pdf_parse_union_core_v2.py 30 KB

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  1. import copy
  2. import os
  3. import statistics
  4. import time
  5. from typing import List
  6. import fitz
  7. import torch
  8. from loguru import logger
  9. from magic_pdf.config.enums import SupportedPdfParseMethod
  10. from magic_pdf.config.ocr_content_type import BlockType, ContentType
  11. from magic_pdf.data.dataset import Dataset, PageableData
  12. from magic_pdf.libs.boxbase import calculate_overlap_area_in_bbox1_area_ratio
  13. from magic_pdf.libs.clean_memory import clean_memory
  14. from magic_pdf.libs.config_reader import get_local_layoutreader_model_dir
  15. from magic_pdf.libs.convert_utils import dict_to_list
  16. from magic_pdf.libs.hash_utils import compute_md5
  17. from magic_pdf.libs.pdf_image_tools import cut_image_to_pil_image
  18. from magic_pdf.model.magic_model import MagicModel
  19. try:
  20. import torchtext
  21. if torchtext.__version__ >= '0.18.0':
  22. torchtext.disable_torchtext_deprecation_warning()
  23. except ImportError:
  24. pass
  25. from magic_pdf.model.sub_modules.model_init import AtomModelSingleton
  26. from magic_pdf.para.para_split_v3 import para_split
  27. from magic_pdf.pre_proc.construct_page_dict import ocr_construct_page_component_v2
  28. from magic_pdf.pre_proc.cut_image import ocr_cut_image_and_table
  29. from magic_pdf.pre_proc.ocr_detect_all_bboxes import ocr_prepare_bboxes_for_layout_split_v2
  30. from magic_pdf.pre_proc.ocr_dict_merge import fill_spans_in_blocks, fix_block_spans_v2, fix_discarded_block
  31. from magic_pdf.pre_proc.ocr_span_list_modify import get_qa_need_list_v2, remove_overlaps_low_confidence_spans, remove_overlaps_min_spans
  32. os.environ['NO_ALBUMENTATIONS_UPDATE'] = '1' # 禁止albumentations检查更新
  33. os.environ['YOLO_VERBOSE'] = 'False' # disable yolo logger
  34. def __replace_STX_ETX(text_str: str):
  35. """Replace \u0002 and \u0003, as these characters become garbled when extracted using pymupdf. In fact, they were originally quotation marks.
  36. Drawback: This issue is only observed in English text; it has not been found in Chinese text so far.
  37. Args:
  38. text_str (str): raw text
  39. Returns:
  40. _type_: replaced text
  41. """ # noqa: E501
  42. if text_str:
  43. s = text_str.replace('\u0002', "'")
  44. s = s.replace('\u0003', "'")
  45. return s
  46. return text_str
  47. def __replace_0xfffd(text_str: str):
  48. """Replace \ufffd, as these characters become garbled when extracted using pymupdf."""
  49. if text_str:
  50. s = text_str.replace('\ufffd', " ")
  51. return s
  52. return text_str
  53. def chars_to_content(span):
  54. # 检查span中的char是否为空
  55. if len(span['chars']) == 0:
  56. pass
  57. # span['content'] = ''
  58. else:
  59. # 先给chars按char['bbox']的中心点的x坐标排序
  60. span['chars'] = sorted(span['chars'], key=lambda x: (x['bbox'][0] + x['bbox'][2]) / 2)
  61. # 求char的平均宽度
  62. char_width_sum = sum([char['bbox'][2] - char['bbox'][0] for char in span['chars']])
  63. char_avg_width = char_width_sum / len(span['chars'])
  64. content = ''
  65. for char in span['chars']:
  66. # 如果下一个char的x0和上一个char的x1距离超过一个字符宽度,则需要在中间插入一个空格
  67. if char['bbox'][0] - span['chars'][span['chars'].index(char) - 1]['bbox'][2] > char_avg_width:
  68. content += ' '
  69. content += char['c']
  70. span['content'] = __replace_0xfffd(content)
  71. del span['chars']
  72. LINE_STOP_FLAG = ('.', '!', '?', '。', '!', '?', ')', ')', '"', '”', ':', ':', ';', ';', ']', '】', '}', '}', '>', '》', '、', ',', ',', '-', '—', '–',)
