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# Gradio YOLOv5 Det v0.1
# 创建人:曾逸夫
# 创建时间:2022-04-03
# https://gitee.com/CV_Lab/gradio_yolov5_det
import argparse
import csv
import sys
import gradio as gr
import torch
import yaml
from PIL import Image
ROOT_PATH = sys.path[0] # 根目录
# 模型路径
model_path = "ultralytics/yolov5"
# 模型名称临时变量
model_name_tmp = ""
# 设备临时变量
device_tmp = ""
def parse_args(known=False):
parser = argparse.ArgumentParser(description="Gradio YOLOv5 Det v0.1")
parser.add_argument(
"--model_name", "-mn", default="yolov5s", type=str, help="model name"
)
parser.add_argument(
"--model_cfg",
"-mc",
default="./model_config/model_name_p5_all.yaml",
type=str,
help="model config",
)
parser.add_argument(
"--cls_name",
"-cls",
default="./cls_name/cls_name.yaml",
type=str,
help="cls name",
)
parser.add_argument(
"--nms_conf",
"-conf",
default=0.5,
type=float,
help="model NMS confidence threshold",
)
parser.add_argument(
"--nms_iou", "-iou", default=0.45, type=float, help="model NMS IoU threshold"
)
parser.add_argument(
"--label_dnt_show",
"-lds",
action="store_false",
default=True,
help="label show",
)
parser.add_argument(
"--device",
"-dev",
default="cpu",
type=str,
help="cuda or cpu, hugging face only cpu",
)
args = parser.parse_known_args()[0] if known else parser.parse_args()
return args
# 模型加载
def model_loading(model_name, device):
# 加载本地模型
model = torch.hub.load(model_path, model_name, force_reload=True, device=device)
return model
# 检测信息
def export_json(results, model, img_size):
return [
[
{
"id": int(i),
"class": int(result[i][5]),
"class_name": model.model.names[int(result[i][5])],
"normalized_box": {
"x0": round(result[i][:4].tolist()[0], 6),
"y0": round(result[i][:4].tolist()[1], 6),
"x1": round(result[i][:4].tolist()[2], 6),
"y1": round(result[i][:4].tolist()[3], 6),
},
"confidence": round(float(result[i][4]), 2),
"fps": round(1000 / float(results.t[1]), 2),
"width": img_size[0],
"height": img_size[1],
}
for i in range(len(result))
]
for result in results.xyxyn
]
# YOLOv5图片检测函数
def yolo_det(img, device, model_name, conf, iou, label_opt, model_cls):
global model, model_name_tmp, device_tmp
if model_name_tmp != model_name:
# 模型判断,避免反复加载
model_name_tmp = model_name
model = model_loading(model_name_tmp, device)
elif device_tmp != device:
device_tmp = device
model = model_loading(model_name_tmp, device)
# -----------模型调参-----------
model.conf = conf # NMS 置信度阈值
model.iou = iou # NMS IOU阈值
model.max_det = 1000 # 最大检测框数
model.classes = model_cls # 模型类别
results = model(img) # 检测
results.render(labels=label_opt) # 渲染
det_img = Image.fromarray(results.imgs[0]) # 检测图片
det_json = export_json(results, model, img.size)[0] # 检测信息
return det_img, det_json
# yaml文件解析
def yaml_parse(file_path):
return yaml.safe_load(open(file_path, "r", encoding="utf-8").read())
def main(args):
global model
slider_step = 0.05 # 滑动步长
nms_conf = args.nms_conf
nms_iou = args.nms_iou
label_opt = args.label_dnt_show
model_name = args.model_name
model_cfg = args.model_cfg
cls_name = args.cls_name
device = args.device
# 模型加载
model = model_loading(model_name, device)
# 模型名称
# model_names = [i[0] for i in list(csv.reader(open(model_cfg)))] # csv版
model_names = yaml_parse(model_cfg).get("model_names") # yaml版
# 类别名称
# model_cls_name = [i[0] for i in list(csv.reader(open(cls_name)))] # csv版
model_cls_name = yaml_parse(cls_name).get("model_cls_name") # yaml版
# -------------------输入组件-------------------
inputs_img = gr.inputs.Image(type="pil", label="原始图片")
device = gr.inputs.Dropdown(
choices=["cpu"], default=device, type="value", label="设备"
)
inputs_model = gr.inputs.Dropdown(
choices=model_names, default=model_name, type="value", label="模型"
)
input_conf = gr.inputs.Slider(
0, 1, step=slider_step, default=nms_conf, label="置信度阈值"
)
inputs_iou = gr.inputs.Slider(
0, 1, step=slider_step, default=nms_iou, label="IoU 阈值"
)
inputs_label = gr.inputs.Checkbox(default=label_opt, label="标签显示")
inputs_clsName = gr.inputs.CheckboxGroup(
choices=model_cls_name, default=model_cls_name, type="index", label="类别"
)
# 输入参数
inputs = [
inputs_img, # 输入图片
device, # 设备
inputs_model, # 模型
input_conf, # 置信度阈值
inputs_iou, # IoU阈值
inputs_label, # 标签显示
inputs_clsName, # 类别
]
# 输出参数
outputs = gr.outputs.Image(type="pil", label="检测图片")
outputs02 = gr.outputs.JSON(label="检测信息")
# 标题
title = "基于Gradio的YOLOv5通用目标检测系统"
# 描述
description = "<div align='center'>可自定义目标检测模型、安装简单、使用方便</div>"
gr.close_all()
# 接口
gr.Interface(
fn=yolo_det,
inputs=inputs,
outputs=[outputs, outputs02],
title=title,
description=description,
theme="seafoam",
# live=True, # 实时变更输出
flagging_dir="run" # 输出目录
# ).launch(inbrowser=True, auth=['admin', 'admin'])
).launch(
inbrowser=True, # 自动打开默认浏览器
show_tips=True, # 自动显示gradio最新功能
favicon_path="./icon/logo.ico",
)
if __name__ == "__main__":
args = parse_args()
main(args)