batch_analyze.py 12 KB

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  1. import time
  2. import cv2
  3. import numpy as np
  4. import torch
  5. from loguru import logger
  6. from PIL import Image
  7. from magic_pdf.config.constants import MODEL_NAME
  8. # from magic_pdf.config.exceptions import CUDA_NOT_AVAILABLE
  9. # from magic_pdf.data.dataset import Dataset
  10. # from magic_pdf.libs.clean_memory import clean_memory
  11. # from magic_pdf.libs.config_reader import get_device
  12. # from magic_pdf.model.doc_analyze_by_custom_model import ModelSingleton
  13. from magic_pdf.model.pdf_extract_kit import CustomPEKModel
  14. from magic_pdf.model.sub_modules.model_utils import (
  15. clean_vram, crop_img, get_res_list_from_layout_res)
  16. from magic_pdf.model.sub_modules.ocr.paddleocr.ocr_utils import (
  17. get_adjusted_mfdetrec_res, get_ocr_result_list)
  18. # from magic_pdf.operators.models import InferenceResult
  19. YOLO_LAYOUT_BASE_BATCH_SIZE = 1
  20. MFD_BASE_BATCH_SIZE = 1
  21. MFR_BASE_BATCH_SIZE = 16
  22. class BatchAnalyze:
  23. def __init__(self, model: CustomPEKModel, batch_ratio: int):
  24. self.model = model
  25. self.batch_ratio = batch_ratio
  26. def __call__(self, images: list) -> list:
  27. images_layout_res = []
  28. layout_start_time = time.time()
  29. if self.model.layout_model_name == MODEL_NAME.LAYOUTLMv3:
  30. # layoutlmv3
  31. for image in images:
  32. layout_res = self.model.layout_model(image, ignore_catids=[])
  33. images_layout_res.append(layout_res)
  34. elif self.model.layout_model_name == MODEL_NAME.DocLayout_YOLO:
  35. # doclayout_yolo
  36. layout_images = []
  37. modified_images = []
  38. for image_index, image in enumerate(images):
  39. pil_img = Image.fromarray(image)
  40. # width, height = pil_img.size
  41. # if height > width:
  42. # input_res = {'poly': [0, 0, width, 0, width, height, 0, height]}
  43. # new_image, useful_list = crop_img(
  44. # input_res, pil_img, crop_paste_x=width // 2, crop_paste_y=0
  45. # )
  46. # layout_images.append(new_image)
  47. # modified_images.append([image_index, useful_list])
  48. # else:
  49. layout_images.append(pil_img)
  50. images_layout_res += self.model.layout_model.batch_predict(
  51. # layout_images, self.batch_ratio * YOLO_LAYOUT_BASE_BATCH_SIZE
  52. layout_images, YOLO_LAYOUT_BASE_BATCH_SIZE
  53. )
  54. for image_index, useful_list in modified_images:
  55. for res in images_layout_res[image_index]:
  56. for i in range(len(res['poly'])):
  57. if i % 2 == 0:
  58. res['poly'][i] = (
  59. res['poly'][i] - useful_list[0] + useful_list[2]
  60. )
  61. else:
  62. res['poly'][i] = (
  63. res['poly'][i] - useful_list[1] + useful_list[3]
  64. )
  65. logger.info(
  66. f'layout time: {round(time.time() - layout_start_time, 2)}, image num: {len(images)}'
  67. )
  68. if self.model.apply_formula:
  69. # 公式检测
  70. mfd_start_time = time.time()
  71. images_mfd_res = self.model.mfd_model.batch_predict(
  72. # images, self.batch_ratio * MFD_BASE_BATCH_SIZE
  73. images, MFD_BASE_BATCH_SIZE
  74. )
  75. logger.info(
  76. f'mfd time: {round(time.time() - mfd_start_time, 2)}, image num: {len(images)}'
  77. )
  78. # 公式识别
  79. mfr_start_time = time.time()
  80. images_formula_list = self.model.mfr_model.batch_predict(
  81. images_mfd_res,
  82. images,
  83. batch_size=self.batch_ratio * MFR_BASE_BATCH_SIZE,
  84. )
  85. mfr_count = 0
  86. for image_index in range(len(images)):
  87. images_layout_res[image_index] += images_formula_list[image_index]
  88. mfr_count += len(images_formula_list[image_index])
  89. logger.info(
  90. f'mfr time: {round(time.time() - mfr_start_time, 2)}, image num: {mfr_count}'
  91. )
  92. # 清理显存
