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xml.py
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xml.py
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import os, sys
import glob
from PIL import Image
# ICDAR 图像存储位置
src_img_dir = "train-textloc"
# ICDAR 图像的 ground truth 的 txt 文件存放位置
src_txt_dir = "train-textloc"
img_Lists = glob.glob(src_img_dir + '/*.jpg')
img_basenames = [] # e.g. 100.jpg
for item in img_Lists:
img_basenames.append(os.path.basename(item))
img_names = [] # e.g. 100
for item in img_basenames:
temp1, temp2 = os.path.splitext(item)
img_names.append(temp1)
for img in img_names:
im = Image.open((src_img_dir + '/' + img + '.jpg'))
width, height = im.size
# open the crospronding txt file
gt = open(src_txt_dir + '/gt_' + img + '.txt').read().splitlines()
# write in xml file
#os.mknod(src_txt_dir + '/' + img + '.xml')
xml_file = open((src_txt_dir + '/' + img + '.xml'), 'w')
xml_file.write('<annotation>\n')
xml_file.write(' <folder>VOC2007</folder>\n')
xml_file.write(' <filename>' + str(img) + '.jpg' + '</filename>\n')
xml_file.write(' <size>\n')
xml_file.write(' <width>' + str(width) + '</width>\n')
xml_file.write(' <height>' + str(height) + '</height>\n')
xml_file.write(' <depth>3</depth>\n')
xml_file.write(' </size>\n')
# write the region of text on xml file
for img_each_label in gt:
spt = img_each_label.split(',')
xml_file.write(' <object>\n')
xml_file.write(' <name>text</name>\n')
xml_file.write(' <pose>Unspecified</pose>\n')
xml_file.write(' <truncated>0</truncated>\n')
xml_file.write(' <difficult>0</difficult>\n')
xml_file.write(' <bndbox>\n')
xml_file.write(' <xmin>' + str(spt[0]) + '</xmin>\n')
xml_file.write(' <ymin>' + str(spt[1]) + '</ymin>\n')
xml_file.write(' <xmax>' + str(spt[2]) + '</xmax>\n')
xml_file.write(' <ymax>' + str(spt[3]) + '</ymax>\n')
xml_file.write(' </bndbox>\n')
xml_file.write(' </object>\n')
xml_file.write('</annotation>')