Open Source Computer Vision Library https://opencv.org/
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// This file is part of OpenCV project.
// It is subject to the license terms in the LICENSE file found in the top-level directory
// of this distribution and at http://opencv.org/license.html.
//
// Copyright (C) 2018, Intel Corporation, all rights reserved.
// Third party copyrights are property of their respective owners.
#include "test_precomp.hpp"
#ifdef HAVE_INF_ENGINE
#include <opencv2/core/utils/filesystem.hpp>
#include <inference_engine.hpp>
#include <ie_icnn_network.hpp>
#include <ie_extension.h>
namespace opencv_test { namespace {
static void initDLDTDataPath()
{
#ifndef WINRT
static bool initialized = false;
if (!initialized)
{
const char* dldtTestDataPath = getenv("INTEL_CVSDK_DIR");
if (dldtTestDataPath)
cvtest::addDataSearchPath(cv::utils::fs::join(dldtTestDataPath, "deployment_tools"));
initialized = true;
}
#endif
}
using namespace cv;
using namespace cv::dnn;
using namespace InferenceEngine;
static inline void genData(const std::vector<size_t>& dims, Mat& m, Blob::Ptr& dataPtr)
{
std::vector<int> reversedDims(dims.begin(), dims.end());
std::reverse(reversedDims.begin(), reversedDims.end());
m.create(reversedDims, CV_32F);
randu(m, -1, 1);
dataPtr = make_shared_blob<float>(Precision::FP32, dims, (float*)m.data);
}
void runIE(Target target, const std::string& xmlPath, const std::string& binPath,
std::map<std::string, cv::Mat>& inputsMap, std::map<std::string, cv::Mat>& outputsMap)
{
CNNNetReader reader;
reader.ReadNetwork(xmlPath);
reader.ReadWeights(binPath);
CNNNetwork net = reader.getNetwork();
InferenceEnginePluginPtr enginePtr;
InferencePlugin plugin;
ExecutableNetwork netExec;
InferRequest infRequest;
try
{
auto dispatcher = InferenceEngine::PluginDispatcher({""});
switch (target)
{
case DNN_TARGET_CPU:
enginePtr = dispatcher.getSuitablePlugin(TargetDevice::eCPU);
break;
case DNN_TARGET_OPENCL:
case DNN_TARGET_OPENCL_FP16:
enginePtr = dispatcher.getSuitablePlugin(TargetDevice::eGPU);
break;
case DNN_TARGET_MYRIAD:
enginePtr = dispatcher.getSuitablePlugin(TargetDevice::eMYRIAD);
break;
case DNN_TARGET_FPGA:
enginePtr = dispatcher.getPluginByDevice("HETERO:FPGA,CPU");
break;
default:
CV_Error(Error::StsNotImplemented, "Unknown target");
};
if (target == DNN_TARGET_CPU || target == DNN_TARGET_FPGA)
{
std::string suffixes[] = {"_avx2", "_sse4", ""};
bool haveFeature[] = {
checkHardwareSupport(CPU_AVX2),
checkHardwareSupport(CPU_SSE4_2),
true
};
for (int i = 0; i < 3; ++i)
{
if (!haveFeature[i])
continue;
#ifdef _WIN32
std::string libName = "cpu_extension" + suffixes[i] + ".dll";
#else
std::string libName = "libcpu_extension" + suffixes[i] + ".so";
#endif // _WIN32
try
{
IExtensionPtr extension = make_so_pointer<IExtension>(libName);
enginePtr->AddExtension(extension, 0);
break;
}
catch(...) {}
}
// Some of networks can work without a library of extra layers.
}
plugin = InferencePlugin(enginePtr);
netExec = plugin.LoadNetwork(net, {});
infRequest = netExec.CreateInferRequest();
}
catch (const std::exception& ex)
{
CV_Error(Error::StsAssert, format("Failed to initialize Inference Engine backend: %s", ex.what()));
}
// Fill input blobs.
inputsMap.clear();
BlobMap inputBlobs;
for (auto& it : net.getInputsInfo())
{
genData(it.second->getDims(), inputsMap[it.first], inputBlobs[it.first]);
}
infRequest.SetInput(inputBlobs);
// Fill output blobs.