  93. clean_vram(self.model.device, vram_threshold=8)
  94. ocr_time = 0
  95. ocr_count = 0
  96. table_time = 0
  97. table_count = 0
  98. # reference: magic_pdf/model/doc_analyze_by_custom_model.py:doc_analyze
  99. for index in range(len(images)):
  100. layout_res = images_layout_res[index]
  101. pil_img = Image.fromarray(images[index])
  102. ocr_res_list, table_res_list, single_page_mfdetrec_res = (
  103. get_res_list_from_layout_res(layout_res)
  104. )
  105. # ocr识别
  106. ocr_start = time.time()
  107. # Process each area that requires OCR processing
  108. for res in ocr_res_list:
  109. new_image, useful_list = crop_img(
  110. res, pil_img, crop_paste_x=50, crop_paste_y=50
  111. )
  112. adjusted_mfdetrec_res = get_adjusted_mfdetrec_res(
  113. single_page_mfdetrec_res, useful_list
  114. )
  115. # OCR recognition
  116. new_image = cv2.cvtColor(np.asarray(new_image), cv2.COLOR_RGB2BGR)
  117. if self.model.apply_ocr:
  118. ocr_res = self.model.ocr_model.ocr(
  119. new_image, mfd_res=adjusted_mfdetrec_res
  120. )[0]
  121. else:
  122. ocr_res = self.model.ocr_model.ocr(
  123. new_image, mfd_res=adjusted_mfdetrec_res, rec=False
  124. )[0]
  125. # Integration results
  126. if ocr_res:
  127. ocr_result_list = get_ocr_result_list(ocr_res, useful_list)
  128. layout_res.extend(ocr_result_list)
  129. ocr_time += time.time() - ocr_start
  130. ocr_count += len(ocr_res_list)
  131. # 表格识别 table recognition
  132. if self.model.apply_table:
  133. table_start = time.time()
  134. for res in table_res_list:
  135. new_image, _ = crop_img(res, pil_img)
  136. single_table_start_time = time.time()
  137. html_code = None
  138. if self.model.table_model_name == MODEL_NAME.STRUCT_EQTABLE:
  139. with torch.no_grad():
  140. table_result = self.model.table_model.predict(
  141. new_image, 'html'
  142. )
  143. if len(table_result) > 0:
  144. html_code = table_result[0]
  145. elif self.model.table_model_name == MODEL_NAME.TABLE_MASTER:
  146. html_code = self.model.table_model.img2html(new_image)
  147. elif self.model.table_model_name == MODEL_NAME.RAPID_TABLE:
  148. html_code, table_cell_bboxes, logic_points, elapse = (
  149. self.model.table_model.predict(new_image)
  150. )
  151. run_time = time.time() - single_table_start_time
  152. if run_time > self.model.table_max_time:
  153. logger.warning(
  154. f'table recognition processing exceeds max time {self.model.table_max_time}s'
  155. )
  156. # 判断是否返回正常
  157. if html_code:
  158. expected_ending = html_code.strip().endswith(
  159. '</html>'
  160. ) or html_code.strip().endswith('</table>')
  161. if expected_ending:
  162. res['html'] = html_code
  163. else:
  164. logger.warning(
  165. 'table recognition processing fails, not found expected HTML table end'
  166. )
  167. else:
  168. logger.warning(
  169. 'table recognition processing fails, not get html return'
  170. )
  171. table_time += time.time() - table_start
  172. table_count += len(table_res_list)
  173. if self.model.apply_ocr:
  174. logger.info(f'ocr time: {round(ocr_time, 2)}, image num: {ocr_count}')
  175. else:
  176. logger.info(f'det time: {round(ocr_time, 2)}, image num: {ocr_count}')
  177. if self.model.apply_table:
  178. logger.info(f'table time: {round(table_time, 2)}, image num: {table_count}')
  179. return images_layout_res
  180. # def doc_batch_analyze(
  181. # dataset: Dataset,
  182. # ocr: bool = False,
  183. # show_log: bool = False,
  184. # start_page_id=0,
  185. # end_page_id=None,
  186. # lang=None,
  187. # layout_model=None,
  188. # formula_enable=None,
  189. # table_enable=None,
  190. # batch_ratio: int | None = None,
  191. # ) -> InferenceResult:
  192. # """Perform batch analysis on a document dataset.
