predict_seuil_expe_maxwell.py 8.2 KB

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  1. # main imports
  2. import sys, os, argparse
  3. import subprocess
  4. import time
  5. import numpy as np
  6. # image processing imports
  7. from ipfml.processing import segmentation
  8. from PIL import Image
  9. # models imports
  10. from sklearn.externals import joblib
  11. # modules imports
  12. sys.path.insert(0, '') # trick to enable import of main folder module
  13. import custom_config as cfg
  14. from modules.utils import data as dt
  15. # variables and parameters
  16. scenes_path = cfg.dataset_path
  17. min_max_filename = cfg.min_max_filename_extension
  18. threshold_expe_filename = cfg.seuil_expe_filename
  19. threshold_map_folder = cfg.threshold_map_folder
  20. threshold_map_file_prefix = cfg.threshold_map_folder + "_"
  21. zones = cfg.zones_indices
  22. maxwell_scenes = cfg.maxwell_scenes_names
  23. normalization_choices = cfg.normalization_choices
  24. features_choices = cfg.features_choices_labels
  25. tmp_filename = '/tmp/__model__img_to_predict.png'
  26. current_dirpath = os.getcwd()
  27. def main():
  28. # by default..
  29. p_custom = False
  30. parser = argparse.ArgumentParser(description="Script which predicts threshold using specific model")
  31. parser.add_argument('--interval', type=str, help='Interval value to keep from svd', default='"0, 200"')
  32. parser.add_argument('--model', type=str, help='.joblib or .json file (sklearn or keras model)')
  33. parser.add_argument('--mode', type=str, help='Kind of normalization level wished', choices=normalization_choices)
  34. parser.add_argument('--feature', type=str, help='Feature data choice', choices=features_choices)
  35. parser.add_argument('--limit_detection', type=int, help='Specify number of same prediction to stop threshold prediction', default=2)
  36. parser.add_argument('--custom', type=str, help='Name of custom min max file if use of renormalization of data', default=False)
  37. args = parser.parse_args()
  38. p_interval = list(map(int, args.interval.split(',')))
  39. p_model_file = args.model
  40. p_mode = args.mode
  41. p_feature = args.feature
  42. p_limit = args.limit
  43. p_custom = args.custom
  44. scenes = os.listdir(scenes_path)
  45. scenes = [s for s in scenes if s in maxwell_scenes]
  46. # go ahead each scenes
  47. for id_scene, folder_scene in enumerate(scenes):
  48. # only take in consideration maxwell scenes
  49. if folder_scene in maxwell_scenes:
  50. print(folder_scene)
  51. scene_path = os.path.join(scenes_path, folder_scene)
  52. threshold_expes = []
  53. threshold_expes_detected = []
  54. threshold_expes_counter = []
  55. threshold_expes_found = []
  56. # get all images of folder
  57. scene_images = sorted([os.path.join(scene_path, img) for img in os.listdir(scene_path) if cfg.scene_image_extension in img])
  58. start_quality_image = dt.get_scene_image_quality(scene_images[0])
  59. end_quality_image = dt.get_scene_image_quality(scene_images[-1])
  60. # get zones list info
  61. for index in zones:
  62. index_str = str(index)
  63. if len(index_str) < 2:
  64. index_str = "0" + index_str
  65. zone_folder = "zone"+index_str
  66. threshold_path_file = os.path.join(os.path.join(scene_path, zone_folder), threshold_expe_filename)
  67. with open(threshold_path_file) as f:
  68. threshold = int(f.readline())
  69. threshold_expes.append(threshold)
  70. # Initialize default data to get detected model threshold found
  71. threshold_expes_detected.append(False)
  72. threshold_expes_counter.append(0)
  73. threshold_expes_found.append(end_quality_image) # by default use max
  74. check_all_done = False
  75. # for each images
