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data_reader.py
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from __future__ import absolute_import
from __future__ import division
from __future__ import print_function
import os
import cv2
import tarfile
import numpy as np
from PIL import Image
from os import path
from paddle.dataset.image import load_image
import paddle
try:
input = raw_input
except NameError:
pass
SOS = 0
EOS = 1
NUM_CLASSES = 95
DATA_SHAPE = [1, 48, 512]
DATA_MD5 = "7256b1d5420d8c3e74815196e58cdad5"
DATA_URL = "http://paddle-ocr-data.bj.bcebos.com/data.tar.gz"
CACHE_DIR_NAME = "ctc_data"
SAVED_FILE_NAME = "data.tar.gz"
DATA_DIR_NAME = "data"
TRAIN_DATA_DIR_NAME = "train_images"
TEST_DATA_DIR_NAME = "test_images"
TRAIN_LIST_FILE_NAME = "train.list"
TEST_LIST_FILE_NAME = "test.list"
class DataGenerator(object):
def __init__(self, model="crnn_ctc"):
self.model = model
def train_reader(self,
img_root_dir,
img_label_list,
batchsize,
cycle,
shuffle=True):
'''
Reader interface for training.
:param img_root_dir: The root path of the image for training.
:type img_root_dir: str
:param img_label_list: The path of the <image_name, label> file for training.
:type img_label_list: str
:param cycle: If number of iterations is greater than dataset_size / batch_size
it reiterates dataset over as many times as necessary.
:type cycle: bool
'''
img_label_lines = []
to_file = "tmp.txt"
if not shuffle:
cmd = "cat " + img_label_list + " | awk '{print $1,$2,$3,$4;}' > " + to_file
elif batchsize == 1:
cmd = "cat " + img_label_list + " | awk '{print $1,$2,$3,$4;}' | shuf > " + to_file
else:
#cmd1: partial shuffle
cmd = "cat " + img_label_list + " | awk '{printf(\"%04d%.4f %s\\n\", $1, rand(), $0)}' | sort | sed 1,$((1 + RANDOM % 100))d | "
#cmd2: batch merge and shuffle
cmd += "awk '{printf $2\" \"$3\" \"$4\" \"$5\" \"; if(NR % " + str(
batchsize) + " == 0) print \"\";}' | shuf | "
#cmd3: batch split
cmd += "awk '{if(NF == " + str(
batchsize
) + " * 4) {for(i = 0; i < " + str(
batchsize
) + "; i++) print $(4*i+1)\" \"$(4*i+2)\" \"$(4*i+3)\" \"$(4*i+4);}}' > " + to_file
os.system(cmd)
print("finish batch shuffle")
img_label_lines = open(to_file, 'r').readlines()
def reader():
sizes = len(img_label_lines) // batchsize
if sizes == 0:
raise ValueError('Batch size is bigger than the dataset size.')
while True:
for i in range(sizes):
result = []
sz = [0, 0]
for j in range(batchsize):
line = img_label_lines[i * batchsize + j]
# h, w, img_name, labels
items = line.split(' ')
label = [int(c) for c in items[-1].split(',')]
img = Image.open(os.path.join(img_root_dir, items[
2])).convert('L') #zhuanhuidu
if j == 0:
sz = img.size
img = img.resize((sz[0], sz[1]))
img = np.array(img) - 127.5
img = img[np.newaxis, ...]
if self.model == "crnn_ctc":
result.append([img, label])
else:
result.append([img, [SOS] + label, label + [EOS]])
yield result
if not cycle:
break
return reader
def test_reader(self, img_root_dir, img_label_list):
'''
Reader interface for inference.
:param img_root_dir: The root path of the images for training.
:type img_root_dir: str
:param img_label_list: The path of the <image_name, label> file for testing.
:type img_label_list: str
'''
def reader():
for line in open(img_label_list):
# h, w, img_name, labels
items = line.split(' ')
label = [int(c) for c in items[-1].split(',')]
img = Image.open(os.path.join(img_root_dir, items[2])).convert(
'L')
img = np.array(img) - 127.5
img = img[np.newaxis, ...]
if self.model == "crnn_ctc":
yield img, label
else:
yield img, [SOS] + label, label + [EOS]
return reader
def infer_reader(self, img_root_dir=None, img_label_list=None, cycle=False):
'''A reader interface for inference.
:param img_root_dir: The root path of the images for training.
:type img_root_dir: str
:param img_label_list: The path of the <image_name, label> file for
inference. It should be the path of <image_path> file if img_root_dir
was None. If img_label_list was set to None, it will read image path
from stdin.
:type img_root_dir: str
:param cycle: If number of iterations is greater than dataset_size /
batch_size it reiterates dataset over as many times as necessary.
:type cycle: bool
'''
def reader():
def yield_img_and_label(lines):
for line in lines:
if img_root_dir is not None:
# h, w, img_name, labels
img_name = line.split(' ')[2]
img_path = os.path.join(img_root_dir, img_name)
else:
img_path = line.strip("\t\n\r")
img = Image.open(img_path).convert('L')
img = np.array(img) - 127.5
img = img[np.newaxis, ...]
label = [int(c) for c in line.split(' ')[3].split(',')]
yield img, label
if img_label_list is not None:
lines = []
with open(img_label_list) as f:
lines = f.readlines()
for img, label in yield_img_and_label(lines):
yield img, label
while cycle:
for img, label in yield_img_and_label(lines):
yield img, label
else:
while True:
img_path = input("Please input the path of image: ")
img = Image.open(img_path).convert('L')
img = np.array(img) - 127.5
img = img[np.newaxis, ...]
yield img, [[0]]
return reader
def num_classes():
'''Get classes number of this dataset.
'''
return NUM_CLASSES
def data_shape():
'''Get image shape of this dataset. It is a dummy shape for this dataset.
'''
return DATA_SHAPE
def train(batch_size,
train_images_dir=None,
train_list_file=None,
cycle=False,
model="crnn_ctc"):
generator = DataGenerator(model)
if train_images_dir is None:
data_dir = download_data()
train_images_dir = path.join(data_dir, TRAIN_DATA_DIR_NAME)
if train_list_file is None:
train_list_file = path.join(data_dir, TRAIN_LIST_FILE_NAME)
shuffle = True
if 'ce_mode' in os.environ:
shuffle = False
return generator.train_reader(
train_images_dir, train_list_file, batch_size, cycle, shuffle=shuffle)
def test(batch_size=1,
test_images_dir=None,
test_list_file=None,
model="crnn_ctc"):
generator = DataGenerator(model)
if test_images_dir is None:
data_dir = download_data()
test_images_dir = path.join(data_dir, TEST_DATA_DIR_NAME)
if test_list_file is None:
test_list_file = path.join(data_dir, TEST_LIST_FILE_NAME)
return paddle.batch(
generator.test_reader(test_images_dir, test_list_file), batch_size)
def inference(batch_size=1,
infer_images_dir=None,
infer_list_file=None,
cycle=False,
model="crnn_ctc"):
generator = DataGenerator(model)
return paddle.batch(
generator.infer_reader(infer_images_dir, infer_list_file, cycle),
batch_size)
def download_data():
'''Download train and test data.
'''
tar_file = paddle.dataset.common.download(
DATA_URL, CACHE_DIR_NAME, DATA_MD5, save_name=SAVED_FILE_NAME)
data_dir = path.join(path.dirname(tar_file), DATA_DIR_NAME)
if not path.isdir(data_dir):
t = tarfile.open(tar_file, "r:gz")
t.extractall(path=path.dirname(tar_file))
t.close()
return data_dir