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- # copyright (c) 2024 PaddlePaddle Authors. All Rights Reserve.
- #
- # Licensed under the Apache License, Version 2.0 (the "License");
- # you may not use this file except in compliance with the License.
- # You may obtain a copy of the License at
- #
- # http://www.apache.org/licenses/LICENSE-2.0
- #
- # Unless required by applicable law or agreed to in writing, software
- # distributed under the License is distributed on an "AS IS" BASIS,
- # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
- # See the License for the specific language governing permissions and
- # limitations under the License.
- from typing import Any, Dict, Optional
- import os, sys
- import numpy as np
- import cv2
- from ..base import BasePipeline
- from .utils import get_sub_regions_ocr_res
- from ..components import convert_points_to_boxes
- from .result import LayoutParsingResult
- from ....utils import logging
- from ...utils.pp_option import PaddlePredictorOption
- from ...common.reader import ReadImage
- from ...common.batch_sampler import ImageBatchSampler
- from ..ocr.result import OCRResult
- from ..doc_preprocessor.result import DocPreprocessorResult
- # [TODO] 待更新models_new到models
- from ...models_new.object_detection.result import DetResult
- class LayoutParsingPipeline(BasePipeline):
- """Layout Parsing Pipeline"""
- entities = ["layout_parsing"]
- def __init__(
- self,
- config: Dict,
- device: str = None,
- pp_option: PaddlePredictorOption = None,
- use_hpip: bool = False,
- hpi_params: Optional[Dict[str, Any]] = None,
- ) -> None:
- """Initializes the layout parsing pipeline.
- Args:
- config (Dict): Configuration dictionary containing various settings.
- device (str, optional): Device to run the predictions on. Defaults to None.
- pp_option (PaddlePredictorOption, optional): PaddlePredictor options. Defaults to None.
- use_hpip (bool, optional): Whether to use high-performance inference (hpip) for prediction. Defaults to False.
- hpi_params (Optional[Dict[str, Any]], optional): HPIP parameters. Defaults to None.
- """
- super().__init__(
- device=device, pp_option=pp_option, use_hpip=use_hpip, hpi_params=hpi_params
- )
- self.inintial_predictor(config)
- self.batch_sampler = ImageBatchSampler(batch_size=1)
- self.img_reader = ReadImage(format="BGR")
- def set_used_models_flag(self, config: Dict) -> None:
- """
- Set the flags for which models to use based on the configuration.
- Args:
- config (Dict): A dictionary containing configuration settings.
- Returns:
- None
- """
- pipeline_name = config["pipeline_name"]
- self.pipeline_name = pipeline_name
- self.use_doc_preprocessor = False
- self.use_general_ocr = False
- self.use_seal_recognition = False
- self.use_table_recognition = False
- if "use_doc_preprocessor" in config:
- self.use_doc_preprocessor = config["use_doc_preprocessor"]
- if "use_general_ocr" in config:
- self.use_general_ocr = config["use_general_ocr"]
- if "use_seal_recognition" in config:
- self.use_seal_recognition = config["use_seal_recognition"]
- if "use_table_recognition" in config:
- self.use_table_recognition = config["use_table_recognition"]
- def inintial_predictor(self, config: Dict) -> None:
- """Initializes the predictor based on the provided configuration.
- Args:
- config (Dict): A dictionary containing the configuration for the predictor.
