mirror of
https://gitlab.freedesktop.org/gstreamer/gstreamer.git
synced 2024-12-28 11:10:37 +00:00
855f84c558
- Replace deprecated methods - Add a check on ORT version we are compatible with. - Add clarification to the example given. - Add the url to retrieve the model mentioned in the example. Part-of: <https://gitlab.freedesktop.org/gstreamer/gstreamer/-/merge_requests/3388>
437 lines
13 KiB
C++
437 lines
13 KiB
C++
/*
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* GStreamer gstreamer-onnxclient
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* Copyright (C) 2021 Collabora Ltd
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*
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* gstonnxclient.cpp
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*
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* This library is free software; you can redistribute it and/or
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* modify it under the terms of the GNU Library General Public
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* License as published by the Free Software Foundation; either
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* version 2 of the License, or (at your option) any later version.
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*
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* This library is distributed in the hope that it will be useful,
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* but WITHOUT ANY WARRANTY; without even the implied warranty of
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* MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the GNU
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* Library General Public License for more details.
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*
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* You should have received a copy of the GNU Library General Public
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* License along with this library; if not, write to the
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* Free Software Foundation, Inc., 51 Franklin St, Fifth Floor,
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* Boston, MA 02110-1301, USA.
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*/
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#include "gstonnxclient.h"
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#include <providers/cpu/cpu_provider_factory.h>
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#ifdef GST_ML_ONNX_RUNTIME_HAVE_CUDA
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#include <providers/cuda/cuda_provider_factory.h>
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#endif
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#include <exception>
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#include <fstream>
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#include <iostream>
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#include <limits>
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#include <numeric>
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#include <cmath>
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#include <sstream>
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namespace GstOnnxNamespace
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{
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template < typename T >
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std::ostream & operator<< (std::ostream & os, const std::vector < T > &v)
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{
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os << "[";
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for (size_t i = 0; i < v.size (); ++i)
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{
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os << v[i];
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if (i != v.size () - 1)
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{
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os << ", ";
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}
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}
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os << "]";
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return os;
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}
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GstMlOutputNodeInfo::GstMlOutputNodeInfo (void):index
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(GST_ML_NODE_INDEX_DISABLED),
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type (ONNXTensorElementDataType::ONNX_TENSOR_ELEMENT_DATA_TYPE_FLOAT)
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{
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}
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GstOnnxClient::GstOnnxClient ():session (nullptr),
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width (0),
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height (0),
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channels (0),
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dest (nullptr),
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m_provider (GST_ONNX_EXECUTION_PROVIDER_CPU),
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inputImageFormat (GST_ML_MODEL_INPUT_IMAGE_FORMAT_HWC),
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fixedInputImageSize (true)
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{
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for (size_t i = 0; i < GST_ML_OUTPUT_NODE_NUMBER_OF; ++i)
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outputNodeIndexToFunction[i] = (GstMlOutputNodeFunction) i;
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}
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GstOnnxClient::~GstOnnxClient ()
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{
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outputNames.clear();
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delete session;
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delete[]dest;
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}
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Ort::Env & GstOnnxClient::getEnv (void)
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{
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static Ort::Env env (OrtLoggingLevel::ORT_LOGGING_LEVEL_WARNING,
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"GstOnnxNamespace");
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return env;
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}
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int32_t GstOnnxClient::getWidth (void)
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{
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return width;
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}
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int32_t GstOnnxClient::getHeight (void)
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{
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return height;
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}
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bool GstOnnxClient::isFixedInputImageSize (void)
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{
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return fixedInputImageSize;
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}
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std::string GstOnnxClient::getOutputNodeName (GstMlOutputNodeFunction nodeType)
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{
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switch (nodeType) {
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case GST_ML_OUTPUT_NODE_FUNCTION_DETECTION:
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return "detection";
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break;
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case GST_ML_OUTPUT_NODE_FUNCTION_BOUNDING_BOX:
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return "bounding box";