  73. LINE_START_FLAG = ('(', '(', '"', '“', '【', '{', '《', '<', '「', '『', '【', '[',)
  74. def fill_char_in_spans(spans, all_chars):
  75. # 简单从上到下排一下序
  76. spans = sorted(spans, key=lambda x: x['bbox'][1])
  77. for char in all_chars:
  78. for span in spans:
  79. if calculate_char_in_span(char['bbox'], span['bbox'], char['c']):
  80. span['chars'].append(char)
  81. break
  82. empty_spans = []
  83. for span in spans:
  84. chars_to_content(span)
  85. # 有的span中虽然没有字但有一两个空的占位符,用宽高和content长度过滤
  86. if len(span['content']) * span['height'] < span['width'] * 0.5:
  87. # logger.info(f"maybe empty span: {len(span['content'])}, {span['height']}, {span['width']}")
  88. empty_spans.append(span)
  89. del span['height'], span['width']
  90. return empty_spans
  91. # 使用鲁棒性更强的中心点坐标判断
  92. def calculate_char_in_span(char_bbox, span_bbox, char, span_height_radio=0.33):
  93. char_center_x = (char_bbox[0] + char_bbox[2]) / 2
  94. char_center_y = (char_bbox[1] + char_bbox[3]) / 2
  95. span_center_y = (span_bbox[1] + span_bbox[3]) / 2
  96. span_height = span_bbox[3] - span_bbox[1]
  97. if (
  98. span_bbox[0] < char_center_x < span_bbox[2]
  99. and span_bbox[1] < char_center_y < span_bbox[3]
  100. and abs(char_center_y - span_center_y) < span_height * span_height_radio # 字符的中轴和span的中轴高度差不能超过1/4span高度
  101. ):
  102. return True
  103. else:
  104. # 如果char是LINE_STOP_FLAG,就不用中心点判定,换一种方案(左边界在span区域内,高度判定和之前逻辑一致)
  105. # 主要是给结尾符号一个进入span的机会,这个char还应该离span右边界较近
  106. if char in LINE_STOP_FLAG:
  107. if (
  108. (span_bbox[2] - span_height) < char_bbox[0] < span_bbox[2]
  109. and char_center_x > span_bbox[0]
  110. and span_bbox[1] < char_center_y < span_bbox[3]
  111. and abs(char_center_y - span_center_y) < span_height * span_height_radio
  112. ):
  113. return True
  114. elif char in LINE_START_FLAG:
  115. if (
  116. span_bbox[0] < char_bbox[2] < (span_bbox[0] + span_height)
  117. and char_center_x < span_bbox[2]
  118. and span_bbox[1] < char_center_y < span_bbox[3]
  119. and abs(char_center_y - span_center_y) < span_height * span_height_radio
  120. ):
  121. return True
  122. else:
  123. return False
  124. def txt_spans_extract_v2(pdf_page, spans, all_bboxes, all_discarded_blocks, lang):
  125. text_blocks_raw = pdf_page.get_text('rawdict', flags=fitz.TEXT_PRESERVE_WHITESPACE | fitz.TEXT_MEDIABOX_CLIP)['blocks']
  126. all_pymu_chars = []
  127. for block in text_blocks_raw:
  128. for line in block['lines']:
  129. cosine, sine = line['dir']
  130. if abs (cosine) < 0.9 or abs(sine) > 0.1:
  131. continue
  132. for span in line['spans']:
  133. all_pymu_chars.extend(span['chars'])
  134. # 计算所有sapn的高度的中位数
  135. span_height_list = []
  136. for span in spans:
  137. if span['type'] in [ContentType.InterlineEquation, ContentType.Image, ContentType.Table]:
  138. continue
  139. span_height = span['bbox'][3] - span['bbox'][1]
  140. span['height'] = span_height
  141. span['width'] = span['bbox'][2] - span['bbox'][0]
  142. span_height_list.append(span_height)
  143. if len(span_height_list) == 0:
  144. return spans
  145. else:
  146. median_span_height = statistics.median(span_height_list)
  147. useful_spans = []
  148. unuseful_spans = []
  149. # 纵向span的两个特征:1. 高度超过多个line 2. 高宽比超过某个值
  150. vertical_spans = []
  151. for span in spans:
  152. if span['type'] in [ContentType.InterlineEquation, ContentType.Image, ContentType.Table]:
  153. continue
  154. for block in all_bboxes + all_discarded_blocks:
  155. if block[7] in [BlockType.ImageBody, BlockType.TableBody, BlockType.InterlineEquation]:
  156. continue
