The project is a multi-threaded inference demo of Yolov8 running on the RK3588 platform, which has been adapted for reading video files and camera feeds. The demo uses the Yolov8n model for file inference, with a maximum inference frame rate of up to 100 frames per second.
If you want to test yolov8n with ros2 for yourself kit, click the link
you can find the model file in the 'src/yolov8/model', and some large files:
Link: https://pan.baidu.com/s/1zfSVzR1G7mb-EQvs6A6ZYw?pwd=gmcs Password: gmcs
Google Drive: https://drive.google.com/drive/folders/1FYluJpdaL-680pipgIQ1zsqqRvNbruEp?usp=sharing
go to my blog --> blog.kaylordut.com
go to my another repository --> yolov10
download pt model and export:
# End-to-End ONNX
yolo export model=yolov10n/s/m/b/l/x.pt format=onnx opset=13 simplify
go to my blog --> blog.kaylordut.com
TIPS: (Yolov10)
- rknn-toolkit2(release:1.6.0) does not support some operators about attention, so it runs attention steps with CPU, leading to increased inference time.
- rknn-toolkit2(beta:2.0.0b12) has the attention operators for 3588, so I build a docker image, you can pull it from kaylor/rknn_onnx2rknn:beta
Please refer to the spreadsheet '8vs10.xlsx' for details.
V8l-2.0.0 | V8l-1.6.0 | V10l-2.0.0 | V10l-1.6.0 | V8n-2.0.0 | V8n-1.6.0 | V10n-2.0.0 | V10n-1.6.0 |
---|---|---|---|---|---|---|---|
133.07572815534 | 133.834951456311 | 122.992233009709 | 204.471844660194 | 17.8990291262136 | 18.3300970873786 | 21.3009708737864 | 49.9883495145631 |
https://space.bilibili.com/327258623?spm_id_from=333.999.0.0
QQ group: 957577822
Set up a cross-compilation environment based on the following link.
cat << 'EOF' | sudo tee /etc/apt/sources.list.d/kaylordut.list
deb [signed-by=/etc/apt/keyrings/kaylor-keyring.gpg] http://apt.kaylordut.cn/kaylordut/ kaylordut main
EOF
sudo mkdir /etc/apt/keyrings -pv
sudo wget -O /etc/apt/keyrings/kaylor-keyring.gpg http://apt.kaylordut.cn/kaylor-keyring.gpg
sudo apt update
sudo apt install kaylordut-dev libbytetrack
If your OS is not Ubuntu22.04, and find kaylordut-dev and libbytetrack sources in my github.
- Compile
git clone https://github.com/kaylorchen/rk3588-yolo-demo.git
cd rk3588-yolo-demo/src/yolov8
mkdir build
cd build
cmake -DCMAKE_TOOLCHAIN_FILE=/path/to/toolchain-aarch64.cmake -DCMAKE_EXPORT_COMPILE_COMMANDS=ON ..
make
/path/to/toolchain-aarch64.cmake is .cmake file absolute path
- Run
Usage: ./videofile_demo [--model_path|-m model_path] [--input_filename|-i input_filename] [--threads|-t thread_count] [--framerate|-f framerate] [--label_path|-l label_path]
Usage: ./camera_demo [--model_path|-m model_path] [--camera_index|-i index] [--width|-w width] [--height|-h height][--threads|-t thread_count] [--fps|-f framerate] [--label_path|-l label_path]
Usage: ./imagefile_demo [--model_path|-m model_path] [--input_filename|-i input_filename] [--label_path|-l label_path]
you can run the above command in your rk3588