layout_parsing.py 4.6 KB

123456789101112131415161718192021222324252627282930313233343536373839404142434445464748495051525354555657585960616263646566676869707172737475767778798081828384858687888990919293949596979899100101102103104105106107108109110111112113114115116117118119
  1. # Copyright (c) 2024 PaddlePaddle Authors. All Rights Reserved.
  2. #
  3. # Licensed under the Apache License, Version 2.0 (the "License");
  4. # you may not use this file except in compliance with the License.
  5. # You may obtain a copy of the License at
  6. #
  7. # http://www.apache.org/licenses/LICENSE-2.0
  8. #
  9. # Unless required by applicable law or agreed to in writing, software
  10. # distributed under the License is distributed on an "AS IS" BASIS,
  11. # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
  12. # See the License for the specific language governing permissions and
  13. # limitations under the License.
  14. from typing import Any, Dict, List
  15. from .....utils.deps import function_requires_deps, is_dep_available
  16. from ...infra import utils as serving_utils
  17. from ...infra.config import AppConfig
  18. from ...infra.models import AIStudioResultResponse
  19. from ...schemas.layout_parsing import INFER_ENDPOINT, InferRequest, InferResult
  20. from .._app import create_app, primary_operation
  21. from ._common import common
  22. from ._common import ocr as ocr_common
  23. if is_dep_available("fastapi"):
  24. from fastapi import FastAPI
  25. @function_requires_deps("fastapi")
  26. def create_pipeline_app(pipeline: Any, app_config: AppConfig) -> "FastAPI":
  27. app, ctx = create_app(
  28. pipeline=pipeline, app_config=app_config, app_aiohttp_session=True
  29. )
  30. ocr_common.update_app_context(ctx)
  31. @primary_operation(
  32. app,
  33. INFER_ENDPOINT,
  34. "infer",
  35. )
  36. async def _infer(
  37. request: InferRequest,
  38. ) -> AIStudioResultResponse[InferResult]:
  39. pipeline = ctx.pipeline
  40. log_id = serving_utils.generate_log_id()
  41. visualize_enabled = (
  42. request.visualize if request.visualize is not None else ctx.config.visualize
  43. )
  44. images, data_info = await ocr_common.get_images(request, ctx)
  45. result = await pipeline.infer(
  46. images,
  47. use_doc_orientation_classify=request.useDocOrientationClassify,
  48. use_doc_unwarping=request.useDocUnwarping,
  49. use_textline_orientation=request.useTextlineOrientation,
  50. use_seal_recognition=request.useSealRecognition,
  51. use_table_recognition=request.useTableRecognition,
  52. use_formula_recognition=request.useFormulaRecognition,
  53. layout_threshold=request.layoutThreshold,
  54. layout_nms=request.layoutNms,
  55. layout_unclip_ratio=request.layoutUnclipRatio,
  56. layout_merge_bboxes_mode=request.layoutMergeBboxesMode,
  57. text_det_limit_side_len=request.textDetLimitSideLen,
  58. text_det_limit_type=request.textDetLimitType,
  59. text_det_thresh=request.textDetThresh,
  60. text_det_box_thresh=request.textDetBoxThresh,
  61. text_det_unclip_ratio=request.textDetUnclipRatio,
  62. text_rec_score_thresh=request.textRecScoreThresh,
  63. seal_det_limit_side_len=request.sealDetLimitSideLen,
  64. seal_det_limit_type=request.sealDetLimitType,
  65. seal_det_thresh=request.sealDetThresh,
  66. seal_det_box_thresh=request.sealDetBoxThresh,
  67. seal_det_unclip_ratio=request.sealDetUnclipRatio,
  68. seal_rec_score_thresh=request.sealRecScoreThresh,
  69. )
  70. layout_parsing_results: List[Dict[str, Any]] = []
  71. for i, (img, item) in enumerate(zip(images, result)):
  72. pruned_res = common.prune_result(item.json["res"])
  73. if visualize_enabled:
  74. imgs = {
  75. "input_img": img,
  76. **item.img,
  77. }
  78. imgs = await serving_utils.call_async(
  79. common.postprocess_images,
  80. imgs,
  81. log_id,
  82. filename_template=f"{{key}}_{i}.jpg",
  83. file_storage=ctx.extra["file_storage"],
  84. return_urls=ctx.extra["return_img_urls"],
  85. max_img_size=ctx.extra["max_output_img_size"],
  86. )
  87. else:
  88. imgs = {}
  89. layout_parsing_results.append(
  90. dict(
  91. prunedResult=pruned_res,
  92. outputImages=(
  93. {k: v for k, v in imgs.items() if k != "input_img"}
  94. if imgs
  95. else None
  96. ),
  97. inputImage=imgs.get("input_img"),
  98. )
  99. )
  100. return AIStudioResultResponse[InferResult](
  101. logId=log_id,
  102. result=InferResult(
  103. layoutParsingResults=layout_parsing_results,
  104. dataInfo=data_info,
  105. ),
  106. )
  107. return app