EXPECT_LE((double)(testCM(1,0) + testCM(0,1)) / testSamplesCount, 0.26);
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}
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}} // namespace
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