Refactor tests
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@ -3027,109 +3027,32 @@ TEST_F(AgeGenderInferTest, ThrowSyncWithNireqNotEqualToOne) {
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cv::compile_args(cv::gapi::networks(pp))));
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}
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TEST(TestAgeGenderIE, ChangeOutputPrecision)
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{
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initDLDTDataPath();
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cv::gapi::ie::detail::ParamDesc params;
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params.model_path = findDataFile(SUBDIR + "age-gender-recognition-retail-0013.xml");
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params.weights_path = findDataFile(SUBDIR + "age-gender-recognition-retail-0013.bin");
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params.device_id = "CPU";
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cv::Mat in_mat(cv::Size(320, 240), CV_8UC3);
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cv::randu(in_mat, 0, 255);
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cv::Mat gapi_age, gapi_gender;
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// Load & run IE network
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IE::Blob::Ptr ie_age, ie_gender;
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{
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auto plugin = cv::gimpl::ie::wrap::getPlugin(params);
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auto net = cv::gimpl::ie::wrap::readNetwork(params);
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setNetParameters(net);
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for (auto it : net.getOutputsInfo()) {
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it.second->setPrecision(IE::Precision::U8);
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}
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auto this_network = cv::gimpl::ie::wrap::loadNetwork(plugin, net, params);
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auto infer_request = this_network.CreateInferRequest();
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infer_request.SetBlob("data", cv::gapi::ie::util::to_ie(in_mat));
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infer_request.Infer();
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ie_age = infer_request.GetBlob("age_conv3");
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ie_gender = infer_request.GetBlob("prob");
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}
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// Configure & run G-API
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using AGInfo = std::tuple<cv::GMat, cv::GMat>;
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G_API_NET(AgeGender, <AGInfo(cv::GMat)>, "test-age-gender");
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cv::GMat in;
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cv::GMat age, gender;
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std::tie(age, gender) = cv::gapi::infer<AgeGender>(in);
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cv::GComputation comp(cv::GIn(in), cv::GOut(age, gender));
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TEST_F(AgeGenderInferTest, ChangeOutputPrecision) {
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auto pp = cv::gapi::ie::Params<AgeGender> {
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params.model_path, params.weights_path, params.device_id
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m_params.model_path, m_params.weights_path, m_params.device_id
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}.cfgOutputLayers({ "age_conv3", "prob" })
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.cfgOutputPrecision(CV_8U);
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comp.apply(cv::gin(in_mat), cv::gout(gapi_age, gapi_gender),
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cv::compile_args(cv::gapi::networks(pp)));
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// Validate with IE itself (avoid DNN module dependency here)
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normAssert(cv::gapi::ie::util::to_ocv(ie_age), gapi_age, "Test age output" );
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normAssert(cv::gapi::ie::util::to_ocv(ie_gender), gapi_gender, "Test gender output");
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}
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TEST(TestAgeGenderIE, ChangeSpecificOutputPrecison)
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{
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initDLDTDataPath();
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cv::gapi::ie::detail::ParamDesc params;
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params.model_path = findDataFile(SUBDIR + "age-gender-recognition-retail-0013.xml");
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params.weights_path = findDataFile(SUBDIR + "age-gender-recognition-retail-0013.bin");
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params.device_id = "CPU";
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cv::Mat in_mat(cv::Size(320, 240), CV_8UC3);
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cv::randu(in_mat, 0, 255);
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cv::Mat gapi_age, gapi_gender;
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// Load & run IE network
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IE::Blob::Ptr ie_age, ie_gender;
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{
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auto plugin = cv::gimpl::ie::wrap::getPlugin(params);
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auto net = cv::gimpl::ie::wrap::readNetwork(params);
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setNetParameters(net);
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// NB: Specify precision only for "prob" output.
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net.getOutputsInfo().at("prob")->setPrecision(IE::Precision::U8);
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auto this_network = cv::gimpl::ie::wrap::loadNetwork(plugin, net, params);
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auto infer_request = this_network.CreateInferRequest();
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infer_request.SetBlob("data", cv::gapi::ie::util::to_ie(in_mat));
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infer_request.Infer();
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ie_age = infer_request.GetBlob("age_conv3");
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ie_gender = infer_request.GetBlob("prob");
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for (auto it : m_net.getOutputsInfo()) {
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it.second->setPrecision(IE::Precision::U8);
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}
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// Configure & run G-API
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using AGInfo = std::tuple<cv::GMat, cv::GMat>;
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G_API_NET(AgeGender, <AGInfo(cv::GMat)>, "test-age-gender");
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cv::GMat in;
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cv::GMat age, gender;
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std::tie(age, gender) = cv::gapi::infer<AgeGender>(in);
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cv::GComputation comp(cv::GIn(in), cv::GOut(age, gender));
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buildGraph().apply(cv::gin(m_in_mat), cv::gout(m_gapi_age, m_gapi_gender),
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cv::compile_args(cv::gapi::networks(pp)));
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validate();
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}
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TEST_F(AgeGenderInferTest, ChangeSpecificOutputPrecison) {
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auto pp = cv::gapi::ie::Params<AgeGender> {
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params.model_path, params.weights_path, params.device_id
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m_params.model_path, m_params.weights_path, m_params.device_id
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}.cfgOutputLayers({ "age_conv3", "prob" })
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.cfgOutputPrecision({{"prob", CV_8U}});
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comp.apply(cv::gin(in_mat), cv::gout(gapi_age, gapi_gender),
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cv::compile_args(cv::gapi::networks(pp)));
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// Validate with IE itself (avoid DNN module dependency here)
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normAssert(cv::gapi::ie::util::to_ocv(ie_age), gapi_age, "Test age output" );
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normAssert(cv::gapi::ie::util::to_ocv(ie_gender), gapi_gender, "Test gender output");
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m_net.getOutputsInfo().at("prob")->setPrecision(IE::Precision::U8);
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buildGraph().apply(cv::gin(m_in_mat), cv::gout(m_gapi_age, m_gapi_gender),
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cv::compile_args(cv::gapi::networks(pp)));
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validate();
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}
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} // namespace opencv_test
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