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- # main imports
- import sys, os, argparse
- import numpy as np
- # image processing imports
- from PIL import Image
- import matplotlib.pyplot as plt
- import ipfml.iqa.fr as fr_iqa
- from ipfml import utils
- # modules and config imports
- sys.path.insert(0, '') # trick to enable import of main folder module
- import custom_config as cfg
- from modules.utils import data as dt
- from data_attributes import get_image_features
- # getting configuration information
- zone_folder = cfg.zone_folder
- min_max_filename = cfg.min_max_filename_extension
- # define all scenes values
- scenes_list = cfg.scenes_names
- scenes_indices = cfg.scenes_indices
- choices = cfg.normalization_choices
- path = cfg.dataset_path
- zones = cfg.zones_indices
- seuil_expe_filename = cfg.seuil_expe_filename
- features_choices = cfg.features_choices_labels
- max_nb_bits = 8
- display_error = False
- def display_svd_values(p_scene, p_interval, p_indices, p_feature, p_mode, p_step, p_norm, p_ylim):
- """
- @brief Method which gives information about svd curves from zone of picture
- @param p_scene, scene expected to show svd values
- @param p_interval, interval [begin, end] of svd data to display
- @param p_interval, interval [begin, end] of samples or minutes from render generation engine
- @param p_feature, feature computed to show
- @param p_mode, normalization's mode
- @param p_norm, normalization or not of selected svd data
- @param p_ylim, ylim choice to better display of data
- @return nothing
- """
- max_value_svd = 0
- min_value_svd = sys.maxsize
- scenes = os.listdir(path)
- # remove min max file from scenes folder
- scenes = [s for s in scenes if min_max_filename not in s]
- begin_data, end_data = p_interval
- begin_index, end_index = p_indices
- # go ahead each scenes
- for folder_scene in scenes:
- if p_scene == folder_scene:
- scene_path = os.path.join(path, folder_scene)
- # construct each zones folder name
- zones_folder = []
- # get zones list info
- for index in zones:
- index_str = str(index)
- if len(index_str) < 2:
- index_str = "0" + index_str
- current_zone = "zone"+index_str
- zones_folder.append(current_zone)
- images_data = []
- images_indices = []
- threshold_learned_zones = []
-
- # get all images of folder
- scene_images = sorted([os.path.join(scene_path, img) for img in os.listdir(scene_path) if cfg.scene_image_extension in img])
- number_scene_image = len(scene_images)
-
- for id, zone_folder in enumerate(zones_folder):
- # get threshold information
- zone_path = os.path.join(scene_path, zone_folder)
- path_seuil = os.path.join(zone_path, seuil_expe_filename)
- # open treshold path and get this information
- with open(path_seuil, "r") as seuil_file:
- threshold_learned = int(seuil_file.readline().strip())
- threshold_learned_zones.append(threshold_learned)
- threshold_mean = np.mean(np.asarray(threshold_learned_zones))
- threshold_image_found = False
- svd_data = []
- # for each images
- for id_img, img_path in enumerate(scene_images):
-
- current_quality_image = dt.get_scene_image_quality(img_path)
- img = Image.open(img_path)
- svd_values = get_image_features(p_feature, img)
- if p_norm:
- svd_values = svd_values[begin_data:end_data]
- #svd_values = np.asarray([math.log(x) for x in svd_values])
- # update min max values
- min_value = svd_values.min()
- max_value = svd_values.max()
- if min_value < min_value_svd:
- min_value_svd = min_value
- if max_value > min_value_svd:
- max_value_svd = max_value
- # keep in memory used data
- if current_quality_image % p_step == 0:
- if current_quality_image >= begin_index and current_quality_image <= end_index:
- images_indices.append(dt.get_scene_image_postfix(img_path))
- svd_data.append(svd_values)
- if threshold_mean < current_quality_image and not threshold_image_found:
- threshold_image_found = True
- threshold_image_zone = current_quality_image
- print('%.2f%%' % ((id_img + 1) / number_scene_image * 100))
- sys.stdout.write("\033[F")
- # all indices of picture to plot
- print(images_indices)
- for id, data in enumerate(svd_data):
- current_data = data
- if not p_norm:
- current_data = current_data[begin_data:end_data]
- if p_mode == 'svdn':
- current_data = utils.normalize_arr(current_data)
- if p_mode == 'svdne':
- current_data = utils.normalize_arr_with_range(current_data, min_value_svd, max_value_svd)
- images_data.append(current_data)
- # display all data using matplotlib (configure plt)
- fig, ax = plt.subplots(figsize=(30, 22))
- ax.set_facecolor('#F9F9F9')
- #fig.patch.set_facecolor('#F9F9F9')
- ax.tick_params(labelsize=22)
- #plt.rc('xtick', labelsize=22)
- #plt.rc('ytick', labelsize=22)
- #plt.title(p_scene + ' scene interval information SVD['+ str(begin_data) +', '+ str(end_data) +'], from scenes indices [' + str(begin_index) + ', '+ str(end_index) + '], ' + p_feature + ' feature, ' + p_mode + ', with step of ' + str(p_step) + ', svd norm ' + str(p_norm), fontsize=24)
- ax.set_ylabel('Component values', fontsize=30)
- ax.set_xlabel('Vector features', fontsize=30)
- for id, data in enumerate(images_data):
- p_label = p_scene + '_' + str(images_indices[id])
- if images_indices[id] == threshold_image_zone:
- ax.plot(data, label=p_label + " (threshold mean)", lw=4, color='red')
- else:
- ax.plot(data, label=p_label)
- plt.legend(bbox_to_anchor=(0.65, 0.98), loc=2, borderaxespad=0.2, fontsize=24)
- #start_ylim, end_ylim = p_ylim
- #ax.set_ylim(start_ylim, end_ylim)
- plot_name = p_scene + '_' + p_feature + '_' + str(p_step) + '_' + p_mode + '_' + str(p_norm) + '.png'
- plt.savefig(plot_name, facecolor=ax.get_facecolor())
- def main():
- parser = argparse.ArgumentParser(description="Display SVD data of scene")
- parser.add_argument('--scene', type=str, help='scene index to use', choices=cfg.scenes_indices)
- parser.add_argument('--interval', type=str, help='Interval value to keep from svd', default='"0, 200"')
- parser.add_argument('--indices', type=str, help='Samples interval to display', default='"0, 900"')
- parser.add_argument('--feature', type=str, help='feature data choice', choices=features_choices)
- parser.add_argument('--mode', type=str, help='Kind of normalization level wished', choices=cfg.normalization_choices)
- parser.add_argument('--step', type=int, help='Each step samples to display', default=10)
- parser.add_argument('--norm', type=int, help='If values will be normalized or not', choices=[0, 1])
- parser.add_argument('--ylim', type=str, help='ylim interval to use', default='"0, 1"')
- args = parser.parse_args()
- p_scene = scenes_list[scenes_indices.index(args.scene)]
- p_indices = list(map(int, args.indices.split(',')))
- p_interval = list(map(int, args.interval.split(',')))
- p_feature = args.feature
- p_mode = args.mode
- p_step = args.step
- p_norm = args.norm
- p_ylim = list(map(int, args.ylim.split(',')))
- display_svd_values(p_scene, p_interval, p_indices, p_feature, p_mode, p_step, p_norm, p_ylim)
- if __name__== "__main__":
- main()
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