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+# main imports
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+import sys, os, argparse
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+import numpy as np
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+import pandas as pd
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+import random
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+
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+# image processing imports
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+from PIL import Image
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+
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+from ipfml import utils
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+
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+# modules imports
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+sys.path.insert(0, '') # trick to enable import of main folder module
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+
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+import custom_config as cfg
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+from modules.utils import data as dt
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+from data_attributes import get_image_features
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+
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+
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+# getting configuration information
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+learned_folder = cfg.learned_zones_folder
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+min_max_filename = cfg.min_max_filename_extension
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+
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+# define all scenes variables
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+all_scenes_list = cfg.scenes_names
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+all_scenes_indices = cfg.scenes_indices
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+
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+normalization_choices = cfg.normalization_choices
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+zones = cfg.zones_indices
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+seuil_expe_filename = cfg.seuil_expe_filename
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+
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+renderer_choices = cfg.renderer_choices
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+features_choices = cfg.features_choices_labels
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+output_data_folder = cfg.output_data_folder
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+custom_min_max_folder = cfg.min_max_custom_folder
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+min_max_ext = cfg.min_max_filename_extension
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+
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+generic_output_file_svd = '_random.csv'
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+
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+min_value_interval = sys.maxsize
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+max_value_interval = 0
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+
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+def construct_new_line(interval, line_data, choice, each, norm):
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+ begin, end = interval
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+
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+ label = line_data[2]
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+ features = line_data[begin+3:end+3]
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+
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+ # keep only if modulo result is 0 (keep only each wanted values)
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+ features = [float(m) for id, m in enumerate(features) if id % each == 0]
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+
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+ # TODO : check if it's always necessary to do that (loss of information for svd)
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+ if norm:
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+
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+ if choice == 'svdne':
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+ features = utils.normalize_arr_with_range(features, min_value_interval, max_value_interval)
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+ if choice == 'svdn':
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+ features = utils.normalize_arr(features)
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+
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+ line = label
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+
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+ for val in features:
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+ line += ';'
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+ line += str(val)
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+ line += '\n'
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+
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+ return line
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+
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+def get_min_max_value_interval(_path, _scenes_list, _interval, _feature):
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+
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+ global min_value_interval, max_value_interval
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+
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+ data_filename = _feature + "_svd" + generic_output_file_svd
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+
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+ data_file_path = os.path.join(_path, data_filename)
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+
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+ # getting number of line and read randomly lines
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+ f = open(data_file_path)
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+ lines = f.readlines()
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+
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+ # check if user select current scene and zone to be part of training data set
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+ for line in lines:
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+
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+ begin, end = _interval
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+
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+ line_data = line.split(';')
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+
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+ features = line_data[begin+3:end+3]
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+ features = [float(m) for m in features]
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+
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+ min_value = min(features)
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+ max_value = max(features)
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+
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+ if min_value < min_value_interval:
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+ min_value_interval = min_value
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+
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+ if max_value > max_value_interval:
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+ max_value_interval = max_value
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+
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+
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+def generate_data_model(_path, _scenes_list, _filename, _interval, _choice, _feature, _scenes, _nb_zones = 4, _percent = 1, _random=0, _step=1, _each=1, _custom = False):
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+
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+ output_train_filename = _filename + ".train"
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+ output_test_filename = _filename + ".test"
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+
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+ if not '/' in output_train_filename:
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+ raise Exception("Please select filename with directory path to save data. Example : data/dataset")
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+
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+ # create path if not exists
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+ if not os.path.exists(output_data_folder):
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+ os.makedirs(output_data_folder)
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+
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+ train_file_data = []
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+ test_file_data = []
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+
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+ # if custom normalization choices then we use svd values not already normalized
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+ if _custom:
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+ data_filename = _feature + "_svd"+ generic_output_file_svd
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+ else:
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+ data_filename = _feature + "_" + _choice + generic_output_file_svd
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+
