magic_model.py 24 KB

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  1. import json
  2. import math
  3. from magic_pdf.libs.commons import fitz
  4. from loguru import logger
  5. from magic_pdf.libs.commons import join_path
  6. from magic_pdf.libs.coordinate_transform import get_scale_ratio
  7. from magic_pdf.libs.ocr_content_type import ContentType
  8. from magic_pdf.rw.AbsReaderWriter import AbsReaderWriter
  9. from magic_pdf.rw.DiskReaderWriter import DiskReaderWriter
  10. from magic_pdf.libs.math import float_gt
  11. from magic_pdf.libs.boxbase import (
  12. _is_in,
  13. bbox_relative_pos,
  14. bbox_distance,
  15. _is_part_overlap,
  16. calculate_overlap_area_in_bbox1_area_ratio, calculate_iou,
  17. )
  18. from magic_pdf.libs.ModelBlockTypeEnum import ModelBlockTypeEnum
  19. CAPATION_OVERLAP_AREA_RATIO = 0.6
  20. class MagicModel:
  21. """
  22. 每个函数没有得到元素的时候返回空list
  23. """
  24. def __fix_axis(self):
  25. for model_page_info in self.__model_list:
  26. need_remove_list = []
  27. page_no = model_page_info["page_info"]["page_no"]
  28. horizontal_scale_ratio, vertical_scale_ratio = get_scale_ratio(
  29. model_page_info, self.__docs[page_no]
  30. )
  31. layout_dets = model_page_info["layout_dets"]
  32. for layout_det in layout_dets:
  33. x0, y0, _, _, x1, y1, _, _ = layout_det["poly"]
  34. bbox = [
  35. int(x0 / horizontal_scale_ratio),
  36. int(y0 / vertical_scale_ratio),
  37. int(x1 / horizontal_scale_ratio),
  38. int(y1 / vertical_scale_ratio),
  39. ]
  40. layout_det["bbox"] = bbox
  41. # 删除高度或者宽度小于等于0的spans
  42. if bbox[2] - bbox[0] <= 0 or bbox[3] - bbox[1] <= 0:
  43. need_remove_list.append(layout_det)
  44. for need_remove in need_remove_list:
  45. layout_dets.remove(need_remove)
  46. def __fix_by_remove_low_confidence(self):
  47. for model_page_info in self.__model_list:
  48. need_remove_list = []
  49. layout_dets = model_page_info["layout_dets"]
  50. for layout_det in layout_dets:
  51. if layout_det["score"] <= 0.05:
  52. need_remove_list.append(layout_det)
  53. else:
  54. continue
  55. for need_remove in need_remove_list:
  56. layout_dets.remove(need_remove)
  57. def __fix_by_remove_high_iou_and_low_confidence(self):
  58. for model_page_info in self.__model_list:
  59. need_remove_list = []
  60. layout_dets = model_page_info["layout_dets"]
  61. for layout_det1 in layout_dets:
  62. for layout_det2 in layout_dets:
  63. if layout_det1 == layout_det2:
  64. continue
  65. if layout_det1["category_id"] in [0,1,2,3,4,5,6,7,8,9] and layout_det2["category_id"] in [0,1,2,3,4,5,6,7,8,9]:
  66. if calculate_iou(layout_det1['bbox'], layout_det2['bbox']) > 0.9:
  67. if layout_det1['score'] < layout_det2['score']:
  68. layout_det_need_remove = layout_det1
  69. else:
  70. layout_det_need_remove = layout_det2
  71. if layout_det_need_remove not in need_remove_list:
  72. need_remove_list.append(layout_det_need_remove)
  73. else:
  74. continue
  75. else:
  76. continue
  77. for need_remove in need_remove_list:
  78. layout_dets.remove(need_remove)
  79. def __init__(self, model_list: list, docs: fitz.Document):
  80. self.__model_list = model_list
  81. self.__docs = docs
  82. '''为所有模型数据添加bbox信息(缩放,poly->bbox)'''