  157. if calculate_overlap_area_in_bbox1_area_ratio(span['bbox'], block[0:4]) > 0.5:
  158. if span['height'] > median_span_height * 3 and span['height'] > span['width'] * 3:
  159. vertical_spans.append(span)
  160. elif block in all_bboxes:
  161. useful_spans.append(span)
  162. else:
  163. unuseful_spans.append(span)
  164. break
  165. """垂直的span框直接用pymu的line进行填充"""
  166. if len(vertical_spans) > 0:
  167. text_blocks = pdf_page.get_text('dict', flags=fitz.TEXTFLAGS_TEXT)['blocks']
  168. all_pymu_lines = []
  169. for block in text_blocks:
  170. for line in block['lines']:
  171. all_pymu_lines.append(line)
  172. for pymu_line in all_pymu_lines:
  173. for span in vertical_spans:
  174. if calculate_overlap_area_in_bbox1_area_ratio(pymu_line['bbox'], span['bbox']) > 0.5:
  175. for pymu_span in pymu_line['spans']:
  176. span['content'] += pymu_span['text']
  177. break
  178. for span in vertical_spans:
  179. if len(span['content']) == 0:
  180. spans.remove(span)
  181. """水平的span框如果没有char则用ocr进行填充"""
  182. new_spans = []
  183. for span in useful_spans + unuseful_spans:
  184. if span['type'] in [ContentType.Text]:
  185. span['chars'] = []
  186. new_spans.append(span)
  187. empty_spans = fill_char_in_spans(new_spans, all_pymu_chars)
  188. if len(empty_spans) > 0:
  189. # 初始化ocr模型
  190. atom_model_manager = AtomModelSingleton()
  191. ocr_model = atom_model_manager.get_atom_model(
  192. atom_model_name='ocr',
  193. ocr_show_log=False,
  194. det_db_box_thresh=0.3,
  195. lang=lang
  196. )
  197. for span in empty_spans:
  198. # 对span的bbox截图再ocr
  199. span_img = cut_image_to_pil_image(span['bbox'], pdf_page, mode='cv2')
  200. ocr_res = ocr_model.ocr(span_img, det=False)
  201. if ocr_res and len(ocr_res) > 0:
  202. if len(ocr_res[0]) > 0:
  203. ocr_text, ocr_score = ocr_res[0][0]
  204. # logger.info(f"ocr_text: {ocr_text}, ocr_score: {ocr_score}")
  205. if ocr_score > 0.5 and len(ocr_text) > 0:
  206. span['content'] = ocr_text
  207. span['score'] = ocr_score
  208. else:
  209. spans.remove(span)
  210. return spans
  211. def replace_text_span(pymu_spans, ocr_spans):
  212. return list(filter(lambda x: x['type'] != ContentType.Text, ocr_spans)) + pymu_spans
  213. def model_init(model_name: str):
  214. from transformers import LayoutLMv3ForTokenClassification
  215. if torch.cuda.is_available():
  216. device = torch.device('cuda')
  217. if torch.cuda.is_bf16_supported():
  218. supports_bfloat16 = True
  219. else:
  220. supports_bfloat16 = False
  221. else:
  222. device = torch.device('cpu')
  223. supports_bfloat16 = False
  224. if model_name == 'layoutreader':
  225. # 检测modelscope的缓存目录是否存在
  226. layoutreader_model_dir = get_local_layoutreader_model_dir()
  227. if os.path.exists(layoutreader_model_dir):
  228. model = LayoutLMv3ForTokenClassification.from_pretrained(
  229. layoutreader_model_dir
  230. )
  231. else:
  232. logger.warning(
  233. 'local layoutreader model not exists, use online model from huggingface'
  234. )
  235. model = LayoutLMv3ForTokenClassification.from_pretrained(
  236. 'hantian/layoutreader'
  237. )
  238. # 检查设备是否支持 bfloat16
  239. if supports_bfloat16:
  240. model.bfloat16()
  241. model.to(device).eval()
  242. else:
  243. logger.error('model name not allow')
  244. exit(1)
  245. return model
  246. class ModelSingleton:
  247. _instance = None
  248. _models = {}
  249. def __new__(cls, *args, **kwargs):
  250. if cls._instance is None:
  251. cls._instance = super().__new__(cls)
  252. return cls._instance
  253. def get_model(self, model_name: str):
