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- #!/usr/bin/env python3
- # -*- coding: utf-8 -*-
- """
- Created on Fri Sep 14 21:02:42 2018
- @author: jbuisine
- """
- from __future__ import print_function
- import sys, os, getopt
- import numpy as np
- import random
- import time
- import json
- from PIL import Image
- from ipfml import processing, metrics, utils
- from modules.utils import config as cfg
- from modules.utils import data as dt
- # getting configuration information
- config_filename = cfg.config_filename
- zone_folder = cfg.zone_folder
- min_max_filename = cfg.min_max_filename_extension
- # define all scenes values
- all_scenes_list = cfg.scenes_names
- all_scenes_indices = cfg.scenes_indices
- normalization_choices = cfg.normalization_choices
- path = cfg.dataset_path
- zones = cfg.zones_indices
- seuil_expe_filename = cfg.seuil_expe_filename
- metric_choices = cfg.metric_choices_labels
- output_data_folder = cfg.output_data_folder
- custom_min_max_folder = cfg.min_max_custom_folder
- min_max_ext = cfg.min_max_filename_extension
- generic_output_file_svd = '_random.csv'
- min_value_interval = sys.maxsize
- max_value_interval = 0
- def construct_new_line(path_seuil, interval, line, choice, each, norm):
- begin, end = interval
- line_data = line.split(';')
- seuil = line_data[0]
- metrics = line_data[begin+1:end+1]
- # keep only if modulo result is 0 (keep only each wanted values)
- metrics = [float(m) for id, m in enumerate(metrics) if id % each == 0]
- # TODO : check if it's always necessary to do that (loss of information for svd)
- if norm:
- if choice == 'svdne':
- metrics = utils.normalize_arr_with_range(metrics, min_value_interval, max_value_interval)
- if choice == 'svdn':
- metrics = utils.normalize_arr(metrics)
- with open(path_seuil, "r") as seuil_file:
- seuil_learned = int(seuil_file.readline().strip())
- if seuil_learned > int(seuil):
- line = '1'
- else:
- line = '0'
- for idx, val in enumerate(metrics):
- line += ';'
- line += str(val)
- line += '\n'
- return line
- def get_min_max_value_interval(_scenes_list, _interval, _metric):
- global min_value_interval, max_value_interval
- scenes = os.listdir(path)
- # remove min max file from scenes folder
- scenes = [s for s in scenes if min_max_filename not in s]
- for id_scene, folder_scene in enumerate(scenes):
- # only take care of maxwell scenes
- if folder_scene in _scenes_list:
- scene_path = os.path.join(path, folder_scene)
- zones_folder = []
- # create zones list
- for index in zones:
- index_str = str(index)
- if len(index_str) < 2:
- index_str = "0" + index_str
- zones_folder.append("zone"+index_str)
- for id_zone, zone_folder in enumerate(zones_folder):
- zone_path = os.path.join(scene_path, zone_folder)
- # if custom normalization choices then we use svd values not already normalized
- data_filename = _metric + "_svd"+ generic_output_file_svd
- data_file_path = os.path.join(zone_path, data_filename)
- # getting number of line and read randomly lines
- f = open(data_file_path)
- lines = f.readlines()
- # check if user select current scene and zone to be part of training data set
- for line in lines:
- begin, end = _interval
- line_data = line.split(';')
- metrics = line_data[begin+1:end+1]
- metrics = [float(m) for m in metrics]
- min_value = min(metrics)
- max_value = max(metrics)
- if min_value < min_value_interval:
- min_value_interval = min_value
- if max_value > max_value_interval:
- max_value_interval = max_value
- def generate_data_model(_scenes_list, _filename, _interval, _choice, _metric, _scenes, _nb_zones = 4, _percent = 1, _random=0, _step=1, _each=1, _custom = False):
- output_train_filename = _filename + ".train"
- output_test_filename = _filename + ".test"
- if not '/' in output_train_filename:
- raise Exception("Please select filename with directory path to save data. Example : data/dataset")
- # create path if not exists
- if not os.path.exists(output_data_folder):
- os.makedirs(output_data_folder)
- scenes = os.listdir(path)
- # remove min max file from scenes folder
- scenes = [s for s in scenes if min_max_filename not in s]
- train_file_data = []
- test_file_data = []
- for id_scene, folder_scene in enumerate(scenes):
- # only take care of maxwell scenes
- if folder_scene in _scenes_list:
- scene_path = os.path.join(path, folder_scene)
- zones_folder = []
- # create zones list
- for index in zones:
- index_str = str(index)
- if len(index_str) < 2:
- index_str = "0" + index_str
- zones_folder.append("zone"+index_str)
- # shuffle list of zones (=> randomly choose zones)
- # only in random mode
- if _random:
- random.shuffle(zones_folder)
- for id_zone, zone_folder in enumerate(zones_folder):
- zone_path = os.path.join(scene_path, zone_folder)
- # if custom normalization choices then we use svd values not already normalized
- if _custom:
- data_filename = _metric + "_svd"+ generic_output_file_svd
- else:
- data_filename = _metric + "_" + _choice + generic_output_file_svd
- data_file_path = os.path.join(zone_path, data_filename)
- # getting number of line and read randomly lines
- f = open(data_file_path)
- lines = f.readlines()
- num_lines = len(lines)
- # randomly shuffle image
- if _random:
- random.shuffle(lines)
- path_seuil = os.path.join(zone_path, seuil_expe_filename)
- counter = 0
- # check if user select current scene and zone to be part of training data set
- for data in lines:
- percent = counter / num_lines
- image_index = int(data.split(';')[0])
- if image_index % _step == 0:
- line = construct_new_line(path_seuil, _interval, data, _choice, _each, _custom)
- if id_zone < _nb_zones and folder_scene in _scenes and percent <= _percent:
- train_file_data.append(line)
- else:
- test_file_data.append(line)
- counter += 1
- f.close()
- train_file = open(output_train_filename, 'w')
- test_file = open(output_test_filename, 'w')
- for line in train_file_data:
- train_file.write(line)
- for line in test_file_data:
- test_file.write(line)
- train_file.close()
- test_file.close()
- def main():
- p_custom = False
- p_step = 1
- p_renderer = 'all'
- p_each = 1
- if len(sys.argv) <= 1:
- print('Run with default parameters...')