- Returns:
- None
- """
- self.set_used_models_flag(config)
- layout_det_config = config["SubModules"]["LayoutDetection"]
- self.layout_det_model = self.create_model(layout_det_config)
- if self.use_doc_preprocessor:
- doc_preprocessor_config = config["SubPipelines"]["DocPreprocessor"]
- self.doc_preprocessor_pipeline = self.create_pipeline(
- doc_preprocessor_config
- )
- if self.use_general_ocr or self.use_table_recognition:
- general_ocr_config = config["SubPipelines"]["GeneralOCR"]
- self.general_ocr_pipeline = self.create_pipeline(general_ocr_config)
- if self.use_seal_recognition:
- seal_recognition_config = config["SubPipelines"]["SealRecognition"]
- self.seal_recognition_pipeline = self.create_pipeline(
- seal_recognition_config
- )
- if self.use_table_recognition:
- table_recognition_config = config["SubPipelines"]["TableRecognition"]
- self.table_recognition_pipeline = self.create_pipeline(
- table_recognition_config
- )
- return
- def get_text_paragraphs_ocr_res(
- self, overall_ocr_res: OCRResult, layout_det_res: DetResult
- ) -> OCRResult:
- """
- Retrieves the OCR results for text paragraphs, excluding those of formulas, tables, and seals.
- Args:
- overall_ocr_res (OCRResult): The overall OCR result containing text information.
- layout_det_res (DetResult): The detection result containing the layout information of the document.
- Returns:
- OCRResult: The OCR result for text paragraphs after excluding formulas, tables, and seals.
- """
- object_boxes = []
- for box_info in layout_det_res["boxes"]:
- if box_info["label"].lower() in ["formula", "table", "seal"]:
- object_boxes.append(box_info["coordinate"])
- object_boxes = np.array(object_boxes)
- return get_sub_regions_ocr_res(overall_ocr_res, object_boxes, flag_within=False)
- def check_input_params_valid(self, input_params: Dict) -> bool:
- """
- Check if the input parameters are valid based on the initialized models.
- Args:
- input_params (Dict): A dictionary containing input parameters.
- Returns:
- bool: True if all required models are initialized according to input parameters, False otherwise.
- """
- if input_params["use_doc_preprocessor"] and not self.use_doc_preprocessor:
- logging.error(
- "Set use_doc_preprocessor, but the models for doc preprocessor are not initialized."
- )
- return False
- if input_params["use_general_ocr"] and not self.use_general_ocr:
- logging.error(
- "Set use_general_ocr, but the models for general OCR are not initialized."
- )
- return False
- if input_params["use_seal_recognition"] and not self.use_seal_recognition:
- logging.error(
- "Set use_seal_recognition, but the models for seal recognition are not initialized."
- )
- return False
- if input_params["use_table_recognition"] and not self.use_table_recognition:
- logging.error(
- "Set use_table_recognition, but the models for table recognition are not initialized."
- )
- return False
- return True
- def predict_doc_preprocessor_res(
- self, image_array: np.ndarray, input_params: dict
- ) -> tuple[DocPreprocessorResult, np.ndarray]:
- """
- Preprocess the document image based on input parameters.
- Args:
- image_array (np.ndarray): The input image array.
- input_params (dict): Dictionary containing preprocessing parameters.
- Returns:
- tuple[DocPreprocessorResult, np.ndarray]: A tuple containing the preprocessing
- result dictionary and the processed image array.
- """
- if input_params["use_doc_preprocessor"]:
- use_doc_orientation_classify = input_params["use_doc_orientation_classify"]
- use_doc_unwarping = input_params["use_doc_unwarping"]
- doc_preprocessor_res = next(
- self.doc_preprocessor_pipeline(
- image_array,
- use_doc_orientation_classify=use_doc_orientation_classify,
- use_doc_unwarping=use_doc_unwarping,
- )
- )
- doc_preprocessor_image = doc_preprocessor_res["output_img"]
- else:
- doc_preprocessor_res = {}
- doc_preprocessor_image = image_array
- return doc_preprocessor_res, doc_preprocessor_image
- def predict_overall_ocr_res(self, image_array: np.ndarray) -> OCRResult:
- """
- Predict the overall OCR result for the given image array.
- Args:
- image_array (np.ndarray): The input image array to perform OCR on.
- Returns:
- OCRResult: The predicted OCR result with updated dt_boxes.
