PaddleDetection
训练出来的模型可以使用Serving 部署在服务端。
本教程以在COCO数据集上用configs/yolov3/yolov3_darknet53_270e_coco.yml
算法训练的模型进行部署。
预训练模型权重文件为yolov3_darknet53_270e_coco.pdparams 。
python tools/infer.py -c configs/yolov3/yolov3_darknet53_270e_coco.yml --infer_img=demo/000000014439.jpg -o use_gpu=True weights=https://paddledet.bj.bcebos.com/models/yolov3_darknet53_270e_coco.pdparams --infer_img=demo/000000014439.jpg
请参考PaddleServing 中安装教程安装(版本>=0.7.0)。
PaddleDetection在训练过程包括网络的前向和优化器相关参数,而在部署过程中,我们只需要前向参数,具体参考:导出模型
python tools/export_model.py -c configs/yolov3/yolov3_darknet53_270e_coco.yml -o weights=https://paddledet.bj.bcebos.com/models/yolov3_darknet53_270e_coco.pdparams --export_serving_model=True
以上命令会在output_inference/
文件夹下生成一个yolov3_darknet53_270e_coco
文件夹:
output_inference
│ ├── yolov3_darknet53_270e_coco
│ │ ├── infer_cfg.yml
│ │ ├── model.pdiparams
│ │ ├── model.pdiparams.info
│ │ ├── model.pdmodel
│ │ ├── serving_client
│ │ │ ├── serving_client_conf.prototxt
│ │ │ ├── serving_client_conf.stream.prototxt
│ │ ├── serving_server
│ │ │ ├── __model__
│ │ │ ├── __params__
│ │ │ ├── serving_server_conf.prototxt
│ │ │ ├── serving_server_conf.stream.prototxt
│ │ │ ├── ...
serving_client
文件夹下serving_client_conf.prototxt
详细说明了模型输入输出信息
serving_client_conf.prototxt
文件内容为:
feed_var {
name: "im_shape"
alias_name: "im_shape"
is_lod_tensor: false
feed_type: 1
shape: 2
}
feed_var {
name: "image"
alias_name: "image"
is_lod_tensor: false
feed_type: 1
shape: 3
shape: 608
shape: 608
}
feed_var {
name: "scale_factor"
alias_name: "scale_factor"
is_lod_tensor: false
feed_type: 1
shape: 2
}
fetch_var {
name: "multiclass_nms3_0.tmp_0"
alias_name: "multiclass_nms3_0.tmp_0"
is_lod_tensor: true
fetch_type: 1
shape: -1
}
fetch_var {
name: "multiclass_nms3_0.tmp_2"
alias_name: "multiclass_nms3_0.tmp_2"
is_lod_tensor: false
fetch_type: 2
cd output_inference/yolov3_darknet53_270e_coco/
# GPU
python -m paddle_serving_server.serve --model serving_server --port 9393 --gpu_ids 0
# CPU
python -m paddle_serving_server.serve --model serving_server --port 9393
准备label_list.txt
文件,示例label_list.txt
文件内容为
person
bicycle
car
motorcycle
airplane
bus
train
truck
boat
traffic light
fire hydrant
stop sign
parking meter
bench
bird
cat
dog
horse
sheep
cow
elephant
bear
zebra
giraffe
backpack
umbrella
handbag
tie
suitcase
frisbee
skis
snowboard
sports ball
kite
baseball bat
baseball glove
skateboard
surfboard
tennis racket
bottle
wine glass
cup
fork
knife
spoon
bowl
banana
apple
sandwich
orange
broccoli
carrot
hot dog
pizza
donut
cake
chair
couch
potted plant
bed
dining table
toilet
tv
laptop
mouse
remote
keyboard
cell phone
microwave
oven
toaster
sink
refrigerator
book
clock
vase
scissors
teddy bear
hair drier
toothbrush
设置prototxt
文件路径为serving_client/serving_client_conf.prototxt
设置fetch
为fetch=["multiclass_nms3_0.tmp_0"])
测试
# 进入目录
cd output_inference/yolov3_darknet53_270e_coco/
# 测试代码 test_client.py 会自动创建output文件夹,并在output下生成`bbox.json`和`000000014439.jpg`两个文件
python ../../deploy/serving/test_client.py ../../deploy/serving/label_list.txt ../../demo/000000014439.jpg