# coding: utf-8 # [Pix2Text](https://github.com/breezedeus/pix2text): an Open-Source Alternative to Mathpix. # Copyright (C) 2022-2024, [Breezedeus](https://www.breezedeus.com). import os from typing import Union, Optional, Dict, Any, List from copy import deepcopy from pathlib import Path from PIL import Image import numpy as np from .utils import read_img # Default VLM prompt for table recognition TABLE_PROMPT = """ 首先识别图片中的文字是什么语言,然后再把图片中的表格转换成Markdown格式表示, 数学公式使用tex表示。 注意: - 不要出现任何多余的文字 - 行内内嵌公式使用$符号包裹 - 独立行公式使用$$符号包裹 - 表格中的每行开头和结尾都要有| 输出格式示例: ## text_language en ## text_content ``` |---|---| | 1 | line1 | | 2 | square: $a^2$ | | 3 | $$r^2$$ | ``` ) """ class VlmTableOCR(object): """ Implements table extraction using Vision Language Models. This class uses the same interface as TableOCR but leverages VLM capabilities. """ def __init__( self, vlm=None, **kwargs, ): """ Initialize a VlmTableOCR object. Args: vlm: Vision Language Model instance for table recognition **kwargs: Additional parameters """ if vlm is None: raise ValueError("vlm must be provided") self.vlm = vlm @classmethod def from_config( cls, configs: Optional[dict] = None, **kwargs, ): """ Create a VlmTableOCR instance from configuration. Args: vlm: Vision Language Model instance configs (Optional[dict], optional): Configuration dictionary **kwargs: Additional parameters Returns: VlmTableOCR: An instance of VlmTableOCR """ from .vlm_api import Vlm # Combine configs with any additional kwargs all_kwargs = kwargs.copy() if configs: all_kwargs.update(configs) vlm = Vlm( model_name=all_kwargs.pop("model_name", None), api_key=all_kwargs.pop("api_key", None), ) return cls( vlm=vlm, **all_kwargs ) def recognize( self, img: Union[str, Path, Image.Image], *, prompt: Optional[str] = TABLE_PROMPT, out_objects=False, out_cells=False, out_html=False, out_csv=False, out_markdown=True, **kwargs, ) -> Dict[str, Any]: """ Recognize tables from an image using VLM. Args: img: Input image (path, PIL.Image) prompt (Optional[str]): Custom prompt for VLM out_objects (bool): Whether to output objects out_cells (bool): Whether to output cells out_html (bool): Whether to output HTML out_csv (bool): Whether to output CSV out_markdown (bool): Whether to output Markdown **kwargs: Additional parameters * resized_shape (int): Resize shape for large images * save_analysis_res (str): Save the parsed result image in this file Returns: Dict[str, Any]: Dictionary containing recognized table data in requested formats """ out_formats = {} if not (out_objects or out_cells or out_html or out_csv or out_markdown): print("No output format specified") return out_formats if not isinstance(img, (str, Path, Image.Image)): raise ValueError("img must be a path or PIL.Image") # Process with VLM try: vlm_result = self.vlm( img_path=img, prompt=prompt, auto_resize=True, resized_shape=kwargs.get("resized_shape", 768), **kwargs, ) markdown_text = vlm_result.get("text", "") # For markdown output if out_markdown: out_formats["markdown"] = [markdown_text] # For HTML output (convert from markdown if needed) if out_html: try: import markdown html_text = markdown.markdown(markdown_text, extensions=["tables"]) # Extract just the table HTML if "" in html_text: table_html = html_text[ html_text.find("
") : html_text.rfind("
") + 8 ] out_formats["html"] = [table_html] else: out_formats["html"] = [ "
Failed to convert to HTML
" ] except ImportError: out_formats["html"] = [ "
Markdown conversion library not available
" ] # For CSV output (convert from markdown if needed) if out_csv: try: import pandas as pd import io # Simple markdown table to CSV conversion lines = [ line.strip() for line in markdown_text.split("\n") if line.strip() ] cleaned_lines = [] for line in lines: if line.startswith("|") and line.endswith("|"): # Remove the first and last | and split by | cells = [cell.strip() for cell in line[1:-1].split("|")] cleaned_lines.append(",".join(cells)) if cleaned_lines and "---" in cleaned_lines[1]: # Remove the separator line (---|---|---) cleaned_lines.pop(1) csv_content = "\n".join(cleaned_lines) out_formats["csv"] = [csv_content] except Exception as e: out_formats["csv"] = [f"Error converting to CSV: {str(e)}"] # For cellular representation (simplified for VLM) if out_cells: raise NotImplementedError( "Cellular representation is not implemented for VLMTableOCR." ) # For objects (simplified for VLM) if out_objects: raise NotImplementedError( "Object representation is not implemented for VLMTableOCR." ) except Exception as e: print(f"Error recognizing table: {e}") if out_markdown: out_formats["markdown"] = ["Error processing table with VLM"] return out_formats