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break;
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case GST_ML_OUTPUT_NODE_FUNCTION_SCORE:
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return "score";
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break;
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case GST_ML_OUTPUT_NODE_FUNCTION_CLASS:
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return "label";
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break;
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case GST_ML_OUTPUT_NODE_NUMBER_OF:
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g_assert_not_reached();
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GST_WARNING("Invalid parameter");
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break;
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};
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return "";
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}
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void GstOnnxClient::setInputImageFormat (GstMlModelInputImageFormat format)
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{
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inputImageFormat = format;
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}
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GstMlModelInputImageFormat GstOnnxClient::getInputImageFormat (void)
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{
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return inputImageFormat;
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}
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std::vector< const char *> GstOnnxClient::getOutputNodeNames (void)
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{
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if (!outputNames.empty() && outputNamesRaw.size() != outputNames.size()) {
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outputNamesRaw.resize(outputNames.size());
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for (size_t i = 0; i < outputNamesRaw.size(); i++) {
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outputNamesRaw[i] = outputNames[i].get();
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}
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}
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return outputNamesRaw;
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}
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void GstOnnxClient::setOutputNodeIndex (GstMlOutputNodeFunction node,
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gint index)
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{
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g_assert (index < GST_ML_OUTPUT_NODE_NUMBER_OF);
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outputNodeInfo[node].index = index;
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if (index != GST_ML_NODE_INDEX_DISABLED)
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outputNodeIndexToFunction[index] = node;
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}
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gint GstOnnxClient::getOutputNodeIndex (GstMlOutputNodeFunction node)
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{
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return outputNodeInfo[node].index;
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}
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void GstOnnxClient::setOutputNodeType (GstMlOutputNodeFunction node,
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ONNXTensorElementDataType type)
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{
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outputNodeInfo[node].type = type;
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}
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ONNXTensorElementDataType
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GstOnnxClient::getOutputNodeType (GstMlOutputNodeFunction node)
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{
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return outputNodeInfo[node].type;
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}
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bool GstOnnxClient::hasSession (void)
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{
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return session != nullptr;
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}
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bool GstOnnxClient::createSession (std::string modelFile,
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GstOnnxOptimizationLevel optim, GstOnnxExecutionProvider provider)
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{
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if (session)
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return true;
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GraphOptimizationLevel onnx_optim;
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switch (optim) {
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case GST_ONNX_OPTIMIZATION_LEVEL_DISABLE_ALL:
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onnx_optim = GraphOptimizationLevel::ORT_DISABLE_ALL;
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break;
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case GST_ONNX_OPTIMIZATION_LEVEL_ENABLE_BASIC:
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onnx_optim = GraphOptimizationLevel::ORT_ENABLE_BASIC;
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break;
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case GST_ONNX_OPTIMIZATION_LEVEL_ENABLE_EXTENDED:
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onnx_optim = GraphOptimizationLevel::ORT_ENABLE_EXTENDED;
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break;
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case GST_ONNX_OPTIMIZATION_LEVEL_ENABLE_ALL:
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onnx_optim = GraphOptimizationLevel::ORT_ENABLE_ALL;
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break;
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default:
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onnx_optim = GraphOptimizationLevel::ORT_ENABLE_EXTENDED;
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break;
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};
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Ort::SessionOptions sessionOptions;
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// for debugging
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//sessionOptions.SetIntraOpNumThreads (1);
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sessionOptions.SetGraphOptimizationLevel (onnx_optim);
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m_provider = provider;
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switch (m_provider) {
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case GST_ONNX_EXECUTION_PROVIDER_CUDA:
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#ifdef GST_ML_ONNX_RUNTIME_HAVE_CUDA
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Ort::ThrowOnError (OrtSessionOptionsAppendExecutionProvider_CUDA
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(sessionOptions, 0));
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#else
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return false;
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#endif
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break;
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default:
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break;
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};
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session = new Ort::Session (getEnv (), modelFile.c_str (), sessionOptions);
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auto inputTypeInfo = session->GetInputTypeInfo (0);
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std::vector < int64_t > inputDims =