  254. if model_name not in self._models:
  255. self._models[model_name] = model_init(model_name=model_name)
  256. return self._models[model_name]
  257. def do_predict(boxes: List[List[int]], model) -> List[int]:
  258. from magic_pdf.model.sub_modules.reading_oreder.layoutreader.helpers import (
  259. boxes2inputs, parse_logits, prepare_inputs)
  260. inputs = boxes2inputs(boxes)
  261. inputs = prepare_inputs(inputs, model)
  262. logits = model(**inputs).logits.cpu().squeeze(0)
  263. return parse_logits(logits, len(boxes))
  264. def cal_block_index(fix_blocks, sorted_bboxes):
  265. if sorted_bboxes is not None:
  266. # 使用layoutreader排序
  267. for block in fix_blocks:
  268. line_index_list = []
  269. if len(block['lines']) == 0:
  270. block['index'] = sorted_bboxes.index(block['bbox'])
  271. else:
  272. for line in block['lines']:
  273. line['index'] = sorted_bboxes.index(line['bbox'])
  274. line_index_list.append(line['index'])
  275. median_value = statistics.median(line_index_list)
  276. block['index'] = median_value
  277. # 删除图表body block中的虚拟line信息, 并用real_lines信息回填
  278. if block['type'] in [BlockType.ImageBody, BlockType.TableBody]:
  279. block['virtual_lines'] = copy.deepcopy(block['lines'])
  280. block['lines'] = copy.deepcopy(block['real_lines'])
  281. del block['real_lines']
  282. else:
  283. # 使用xycut排序
  284. block_bboxes = []
  285. for block in fix_blocks:
  286. block_bboxes.append(block['bbox'])
  287. # 删除图表body block中的虚拟line信息, 并用real_lines信息回填
  288. if block['type'] in [BlockType.ImageBody, BlockType.TableBody]:
  289. block['virtual_lines'] = copy.deepcopy(block['lines'])
  290. block['lines'] = copy.deepcopy(block['real_lines'])
  291. del block['real_lines']
  292. import numpy as np
  293. from magic_pdf.model.sub_modules.reading_oreder.layoutreader.xycut import \
  294. recursive_xy_cut
  295. random_boxes = np.array(block_bboxes)
  296. np.random.shuffle(random_boxes)
  297. res = []
  298. recursive_xy_cut(np.asarray(random_boxes).astype(int), np.arange(len(block_bboxes)), res)
  299. assert len(res) == len(block_bboxes)
  300. sorted_boxes = random_boxes[np.array(res)].tolist()
  301. for i, block in enumerate(fix_blocks):
  302. block['index'] = sorted_boxes.index(block['bbox'])
  303. # 生成line index
  304. sorted_blocks = sorted(fix_blocks, key=lambda b: b['index'])
  305. line_inedx = 1
  306. for block in sorted_blocks:
  307. for line in block['lines']:
  308. line['index'] = line_inedx
  309. line_inedx += 1
  310. return fix_blocks
  311. def insert_lines_into_block(block_bbox, line_height, page_w, page_h):
  312. # block_bbox是一个元组(x0, y0, x1, y1),其中(x0, y0)是左下角坐标,(x1, y1)是右上角坐标
  313. x0, y0, x1, y1 = block_bbox
  314. block_height = y1 - y0
  315. block_weight = x1 - x0
  316. # 如果block高度小于n行正文,则直接返回block的bbox
  317. if line_height * 3 < block_height:
  318. if (
  319. block_height > page_h * 0.25 and page_w * 0.5 > block_weight > page_w * 0.25
  320. ): # 可能是双列结构,可以切细点
  321. lines = int(block_height / line_height) + 1
  322. else:
  323. # 如果block的宽度超过0.4页面宽度,则将block分成3行(是一种复杂布局,图不能切的太细)
  324. if block_weight > page_w * 0.4:
  325. line_height = (y1 - y0) / 3
  326. lines = 3
  327. elif block_weight > page_w * 0.25: # (可能是三列结构,也切细点)
  328. lines = int(block_height / line_height) + 1
  329. else: # 判断长宽比
  330. if block_height / block_weight > 1.2: # 细长的不分
  331. return [[x0, y0, x1, y1]]
  332. else: # 不细长的还是分成两行
  333. line_height = (y1 - y0) / 2
  334. lines = 2
  335. # 确定从哪个y位置开始绘制线条
  336. current_y = y0
  337. # 用于存储线条的位置信息[(x0, y), ...]
