# coding: utf-8 # [Pix2Text](https://github.com/breezedeus/pix2text): an Open-Source Alternative to Mathpix. # Copyright (C) 2022-2024, [Breezedeus](https://www.breezedeus.com). from typing import Optional, Union, Tuple from pathlib import Path import logging from cnstd.yolo_detector import YoloDetector from .consts import AVAILABLE_MODELS from .utils import data_dir, prepare_model_files logger = logging.getLogger(__name__) BACKEND_TO_EXTENSION_MAPPING = { 'pytorch': 'pt', 'onnx': 'onnx', 'coreml': 'mlpackage', 'torchscript': 'torchscript', } class MathFormulaDetector(YoloDetector): def __init__( self, *, model_name: str = 'mfd-1.5', model_backend: str = 'onnx', device: Optional[str] = None, model_path: Optional[Union[str, Path]] = None, root: Union[str, Path] = data_dir(), static_resized_shape: Optional[Union[int, Tuple[int, int]]] = None, **kwargs, ): """ Math Formula Detector based on YOLO. Args: model_name (str): model name, default is 'mfd-1.5'. model_backend (str): model backend, default is 'onnx'. device (optional str): device to use, default is None. model_path (optional str): model path, default is None. root (optional str): root directory to save model files, default is data_dir(). static_resized_shape (optional int or tuple): static resized shape, default is None. When it is not None, the input image will be resized to this shape before detection, ignoring the input parameter `resized_shape` if .detect() is called. Some format of models may require a fixed input size, such as CoreML. **kwargs (): other parameters. """ if model_path is None: model_info = AVAILABLE_MODELS.get_info(model_name, model_backend) model_path = prepare_model_files(root, model_info) extension = BACKEND_TO_EXTENSION_MAPPING.get(model_backend, model_backend) cand_paths = find_files(model_path, f'.{extension}') if not cand_paths: raise FileNotFoundError(f'can not find available file in {model_path}') model_path = cand_paths[0] logger.info(f'Use model path for MFD: {model_path}') super().__init__( model_path=model_path, device=device, static_resized_shape=static_resized_shape, **kwargs, ) def find_files(directory, extension): # 创建Path对象 dir_path = Path(directory) pattern = f"*mfd*{extension}" outs = [] # 使用rglob方法递归查找匹配的文件 for file_path in dir_path.rglob(pattern): # 检查文件名是否不以点开头(除了文件扩展名) if not file_path.name.startswith('.') or file_path.suffix == extension: outs.append(file_path) return outs