Пример #1
0
def cmd_unlock(args):
	if not args.quiet:
		print("Unlocking database {0}".format(args.database))
	if not args.dry_run:
		database = Database.instance(args.database)
		mapper = DatabaseMapper(database)
		mapper.set_destroy_lock(False)
Пример #2
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def main():
	training_file = open('training.txt','w')
	testing_file = open('testing.txt','w')
	training_images = {'blur':list(), 'noblur':list()}
	testing_images = {'blur':list(), 'noblur':list()}
	parser = argparse.ArgumentParser(description='generates training/testing files for blur')
	parser.add_argument('-l', '--limit', type=int, metavar='COUNT', required=False, help='Maximum number of images to use')
	parser.add_argument('-r', '--random', action="store_true", default=False, required=False, help='Fetch images ordered randomly if limit is active')
	parser.add_argument('--tag_require', action='append', dest='tags_require', default=None, required=False, help='Tag that must be present on selected images')
	parser.add_argument('--tag_exclude', action='append', dest='tags_exclude', default=None, required=False, help='Tag that must not be present on selected images')
	parser.add_argument('-p', '--percent_training', dest='percent', default=0.25, required=False, help='Tag indicating what percent of images for training')
	parser.add_argument('database', help='Name of database to use')
	args = parser.parse_args()
	db = Database.instance(args.database)
	db_mapper = DatabaseMapper(db)
	images = db_mapper.get_images_for_analysis(kDomain, limit=args.limit, random=args.random, tags_require=args.tags_require, tags_exclude=args.tags_exclude)
	blur_images = list()
	noblur_images = list()
	for image in images:
		if image['annotations'][0]['model'] == 'blur':
			blur_images.append(image)
		else:
			noblur_images.append(image)
	random.shuffle(blur_images)
	random.shuffle(noblur_images)
	blur_training_len = int(len(blur_images)*float(args.percent))
	noblur_training_len = int(len(noblur_images)*float(args.percent))
	training_images['blur'] = blur_images[:blur_training_len]
	testing_images['blur'] = blur_images[blur_training_len:]
	training_images['noblur'] = noblur_images[:noblur_training_len]
	testing_images['noblur'] = noblur_images[noblur_training_len:]
	for file,image_dict in ((training_file,training_images),(testing_file,testing_images)):
		for model in image_dict.keys():
			for image in image_dict[model]:
				file.write('{}\t{}\n'.format(rigor.imageops.find(image), model))
Пример #3
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def main():
    parser = argparse.ArgumentParser(
        description='Runs text detector on relevant images')
    parser.add_argument('classifier_file', help='Path to classifier CLF')
    parser.add_argument('-l',
                        '--limit',
                        type=int,
                        metavar='COUNT',
                        required=False,
                        help='Maximum number of images to use')
    parser.add_argument(
        '-r',
        '--random',
        action="store_true",
        default=False,
        required=False,
        help='Fetch images ordered randomly if limit is active')
    parser.add_argument('database', help='Database to use')
    args = parser.parse_args()
    parameters["classifier_file"] = args.classifier_file
    i = rigor.runner.Runner('text',
                            parameters,
                            limit=args.limit,
                            random=args.random)
    database_mapper = DatabaseMapper(Database.instance(args.database))
    for result in i.run():
        detected = result[1]
        expected = result[2]
        image = database_mapper.get_image_by_id(result[0])
        cv_image = rigor.imageops.fetch(image)
        cv2.polylines(cv_image, expected, True, cv2.RGB(0, 255, 0))
        cv2.polylines(cv_image, detected, True, cv2.RGB(255, 255, 0))
        cv2.imwrite(".".join((str(image["id"]), image["format"])), cv_image)
Пример #4
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def cmd_lock(args):
    if not args.quiet:
        print("Locking database {0}".format(args.database))
    if not args.dry_run:
        database = Database.instance(args.database)
        mapper = DatabaseMapper(database)
        mapper.set_destroy_lock(True)
Пример #5
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def cmd_patch(args):
	database = Database.instance(args.database)
	mapper = DatabaseMapper(database)
	start_level = mapper.get_patch_level() + 1
	stop_level = None
	if args.level:
		stop_level = args.level
	patch(mapper, args.patch_dir, start_level, stop_level, args.dry_run, args.quiet)
Пример #6
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def cmd_clone(args):
	if not args.quiet:
		print("Cloning database {0} to {1}".format(args.source, args.destination))
	if not args.dry_run:
		Database.cls().clone(args.source, args.destination)
		database = Database.instance(args.destination)
		mapper = DatabaseMapper(database)
		mapper.set_destroy_lock(False) # new databases are always unlocked
Пример #7
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def cmd_patch(args):
