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This example demonstrates how to perform inference using YOLOv8 in C++ with ONNX Runtime and OpenCV's API.
Transpose
op is added to the YOLOv8 model, while make v8 and v5 has the same output shape. Therefore, you can run inference with YOLOv5/v7/v8 via this project.To export YOLOv8 models, use the following Python script:
from ultralytics import YOLO
# Load a YOLOv8 model
model = YOLO("yolov8n.pt")
# Export the model
model.export(format="onnx", opset=12, simplify=True, dynamic=False, imgsz=640)
Alternatively, you can use the following command for exporting the model in the terminal
yolo export model=yolov8n.pt opset=12 simplify=True dynamic=False format=onnx imgsz=640,640
import onnx
from onnxconverter_common import float16
model = onnx.load(R"YOUR_ONNX_PATH")
model_fp16 = float16.convert_float_to_float16(model)
onnx.save(model_fp16, R"YOUR_FP16_ONNX_PATH")
In order to run example, you also need to download coco.yaml. You can download the file manually from here
Dependency | Version |
---|---|
Onnxruntime(linux,windows,macos) | >=1.14.1 |
OpenCV | >=4.0.0 |
C++ Standard | >=17 |
Cmake | >=3.5 |
Cuda (Optional) | >=11.4 <12.0 |
cuDNN (Cuda required) | =8 |
Note: The dependency on C++17 is due to the usage of the C++17 filesystem feature.
Note (2): Due to ONNX Runtime, we need to use CUDA 11 and cuDNN 8. Keep in mind that this requirement might change in the future.
Clone the repository to your local machine.
Navigate to the root directory of the repository.
Create a build directory and navigate to it:
mkdir build && cd build
Run CMake to generate the build files:
cmake ..
Notice:
If you encounter an error indicating that the ONNXRUNTIME_ROOT
variable is not set correctly, you can resolve this by building the project using the appropriate command tailored to your system.
# compiled in a win32 system
cmake -D WIN32=TRUE ..
# compiled in a linux system
cmake -D LINUX=TRUE ..
# compiled in an apple system
cmake -D APPLE=TRUE ..
Build the project:
make
The built executable should now be located in the build
directory.
//change your param as you like
//Pay attention to your device and the onnx model type(fp32 or fp16)
DL_INIT_PARAM params;
params.rectConfidenceThreshold = 0.1;
params.iouThreshold = 0.5;
params.modelPath = "yolov8n.onnx";
params.imgSize = { 640, 640 };
params.cudaEnable = true;
params.modelType = YOLO_DETECT_V8;
yoloDetector->CreateSession(params);
Detector(yoloDetector);
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