outputsMap.clear();
BlobMap outputBlobs;
for (auto& it : net.getOutputsInfo())
{
genData(it.second->dims, outputsMap[it.first], outputBlobs[it.first]);
}
infRequest.SetOutput(outputBlobs);
infRequest.Infer();
}
std::vector<String> getOutputsNames(const Net& net)
{
std::vector<String> names;
if (names.empty())
{
std::vector<int> outLayers = net.getUnconnectedOutLayers();
std::vector<String> layersNames = net.getLayerNames();
names.resize(outLayers.size());
for (size_t i = 0; i < outLayers.size(); ++i)
names[i] = layersNames[outLayers[i] - 1];
}
return names;
}
void runCV(Target target, const std::string& xmlPath, const std::string& binPath,
const std::map<std::string, cv::Mat>& inputsMap,
std::map<std::string, cv::Mat>& outputsMap)
{
Net net = readNet(xmlPath, binPath);
for (auto& it : inputsMap)
net.setInput(it.second, it.first);
net.setPreferableTarget(target);
std::vector<String> outNames = getOutputsNames(net);
std::vector<Mat> outs;
net.forward(outs, outNames);
outputsMap.clear();
EXPECT_EQ(outs.size(), outNames.size());
for (int i = 0; i < outs.size(); ++i)
{
EXPECT_TRUE(outputsMap.insert({outNames[i], outs[i]}).second);
}
}
typedef TestWithParam<tuple<Target, String> > DNNTestOpenVINO;
TEST_P(DNNTestOpenVINO, models)
{
Target target = (dnn::Target)(int)get<0>(GetParam());
std::string modelName = get<1>(GetParam());
#ifdef INF_ENGINE_RELEASE
#if INF_ENGINE_RELEASE <= 2018030000
if (target == DNN_TARGET_MYRIAD && (modelName == "landmarks-regression-retail-0001" ||
modelName == "semantic-segmentation-adas-0001" ||
modelName == "face-reidentification-retail-0001"))
throw SkipTestException("");
#elif INF_ENGINE_RELEASE == 2018040000
if (modelName == "single-image-super-resolution-0034" ||
(target == DNN_TARGET_MYRIAD && (modelName == "license-plate-recognition-barrier-0001" ||
modelName == "landmarks-regression-retail-0009" ||
modelName == "semantic-segmentation-adas-0001")))
throw SkipTestException("");
#elif INF_ENGINE_RELEASE == 2018050000
if (modelName == "single-image-super-resolution-0063" ||
modelName == "single-image-super-resolution-1011" ||
modelName == "single-image-super-resolution-1021" ||
(target == DNN_TARGET_OPENCL_FP16 && modelName == "face-reidentification-retail-0095") ||
(target == DNN_TARGET_MYRIAD && (modelName == "license-plate-recognition-barrier-0001" ||
modelName == "semantic-segmentation-adas-0001")))
throw SkipTestException("");
#endif
#endif
std::string precision = (target == DNN_TARGET_OPENCL_FP16 || target == DNN_TARGET_MYRIAD) ? "FP16" : "FP32";
std::string prefix = utils::fs::join("intel_models",
utils::fs::join(modelName,
utils::fs::join(precision, modelName)));
std::string xmlPath = findDataFile(prefix + ".xml");
std::string binPath = findDataFile(prefix + ".bin");
std::map<std::string, cv::Mat> inputsMap;
std::map<std::string, cv::Mat> ieOutputsMap, cvOutputsMap;
// Single Myriad device cannot be shared across multiple processes.
if (target == DNN_TARGET_MYRIAD)
resetMyriadDevice();
runIE(target, xmlPath, binPath, inputsMap, ieOutputsMap);
runCV(target, xmlPath, binPath, inputsMap, cvOutputsMap);
EXPECT_EQ(ieOutputsMap.size(), cvOutputsMap.size());
for (auto& srcIt : ieOutputsMap)
{
auto dstIt = cvOutputsMap.find(srcIt.first);
CV_Assert(dstIt != cvOutputsMap.end());
double normInf = cvtest::norm(srcIt.second, dstIt->second, cv::NORM_INF);
EXPECT_EQ(normInf, 0);
}
}
static testing::internal::ParamGenerator<String> intelModels()
{
initDLDTDataPath();
std::vector<String> modelsNames;
std::string path;
try
{
path = findDataDirectory("intel_models", false);
}
catch (...)
{
std::cerr << "ERROR: Can't find OpenVINO models. Check INTEL_CVSDK_DIR environment variable (run setup.sh)" << std::endl;
return ValuesIn(modelsNames); // empty list
}
cv::utils::fs::glob_relative(path, "", modelsNames, false, true);
modelsNames.erase(
std::remove_if(modelsNames.begin(), modelsNames.end(),
[&](const String& dir){ return !utils::fs::isDirectory(utils::fs::join(path, dir)); }),
modelsNames.end()
);
CV_Assert(!modelsNames.empty());
return ValuesIn(modelsNames);
}
INSTANTIATE_TEST_CASE_P(/**/,
DNNTestOpenVINO,
Combine(testing::ValuesIn(getAvailableTargets(DNN_BACKEND_INFERENCE_ENGINE)), intelModels())
);
}}
#endif // HAVE_INF_ENGINE