    database = Database.instance(args.database)
    mapper = DatabaseMapper(database)
    start_level = mapper.get_patch_level() + 1
    stop_level = None
    if args.level:
        stop_level = args.level
    patch(mapper, args.patch_dir, start_level, stop_level, args.dry_run,
          args.quiet)
Пример #8
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def cmd_clone(args):
    if not args.quiet:
        print("Cloning database {0} to {1}".format(args.source,
                                                   args.destination))
    if not args.dry_run:
        Database.cls().clone(args.source, args.destination)
        database = Database.instance(args.destination)
        mapper = DatabaseMapper(database)
        mapper.set_destroy_lock(False)  # new databases are always unlocked
Пример #9
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def cmd_destroy(args):
	if not args.quiet:
		print("Destroying database {0}".format(args.database))
	database = Database.instance(args.database)
	mapper = DatabaseMapper(database)
	if mapper.get_destroy_lock():
		sys.stderr.write("Error: database is locked\n")
		sys.exit(2)
	mapper = None
	database = None
	if not args.dry_run:
		Database.cls().drop(args.database)
Пример #10
0
def cmd_destroy(args):
    if not args.quiet:
        print("Destroying database {0}".format(args.database))
    database = Database.instance(args.database)
    mapper = DatabaseMapper(database)
    if mapper.get_destroy_lock():
        sys.stderr.write("Error: database is locked\n")
        sys.exit(2)
    mapper = None
    database = None
    if not args.dry_run:
        Database.cls().drop(args.database)
Пример #11
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def main():
	rigor.domain.money.init(parameters)
	logger = rigor.logger.getLogger(__file__)
	database_mapper = DatabaseMapper(Database.instance(kDatabase))
	logger.debug('Fetching image IDs from database')
	images = database_mapper.get_images_for_analysis(kDomain, kLimit, False)
	for parameter_set in get_parameters():
		timestamp = datetime.utcnow().strftime("{0}-%Y%m%d_%H%M%S%f".format(kDomain))
		with open("{0}.params".format(timestamp), "w") as parameter_file:
			json.dump(parameter_set, parameter_file)
			parameter_file.write("\n")

		with open("{0}.results".format(timestamp), "w") as result_file:
			image_config = partial(rigor.domain.money.run, parameters=parameter_set)
			logger.debug('Processing {0} images'.format(len(images)))
			for result in map(image_config, images):
				result_file.write("\t".join([str(x) for x in result]))
				result_file.write("\n")
Пример #12
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def main():
	parser = argparse.ArgumentParser(description='Runs text detector on relevant images')
	parser.add_argument('classifier_file', help='Path to classifier CLF')
	parser.add_argument('-l', '--limit', type=int, metavar='COUNT', required=False, help='Maximum number of images to use')
	parser.add_argument('-r', '--random', action="store_true", default=False, required=False, help='Fetch images ordered randomly if limit is active')
	parser.add_argument('database', help='Database to use')
	args = parser.parse_args()
	parameters["classifier_file"] = args.classifier_file
	i = rigor.runner.Runner('text', parameters, limit=args.limit, random=args.random)
	database_mapper = DatabaseMapper(Database.instance(args.database))
	for result in i.run():
		detected = result[1]
		expected = result[2]
		image = database_mapper.get_image_by_id(result[0])
		cv_image = rigor.imageops.fetch(image)
		cv2.polylines(cv_image, expected, True, cv2.RGB(0, 255, 0))
		cv2.polylines(cv_image, detected, True, cv2.RGB(255, 255, 0))
		cv2.imwrite(".".join((str(image["id"]), image["format"])), cv_image)
Пример #13
0
def cmd_create(args):
    if not args.quiet:
        print("Creating database {0}".format(args.database))
    if not args.dry_run:
        Database.cls().create(args.database)
    stop_level = None
    if args.level:
        stop_level = args.level
    try:
        database = Database.instance(args.database)
        mapper = DatabaseMapper(database)
        patch(mapper, args.patch_dir, 0, stop_level, args.dry_run, True)
    except:
        # Save exception for later
        exc_info = sys.exc_info()
        try:
            Database.cls().drop(args.database)
        except:
            pass
        raise exc_info[0], exc_info[1], exc_info[2]
Пример #14
0
def cmd_create(args):
	if not args.quiet:
		print("Creating database {0}".format(args.database))
	if not args.dry_run:
		Database.cls().create(args.database)
	stop_level = None
	if args.level:
		stop_level = args.level
	try:
		database = Database.instance(args.database)
		mapper = DatabaseMapper(database)
		patch(mapper, args.patch_dir, 0, stop_level, args.dry_run, True)
	except:
		# Save exception for later
		exc_info = sys.exc_info()
		try:
			Database.cls().drop(args.database)
		except:
			pass
		raise exc_info[0], exc_info[1], exc_info[2]
Пример #15
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	def __init__(self, database):
		self._dbmapper = DatabaseMapper(Database.instance(database))
Пример #16
0
""""
Script to delete ground truth (image, thumbnail, and all!)
