reading order detection on xml with layout + result will be written in an output directory with the same file name

pull/18/head
vahidrezanezhad 7 months ago
parent 2e7c69f2ac
commit f6abefb0a8

@ -664,6 +664,58 @@ def read_xml(xml_file):
for jj in root1.iter(link+'RegionRefIndexed'):
index_tot_regions.append(jj.attrib['index'])
tot_region_ref.append(jj.attrib['regionRef'])
if (link+'PrintSpace' in alltags) or (link+'Border' in alltags):
co_printspace = []
if link+'PrintSpace' in alltags:
region_tags_printspace = np.unique([x for x in alltags if x.endswith('PrintSpace')])
elif link+'Border' in alltags:
region_tags_printspace = np.unique([x for x in alltags if x.endswith('Border')])
for tag in region_tags_printspace:
if link+'PrintSpace' in alltags:
tag_endings_printspace = ['}PrintSpace','}printspace']
elif link+'Border' in alltags:
tag_endings_printspace = ['}Border','}border']
if tag.endswith(tag_endings_printspace[0]) or tag.endswith(tag_endings_printspace[1]):
for nn in root1.iter(tag):
c_t_in = []
sumi = 0
for vv in nn.iter():
# check the format of coords
if vv.tag == link + 'Coords':
coords = bool(vv.attrib)
if coords:
p_h = vv.attrib['points'].split(' ')
c_t_in.append(
np.array([[int(x.split(',')[0]), int(x.split(',')[1])] for x in p_h]))
break
else:
pass
if vv.tag == link + 'Point':
c_t_in.append([int(float(vv.attrib['x'])), int(float(vv.attrib['y']))])
sumi += 1
elif vv.tag != link + 'Point' and sumi >= 1:
break
co_printspace.append(np.array(c_t_in))
img_printspace = np.zeros( (y_len,x_len,3) )
img_printspace=cv2.fillPoly(img_printspace, pts =co_printspace, color=(1,1,1))
img_printspace = img_printspace.astype(np.uint8)
imgray = cv2.cvtColor(img_printspace, cv2.COLOR_BGR2GRAY)
_, thresh = cv2.threshold(imgray, 0, 255, 0)
contours, _ = cv2.findContours(thresh, cv2.RETR_TREE, cv2.CHAIN_APPROX_SIMPLE)
cnt_size = np.array([cv2.contourArea(contours[j]) for j in range(len(contours))])
cnt = contours[np.argmax(cnt_size)]
x, y, w, h = cv2.boundingRect(cnt)
bb_coord_printspace = [x, y, w, h]
else:
bb_coord_printspace = None
region_tags=np.unique([x for x in alltags if x.endswith('Region')])
co_text_paragraph=[]
@ -754,7 +806,7 @@ def read_xml(xml_file):
c_t_in_drop.append( np.array( [ [ int(x.split(',')[0]) , int(x.split(',')[1]) ] for x in p_h] ) )
elif "type" in nn.attrib and nn.attrib['type']=='heading':
id_heading.append(nn.attrib['id'])
##id_heading.append(nn.attrib['id'])
c_t_in_heading.append( np.array( [ [ int(x.split(',')[0]) , int(x.split(',')[1]) ] for x in p_h] ) )
@ -763,7 +815,7 @@ def read_xml(xml_file):
c_t_in_signature_mark.append( np.array( [ [ int(x.split(',')[0]) , int(x.split(',')[1]) ] for x in p_h] ) )
#print(c_t_in_paragraph)
elif "type" in nn.attrib and nn.attrib['type']=='header':
id_header.append(nn.attrib['id'])
#id_header.append(nn.attrib['id'])
c_t_in_header.append( np.array( [ [ int(x.split(',')[0]) , int(x.split(',')[1]) ] for x in p_h] ) )
@ -776,11 +828,11 @@ def read_xml(xml_file):
###c_t_in_page_number.append( np.array( [ [ int(x.split(',')[0]) , int(x.split(',')[1]) ] for x in p_h] ) )