  76. for img_path in scene_images:
  77. current_img = Image.open(img_path)
  78. current_postfix_image = dt.get_scene_image_postfix(img_path)
  79. img_blocks = segmentation.divide_in_blocks(current_img, (200, 200))
  80. check_all_done = all(d == True for d in threshold_expes_detected)
  81. if check_all_done:
  82. break
  83. for id_block, block in enumerate(img_blocks):
  84. # check only if necessary for this scene (not already detected)
  85. if not threshold_expes_detected[id_block]:
  86. tmp_file_path = tmp_filename.replace('__model__', p_model_file.split('/')[-1].replace('.joblib', '_'))
  87. block.save(tmp_file_path)
  88. python_cmd = "python prediction/predict_noisy_image_svd.py --image " + tmp_file_path + \
  89. " --interval '" + p_interval + \
  90. "' --model " + p_model_file + \
  91. " --mode " + p_mode + \
  92. " --feature " + p_feature
  93. # specify use of custom file for min max normalization
  94. if p_custom:
  95. python_cmd = python_cmd + ' --custom ' + p_custom
  96. ## call command ##
  97. p = subprocess.Popen(python_cmd, stdout=subprocess.PIPE, shell=True)
  98. (output, err) = p.communicate()
  99. ## Wait for result ##
  100. p_status = p.wait()
  101. prediction = int(output)
  102. if prediction == 0:
  103. threshold_expes_counter[id_block] = threshold_expes_counter[id_block] + 1
  104. else:
  105. threshold_expes_counter[id_block] = 0
  106. if threshold_expes_counter[id_block] == p_limit:
  107. threshold_expes_detected[id_block] = True
  108. threshold_expes_found[id_block] = int(current_postfix_image)
  109. print(str(id_block) + " : " + current_postfix_image + "/" + str(threshold_expes[id_block]) + " => " + str(prediction))
  110. print("------------------------")
  111. print("Scene " + str(id_scene + 1) + "/" + str(len(maxwell_scenes)))
  112. print("------------------------")
  113. # end of scene => display of results
  114. # construct path using model name for saving threshold map folder
  115. model_treshold_path = os.path.join(threshold_map_folder, p_model_file.split('/')[-1].replace('.joblib', ''))
  116. # create threshold model path if necessary
  117. if not os.path.exists(model_treshold_path):
  118. os.makedirs(model_treshold_path)
  119. abs_dist = []
  120. map_filename = os.path.join(model_treshold_path, threshold_map_file_prefix + folder_scene)
  121. f_map = open(map_filename, 'w')
  122. line_information = ""
  123. # default header
  124. f_map.write('| | | | |\n')
  125. f_map.write('---|----|----|---\n')
  126. for id, threshold in enumerate(threshold_expes_found):
  127. line_information += str(threshold) + " / " + str(threshold_expes[id]) + " | "
  128. abs_dist.append(abs(threshold - threshold_expes[id]))
  129. if (id + 1) % 4 == 0:
  130. f_map.write(line_information + '\n')
  131. line_information = ""
  132. f_map.write(line_information + '\n')
  133. min_abs_dist = min(abs_dist)
  134. max_abs_dist = max(abs_dist)
  135. avg_abs_dist = sum(abs_dist) / len(abs_dist)
  136. f_map.write('\nScene information : ')
  137. f_map.write('\n- BEGIN : ' + str(start_quality_image))
  138. f_map.write('\n- END : ' + str(end_quality_image))
  139. f_map.write('\n\nDistances information : ')
  140. f_map.write('\n- MIN : ' + str(min_abs_dist))
  141. f_map.write('\n- MAX : ' + str(max_abs_dist))
  142. f_map.write('\n- AVG : ' + str(avg_abs_dist))
  143. f_map.write('\n\nOther information : ')
  144. f_map.write('\n- Detection limit : ' + str(p_limit))
  145. # by default print last line
  146. f_map.close()
  147. print("Scene " + str(id_scene + 1) + "/" + str(len(scenes)) + " Done..")
  148. print("------------------------")
  149. time.sleep(10)
  150. if __name__== "__main__":
  151. main()