  83. self.__fix_axis()
  84. '''删除置信度特别低的模型数据(<0.05),提高质量'''
  85. self.__fix_by_remove_low_confidence()
  86. '''删除高iou(>0.9)数据中置信度较低的那个'''
  87. self.__fix_by_remove_high_iou_and_low_confidence()
  88. def __reduct_overlap(self, bboxes):
  89. N = len(bboxes)
  90. keep = [True] * N
  91. for i in range(N):
  92. for j in range(N):
  93. if i == j:
  94. continue
  95. if _is_in(bboxes[i]["bbox"], bboxes[j]["bbox"]):
  96. keep[i] = False
  97. return [bboxes[i] for i in range(N) if keep[i]]
  98. def __tie_up_category_by_distance(
  99. self, page_no, subject_category_id, object_category_id
  100. ):
  101. """
  102. 假定每个 subject 最多有一个 object (可以有多个相邻的 object 合并为单个 object),每个 object 只能属于一个 subject
  103. """
  104. ret = []
  105. MAX_DIS_OF_POINT = 10**9 + 7
  106. def expand_bbox(bbox1, bbox2):
  107. x0 = min(bbox1[0], bbox2[0])
  108. y0 = min(bbox1[1], bbox2[1])
  109. x1 = max(bbox1[2], bbox2[2])
  110. y1 = max(bbox1[3], bbox2[3])
  111. return [x0, y0, x1, y1]
  112. def get_bbox_area(bbox):
  113. return abs(bbox[2] - bbox[0]) * abs(bbox[3] - bbox[1])
  114. # subject 和 object 的 bbox 会合并成一个大的 bbox (named: merged bbox)。 筛选出所有和 merged bbox 有 overlap 且 overlap 面积大于 object 的面积的 subjects。
  115. # 再求出筛选出的 subjects 和 object 的最短距离!
  116. def may_find_other_nearest_bbox(subject_idx, object_idx):
  117. ret = float("inf")
  118. x0 = min(
  119. all_bboxes[subject_idx]["bbox"][0], all_bboxes[object_idx]["bbox"][0]
  120. )
  121. y0 = min(
  122. all_bboxes[subject_idx]["bbox"][1], all_bboxes[object_idx]["bbox"][1]
  123. )
  124. x1 = max(
  125. all_bboxes[subject_idx]["bbox"][2], all_bboxes[object_idx]["bbox"][2]
  126. )
  127. y1 = max(
  128. all_bboxes[subject_idx]["bbox"][3], all_bboxes[object_idx]["bbox"][3]
  129. )
  130. object_area = abs(
  131. all_bboxes[object_idx]["bbox"][2] - all_bboxes[object_idx]["bbox"][0]
  132. ) * abs(
  133. all_bboxes[object_idx]["bbox"][3] - all_bboxes[object_idx]["bbox"][1]
  134. )
  135. for i in range(len(all_bboxes)):
  136. if (
  137. i == subject_idx
  138. or all_bboxes[i]["category_id"] != subject_category_id
  139. ):
  140. continue
  141. if _is_part_overlap([x0, y0, x1, y1], all_bboxes[i]["bbox"]) or _is_in(
  142. all_bboxes[i]["bbox"], [x0, y0, x1, y1]
  143. ):
  144. i_area = abs(
  145. all_bboxes[i]["bbox"][2] - all_bboxes[i]["bbox"][0]
  146. ) * abs(all_bboxes[i]["bbox"][3] - all_bboxes[i]["bbox"][1])
  147. if i_area >= object_area:
  148. ret = min(float("inf"), dis[i][object_idx])
  149. return ret
  150. subjects = self.__reduct_overlap(
  151. list(
  152. map(
  153. lambda x: {"bbox": x["bbox"], "score": x["score"]},
  154. filter(
  155. lambda x: x["category_id"] == subject_category_id,
  156. self.__model_list[page_no]["layout_dets"],
  157. ),
  158. )
  159. )
  160. )
  161. objects = self.__reduct_overlap(
  162. list(
  163. map(
  164. lambda x: {"bbox": x["bbox"], "score": x["score"]},
  165. filter(
  166. lambda x: x["category_id"] == object_category_id,
  167. self.__model_list[page_no]["layout_dets"],
  168. ),
  169. )
  170. )
  171. )
  172. subject_object_relation_map = {}
  173. subjects.sort(
  174. key=lambda x: x["bbox"][0] ** 2 + x["bbox"][1] ** 2
  175. ) # get the distance !