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inputTypeInfo.GetTensorTypeAndShapeInfo ().GetShape ();
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if (inputImageFormat == GST_ML_MODEL_INPUT_IMAGE_FORMAT_HWC) {
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height = inputDims[1];
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width = inputDims[2];
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channels = inputDims[3];
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} else {
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channels = inputDims[1];
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height = inputDims[2];
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width = inputDims[3];
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}
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fixedInputImageSize = width > 0 && height > 0;
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GST_DEBUG ("Number of Output Nodes: %d", (gint) session->GetOutputCount ());
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Ort::AllocatorWithDefaultOptions allocator;
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auto input_name = session->GetInputNameAllocated (0, allocator);
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GST_DEBUG ("Input name: %s", input_name.get());
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for (size_t i = 0; i < session->GetOutputCount (); ++i) {
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auto output_name = session->GetOutputNameAllocated (i, allocator);
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GST_DEBUG("Output name %lu:%s", i, output_name.get());
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outputNames.push_back (std::move(output_name));
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auto type_info = session->GetOutputTypeInfo (i);
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auto tensor_info = type_info.GetTensorTypeAndShapeInfo ();
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if (i < GST_ML_OUTPUT_NODE_NUMBER_OF) {
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auto function = outputNodeIndexToFunction[i];
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outputNodeInfo[function].type = tensor_info.GetElementType ();
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}
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}
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return true;
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}
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std::vector < GstMlBoundingBox > GstOnnxClient::run (uint8_t * img_data,
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GstVideoMeta * vmeta, std::string labelPath, float scoreThreshold)
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{
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auto type = getOutputNodeType (GST_ML_OUTPUT_NODE_FUNCTION_CLASS);
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return (type ==
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ONNXTensorElementDataType::ONNX_TENSOR_ELEMENT_DATA_TYPE_FLOAT) ?
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doRun < float >(img_data, vmeta, labelPath, scoreThreshold)
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: doRun < int >(img_data, vmeta, labelPath, scoreThreshold);
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}
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void GstOnnxClient::parseDimensions (GstVideoMeta * vmeta)
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{
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int32_t newWidth = fixedInputImageSize ? width : vmeta->width;
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int32_t newHeight = fixedInputImageSize ? height : vmeta->height;
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if (!dest || width * height < newWidth * newHeight) {
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delete[] dest;
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dest = new uint8_t[newWidth * newHeight * channels];
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}
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width = newWidth;
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height = newHeight;
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}
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template < typename T > std::vector < GstMlBoundingBox >
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GstOnnxClient::doRun (uint8_t * img_data, GstVideoMeta * vmeta,
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std::string labelPath, float scoreThreshold)
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{
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std::vector < GstMlBoundingBox > boundingBoxes;
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if (!img_data)
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return boundingBoxes;
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parseDimensions (vmeta);
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Ort::AllocatorWithDefaultOptions allocator;
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auto inputName = session->GetInputNameAllocated (0, allocator);
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auto inputTypeInfo = session->GetInputTypeInfo (0);
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std::vector < int64_t > inputDims =
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inputTypeInfo.GetTensorTypeAndShapeInfo ().GetShape ();
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inputDims[0] = 1;
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if (inputImageFormat == GST_ML_MODEL_INPUT_IMAGE_FORMAT_HWC) {
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inputDims[1] = height;
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inputDims[2] = width;
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} else {
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inputDims[2] = height;
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inputDims[3] = width;
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}
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std::ostringstream buffer;
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buffer << inputDims;
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GST_DEBUG ("Input dimensions: %s", buffer.str ().c_str ());
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// copy video frame
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uint8_t *srcPtr[3] = { img_data, img_data + 1, img_data + 2 };
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uint32_t srcSamplesPerPixel = 3;
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switch (vmeta->format) {
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case GST_VIDEO_FORMAT_RGBA:
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srcSamplesPerPixel = 4;
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break;
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case GST_VIDEO_FORMAT_BGRA:
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srcSamplesPerPixel = 4;
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srcPtr[0] = img_data + 2;
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srcPtr[1] = img_data + 1;
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srcPtr[2] = img_data + 0;
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break;
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case GST_VIDEO_FORMAT_ARGB:
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srcSamplesPerPixel = 4;
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srcPtr[0] = img_data + 1;
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srcPtr[1] = img_data + 2;
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srcPtr[2] = img_data + 3;
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break;
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case GST_VIDEO_FORMAT_ABGR:
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srcSamplesPerPixel = 4;
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srcPtr[0] = img_data + 3;
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srcPtr[1] = img_data + 2;