- """
- overall_ocr_res = next(self.general_ocr_pipeline(image_array))
- dt_boxes = convert_points_to_boxes(overall_ocr_res["dt_polys"])
- overall_ocr_res["dt_boxes"] = dt_boxes
- return overall_ocr_res
- def predict(
- self,
- input: str | list[str] | np.ndarray | list[np.ndarray],
- use_doc_orientation_classify: bool = False,
- use_doc_unwarping: bool = False,
- use_general_ocr: bool = True,
- use_seal_recognition: bool = True,
- use_table_recognition: bool = True,
- **kwargs
- ) -> LayoutParsingResult:
- """
- This function predicts the layout parsing result for the given input.
- Args:
- input (str | list[str] | np.ndarray | list[np.ndarray]): The input image(s) or pdf(s) to be processed.
- use_doc_orientation_classify (bool): Whether to use document orientation classification.
- use_doc_unwarping (bool): Whether to use document unwarping.
- use_general_ocr (bool): Whether to use general OCR.
- use_seal_recognition (bool): Whether to use seal recognition.
- use_table_recognition (bool): Whether to use table recognition.
- **kwargs: Additional keyword arguments.
- Returns:
- LayoutParsingResult: The predicted layout parsing result.
- """
- input_params = {
- "use_doc_preprocessor": self.use_doc_preprocessor,
- "use_doc_orientation_classify": use_doc_orientation_classify,
- "use_doc_unwarping": use_doc_unwarping,
- "use_general_ocr": use_general_ocr,
- "use_seal_recognition": use_seal_recognition,
- "use_table_recognition": use_table_recognition,
- }
- if use_doc_orientation_classify or use_doc_unwarping:
- input_params["use_doc_preprocessor"] = True
- else:
- input_params["use_doc_preprocessor"] = False
- if not self.check_input_params_valid(input_params):
- yield None
- for img_id, batch_data in enumerate(self.batch_sampler(input)):
- image_array = self.img_reader(batch_data)[0]
- img_id += 1
- doc_preprocessor_res, doc_preprocessor_image = (
- self.predict_doc_preprocessor_res(image_array, input_params)
- )
- layout_det_res = next(self.layout_det_model(doc_preprocessor_image))
- if input_params["use_general_ocr"] or input_params["use_table_recognition"]:
- overall_ocr_res = self.predict_overall_ocr_res(doc_preprocessor_image)
- else:
- overall_ocr_res = {}
- if input_params["use_general_ocr"]:
- text_paragraphs_ocr_res = self.get_text_paragraphs_ocr_res(
- overall_ocr_res, layout_det_res
- )
- else:
- text_paragraphs_ocr_res = {}
- if input_params["use_table_recognition"]:
- table_res_list = next(
- self.table_recognition_pipeline(
- doc_preprocessor_image,
- use_layout_detection=False,
- use_doc_orientation_classify=False,
- use_doc_unwarping=False,
- overall_ocr_res=overall_ocr_res,
- layout_det_res=layout_det_res,
- )
- )
- table_res_list = table_res_list["table_res_list"]
- else:
- table_res_list = []
- if input_params["use_seal_recognition"]:
- seal_res_list = next(
- self.seal_recognition_pipeline(
- doc_preprocessor_image,
- use_layout_detection=False,
- use_doc_orientation_classify=False,
- use_doc_unwarping=False,
- layout_det_res=layout_det_res,
- )
- )
- seal_res_list = seal_res_list["seal_res_list"]
- else:
- seal_res_list = []
- single_img_res = {
- "layout_det_res": layout_det_res,
- "doc_preprocessor_res": doc_preprocessor_res,
- "overall_ocr_res": overall_ocr_res,
- "text_paragraphs_ocr_res": text_paragraphs_ocr_res,
- "table_res_list": table_res_list,
- "seal_res_list": seal_res_list,
- "input_params": input_params,
- "img_id": img_id,
- }
- yield LayoutParsingResult(single_img_res)
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