  176. all_bboxes = []
  177. for v in subjects:
  178. all_bboxes.append(
  179. {
  180. "category_id": subject_category_id,
  181. "bbox": v["bbox"],
  182. "score": v["score"],
  183. }
  184. )
  185. for v in objects:
  186. all_bboxes.append(
  187. {
  188. "category_id": object_category_id,
  189. "bbox": v["bbox"],
  190. "score": v["score"],
  191. }
  192. )
  193. N = len(all_bboxes)
  194. dis = [[MAX_DIS_OF_POINT] * N for _ in range(N)]
  195. for i in range(N):
  196. for j in range(i):
  197. if (
  198. all_bboxes[i]["category_id"] == subject_category_id
  199. and all_bboxes[j]["category_id"] == subject_category_id
  200. ):
  201. continue
  202. dis[i][j] = bbox_distance(all_bboxes[i]["bbox"], all_bboxes[j]["bbox"])
  203. dis[j][i] = dis[i][j]
  204. used = set()
  205. for i in range(N):
  206. # 求第 i 个 subject 所关联的 object
  207. if all_bboxes[i]["category_id"] != subject_category_id:
  208. continue
  209. seen = set()
  210. candidates = []
  211. arr = []
  212. for j in range(N):
  213. pos_flag_count = sum(
  214. list(
  215. map(
  216. lambda x: 1 if x else 0,
  217. bbox_relative_pos(
  218. all_bboxes[i]["bbox"], all_bboxes[j]["bbox"]
  219. ),
  220. )
  221. )
  222. )
  223. if pos_flag_count > 1:
  224. continue
  225. if (
  226. all_bboxes[j]["category_id"] != object_category_id
  227. or j in used
  228. or dis[i][j] == MAX_DIS_OF_POINT
  229. ):
  230. continue
  231. left, right, _, _ = bbox_relative_pos(all_bboxes[i]["bbox"], all_bboxes[j]["bbox"]) # 由 pos_flag_count 相关逻辑保证本段逻辑准确性
  232. if left or right:
  233. one_way_dis = all_bboxes[i]["bbox"][2] - all_bboxes[i]["bbox"][0]
  234. else:
  235. one_way_dis = all_bboxes[i]["bbox"][3] - all_bboxes[i]["bbox"][1]
  236. if dis[i][j] > one_way_dis:
  237. continue
  238. arr.append((dis[i][j], j))
  239. arr.sort(key=lambda x: x[0])
  240. if len(arr) > 0:
  241. # bug: 离该subject 最近的 object 可能跨越了其它的 subject 。比如 [this subect] [some sbuject] [the nearest objec of subject]
  242. if may_find_other_nearest_bbox(i, arr[0][1]) >= arr[0][0]:
  243. candidates.append(arr[0][1])
  244. seen.add(arr[0][1])
  245. # 已经获取初始种子
  246. for j in set(candidates):
  247. tmp = []
  248. for k in range(i + 1, N):
  249. pos_flag_count = sum(
  250. list(
  251. map(
  252. lambda x: 1 if x else 0,
  253. bbox_relative_pos(
  254. all_bboxes[j]["bbox"], all_bboxes[k]["bbox"]
  255. ),
  256. )
  257. )
  258. )
  259. if pos_flag_count > 1:
  260. continue
  261. if (
  262. all_bboxes[k]["category_id"] != object_category_id
  263. or k in used
  264. or k in seen
  265. or dis[j][k] == MAX_DIS_OF_POINT
  266. ):
  267. continue
  268. is_nearest = True
  269. for l in range(i + 1, N):
  270. if l in (j, k) or l in used or l in seen:
  271. continue
  272. if not float_gt(dis[l][k], dis[j][k]):
  273. is_nearest = False
  274. break
  275. if is_nearest:
  276. tmp.append(k)
  277. seen.add(k)
  278. candidates = tmp
  279. if len(candidates) == 0:
  280. break
  281. # 已经获取到某个 figure 下所有的最靠近的 captions,以及最靠近这些 captions 的 captions 。
  282. # 先扩一下 bbox,
  283. x0s = [all_bboxes[idx]["bbox"][0] for idx in seen] + [
  284. all_bboxes[i]["bbox"][0]
  285. ]
  286. y0s = [all_bboxes[idx]["bbox"][1] for idx in seen] + [
  287. all_bboxes[i]["bbox"][1]
  288. ]
  289. x1s = [all_bboxes[idx]["bbox"][2] for idx in seen] + [
  290. all_bboxes[i]["bbox"][2]
