// // Copyright © 2017 Arm Ltd. All rights reserved. // SPDX-License-Identifier: MIT // #pragma once #include "InferenceTest.hpp" #include "MobileNetSsdDatabase.hpp" #include #include #include #include #include namespace { template class MobileNetSsdTestCase : public InferenceModelTestCase { public: MobileNetSsdTestCase(Model& model, unsigned int testCaseId, const MobileNetSsdTestCaseData& testCaseData) : InferenceModelTestCase(model, testCaseId, { std::move(testCaseData.m_InputData) }, { k_OutputSize1, k_OutputSize2, k_OutputSize3, k_OutputSize4 }) , m_DetectedObjects(testCaseData.m_ExpectedDetectedObject) {} TestCaseResult ProcessResult(const InferenceTestOptions& options) override { armnn::IgnoreUnused(options); // bounding boxes const std::vector& output1 = mapbox::util::get>(this->GetOutputs()[0]); ARMNN_ASSERT(output1.size() == k_OutputSize1); // classes const std::vector& output2 = mapbox::util::get>(this->GetOutputs()[1]); ARMNN_ASSERT(output2.size() == k_OutputSize2); // scores const std::vector& output3 = mapbox::util::get>(this->GetOutputs()[2]); ARMNN_ASSERT(output3.size() == k_OutputSize3); // valid detections const std::vector& output4 = mapbox::util::get>(this->GetOutputs()[3]); ARMNN_ASSERT(output4.size() == k_OutputSize4); const size_t numDetections = armnn::numeric_cast(output4[0]); // Check if number of valid detections matches expectations const size_t expectedNumDetections = m_DetectedObjects.size(); if (numDetections != expectedNumDetections) { ARMNN_LOG(error) << "Number of detections is incorrect: Expected (" << expectedNumDetections << ")" << " but got (" << numDetections << ")"; return TestCaseResult::Failed; } // Extract detected objects from output data std::vector detectedObjects; const float* outputData = output1.data(); for (unsigned int i = 0u; i < numDetections; i++) { // NOTE: Order of coordinates in output data is yMin, xMin, yMax, xMax float yMin = *outputData++; float xMin = *outputData++; float yMax = *outputData++; float xMax = *outputData++; DetectedObject detectedObject( output2.at(i), BoundingBox(xMin, yMin, xMax, yMax), output3.at(i)); detectedObjects.push_back(detectedObject); } std::sort(detectedObjects.begin(), detectedObjects.end()); std::sort(m_DetectedObjects.begin(), m_DetectedObjects.end()); // Compare detected objects with expected results std::vector::const_iterator it = detectedObjects.begin(); for (unsigned int i = 0; i < numDetections; i++) { if (it == detectedObjects.end()) { ARMNN_LOG(error) << "No more detected objects found! Index out of bounds: " << i; return TestCaseResult::Abort; } const DetectedObject& detectedObject = *it; const DetectedObject& expectedObject = m_DetectedObjects[i]; if (detectedObject.m_Class != expectedObject.m_Class) { ARMNN_LOG(error) << "Prediction for test case " << this->GetTestCaseId() << " is incorrect: Expected (" << expectedObject.m_Class << ")" << " but predicted (" << detectedObject.m_Class << ")"; return TestCaseResult::Failed; } if(!armnnUtils::within_percentage_tolerance(detectedObject.m_Confidence, expectedObject.m_Confidence)) { ARMNN_LOG(error) << "Confidence of prediction for test case " << this->GetTestCaseId() << " is incorrect: Expected (" << expectedObject.m_Confidence << ") +- 1.0 pc" << " but predicted (" << detectedObject.m_Confidence << ")"; return TestCaseResult::Failed; } if (!armnnUtils::within_percentage_tolerance(detectedObject.m_BoundingBox.m_XMin, expectedObject.m_BoundingBox.m_XMin) || !armnnUtils::within_percentage_tolerance(detectedObject.m_BoundingBox.m_YMin, expectedObject.m_BoundingBox.m_YMin) || !armnnUtils::within_percentage_tolerance(detectedObject.m_BoundingBox.m_XMax, expectedObject.m_BoundingBox.m_XMax) || !armnnUtils::within_percentage_tolerance(detectedObject.m_BoundingBox.m_YMax, expectedObject.m_BoundingBox.m_YMax)) { ARMNN_LOG(error) << "Detected bounding box for test case " << this->GetTestCaseId() << " is incorrect"; return TestCaseResult::Failed; } ++it; } return TestCaseResult::Ok; } private: static constexpr unsigned int k_Shape = 10u; static constexpr unsigned int k_OutputSize1 = k_Shape * 4u; static constexpr unsigned int k_OutputSize2 = k_Shape; static constexpr unsigned int k_OutputSize3 = k_Shape; static constexpr unsigned int k_OutputSize4 = 1u; std::vector m_DetectedObjects; }; template class MobileNetSsdTestCaseProvider : public IInferenceTestCaseProvider { public: template explicit MobileNetSsdTestCaseProvider(TConstructModelCallable constructModel) : m_ConstructModel(constructModel) {} virtual void AddCommandLineOptions(cxxopts::Options& options, std::vector& required) override { options .allow_unrecognised_options() .add_options() ("d,data-dir", "Path to directory containing test data", cxxopts::value(m_DataDir)); required.emplace_back("data-dir"); Model::AddCommandLineOptions(options, m_ModelCommandLineOptions, required); } virtual bool ProcessCommandLineOptions(const InferenceTestOptions& commonOptions) override { if (!ValidateDirectory(m_DataDir)) { return false; } m_Model = m_ConstructModel(commonOptions, m_ModelCommandLineOptions); if (!m_Model) { return false; } std::pair qParams = m_Model->GetInputQuantizationParams(); m_Database = std::make_unique(m_DataDir.c_str(), qParams.first, qParams.second); if (!m_Database) { return false; } return true; } std::unique_ptr GetTestCase(unsigned int testCaseId) override { std::unique_ptr testCaseData = m_Database->GetTestCaseData(testCaseId); if (!testCaseData) { return nullptr; } return std::make_unique>(*m_Model, testCaseId, *testCaseData); } private: typename Model::CommandLineOptions m_ModelCommandLineOptions; std::function(const InferenceTestOptions &, typename Model::CommandLineOptions)> m_ConstructModel; std::unique_ptr m_Model; std::string m_DataDir; std::unique_ptr m_Database; }; } // anonymous namespace