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gen.py
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gen.py
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# Author: Ankush Gupta
# Date: 2015
"""
Entry-point for generating synthetic text images, as described in:
@InProceedings{Gupta16,
author = "Gupta, A. and Vedaldi, A. and Zisserman, A.",
title = "Synthetic Data for Text Localisation in Natural Images",
booktitle = "IEEE Conference on Computer Vision and Pattern Recognition",
year = "2016",
}
"""
import numpy as np
import h5py
import os, sys, traceback
import os.path as osp
from synthgen import *
from common import *
import wget, tarfile
## Define some configuration variables:
NUM_IMG = -1 # no. of images to use for generation (-1 to use all available):
INSTANCE_PER_IMAGE = 1 # no. of times to use the same image
SECS_PER_IMG = 5 #max time per image in seconds
# path to the data-file, containing image, depth and segmentation:
DATA_PATH = 'renderer_data'
# url of the data (google-drive public file):
DATA_URL = 'http://www.robots.ox.ac.uk/~ankush/renderer_data.tar.gz'
OUT_FILE = 'results/SynthText.h5'
def get_data(datadir):
"""
Download the image,depth and segmentation data:
Returns, the h5 database.
"""
db_fname = osp.join(datadir, 'sample.h5')
if not osp.exists(db_fname):
try:
datadir = DATA_PATH
colorprint(Color.BLUE,'\tInvalid path or missing data. Downloading at: `%s`\n'%datadir, bold=True)
colorprint(Color.BLUE,'\tdownloading data (24 M) from: ' + DATA_URL, bold=True)
print
sys.stdout.flush()
out_fname = 'renderer_data.tar.gz'
wget.download(DATA_URL, out=out_fname)
tar = tarfile.open(out_fname)
tar.extractall()
tar.close()
os.remove(out_fname)
db_fname = osp.join(datadir, 'sample.h5')
colorprint(Color.BLUE, '\n\tdata saved at:'+db_fname, bold=True)
sys.stdout.flush()
except:
print colorize(Color.RED, 'Data not found and have problems downloading.', bold=True)
sys.stdout.flush()
sys.exit(-1)
# open the h5 file and return:
return h5py.File(db_fname, 'r'), datadir
def add_res_to_db(imgname,res,db):
"""
Add the synthetically generated text image instance
and other metadata to the dataset.
"""
ninstance = len(res)
for i in xrange(ninstance):
dname = "%s_%d"%(imgname, i)
db['data'].create_dataset(dname,data=res[i]['img'])
db['data'][dname].attrs['charBB'] = res[i]['charBB']
db['data'][dname].attrs['wordBB'] = res[i]['wordBB']
db['data'][dname].attrs['txt'] = res[i]['txt']
def main(datadir, viz=False):
# open databases:
print colorize(Color.BLUE,'getting data..',bold=True)
db, datadir = get_data(datadir)
print colorize(Color.BLUE,'\t-> done',bold=True)
# open the output h5 file:
out_db = h5py.File(OUT_FILE,'w')
out_db.create_group('/data')
print colorize(Color.GREEN,'Storing the output in: '+OUT_FILE, bold=True)
# get the names of the image files in the dataset:
imnames = sorted(db['image'].keys())
N = len(imnames)
global NUM_IMG
if NUM_IMG < 0:
NUM_IMG = N
start_idx,end_idx = 0,min(NUM_IMG, N)
RV3 = RendererV3(datadir, max_time=SECS_PER_IMG)
for i in xrange(start_idx,end_idx):
imname = imnames[i]
try:
# get the image:
img = Image.fromarray(db['image'][imname][:])
# get the pre-computed depth:
# there are 2 estimates of depth (represented as 2 "channels")
# here we are using the second one (in some cases it might be
# useful to use the other one):
depth = db['depth'][imname][:].T
depth = depth[:,:,1]
# get segmentation:
seg = db['seg'][imname][:].astype('float32')
area = db['seg'][imname].attrs['area']
label = db['seg'][imname].attrs['label']
# re-size uniformly:
sz = depth.shape[:2][::-1]
img = np.array(img.resize(sz,Image.ANTIALIAS))
seg = np.array(Image.fromarray(seg).resize(sz,Image.NEAREST))
print colorize(Color.RED,'%d of %d'%(i,end_idx-1), bold=True)
res = RV3.render_text(img,depth,seg,area,label,
ninstance=INSTANCE_PER_IMAGE,viz=viz)
if len(res) > 0:
# non-empty : successful in placing text:
add_res_to_db(imname,res,out_db)
# visualize the output:
if viz:
if 'q' in raw_input(colorize(Color.RED,'continue? (enter to continue, q to exit): ',True)):
break
except:
traceback.print_exc()
print colorize(Color.GREEN,'>>>> CONTINUING....', bold=True)
continue
db.close()
out_db.close()
if __name__=='__main__':
import argparse
parser = argparse.ArgumentParser(description='Genereate Synthetic Scene-Text Images')
parser.add_argument('--viz', action='store_true', dest='viz', default=False, help='flag for turning on visualizations')
parser.add_argument('--datadir', type=str, default=DATA_PATH, help='path to directory containing the downloaded renderer-data')
args = parser.parse_args()
main(args.datadir, args.viz)