  291. ]
  292. y1s = [all_bboxes[idx]["bbox"][3] for idx in seen] + [
  293. all_bboxes[i]["bbox"][3]
  294. ]
  295. ox0, oy0, ox1, oy1 = min(x0s), min(y0s), max(x1s), max(y1s)
  296. ix0, iy0, ix1, iy1 = all_bboxes[i]["bbox"]
  297. # 分成了 4 个截取空间,需要计算落在每个截取空间下 objects 合并后占据的矩形面积
  298. caption_poses = [
  299. [ox0, oy0, ix0, oy1],
  300. [ox0, oy0, ox1, iy0],
  301. [ox0, iy1, ox1, oy1],
  302. [ix1, oy0, ox1, oy1],
  303. ]
  304. caption_areas = []
  305. for bbox in caption_poses:
  306. embed_arr = []
  307. for idx in seen:
  308. if (
  309. calculate_overlap_area_in_bbox1_area_ratio(
  310. all_bboxes[idx]["bbox"], bbox
  311. )
  312. > CAPATION_OVERLAP_AREA_RATIO
  313. ):
  314. embed_arr.append(idx)
  315. if len(embed_arr) > 0:
  316. embed_x0 = min([all_bboxes[idx]["bbox"][0] for idx in embed_arr])
  317. embed_y0 = min([all_bboxes[idx]["bbox"][1] for idx in embed_arr])
  318. embed_x1 = max([all_bboxes[idx]["bbox"][2] for idx in embed_arr])
  319. embed_y1 = max([all_bboxes[idx]["bbox"][3] for idx in embed_arr])
  320. caption_areas.append(
  321. int(abs(embed_x1 - embed_x0) * abs(embed_y1 - embed_y0))
  322. )
  323. else:
  324. caption_areas.append(0)
  325. subject_object_relation_map[i] = []
  326. if max(caption_areas) > 0:
  327. max_area_idx = caption_areas.index(max(caption_areas))
  328. caption_bbox = caption_poses[max_area_idx]
  329. for j in seen:
  330. if (
  331. calculate_overlap_area_in_bbox1_area_ratio(
  332. all_bboxes[j]["bbox"], caption_bbox
  333. )
  334. > CAPATION_OVERLAP_AREA_RATIO
  335. ):
  336. used.add(j)
  337. subject_object_relation_map[i].append(j)
  338. for i in sorted(subject_object_relation_map.keys()):
  339. result = {
  340. "subject_body": all_bboxes[i]["bbox"],
  341. "all": all_bboxes[i]["bbox"],
  342. "score": all_bboxes[i]["score"],
  343. }
  344. if len(subject_object_relation_map[i]) > 0:
  345. x0 = min(
  346. [all_bboxes[j]["bbox"][0] for j in subject_object_relation_map[i]]
  347. )
  348. y0 = min(
  349. [all_bboxes[j]["bbox"][1] for j in subject_object_relation_map[i]]
  350. )
  351. x1 = max(
  352. [all_bboxes[j]["bbox"][2] for j in subject_object_relation_map[i]]
  353. )
  354. y1 = max(
  355. [all_bboxes[j]["bbox"][3] for j in subject_object_relation_map[i]]
  356. )
  357. result["object_body"] = [x0, y0, x1, y1]
  358. result["all"] = [
  359. min(x0, all_bboxes[i]["bbox"][0]),
  360. min(y0, all_bboxes[i]["bbox"][1]),
  361. max(x1, all_bboxes[i]["bbox"][2]),
  362. max(y1, all_bboxes[i]["bbox"][3]),
  363. ]
  364. ret.append(result)
  365. total_subject_object_dis = 0
  366. # 计算已经配对的 distance 距离
  367. for i in subject_object_relation_map.keys():
  368. for j in subject_object_relation_map[i]:
  369. total_subject_object_dis += bbox_distance(
  370. all_bboxes[i]["bbox"], all_bboxes[j]["bbox"]
  371. )
  372. # 计算未匹配的 subject 和 object 的距离(非精确版)
  373. with_caption_subject = set(
  374. [
  375. key
  376. for key in subject_object_relation_map.keys()
  377. if len(subject_object_relation_map[i]) > 0
  378. ]
  379. )
  380. for i in range(N):
  381. if all_bboxes[i]["category_id"] != object_category_id or i in used:
  382. continue
  383. candidates = []
  384. for j in range(N):
  385. if (
  386. all_bboxes[j]["category_id"] != subject_category_id
  387. or j in with_caption_subject
  388. ):