  338. lines_positions = []
  339. for i in range(lines):
  340. lines_positions.append([x0, current_y, x1, current_y + line_height])
  341. current_y += line_height
  342. return lines_positions
  343. else:
  344. return [[x0, y0, x1, y1]]
  345. def sort_lines_by_model(fix_blocks, page_w, page_h, line_height):
  346. page_line_list = []
  347. for block in fix_blocks:
  348. if block['type'] in [
  349. BlockType.Text, BlockType.Title, BlockType.InterlineEquation,
  350. BlockType.ImageCaption, BlockType.ImageFootnote,
  351. BlockType.TableCaption, BlockType.TableFootnote
  352. ]:
  353. if len(block['lines']) == 0:
  354. bbox = block['bbox']
  355. lines = insert_lines_into_block(bbox, line_height, page_w, page_h)
  356. for line in lines:
  357. block['lines'].append({'bbox': line, 'spans': []})
  358. page_line_list.extend(lines)
  359. else:
  360. for line in block['lines']:
  361. bbox = line['bbox']
  362. page_line_list.append(bbox)
  363. elif block['type'] in [BlockType.ImageBody, BlockType.TableBody]:
  364. bbox = block['bbox']
  365. block['real_lines'] = copy.deepcopy(block['lines'])
  366. lines = insert_lines_into_block(bbox, line_height, page_w, page_h)
  367. block['lines'] = []
  368. for line in lines:
  369. block['lines'].append({'bbox': line, 'spans': []})
  370. page_line_list.extend(lines)
  371. if len(page_line_list) > 200: # layoutreader最高支持512line
  372. return None
  373. # 使用layoutreader排序
  374. x_scale = 1000.0 / page_w
  375. y_scale = 1000.0 / page_h
  376. boxes = []
  377. # logger.info(f"Scale: {x_scale}, {y_scale}, Boxes len: {len(page_line_list)}")
  378. for left, top, right, bottom in page_line_list:
  379. if left < 0:
  380. logger.warning(
  381. f'left < 0, left: {left}, right: {right}, top: {top}, bottom: {bottom}, page_w: {page_w}, page_h: {page_h}'
  382. ) # noqa: E501
  383. left = 0
  384. if right > page_w:
  385. logger.warning(
  386. f'right > page_w, left: {left}, right: {right}, top: {top}, bottom: {bottom}, page_w: {page_w}, page_h: {page_h}'
  387. ) # noqa: E501
  388. right = page_w
  389. if top < 0:
  390. logger.warning(
  391. f'top < 0, left: {left}, right: {right}, top: {top}, bottom: {bottom}, page_w: {page_w}, page_h: {page_h}'
  392. ) # noqa: E501
  393. top = 0
  394. if bottom > page_h:
  395. logger.warning(
  396. f'bottom > page_h, left: {left}, right: {right}, top: {top}, bottom: {bottom}, page_w: {page_w}, page_h: {page_h}'
  397. ) # noqa: E501
  398. bottom = page_h
  399. left = round(left * x_scale)
  400. top = round(top * y_scale)
  401. right = round(right * x_scale)
  402. bottom = round(bottom * y_scale)
  403. assert (
  404. 1000 >= right >= left >= 0 and 1000 >= bottom >= top >= 0
  405. ), f'Invalid box. right: {right}, left: {left}, bottom: {bottom}, top: {top}' # noqa: E126, E121
  406. boxes.append([left, top, right, bottom])
  407. model_manager = ModelSingleton()
  408. model = model_manager.get_model('layoutreader')
  409. with torch.no_grad():
  410. orders = do_predict(boxes, model)
  411. sorted_bboxes = [page_line_list[i] for i in orders]
  412. return sorted_bboxes
  413. def get_line_height(blocks):
  414. page_line_height_list = []
  415. for block in blocks:
  416. if block['type'] in [
  417. BlockType.Text, BlockType.Title,