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+ data_file_path = os.path.join(_path, data_filename)
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+
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+ # getting number of line and read randomly lines
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+ f = open(data_file_path)
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+ lines = f.readlines()
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+
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+ num_lines = len(lines)
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+
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+ # randomly shuffle image
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+ if _random:
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+ random.shuffle(lines)
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+
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+ counter = 0
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+ # check if user select current scene data line of training data set
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+ for data in lines:
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+
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+ percent = counter / num_lines
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+
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+ data = data.split(';')
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+ scene_name = data[0]
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+ image_index = int(data[1])
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+
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+ if image_index % _step == 0:
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+ line = construct_new_line(_interval, data, _choice, int(_each), _custom)
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+
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+ if scene_name in _scenes and percent <= _percent:
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+ train_file_data.append(line)
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+ else:
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+ test_file_data.append(line)
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+
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+ counter += 1
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+
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+ f.close()
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+
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+ train_file = open(output_train_filename, 'w')
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+ test_file = open(output_test_filename, 'w')
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+
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+ for line in train_file_data:
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+ train_file.write(line)
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+
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+ for line in test_file_data:
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+ test_file.write(line)
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+
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+ train_file.close()
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+ test_file.close()
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+
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+
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+def main():
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+
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+ # getting all params
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+ parser = argparse.ArgumentParser(description="Generate data for model using correlation matrix information from data")
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+
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+ parser.add_argument('--output', type=str, help='output file name desired (.train and .test)')
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+ parser.add_argument('--folder', type=str, help='folder path of data augmented database')
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+ parser.add_argument('--interval', type=str, help='Interval value to keep from svd', default='"0, 200"')
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+ parser.add_argument('--kind', type=str, help='Kind of normalization level wished', choices=normalization_choices)
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+ parser.add_argument('--feature', type=str, help='feature data choice', choices=features_choices)
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+ parser.add_argument('--scenes', type=str, help='List of scenes to use for training data')
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+ parser.add_argument('--random', type=int, help='Data will be randomly filled or not', choices=[0, 1])
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+ parser.add_argument('--percent', type=float, help='Percent of data use for train and test dataset (by default 1)')
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+ parser.add_argument('--step', type=int, help='Photo step to keep for build datasets', default=1)
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+ parser.add_argument('--each', type=int, help='Each features to keep from interval', default=1)
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+ parser.add_argument('--renderer', type=str, help='Renderer choice in order to limit scenes used', choices=renderer_choices, default='all')
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+ parser.add_argument('--custom', type=str, help='Name of custom min max file if use of renormalization of data', default=False)
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+
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+ args = parser.parse_args()
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+
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+ p_filename = args.output
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+ p_folder = args.folder
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+ p_interval = list(map(int, args.interval.split(',')))
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+ p_kind = args.kind
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+ p_feature = args.feature
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+ p_scenes = args.scenes.split(',')
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+ p_random = args.random
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+ p_percent = args.percent
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+ p_step = args.step
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+ p_each = args.each
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+ p_renderer = args.renderer
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+ p_custom = args.custom
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+
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+
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+ # list all possibles choices of renderer
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+ scenes_list = dt.get_renderer_scenes_names(p_renderer)
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+ scenes_indices = dt.get_renderer_scenes_indices(p_renderer)
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+
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+ # getting scenes from indexes user selection
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+ scenes_selected = []
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+
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+ for scene_id in p_scenes:
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+ index = scenes_indices.index(scene_id.strip())
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+ scenes_selected.append(scenes_list[index])
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+
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+ # find min max value if necessary to renormalize data
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+ if p_custom:
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+ get_min_max_value_interval(p_folder, scenes_list, p_interval, p_feature)
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+
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+ # write new file to save
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+ if not os.path.exists(custom_min_max_folder):
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+ os.makedirs(custom_min_max_folder)
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+
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+ min_max_filename_path = os.path.join(custom_min_max_folder, p_custom)
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+
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+ with open(min_max_filename_path, 'w') as f:
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+ f.write(str(min_value_interval) + '\n')
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+ f.write(str(max_value_interval) + '\n')
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+
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+ # create database using img folder (generate first time only)
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+ generate_data_model(p_folder, scenes_list, p_filename, p_interval, p_kind, p_feature, scenes_selected, p_percent, p_random, p_step, p_each, p_custom)
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+
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+if __name__== "__main__":
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+ main()
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