  389. continue
  390. candidates.append((dis[i][j], j))
  391. if len(candidates) > 0:
  392. candidates.sort(key=lambda x: x[0])
  393. total_subject_object_dis += candidates[0][1]
  394. with_caption_subject.add(j)
  395. return ret, total_subject_object_dis
  396. def get_imgs(self, page_no: int): # @许瑞
  397. records, _ = self.__tie_up_category_by_distance(page_no, 3, 4)
  398. return [
  399. {
  400. "bbox": record["all"],
  401. "img_body_bbox": record["subject_body"],
  402. "img_caption_bbox": record.get("object_body", None),
  403. "score": record["score"],
  404. }
  405. for record in records
  406. ]
  407. def get_tables(
  408. self, page_no: int
  409. ) -> list: # 3个坐标, caption, table主体,table-note
  410. with_captions, _ = self.__tie_up_category_by_distance(page_no, 5, 6)
  411. with_footnotes, _ = self.__tie_up_category_by_distance(page_no, 5, 7)
  412. ret = []
  413. N, M = len(with_captions), len(with_footnotes)
  414. assert N == M
  415. for i in range(N):
  416. record = {
  417. "score": with_captions[i]["score"],
  418. "table_caption_bbox": with_captions[i].get("object_body", None),
  419. "table_body_bbox": with_captions[i]["subject_body"],
  420. "table_footnote_bbox": with_footnotes[i].get("object_body", None),
  421. }
  422. x0 = min(with_captions[i]["all"][0], with_footnotes[i]["all"][0])
  423. y0 = min(with_captions[i]["all"][1], with_footnotes[i]["all"][1])
  424. x1 = max(with_captions[i]["all"][2], with_footnotes[i]["all"][2])
  425. y1 = max(with_captions[i]["all"][3], with_footnotes[i]["all"][3])
  426. record["bbox"] = [x0, y0, x1, y1]
  427. ret.append(record)
  428. return ret
  429. def get_equations(self, page_no: int) -> list: # 有坐标,也有字
  430. inline_equations = self.__get_blocks_by_type(
  431. ModelBlockTypeEnum.EMBEDDING.value, page_no, ["latex"]
  432. )
  433. interline_equations = self.__get_blocks_by_type(
  434. ModelBlockTypeEnum.ISOLATED.value, page_no, ["latex"]
  435. )
  436. interline_equations_blocks = self.__get_blocks_by_type(
  437. ModelBlockTypeEnum.ISOLATE_FORMULA.value, page_no
  438. )
  439. return inline_equations, interline_equations, interline_equations_blocks
  440. def get_discarded(self, page_no: int) -> list: # 自研模型,只有坐标
  441. blocks = self.__get_blocks_by_type(ModelBlockTypeEnum.ABANDON.value, page_no)
  442. return blocks
  443. def get_text_blocks(self, page_no: int) -> list: # 自研模型搞的,只有坐标,没有字
  444. blocks = self.__get_blocks_by_type(ModelBlockTypeEnum.PLAIN_TEXT.value, page_no)
  445. return blocks
  446. def get_title_blocks(self, page_no: int) -> list: # 自研模型,只有坐标,没字
  447. blocks = self.__get_blocks_by_type(ModelBlockTypeEnum.TITLE.value, page_no)
  448. return blocks
  449. def get_ocr_text(self, page_no: int) -> list: # paddle 搞的,有字也有坐标
  450. text_spans = []
  451. model_page_info = self.__model_list[page_no]
  452. layout_dets = model_page_info["layout_dets"]
  453. for layout_det in layout_dets:
  454. if layout_det["category_id"] == "15":
  455. span = {
  456. "bbox": layout_det["bbox"],
  457. "content": layout_det["text"],
  458. }
  459. text_spans.append(span)
  460. return text_spans
  461. def get_all_spans(self, page_no: int) -> list:
  462. def remove_duplicate_spans(spans):
  463. new_spans = []
  464. for span in spans:
  465. if not any(span == existing_span for existing_span in new_spans):