  193. #
  194. # Args:
  195. # dataset (Dataset): The dataset containing document pages to be analyzed.
  196. # ocr (bool, optional): Flag to enable OCR (Optical Character Recognition). Defaults to False.
  197. # show_log (bool, optional): Flag to enable logging. Defaults to False.
  198. # start_page_id (int, optional): The starting page ID for analysis. Defaults to 0.
  199. # end_page_id (int, optional): The ending page ID for analysis. Defaults to None, which means analyze till the last page.
  200. # lang (str, optional): Language for OCR. Defaults to None.
  201. # layout_model (optional): Layout model to be used for analysis. Defaults to None.
  202. # formula_enable (optional): Flag to enable formula detection. Defaults to None.
  203. # table_enable (optional): Flag to enable table detection. Defaults to None.
  204. # batch_ratio (int | None, optional): Ratio for batch processing. Defaults to None, which sets it to 1.
  205. #
  206. # Raises:
  207. # CUDA_NOT_AVAILABLE: If CUDA is not available, raises an exception as batch analysis is not supported in CPU mode.
  208. #
  209. # Returns:
  210. # InferenceResult: The result of the batch analysis containing the analyzed data and the dataset.
  211. # """
  212. #
  213. # if not torch.cuda.is_available():
  214. # raise CUDA_NOT_AVAILABLE('batch analyze not support in CPU mode')
  215. #
  216. # lang = None if lang == '' else lang
  217. # # TODO: auto detect batch size
  218. # batch_ratio = 1 if batch_ratio is None else batch_ratio
  219. # end_page_id = end_page_id if end_page_id else len(dataset)
  220. #
  221. # model_manager = ModelSingleton()
  222. # custom_model: CustomPEKModel = model_manager.get_model(
  223. # ocr, show_log, lang, layout_model, formula_enable, table_enable
  224. # )
  225. # batch_model = BatchAnalyze(model=custom_model, batch_ratio=batch_ratio)
  226. #
  227. # model_json = []
  228. #
  229. # # batch analyze
  230. # images = []
  231. # for index in range(len(dataset)):
  232. # if start_page_id <= index <= end_page_id:
  233. # page_data = dataset.get_page(index)
  234. # img_dict = page_data.get_image()
  235. # images.append(img_dict['img'])
  236. # analyze_result = batch_model(images)
  237. #
  238. # for index in range(len(dataset)):
  239. # page_data = dataset.get_page(index)
  240. # img_dict = page_data.get_image()
  241. # page_width = img_dict['width']
  242. # page_height = img_dict['height']
  243. # if start_page_id <= index <= end_page_id:
  244. # result = analyze_result.pop(0)
  245. # else:
  246. # result = []
  247. #
  248. # page_info = {'page_no': index, 'height': page_height, 'width': page_width}
  249. # page_dict = {'layout_dets': result, 'page_info': page_info}
  250. # model_json.append(page_dict)
  251. #
  252. # # TODO: clean memory when gpu memory is not enough
  253. # clean_memory_start_time = time.time()
  254. # clean_memory(get_device())
  255. # logger.info(f'clean memory time: {round(time.time() - clean_memory_start_time, 2)}')
  256. #
  257. # return InferenceResult(model_json, dataset)