elif "type" in nn.attrib and nn.attrib['type']=='marginalia':
id_marginalia.append(nn.attrib['id'])
#id_marginalia.append(nn.attrib['id'])
c_t_in_marginalia.append( np.array( [ [ int(x.split(',')[0]) , int(x.split(',')[1]) ] for x in p_h] ) )
else:
id_paragraph.append(nn.attrib['id'])
#id_paragraph.append(nn.attrib['id'])
c_t_in_paragraph.append( np.array( [ [ int(x.split(',')[0]) , int(x.split(',')[1]) ] for x in p_h] ) )
@ -796,7 +848,7 @@ def read_xml(xml_file):
sumi+=1
elif "type" in nn.attrib and nn.attrib['type']=='heading':
id_heading.append(nn.attrib['id'])
#id_heading.append(nn.attrib['id'])
c_t_in_heading.append([ int(float(vv.attrib['x'])) , int(float(vv.attrib['y'])) ])
sumi+=1
@ -806,7 +858,7 @@ def read_xml(xml_file):
c_t_in_signature_mark.append([ int(float(vv.attrib['x'])) , int(float(vv.attrib['y'])) ])
sumi+=1
elif "type" in nn.attrib and nn.attrib['type']=='header':
id_header.append(nn.attrib['id'])
#id_header.append(nn.attrib['id'])
c_t_in_header.append([ int(float(vv.attrib['x'])) , int(float(vv.attrib['y'])) ])
sumi+=1
@ -821,13 +873,13 @@ def read_xml(xml_file):
###sumi+=1
elif "type" in nn.attrib and nn.attrib['type']=='marginalia':
id_marginalia.append(nn.attrib['id'])
#id_marginalia.append(nn.attrib['id'])
c_t_in_marginalia.append([ int(float(vv.attrib['x'])) , int(float(vv.attrib['y'])) ])
sumi+=1
else:
id_paragraph.append(nn.attrib['id'])
#id_paragraph.append(nn.attrib['id'])
c_t_in_paragraph.append([ int(float(vv.attrib['x'])) , int(float(vv.attrib['y'])) ])
sumi+=1
@ -838,11 +890,14 @@ def read_xml(xml_file):
co_text_drop.append(np.array(c_t_in_drop))
if len(c_t_in_paragraph)>0:
co_text_paragraph.append(np.array(c_t_in_paragraph))
id_paragraph.append(nn.attrib['id'])
if len(c_t_in_heading)>0:
co_text_heading.append(np.array(c_t_in_heading))
id_heading.append(nn.attrib['id'])
if len(c_t_in_header)>0:
co_text_header.append(np.array(c_t_in_header))
id_header.append(nn.attrib['id'])
if len(c_t_in_page_number)>0:
co_text_page_number.append(np.array(c_t_in_page_number))
if len(c_t_in_catch)>0:
@ -853,6 +908,7 @@ def read_xml(xml_file):
if len(c_t_in_marginalia)>0:
co_text_marginalia.append(np.array(c_t_in_marginalia))
id_marginalia.append(nn.attrib['id'])
elif tag.endswith('}GraphicRegion') or tag.endswith('}graphicregion'):
@ -1014,7 +1070,7 @@ def read_xml(xml_file):
img_poly=cv2.fillPoly(img, pts =co_img, color=(4,4,4))
img_poly=cv2.fillPoly(img, pts =co_sep, color=(5,5,5))
return tree1, root1, file_name, id_paragraph, id_header,co_text_paragraph, co_text_header,\
return tree1, root1, bb_coord_printspace, file_name, id_paragraph, id_header+id_heading, co_text_paragraph, co_text_header+co_text_heading,\
tot_region_ref,x_len, y_len,index_tot_regions, img_poly

@ -16,6 +16,7 @@ import click
import json
from tensorflow.python.keras import backend as tensorflow_backend
import xml.etree.ElementTree as ET
import matplotlib.pyplot as plt
with warnings.catch_warnings():
@ -27,7 +28,7 @@ Tool to load model and predict for given image.
