// // Copyright © 2017 Arm Ltd. All rights reserved. // SPDX-License-Identifier: MIT // #include "ModelAccuracyChecker.hpp" #include #include #include #include using namespace armnnUtils; namespace { struct TestHelper { const std::map GetValidationLabelSet() { std::map validationLabelSet; validationLabelSet.insert(std::make_pair("val_01.JPEG", "goldfinch")); validationLabelSet.insert(std::make_pair("val_02.JPEG", "magpie")); validationLabelSet.insert(std::make_pair("val_03.JPEG", "brambling")); validationLabelSet.insert(std::make_pair("val_04.JPEG", "robin")); validationLabelSet.insert(std::make_pair("val_05.JPEG", "indigo bird")); validationLabelSet.insert(std::make_pair("val_06.JPEG", "ostrich")); validationLabelSet.insert(std::make_pair("val_07.JPEG", "jay")); validationLabelSet.insert(std::make_pair("val_08.JPEG", "snowbird")); validationLabelSet.insert(std::make_pair("val_09.JPEG", "house finch")); validationLabelSet.insert(std::make_pair("val_09.JPEG", "bulbul")); return validationLabelSet; } const std::vector GetModelOutputLabels() { const std::vector modelOutputLabels = { {"ostrich", "Struthio camelus"}, {"brambling", "Fringilla montifringilla"}, {"goldfinch", "Carduelis carduelis"}, {"house finch", "linnet", "Carpodacus mexicanus"}, {"junco", "snowbird"}, {"indigo bunting", "indigo finch", "indigo bird", "Passerina cyanea"}, {"robin", "American robin", "Turdus migratorius"}, {"bulbul"}, {"jay"}, {"magpie"} }; return modelOutputLabels; } }; } TEST_SUITE("ModelAccuracyCheckerTest") { TEST_CASE_FIXTURE(TestHelper, "TestFloat32OutputTensorAccuracy") { ModelAccuracyChecker checker(GetValidationLabelSet(), GetModelOutputLabels()); // Add image 1 and check accuracy std::vector inferenceOutputVector1 = {0.05f, 0.10f, 0.70f, 0.15f, 0.0f, 0.0f, 0.0f, 0.0f, 0.0f, 0.0f}; armnnUtils::TContainer inference1Container(inferenceOutputVector1); std::vector outputTensor1; outputTensor1.push_back(inference1Container); std::string imageName = "val_01.JPEG"; checker.AddImageResult(imageName, outputTensor1); // Top 1 Accuracy float totalAccuracy = checker.GetAccuracy(1); CHECK(totalAccuracy == 100.0f); // Add image 2 and check accuracy std::vector inferenceOutputVector2 = {0.10f, 0.0f, 0.0f, 0.0f, 0.05f, 0.70f, 0.0f, 0.0f, 0.0f, 0.15f}; armnnUtils::TContainer inference2Container(inferenceOutputVector2); std::vector outputTensor2; outputTensor2.push_back(inference2Container); imageName = "val_02.JPEG"; checker.AddImageResult(imageName, outputTensor2); // Top 1 Accuracy totalAccuracy = checker.GetAccuracy(1); CHECK(totalAccuracy == 50.0f); // Top 2 Accuracy totalAccuracy = checker.GetAccuracy(2); CHECK(totalAccuracy == 100.0f); // Add image 3 and check accuracy std::vector inferenceOutputVector3 = {0.0f, 0.10f, 0.0f, 0.0f, 0.05f, 0.70f, 0.0f, 0.0f, 0.0f, 0.15f}; armnnUtils::TContainer inference3Container(inferenceOutputVector3); std::vector outputTensor3; outputTensor3.push_back(inference3Container); imageName = "val_03.JPEG"; checker.AddImageResult(imageName, outputTensor3); // Top 1 Accuracy totalAccuracy = checker.GetAccuracy(1); CHECK(totalAccuracy == 33.3333321f); // Top 2 Accuracy totalAccuracy = checker.GetAccuracy(2); CHECK(totalAccuracy == 66.6666641f); // Top 3 Accuracy totalAccuracy = checker.GetAccuracy(3); CHECK(totalAccuracy == 100.0f); } }