"""
import argparse
import rigor.imageops
from rigor.dbmapper import DatabaseMapper
from rigor.database import Database

parser = argparse.ArgumentParser(
    description='Deletes ground truth (image, thumbnail, and all!)')
parser.add_argument('database', help='Name of database to use')
parser.add_argument('delete_ids',
                    metavar='delete_id',
                    nargs='+',
                    type=int,
                    help='ID(s) of images to delete')
args = parser.parse_args()
db = Database.instance(args.database)
db_mapper = DatabaseMapper(db)
for image_id in args.delete_ids:
    image = db_mapper.get_image_by_id(image_id)
    print("OBLITERATING {}".format(image['id']))
    rigor.imageops.destroy_image(db, image)
Пример #17
0
""""
Script to delete ground truth (image, thumbnail, and all!)
"""
import argparse
import rigor.imageops
from rigor.dbmapper import DatabaseMapper
from rigor.database import Database

parser = argparse.ArgumentParser(description='Deletes ground truth (image, thumbnail, and all!)')
parser.add_argument('database', help='Name of database to use')
parser.add_argument('delete_ids', metavar='delete_id', nargs='+', type=int, help='ID(s) of images to delete')
args = parser.parse_args()
db = Database.instance(args.database)
db_mapper = DatabaseMapper(db)
for image_id in args.delete_ids:
	image = db_mapper.get_image_by_id(image_id)
	print("OBLITERATING {}".format(image['id']))
	rigor.imageops.destroy_image(db, image)
Пример #18
0
def main():
    training_file = open('training.txt', 'w')
    testing_file = open('testing.txt', 'w')
    training_images = {'blur': list(), 'noblur': list()}
    testing_images = {'blur': list(), 'noblur': list()}
    parser = argparse.ArgumentParser(
        description='generates training/testing files for blur')
    parser.add_argument('-l',
                        '--limit',
                        type=int,
                        metavar='COUNT',
                        required=False,
                        help='Maximum number of images to use')
    parser.add_argument(
        '-r',
        '--random',
        action="store_true",
        default=False,
        required=False,
        help='Fetch images ordered randomly if limit is active')
    parser.add_argument('--tag_require',
                        action='append',
                        dest='tags_require',
                        default=None,
                        required=False,
                        help='Tag that must be present on selected images')
    parser.add_argument('--tag_exclude',
                        action='append',
                        dest='tags_exclude',
                        default=None,
                        required=False,
                        help='Tag that must not be present on selected images')
    parser.add_argument(
        '-p',
        '--percent_training',
        dest='percent',
        default=0.25,
        required=False,
        help='Tag indicating what percent of images for training')
    parser.add_argument('database', help='Name of database to use')
    args = parser.parse_args()
    db = Database.instance(args.database)
    db_mapper = DatabaseMapper(db)
    images = db_mapper.get_images_for_analysis(kDomain,
                                               limit=args.limit,
                                               random=args.random,
                                               tags_require=args.tags_require,
                                               tags_exclude=args.tags_exclude)
    blur_images = list()
    noblur_images = list()
    for image in images:
        if image['annotations'][0]['model'] == 'blur':
            blur_images.append(image)
        else:
            noblur_images.append(image)
    random.shuffle(blur_images)
    random.shuffle(noblur_images)
    blur_training_len = int(len(blur_images) * float(args.percent))
    noblur_training_len = int(len(noblur_images) * float(args.percent))
    training_images['blur'] = blur_images[:blur_training_len]
    testing_images['blur'] = blur_images[blur_training_len:]
    training_images['noblur'] = noblur_images[:noblur_training_len]
    testing_images['noblur'] = noblur_images[noblur_training_len:]
    for file, image_dict in ((training_file, training_images),
                             (testing_file, testing_images)):
        for model in image_dict.keys():
            for image in image_dict[model]:
                file.write('{}\t{}\n'.format(rigor.imageops.find(image),
                                             model))