"""
class sbb_predict:
def __init__(self,image, model, task, config_params_model, patches, save, ground_truth, xml_file):
def __init__(self,image, model, task, config_params_model, patches, save, ground_truth, xml_file, out):
self.image=image
self.patches=patches
self.save=save
@ -36,6 +37,7 @@ class sbb_predict:
self.task=task
self.config_params_model=config_params_model
self.xml_file = xml_file
self.out = out
def resize_image(self,img_in,input_height,input_width):
return cv2.resize( img_in, ( input_width,input_height) ,interpolation=cv2.INTER_NEAREST)
@ -236,16 +238,18 @@ class sbb_predict:
img_height = self.config_params_model['input_height']
img_width = self.config_params_model['input_width']
tree_xml, root_xml, file_name, id_paragraph, id_header, co_text_paragraph, co_text_header, tot_region_ref, x_len, y_len, index_tot_regions, img_poly = read_xml(self.xml_file)
tree_xml, root_xml, bb_coord_printspace, file_name, id_paragraph, id_header, co_text_paragraph, co_text_header, tot_region_ref, x_len, y_len, index_tot_regions, img_poly = read_xml(self.xml_file)
_, cy_main, x_min_main, x_max_main, y_min_main, y_max_main, _ = find_new_features_of_contours(co_text_header)
img_header_and_sep = np.zeros((y_len,x_len), dtype='uint8')
for j in range(len(cy_main)):
img_header_and_sep[int(y_max_main[j]):int(y_max_main[j])+12,int(x_min_main[j]):int(x_max_main[j]) ] = 1
co_text_all = co_text_paragraph + co_text_header
id_all_text = id_paragraph + id_header
##texts_corr_order_index = [index_tot_regions[tot_region_ref.index(i)] for i in id_all_text ]
##texts_corr_order_index_int = [int(x) for x in texts_corr_order_index]
@ -253,8 +257,9 @@ class sbb_predict:
min_area = 0
max_area = 1
co_text_all, texts_corr_order_index_int = filter_contours_area_of_image(img_poly, co_text_all, texts_corr_order_index_int, max_area, min_area)
##co_text_all, texts_corr_order_index_int = filter_contours_area_of_image(img_poly, co_text_all, texts_corr_order_index_int, max_area, min_area)
labels_con = np.zeros((y_len,x_len,len(co_text_all)),dtype='uint8')
for i in range(len(co_text_all)):
@ -262,6 +267,18 @@ class sbb_predict:
img_label=cv2.fillPoly(img_label, pts =[co_text_all[i]], color=(1,1,1))
labels_con[:,:,i] = img_label[:,:,0]
if bb_coord_printspace:
#bb_coord_printspace[x,y,w,h,_,_]
x = bb_coord_printspace[0]
y = bb_coord_printspace[1]
w = bb_coord_printspace[2]
h = bb_coord_printspace[3]
labels_con = labels_con[y:y+h, x:x+w, :]
img_poly = img_poly[y:y+h, x:x+w, :]
img_header_and_sep = img_header_and_sep[y:y+h, x:x+w]
img3= np.copy(img_poly)
labels_con = resize_image(labels_con, img_height, img_width)
@ -347,9 +364,11 @@ class sbb_predict:
tot_counter = tot_counter+1
starting_list_of_regions, index_update = update_list_and_return_first_with_length_bigger_than_one(index_update, i, pr_list, post_list,starting_list_of_regions)
index_sort = [i[0] for i in starting_list_of_regions ]
id_all_text = np.array(id_all_text)[index_sort]
alltags=[elem.tag for elem in root_xml.iter()]
@ -389,19 +408,17 @@ class sbb_predict:
for index, id_text in enumerate(id_all_text):
new_element_2 = ET.SubElement(ro_subelement2, 'RegionRefIndexed')
new_element_2.set('regionRef', id_all_text[index])
new_element_2.set('index', str(index_sort[index]))
new_element_2.set('index', str(index))
if link+'PrintSpace' in alltags:
if (link+'PrintSpace' in alltags) or (link+'Border' in alltags):
page_element.insert(1, ro_subelement)
else:
page_element.insert(0, ro_subelement)
#page_element[0].append(new_element)
#root_xml.append(new_element)
alltags=[elem.tag for elem in root_xml.iter()]
ET.register_namespace("",name_space)
tree_xml.write('library2.xml',xml_declaration=True,method='xml',encoding="utf8",default_namespace=None)
tree_xml.write(os.path.join(self.out, file_name+'.xml'),xml_declaration=True,method='xml',encoding="utf8",default_namespace=None)
#tree_xml.write('library2.xml')
else:
@ -545,6 +562,12 @@ class sbb_predict:
help="image filename",
type=click.Path(exists=True, dir_okay=False),
)
@click.option(
"--out",
"-o",
help="output directory where xml with detected reading order will be written.",
type=click.Path(exists=True, file_okay=False),
)
@click.option(
"--patches/--no-patches",
"-p/-nop",
@ -573,7 +596,7 @@ class sbb_predict:
"-xml",
help="xml file with layout coordinates that reading order detection will be implemented on. The result will be written in the same xml file.",
)
def main(image, model, patches, save, ground_truth, xml_file):
def main(image, model, patches, save, ground_truth, xml_file, out):
with open(os.path.join(model,'config.json')) as f:
config_params_model = json.load(f)
task = config_params_model['task']
@ -581,7 +604,7 @@ def main(image, model, patches, save, ground_truth, xml_file):
if not save:
print("Error: You used one of segmentation or binarization task but not set -s, you need a filename to save visualized output with -s")
sys.exit(1)
x=sbb_predict(image, model, task, config_params_model, patches, save, ground_truth, xml_file)
x=sbb_predict(image, model, task, config_params_model, patches, save, ground_truth, xml_file, out)
x.run()
if __name__=="__main__":

Loading…
Cancel
Save