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Two steps before deployment
-
- Software and hardware should meet the requirements. Please refer to FastDeploy Environment Requirements
-
- Install FastDeploy Python whl. Refer to FastDeploy Python Installation
This directory provides the example that infer.py
fast finishes the deployment of YOLOv8 on CPU/GPU and GPU through TensorRT. The script is as follows
# Download the example code for deployment
git clone https://github.com/PaddlePaddle/FastDeploy.git
cd examples/vision/detection/yolov8/python/
# Download yolov8 model files and test images
wget https://bj.bcebos.com/paddlehub/fastdeploy/yolov8.onnx
wget https://gitee.com/paddlepaddle/PaddleDetection/raw/release/2.4/demo/000000014439.jpg
# CPU inference
python infer.py --model yolov8.onnx --image 000000014439.jpg --device cpu
# GPU inference
python infer.py --model yolov8.onnx --image 000000014439.jpg --device gpu
# TensorRT inference on GPU
python infer.py --model yolov8.onnx --image 000000014439.jpg --device gpu --use_trt True
The visualized result is as follows
fastdeploy.vision.detection.YOLOv8(model_file, params_file=None, runtime_option=None, model_format=ModelFormat.ONNX)
YOLOv8 model loading and initialization, among which model_file is the exported ONNX model format
Parameter
- model_file(str): Model file path
- params_file(str): Parameter file path. No need to set when the model is in ONNX format
- runtime_option(RuntimeOption): Backend inference configuration. None by default, which is the default configuration
- model_format(ModelFormat): Model format. ONNX format by default
YOLOv8.predict(image_data)Model prediction interface. Input images and output detection results
Parameter
- image_data(np.ndarray): Input data in HWC or BGR format
Return
Return the
fastdeploy.vision.DetectionResult
structure, refer to Vision Model Prediction Results for its description
Users can modify the following preprocessing parameters based on actual needs to change the final inference and deployment results
- size(list[int]): This parameter changes the resize used during preprocessing, containing two integer elements for [width, height] with default value [640, 640]
- padding_value(list[float]): This parameter is used to change the padding value of images during resize, containing three floating-point elements that represent the value of three channels. Default value [114, 114, 114]
- is_no_pad(bool): Specify whether to resize the image through padding.
is_no_pad=True
represents no paddling. Defaultis_no_pad=False
- is_mini_pad(bool): This parameter sets the width and height of the image after resize to the value nearest to the
size
member variable and to the point where the padded pixel size is divisible by thestride
member variable. Defaultis_mini_pad=False
- stride(int): Used with the
stris_mini_padide
member variable. Defaultstride=32