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srcPtr[2] = img_data + 1;
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break;
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case GST_VIDEO_FORMAT_BGR:
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srcPtr[0] = img_data + 2;
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srcPtr[1] = img_data + 1;
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srcPtr[2] = img_data + 0;
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break;
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default:
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break;
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}
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size_t destIndex = 0;
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uint32_t stride = vmeta->stride[0];
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if (inputImageFormat == GST_ML_MODEL_INPUT_IMAGE_FORMAT_HWC) {
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for (int32_t j = 0; j < height; ++j) {
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for (int32_t i = 0; i < width; ++i) {
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for (int32_t k = 0; k < channels; ++k) {
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dest[destIndex++] = *srcPtr[k];
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srcPtr[k] += srcSamplesPerPixel;
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}
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}
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// correct for stride
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for (uint32_t k = 0; k < 3; ++k)
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srcPtr[k] += stride - srcSamplesPerPixel * width;
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}
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} else {
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size_t frameSize = width * height;
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uint8_t *destPtr[3] = { dest, dest + frameSize, dest + 2 * frameSize };
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for (int32_t j = 0; j < height; ++j) {
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for (int32_t i = 0; i < width; ++i) {
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for (int32_t k = 0; k < channels; ++k) {
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destPtr[k][destIndex] = *srcPtr[k];
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srcPtr[k] += srcSamplesPerPixel;
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}
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destIndex++;
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}
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// correct for stride
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for (uint32_t k = 0; k < 3; ++k)
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srcPtr[k] += stride - srcSamplesPerPixel * width;
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}
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}
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const size_t inputTensorSize = width * height * channels;
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auto memoryInfo =
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Ort::MemoryInfo::CreateCpu (OrtAllocatorType::OrtArenaAllocator,
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OrtMemType::OrtMemTypeDefault);
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std::vector < Ort::Value > inputTensors;
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inputTensors.push_back (Ort::Value::CreateTensor < uint8_t > (memoryInfo,
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dest, inputTensorSize, inputDims.data (), inputDims.size ()));
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std::vector < const char *>inputNames { inputName.get () };
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std::vector < Ort::Value > modelOutput = session->Run (Ort::RunOptions { nullptr},
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inputNames.data (),
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inputTensors.data (), 1, outputNamesRaw.data (), outputNamesRaw.size ());
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auto numDetections =
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modelOutput[getOutputNodeIndex
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(GST_ML_OUTPUT_NODE_FUNCTION_DETECTION)].GetTensorMutableData < float >();
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auto bboxes =
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modelOutput[getOutputNodeIndex
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(GST_ML_OUTPUT_NODE_FUNCTION_BOUNDING_BOX)].GetTensorMutableData < float >();
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auto scores =
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modelOutput[getOutputNodeIndex
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(GST_ML_OUTPUT_NODE_FUNCTION_SCORE)].GetTensorMutableData < float >();
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T *labelIndex = nullptr;
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if (getOutputNodeIndex (GST_ML_OUTPUT_NODE_FUNCTION_CLASS) !=
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GST_ML_NODE_INDEX_DISABLED) {
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labelIndex =
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modelOutput[getOutputNodeIndex
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(GST_ML_OUTPUT_NODE_FUNCTION_CLASS)].GetTensorMutableData < T > ();
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}
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if (labels.empty () && !labelPath.empty ())
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labels = ReadLabels (labelPath);
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for (int i = 0; i < numDetections[0]; ++i) {
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if (scores[i] > scoreThreshold) {
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std::string label = "";
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if (labelIndex && !labels.empty ())
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label = labels[labelIndex[i] - 1];
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auto score = scores[i];
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auto y0 = bboxes[i * 4] * height;
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auto x0 = bboxes[i * 4 + 1] * width;
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auto bheight = bboxes[i * 4 + 2] * height - y0;
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auto bwidth = bboxes[i * 4 + 3] * width - x0;
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boundingBoxes.push_back (GstMlBoundingBox (label, score, x0, y0, bwidth,
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bheight));
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}
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}
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return boundingBoxes;
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}
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std::vector < std::string >
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GstOnnxClient::ReadLabels (const std::string & labelsFile)
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{
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std::vector < std::string > labels;
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std::string line;
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std::ifstream fp (labelsFile);
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while (std::getline (fp, line))
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labels.push_back (line);
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return labels;
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}
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}
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