  418. BlockType.ImageCaption, BlockType.ImageFootnote,
  419. BlockType.TableCaption, BlockType.TableFootnote
  420. ]:
  421. for line in block['lines']:
  422. bbox = line['bbox']
  423. page_line_height_list.append(int(bbox[3] - bbox[1]))
  424. if len(page_line_height_list) > 0:
  425. return statistics.median(page_line_height_list)
  426. else:
  427. return 10
  428. def process_groups(groups, body_key, caption_key, footnote_key):
  429. body_blocks = []
  430. caption_blocks = []
  431. footnote_blocks = []
  432. for i, group in enumerate(groups):
  433. group[body_key]['group_id'] = i
  434. body_blocks.append(group[body_key])
  435. for caption_block in group[caption_key]:
  436. caption_block['group_id'] = i
  437. caption_blocks.append(caption_block)
  438. for footnote_block in group[footnote_key]:
  439. footnote_block['group_id'] = i
  440. footnote_blocks.append(footnote_block)
  441. return body_blocks, caption_blocks, footnote_blocks
  442. def process_block_list(blocks, body_type, block_type):
  443. indices = [block['index'] for block in blocks]
  444. median_index = statistics.median(indices)
  445. body_bbox = next((block['bbox'] for block in blocks if block.get('type') == body_type), [])
  446. return {
  447. 'type': block_type,
  448. 'bbox': body_bbox,
  449. 'blocks': blocks,
  450. 'index': median_index,
  451. }
  452. def revert_group_blocks(blocks):
  453. image_groups = {}
  454. table_groups = {}
  455. new_blocks = []
  456. for block in blocks:
  457. if block['type'] in [BlockType.ImageBody, BlockType.ImageCaption, BlockType.ImageFootnote]:
  458. group_id = block['group_id']
  459. if group_id not in image_groups:
  460. image_groups[group_id] = []
  461. image_groups[group_id].append(block)
  462. elif block['type'] in [BlockType.TableBody, BlockType.TableCaption, BlockType.TableFootnote]:
  463. group_id = block['group_id']
  464. if group_id not in table_groups:
  465. table_groups[group_id] = []
  466. table_groups[group_id].append(block)
  467. else:
  468. new_blocks.append(block)
  469. for group_id, blocks in image_groups.items():
  470. new_blocks.append(process_block_list(blocks, BlockType.ImageBody, BlockType.Image))
  471. for group_id, blocks in table_groups.items():
  472. new_blocks.append(process_block_list(blocks, BlockType.TableBody, BlockType.Table))
  473. return new_blocks
  474. def remove_outside_spans(spans, all_bboxes, all_discarded_blocks):
  475. def get_block_bboxes(blocks, block_type_list):
  476. return [block[0:4] for block in blocks if block[7] in block_type_list]
  477. image_bboxes = get_block_bboxes(all_bboxes, [BlockType.ImageBody])
  478. table_bboxes = get_block_bboxes(all_bboxes, [BlockType.TableBody])
  479. other_block_type = []
  480. for block_type in BlockType.__dict__.values():
  481. if not isinstance(block_type, str):
  482. continue
  483. if block_type not in [BlockType.ImageBody, BlockType.TableBody]:
  484. other_block_type.append(block_type)
  485. other_block_bboxes = get_block_bboxes(all_bboxes, other_block_type)
  486. discarded_block_bboxes = get_block_bboxes(all_discarded_blocks, [BlockType.Discarded])
  487. new_spans = []
  488. for span in spans:
  489. span_bbox = span['bbox']
  490. span_type = span['type']
  491. if any(calculate_overlap_area_in_bbox1_area_ratio(span_bbox, block_bbox) > 0.4 for block_bbox in