  466. new_spans.append(span)
  467. return new_spans
  468. all_spans = []
  469. model_page_info = self.__model_list[page_no]
  470. layout_dets = model_page_info["layout_dets"]
  471. allow_category_id_list = [3, 5, 13, 14, 15]
  472. """当成span拼接的"""
  473. # 3: 'image', # 图片
  474. # 5: 'table', # 表格
  475. # 13: 'inline_equation', # 行内公式
  476. # 14: 'interline_equation', # 行间公式
  477. # 15: 'text', # ocr识别文本
  478. for layout_det in layout_dets:
  479. category_id = layout_det["category_id"]
  480. if category_id in allow_category_id_list:
  481. span = {
  482. "bbox": layout_det["bbox"],
  483. "score": layout_det["score"]
  484. }
  485. if category_id == 3:
  486. span["type"] = ContentType.Image
  487. elif category_id == 5:
  488. span["type"] = ContentType.Table
  489. elif category_id == 13:
  490. span["content"] = layout_det["latex"]
  491. span["type"] = ContentType.InlineEquation
  492. elif category_id == 14:
  493. span["content"] = layout_det["latex"]
  494. span["type"] = ContentType.InterlineEquation
  495. elif category_id == 15:
  496. span["content"] = layout_det["text"]
  497. span["type"] = ContentType.Text
  498. all_spans.append(span)
  499. return remove_duplicate_spans(all_spans)
  500. def get_page_size(self, page_no: int): # 获取页面宽高
  501. # 获取当前页的page对象
  502. page = self.__docs[page_no]
  503. # 获取当前页的宽高
  504. page_w = page.rect.width
  505. page_h = page.rect.height
  506. return page_w, page_h
  507. def __get_blocks_by_type(
  508. self, type: int, page_no: int, extra_col: list[str] = []
  509. ) -> list:
  510. blocks = []
  511. for page_dict in self.__model_list:
  512. layout_dets = page_dict.get("layout_dets", [])
  513. page_info = page_dict.get("page_info", {})
  514. page_number = page_info.get("page_no", -1)
  515. if page_no != page_number:
  516. continue
  517. for item in layout_dets:
  518. category_id = item.get("category_id", -1)
  519. bbox = item.get("bbox", None)
  520. if category_id == type:
  521. block = {
  522. "bbox": bbox,
  523. "score": item.get("score"),
  524. }
  525. for col in extra_col:
  526. block[col] = item.get(col, None)
  527. blocks.append(block)
  528. return blocks
  529. def get_model_list(self, page_no):
  530. return self.__model_list[page_no]
  531. if __name__ == "__main__":
  532. drw = DiskReaderWriter(r"D:/project/20231108code-clean")
  533. if 0:
  534. pdf_file_path = r"linshixuqiu\19983-00.pdf"
  535. model_file_path = r"linshixuqiu\19983-00_new.json"
  536. pdf_bytes = drw.read(pdf_file_path, AbsReaderWriter.MODE_BIN)
  537. model_json_txt = drw.read(model_file_path, AbsReaderWriter.MODE_TXT)
  538. model_list = json.loads(model_json_txt)
  539. write_path = r"D:\project\20231108code-clean\linshixuqiu\19983-00"
  540. img_bucket_path = "imgs"
  541. img_writer = DiskReaderWriter(join_path(write_path, img_bucket_path))
  542. pdf_docs = fitz.open("pdf", pdf_bytes)
  543. magic_model = MagicModel(model_list, pdf_docs)
  544. if 1:
  545. model_list = json.loads(
  546. drw.read("/opt/data/pdf/20240418/j.chroma.2009.03.042.json")
  547. )
  548. pdf_bytes = drw.read(
  549. "/opt/data/pdf/20240418/j.chroma.2009.03.042.pdf", AbsReaderWriter.MODE_BIN
  550. )
  551. pdf_docs = fitz.open("pdf", pdf_bytes)
  552. magic_model = MagicModel(model_list, pdf_docs)
  553. for i in range(7):
  554. print(magic_model.get_imgs(i))