# coding: utf-8 from enum import Enum from pathlib import Path from typing import Union, Optional, List, Dict, Any from PIL import Image from cnstd import LayoutAnalyzer from cnstd.yolov7.consts import CATEGORY_DICT from .utils import read_img, save_layout_img, select_device class ElementType(Enum): ABANDONED = -2 # 可以指定有些区域不做识别,如 Image 与 Image caption 中间地带 IGNORED = -1 UNKNOWN = 0 TEXT = 1 TITLE = 2 FIGURE = 3 TABLE = 4 FORMULA = 5 PLAIN_TEXT = 11 # 与 TEXT 类似,但是绝对不包含公式 def __repr__(self) -> str: return self.name def __str__(self) -> str: return self.name class LayoutParser(object): def __init__( self, model_type: str = 'yolov7_tiny', # 当前仅支持 `yolov7_tiny` model_backend: str = 'pytorch', # 当前仅支持 `pytorch` device: str = None, **kwargs ): device = select_device(device) device = device if device != 'mps' else 'cpu' self.layout_model = LayoutAnalyzer( model_name='layout', model_type=model_type, model_backend=model_backend, device=device, **kwargs, ) self.ignored_types = {'_background_', 'Footer', 'Reference'} self.type_mappings = { 'Header': ElementType.TEXT, 'Text': ElementType.TEXT, 'Title': ElementType.TITLE, 'Figure': ElementType.FIGURE, 'Figure caption': ElementType.TEXT, 'Table': ElementType.TABLE, 'Table caption': ElementType.TEXT, 'Reference': ElementType.TEXT, 'Equation': ElementType.FORMULA, } @classmethod def from_config(cls, configs: Optional[dict] = None, device: str = None, **kwargs): configs = configs or {} device = select_device(device) configs['device'] = device if device != 'mps' else 'cpu' return cls( model_type=configs.get('model_type', 'yolov7_tiny'), model_backend=configs.get('model_backend', 'pytorch'), device=device, **kwargs, ) def __call__(self, *args, **kwargs): return self.parse(*args, **kwargs) def parse( self, img: Union[str, Path, Image.Image], resized_shape: int = 608, table_as_image: bool = False, **kwargs ) -> (List[Dict[str, Any]], Dict[str, Any]): """ Args: img (): resized_shape (): table_as_image (): **kwargs (): Returns: parsed results & column meta information; the parsed results is a list of dict with keys: 'type', 'position', 'score': * type: ElementType * position: np.ndarray, with shape of (4, 2) * score: float the column meta is a dict, with column number as its keys. """ if isinstance(img, Image.Image): img0 = img.convert('RGB') else: img0 = read_img(img, return_type='Image') layout_out = self.layout_model(img0.copy(), resized_shape=resized_shape) if kwargs.get('save_layout_res'): save_layout_img( img0, CATEGORY_DICT['layout'], layout_out, kwargs.get('save_layout_res'), key='box', ) final_out = [] for box_info in layout_out: image_type = box_info['type'] if image_type in self.ignored_types: continue image_type = self.type_mappings.get(image_type, image_type) if table_as_image and image_type == ElementType.TABLE: image_type = ElementType.FIGURE final_out.append( { 'type': image_type, 'position': box_info['box'], 'score': box_info['score'], } ) return final_out, {}