- print('python generate_data_model_random.py --output xxxx --interval 0,20 --kind svdne --metric lab --scenes "A, B, D" --nb_zones 5 --random 1 --percent 0.7 --step 10 --each 1 renderer all --custom min_max_filename')
- sys.exit(2)
- try:
- opts, args = getopt.getopt(sys.argv[1:], "ho:i:k:s:n:r:p:s:e:r:c", ["help=", "output=", "interval=", "kind=", "metric=","scenes=", "nb_zones=", "random=", "percent=", "step=", "each=", "renderer=", "custom="])
- except getopt.GetoptError:
- # print help information and exit:
- print('python generate_data_model_random.py --output xxxx --interval 0,20 --kind svdne --metric lab --scenes "A, B, D" --nb_zones 5 --random 1 --percent 0.7 --step 10 --each 1 --renderer all --custom min_max_filename')
- sys.exit(2)
- for o, a in opts:
- if o == "-h":
- print('python generate_data_model_random.py --output xxxx --interval 0,20 --kind svdne --metric lab --scenes "A, B, D" --nb_zones 5 --random 1 --percent 0.7 --step 10 --each 1 --renderer all --custom min_max_filename')
- sys.exit()
- elif o in ("-o", "--output"):
- p_filename = a
- elif o in ("-i", "--interval"):
- p_interval = list(map(int, a.split(',')))
- elif o in ("-k", "--kind"):
- p_kind = a
- if p_kind not in normalization_choices:
- assert False, "Invalid normalization choice, %s" % normalization_choices
- elif o in ("-m", "--metric"):
- p_metric = a
- elif o in ("-s", "--scenes"):
- p_scenes = a.split(',')
- elif o in ("-n", "--nb_zones"):
- p_nb_zones = int(a)
- elif o in ("-r", "--random"):
- p_random = int(a)
- elif o in ("-p", "--percent"):
- p_percent = float(a)
- elif o in ("-s", "--sep"):
- p_sep = a
- elif o in ("-s", "--step"):
- p_step = int(a)
- elif o in ("-e", "--each"):
- p_each = int(a)
- elif o in ("-r", "--renderer"):
- p_renderer = a
- if p_renderer not in cfg.renderer_choices:
- assert False, "Unknown renderer choice, %s" % cfg.renderer_choices
- elif o in ("-c", "--custom"):
- p_custom = a
- else:
- assert False, "unhandled option"
- # list all possibles choices of renderer
- scenes_list = dt.get_renderer_scenes_names(p_renderer)
- scenes_indices = dt.get_renderer_scenes_indices(p_renderer)
- # getting scenes from indexes user selection
- scenes_selected = []
- for scene_id in p_scenes:
- index = scenes_indices.index(scene_id.strip())
- scenes_selected.append(scenes_list[index])
- # find min max value if necessary to renormalize data
- if p_custom:
- get_min_max_value_interval(scenes_list, p_interval, p_metric)
- # write new file to save
- if not os.path.exists(custom_min_max_folder):
- os.makedirs(custom_min_max_folder)
- min_max_folder_path = os.path.join(os.path.dirname(__file__), custom_min_max_folder)
- min_max_filename_path = os.path.join(min_max_folder_path, p_custom)
- with open(min_max_filename_path, 'w') as f:
- f.write(str(min_value_interval) + '\n')
- f.write(str(max_value_interval) + '\n')
- # create database using img folder (generate first time only)
- generate_data_model(scenes_list, p_filename, p_interval, p_kind, p_metric, scenes_selected, p_nb_zones, p_percent, p_random, p_step, p_each, p_custom)
- if __name__== "__main__":
- main()
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