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Runs YOLOV5 inference using OpenCV and C++. This is preferable on the Deepracer since OpenCV is pre-installed and using YOLO with Python would require installing pytorch/numpy/etc, which can easily take up > 8gb, which is difficult to manage with the Deepracer's 32gb storage limit.
To obtain the models, generate the ONNX / OpenVINO models from the
export.py
script here, or download them attached below, and place them under/perception_models/
.yolov5s_onnx.zip
yolov5s_openvino_model.zip
Update the launch file
object_detection_launch.py
:yolov5s.bin
asmodel_path
, and path toyolov5s.xml
in themodel_config_path
.yolov5s.onnx
as themodel_path
and specify an empty string""
in themodel_config_path
.Launch the node with
ros2 launch object_detection object_detection_launch.py
I observe around ~0.5fps when running with OpenVINO compared to ~0.3fps on ONNX. Perhaps there is some extra optimization we can do?