  492. discarded_block_bboxes):
  493. new_spans.append(span)
  494. continue
  495. if span_type == ContentType.Image:
  496. if any(calculate_overlap_area_in_bbox1_area_ratio(span_bbox, block_bbox) > 0.5 for block_bbox in
  497. image_bboxes):
  498. new_spans.append(span)
  499. elif span_type == ContentType.Table:
  500. if any(calculate_overlap_area_in_bbox1_area_ratio(span_bbox, block_bbox) > 0.5 for block_bbox in
  501. table_bboxes):
  502. new_spans.append(span)
  503. else:
  504. if any(calculate_overlap_area_in_bbox1_area_ratio(span_bbox, block_bbox) > 0.5 for block_bbox in
  505. other_block_bboxes):
  506. new_spans.append(span)
  507. return new_spans
  508. def parse_page_core(
  509. page_doc: PageableData, magic_model, page_id, pdf_bytes_md5, imageWriter, parse_mode, lang
  510. ):
  511. need_drop = False
  512. drop_reason = []
  513. """从magic_model对象中获取后面会用到的区块信息"""
  514. img_groups = magic_model.get_imgs_v2(page_id)
  515. table_groups = magic_model.get_tables_v2(page_id)
  516. """对image和table的区块分组"""
  517. img_body_blocks, img_caption_blocks, img_footnote_blocks = process_groups(
  518. img_groups, 'image_body', 'image_caption_list', 'image_footnote_list'
  519. )
  520. table_body_blocks, table_caption_blocks, table_footnote_blocks = process_groups(
  521. table_groups, 'table_body', 'table_caption_list', 'table_footnote_list'
  522. )
  523. discarded_blocks = magic_model.get_discarded(page_id)
  524. text_blocks = magic_model.get_text_blocks(page_id)
  525. title_blocks = magic_model.get_title_blocks(page_id)
  526. inline_equations, interline_equations, interline_equation_blocks = (
  527. magic_model.get_equations(page_id)
  528. )
  529. page_w, page_h = magic_model.get_page_size(page_id)
  530. """将所有区块的bbox整理到一起"""
  531. # interline_equation_blocks参数不够准,后面切换到interline_equations上
  532. interline_equation_blocks = []
  533. if len(interline_equation_blocks) > 0:
  534. all_bboxes, all_discarded_blocks = ocr_prepare_bboxes_for_layout_split_v2(
  535. img_body_blocks, img_caption_blocks, img_footnote_blocks,
  536. table_body_blocks, table_caption_blocks, table_footnote_blocks,
  537. discarded_blocks,
  538. text_blocks,
  539. title_blocks,
  540. interline_equation_blocks,
  541. page_w,
  542. page_h,
  543. )
  544. else:
  545. all_bboxes, all_discarded_blocks = ocr_prepare_bboxes_for_layout_split_v2(
  546. img_body_blocks, img_caption_blocks, img_footnote_blocks,
  547. table_body_blocks, table_caption_blocks, table_footnote_blocks,
  548. discarded_blocks,
  549. text_blocks,
  550. title_blocks,
  551. interline_equations,
  552. page_w,
  553. page_h,
  554. )
  555. """获取所有的spans信息"""
  556. spans = magic_model.get_all_spans(page_id)
  557. """在删除重复span之前,应该通过image_body和table_body的block过滤一下image和table的span"""
  558. """顺便删除大水印并保留abandon的span"""
  559. spans = remove_outside_spans(spans, all_bboxes, all_discarded_blocks)
  560. """删除重叠spans中置信度较低的那些"""
  561. spans, dropped_spans_by_confidence = remove_overlaps_low_confidence_spans(spans)
  562. """删除重叠spans中较小的那些"""
  563. spans, dropped_spans_by_span_overlap = remove_overlaps_min_spans(spans)
  564. """根据parse_mode,构造spans,主要是文本类的字符填充"""
  565. if parse_mode == SupportedPdfParseMethod.TXT:
  566. """使用新版本的混合ocr方案."""
