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Converting Yolo v3 models to TensorFlow and OpenVINO(IR) models
To use Yolo v3 model on OpenVINO framework, you should do 2 steps:
- Convert
yolov3.cfg/yolov3.weights
to TensorFlow modelfrozen_darknet_yolov3_model.pb
- Convert
frozen_darknet_yolov3_model.pb
to OpenVINO modelfrozen_darknet_yolov3_model.xml
/.bin
/.mapping
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Download this repository: https://github.com/mystic123/tensorflow-yolo-v3/archive/ed60b9087b04e1d9ca40f8a9d8455d5c30c7c0d3.zip
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un-pack it:
sudo apt-get install unzip
unzip file.zip -d tensorflow-yolo-v3
cd tensorflow-yolo-v3
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Download default Yolo v3 model: https://pjreddie.com/media/files/yolov3.weights
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Download
coco.names
file: https://raw.githubusercontent.com/AlexeyAB/darknet/master/data/coco.names -
run this command
python3 convert_weights_pb.py --class_names coco.names --data_format NHWC --weights_file yolov3.weights
for tiny: python3 convert_weights_pb.py --class_names coco.names --data_format NHWC --weights_file yolov3-tiny.weights --tiny
- you will get TensorFlow model
frozen_darknet_yolov3_model.pb
After converting the Darknet Yolo v3 model to the TensorFlow model, you can convert it to the Openvino model.
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Install OpenVINO: https://software.intel.com/en-us/openvino-toolkit/choose-download
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Put these files to the one directory:
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frozen_darknet_yolov3_model.pb
- TensorFlow model that you got in previous stage <OPENVINO_INSTALL_DIR>/deployment_tools/model_optimizer/extensions/front/tf/yolo_v3.json
<OPENVINO_INSTALL_DIR>/deployment_tools/model_optimizer/mo_tf.python
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Run the command:
python3 mo_tf.py -b 1 --input_model ./frozen_darknet_yolov3_model.pb --tensorflow_use_custom_operations_config ./yolo_v3.json --data_type FP16
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You will get OpenVINO model that can be run on CPU, GPU, VPU (MyriadX), FPGA:
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frozen_darknet_yolov3_model.xml
- model structure -
frozen_darknet_yolov3_model.bin
- model weights -
frozen_darknet_yolov3_model.mapping
- mapping file
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Build C++ examples - run:
<OPENVINO_INSTALL_DIR>/inference_engine/samples/build_samples.sh
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cd /user/home/inference_engine_samples_build/intel64/Release
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on CPU:
./object_detection_demo_yolov3_async -i ./test.mp4 -m ./frozen_darknet_yolov3_model.xml -d CPU
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on VPU:
./object_detection_demo_yolov3_async -i ./test.mp4 -m ./frozen_darknet_yolov3_model.xml -d MYRIAD
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By using Python code:
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go to
<OPENVINO_INSTALL_DIR>/inference_engine/samples/python_samples
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python3 object_detection_demo_yolov3_async.py -i test.mp4 -m ./frozen_darknet_yolov3_model.xml -d CPU
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- Install OpenCV by using these bash-commands: https://github.com/opencv/opencv/wiki/Intel's-Deep-Learning-Inference-Engine-backend
cmake -D CMAKE_BUILD_TYPE=RELEASE \
-D WITH_INF_ENGINE=ON \
-D ENABLE_CXX11=ON \
-D BUILD_EXAMPLES=OFF \
-D WITH_FFMPEG=ON \
-D WITH_V4L=OFF \
-D WITH_LIBV4L=ON \
-D OPENCV_ENABLE_PKG_CONFIG=ON \
-D BUILD_TESTS=OFF \
-D BUILD_PERF_TESTS=OFF \
-D INF_ENGINE_LIB_DIRS="/opt/intel/openvino/deployment_tools/inference_engine/lib/intel64" \
-D INF_ENGINE_INCLUDE_DIRS="/opt/intel/openvino/deployment_tools/inference_engine/include" \
-D CMAKE_FIND_ROOT_PATH="/opt/intel/openvino/" \
..
make -j8
sudo make install
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Compile this sample by using
make
command: ocv_yolov3.zipOr use original sample: https://github.com/opencv/opencv/blob/master/samples/dnn/object_detection.cpp
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Download
yolov3-tiny.cfg
&yolov3-tiny.weights
files: https://pjreddie.com/darknet/yolo/ -
Run command:
./ocv_yolo --config=yolov3-tiny.cfg --model=yolov3-tiny.weights --input=test.mp4 --width=416 --height=416 --classes=coco.names --scale=0.00392 --rgb --backend=2 --target=3
Where are:
--backend 0(auto), 1(Halide), 2(Intel-Engine), 3(OpenCV-impl)
--target 0(CPU), 1(OpenCL), 2(OpenCV-FP16), 3(VPU)