Nie możesz wybrać więcej, niż 25 tematów Tematy muszą się zaczynać od litery lub cyfry, mogą zawierać myślniki ('-') i mogą mieć do 35 znaków.

37 lines
1.3KB

  1. from models_725.segWaterBuilding import SegModel
  2. from PIL import Image
  3. import numpy as np
  4. import cv2
  5. import os
  6. from cv2 import getTickCount, getTickFrequency
  7. import time
  8. def predict_lunkuo(impth=None):
  9. pred, probs = segmodel.eval(image=impth)#####
  10. preds_squeeze = pred.squeeze(0)
  11. preds_squeeze[preds_squeeze != 0] = 255
  12. preds_squeeze = np.array(preds_squeeze.cpu())
  13. preds_squeeze = np.uint8(preds_squeeze)
  14. _, binary = cv2.threshold(preds_squeeze,220,255,cv2.THRESH_BINARY)
  15. contours, hierarchy = cv2.findContours(binary,cv2.RETR_TREE, cv2.CHAIN_APPROX_NONE)
  16. img_n = cv2.cvtColor(impth,cv2.COLOR_RGB2BGR)
  17. img2 = cv2.drawContours(img_n,contours,-1,(0,0,255),8)
  18. return img2
  19. if __name__ == '__main__':
  20. impth = 'images/examples'
  21. outpth= 'images/results'
  22. folders = os.listdir(impth)
  23. #segmodel = SegModel(device='cuda:0')
  24. segmodel = SegModel(device='cpu')
  25. for i in range(len(folders)):
  26. imgpath = os.path.join(impth, folders[i])
  27. time00 = time.time()
  28. img = Image.open(imgpath).convert('RGB')
  29. img = np.array(img)
  30. time11 = time.time()
  31. img=predict_lunkuo(impth=img)
  32. cv2.imwrite( os.path.join( outpth,folders[i] ) ,img )
  33. print('----all_process', (time.time() - time11) * 1000)