  567. spans = txt_spans_extract_v2(page_doc, spans, all_bboxes, all_discarded_blocks, lang)
  568. elif parse_mode == SupportedPdfParseMethod.OCR:
  569. pass
  570. else:
  571. raise Exception('parse_mode must be txt or ocr')
  572. """先处理不需要排版的discarded_blocks"""
  573. discarded_block_with_spans, spans = fill_spans_in_blocks(
  574. all_discarded_blocks, spans, 0.4
  575. )
  576. fix_discarded_blocks = fix_discarded_block(discarded_block_with_spans)
  577. """如果当前页面没有有效的bbox则跳过"""
  578. if len(all_bboxes) == 0:
  579. logger.warning(f'skip this page, not found useful bbox, page_id: {page_id}')
  580. return ocr_construct_page_component_v2(
  581. [],
  582. [],
  583. page_id,
  584. page_w,
  585. page_h,
  586. [],
  587. [],
  588. [],
  589. interline_equations,
  590. fix_discarded_blocks,
  591. need_drop,
  592. drop_reason,
  593. )
  594. """对image和table截图"""
  595. spans = ocr_cut_image_and_table(
  596. spans, page_doc, page_id, pdf_bytes_md5, imageWriter
  597. )
  598. """span填充进block"""
  599. block_with_spans, spans = fill_spans_in_blocks(all_bboxes, spans, 0.5)
  600. """对block进行fix操作"""
  601. fix_blocks = fix_block_spans_v2(block_with_spans)
  602. """获取所有line并计算正文line的高度"""
  603. line_height = get_line_height(fix_blocks)
  604. """获取所有line并对line排序"""
  605. sorted_bboxes = sort_lines_by_model(fix_blocks, page_w, page_h, line_height)
  606. """根据line的中位数算block的序列关系"""
  607. fix_blocks = cal_block_index(fix_blocks, sorted_bboxes)
  608. """将image和table的block还原回group形式参与后续流程"""
  609. fix_blocks = revert_group_blocks(fix_blocks)
  610. """重排block"""
  611. sorted_blocks = sorted(fix_blocks, key=lambda b: b['index'])
  612. """获取QA需要外置的list"""
  613. images, tables, interline_equations = get_qa_need_list_v2(sorted_blocks)
  614. """构造pdf_info_dict"""
  615. page_info = ocr_construct_page_component_v2(
  616. sorted_blocks,
  617. [],
  618. page_id,
  619. page_w,
  620. page_h,
  621. [],
  622. images,
  623. tables,
  624. interline_equations,
  625. fix_discarded_blocks,
  626. need_drop,
  627. drop_reason,
  628. )
  629. return page_info
  630. def pdf_parse_union(
  631. model_list,
  632. dataset: Dataset,
  633. imageWriter,
  634. parse_mode,
  635. start_page_id=0,
  636. end_page_id=None,
  637. debug_mode=False,
  638. lang=None,
  639. ):
  640. pdf_bytes_md5 = compute_md5(dataset.data_bits())
  641. """初始化空的pdf_info_dict"""
  642. pdf_info_dict = {}
  643. """用model_list和docs对象初始化magic_model"""
  644. magic_model = MagicModel(model_list, dataset)
  645. """根据输入的起始范围解析pdf"""
  646. # end_page_id = end_page_id if end_page_id else len(pdf_docs) - 1
  647. end_page_id = (
  648. end_page_id
  649. if end_page_id is not None and end_page_id >= 0
  650. else len(dataset) - 1
  651. )
  652. if end_page_id > len(dataset) - 1:
  653. logger.warning('end_page_id is out of range, use pdf_docs length')
  654. end_page_id = len(dataset) - 1
  655. """初始化启动时间"""
  656. start_time = time.time()
  657. for page_id, page in enumerate(dataset):
  658. """debug时输出每页解析的耗时."""
  659. if debug_mode:
  660. time_now = time.time()
  661. logger.info(
  662. f'page_id: {page_id}, last_page_cost_time: {round(time.time() - start_time, 2)}'
  663. )
  664. start_time = time_now
  665. """解析pdf中的每一页"""
  666. if start_page_id <= page_id <= end_page_id:
  667. page_info = parse_page_core(
  668. page, magic_model, page_id, pdf_bytes_md5, imageWriter, parse_mode, lang
  669. )
  670. else:
  671. page_info = page.get_page_info()
  672. page_w = page_info.w
  673. page_h = page_info.h
  674. page_info = ocr_construct_page_component_v2(
  675. [], [], page_id, page_w, page_h, [], [], [], [], [], True, 'skip page'
  676. )
  677. pdf_info_dict[f'page_{page_id}'] = page_info
  678. """分段"""
  679. para_split(pdf_info_dict)
  680. """dict转list"""
  681. pdf_info_list = dict_to_list(pdf_info_dict)
  682. new_pdf_info_dict = {
  683. 'pdf_info': pdf_info_list,
  684. }
  685. clean_memory()
  686. return new_pdf_info_dict
  687. if __name__ == '__main__':
  688. pass