Files
2026-03-26 17:48:20 +08:00

135 lines
4.1 KiB
Python

import os
import time
import cv2
import numpy as np
import torch
from ai.plate.plate_recognition.plateNet import myNet_ocr_color
def cv_imread(path): # 可以读取中文路径的图片
img = cv2.imdecode(np.fromfile(path, dtype=np.uint8), -1)
return img
def allFilePath(rootPath, allFIleList):
fileList = os.listdir(rootPath)
for temp in fileList:
if os.path.isfile(os.path.join(rootPath, temp)):
if temp.endswith(".jpg") or temp.endswith(".png") or temp.endswith(".JPG"):
allFIleList.append(os.path.join(rootPath, temp))
else:
allFilePath(os.path.join(rootPath, temp), allFIleList)
device = torch.device("cuda") if torch.cuda.is_available() else torch.device("cpu")
color = ["黑色", "蓝色", "绿色", "白色", "黄色"]
plateName = r"#京沪津渝冀晋蒙辽吉黑苏浙皖闽赣鲁豫鄂湘粤桂琼川贵云藏陕甘青宁新学警港澳挂使领民航危0123456789ABCDEFGHJKLMNPQRSTUVWXYZ险品"
mean_value, std_value = (0.588, 0.193)
def decodePlate(preds):
pre = 0
newPreds = []
index = []
for i in range(len(preds)):
if preds[i] != 0 and preds[i] != pre:
newPreds.append(preds[i])
index.append(i)
pre = preds[i]
return newPreds, index
def image_processing(img, device):
img = cv2.resize(img, (168, 48))
img = np.reshape(img, (48, 168, 3))
# normalize
img = img.astype(np.float32)
img = (img / 255.0 - mean_value) / std_value
img = img.transpose([2, 0, 1])
img = torch.from_numpy(img)
img = img.to(device)
img = img.view(1, *img.size())
return img
def get_plate_result(img, device, model, is_color=False):
input = image_processing(img, device)
if is_color: # 是否识别颜色
preds, color_preds = model(input)
color_preds = torch.softmax(color_preds, dim=-1)
color_conf, color_index = torch.max(color_preds, dim=-1)
color_conf = color_conf.item()
else:
preds = model(input)
preds = torch.softmax(preds, dim=-1)
prob, index = preds.max(dim=-1)
index = index.view(-1).detach().cpu().numpy()
prob = prob.view(-1).detach().cpu().numpy()
# preds=preds.view(-1).detach().cpu().numpy()
newPreds, new_index = decodePlate(index)
prob = prob[new_index]
plate = ""
for i in newPreds:
plate += plateName[i]
# if not (plate[0] in plateName[1:44] ):
# return ""
if is_color:
return (
plate,
prob,
color[color_index],
color_conf,
) # 返回车牌号以及每个字符的概率,以及颜色,和颜色的概率
else:
return plate, prob
def init_model(device, model_path, is_color=False):
# print( print(sys.path))
# model_path ="plate_recognition/model/checkpoint_61_acc_0.9715.pth"
check_point = torch.load(model_path, map_location=device)
model_state = check_point["state_dict"]
cfg = check_point["cfg"]
color_classes = 0
if is_color:
color_classes = 5 # 颜色类别数
model = myNet_ocr_color(
num_classes=len(plateName), export=True, cfg=cfg, color_num=color_classes
)
model.load_state_dict(model_state, strict=False)
model.to(device)
model.eval()
return model
# model = init_model(device)
if __name__ == "__main__":
model_path = r"weights/plate_rec_color.pth"
image_path = "images/tmp2424.png"
testPath = r"/mnt/Gpan/Mydata/pytorchPorject/CRNN/crnn_plate_recognition/images"
fileList = []
allFilePath(testPath, fileList)
# result = get_plate_result(image_path,device)
# print(result)
is_color = False
model = init_model(device, model_path, is_color=is_color)
right = 0
begin = time.time()
for imge_path in fileList:
img = cv2.imread(imge_path)
if is_color:
plate, _, plate_color, _ = get_plate_result(
img, device, model, is_color=is_color
)
print(plate)
else:
plate, _ = get_plate_result(img, device, model, is_color=is_color)
print(plate, imge_path)