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                        - English | [简体中文](./README_zh.md)
 - 
 - # *Deep*Doc
 - 
 - - [1. Introduction](#1)
 - - [2. Vision](#2)
 - - [3. Parser](#3)
 - 
 - <a name="1"></a>
 - ## 1. Introduction
 - 
 - With a bunch of documents from various domains with various formats and along with diverse retrieval requirements, 
 - an accurate analysis becomes a very challenge task. *Deep*Doc is born for that purpose.
 - There are 2 parts in *Deep*Doc so far: vision and parser. 
 - You can run the flowing test programs if you're interested in our results of OCR, layout recognition and TSR.
 - ```bash
 - python deepdoc/vision/t_ocr.py -h
 - usage: t_ocr.py [-h] --inputs INPUTS [--output_dir OUTPUT_DIR]
 - 
 - options:
 -   -h, --help            show this help message and exit
 -   --inputs INPUTS       Directory where to store images or PDFs, or a file path to a single image or PDF
 -   --output_dir OUTPUT_DIR
 -                         Directory where to store the output images. Default: './ocr_outputs'
 - ```
 - ```bash
 - python deepdoc/vision/t_recognizer.py -h
 - usage: t_recognizer.py [-h] --inputs INPUTS [--output_dir OUTPUT_DIR] [--threshold THRESHOLD] [--mode {layout,tsr}]
 - 
 - options:
 -   -h, --help            show this help message and exit
 -   --inputs INPUTS       Directory where to store images or PDFs, or a file path to a single image or PDF
 -   --output_dir OUTPUT_DIR
 -                         Directory where to store the output images. Default: './layouts_outputs'
 -   --threshold THRESHOLD
 -                         A threshold to filter out detections. Default: 0.5
 -   --mode {layout,tsr}   Task mode: layout recognition or table structure recognition
 - ```
 - 
 - Our models are served on HuggingFace. If you have trouble downloading HuggingFace models, this might help!!
 - ```bash
 - export HF_ENDPOINT=https://hf-mirror.com
 - ```
 - 
 - <a name="2"></a>
 - ## 2. Vision
 - 
 - We use vision information to resolve problems as human being.
 -   - OCR. Since a lot of documents presented as images or at least be able to transform to image, 
 -     OCR is a very essential and fundamental or even universal solution for text extraction.
 -     ```bash
 -         python deepdoc/vision/t_ocr.py --inputs=path_to_images_or_pdfs --output_dir=path_to_store_result
 -      ```
 -     The inputs could be directory to images or PDF, or a image or PDF. 
 -     You can look into the folder 'path_to_store_result' where has images which demonstrate the positions of results,
 -     txt files which contain the OCR text.
 -     <div align="center" style="margin-top:20px;margin-bottom:20px;">
 -     <img src="https://github.com/infiniflow/ragflow/assets/12318111/f25bee3d-aaf7-4102-baf5-d5208361d110" width="900"/>
 -     </div>
 - 
 -   - Layout recognition. Documents from different domain may have various layouts, 
 -     like, newspaper, magazine, book and résumé are distinct in terms of layout. 
 -     Only when machine have an accurate layout analysis, it can decide if these text parts are successive or not, 
 -     or this part needs Table Structure Recognition(TSR) to process, or this part is a figure and described with this caption.
 -     We have 10 basic layout components which covers most cases:
 -       - Text
 -       - Title
 -       - Figure
 -       - Figure caption
 -       - Table
 -       - Table caption
 -       - Header
 -       - Footer
 -       - Reference
 -       - Equation
 -       
 -      Have a try on the following command to see the layout detection results.
 -      ```bash
 -         python deepdoc/vision/t_recognizer.py --inputs=path_to_images_or_pdfs --threshold=0.2 --mode=layout --output_dir=path_to_store_result
 -      ```
 -     The inputs could be directory to images or PDF, or a image or PDF. 
 -     You can look into the folder 'path_to_store_result' where has images which demonstrate the detection results as following:
 -     <div align="center" style="margin-top:20px;margin-bottom:20px;">
 -     <img src="https://github.com/infiniflow/ragflow/assets/12318111/07e0f625-9b28-43d0-9fbb-5bf586cd286f" width="1000"/>
 -     </div>
 -   
 -   - Table Structure Recognition(TSR). Data table is a frequently used structure to present data including numbers or text.
 -     And the structure of a table might be very complex, like hierarchy headers, spanning cells and projected row headers.
 -     Along with TSR, we also reassemble the content into sentences which could be well comprehended by LLM. 
 -     We have five labels for TSR task:
 -       - Column
 -       - Row
 -       - Column header
 -       - Projected row header
 -       - Spanning cell
 -       
 -     Have a try on the following command to see the layout detection results.
 -      ```bash
 -         python deepdoc/vision/t_recognizer.py --inputs=path_to_images_or_pdfs --threshold=0.2 --mode=tsr --output_dir=path_to_store_result
 -      ```
 -     The inputs could be directory to images or PDF, or a image or PDF. 
 -     You can look into the folder 'path_to_store_result' where has both images and html pages which demonstrate the detection results as following:
 -     <div align="center" style="margin-top:20px;margin-bottom:20px;">
 -     <img src="https://github.com/infiniflow/ragflow/assets/12318111/cb24e81b-f2ba-49f3-ac09-883d75606f4c" width="1000"/>
 -     </div>
 -         
 - <a name="3"></a>
 - ## 3. Parser
 - 
 - Four kinds of document formats as PDF, DOCX, EXCEL and PPT have their corresponding parser. 
 - The most complex one is PDF parser since PDF's flexibility. The output of PDF parser includes:
 -   - Text chunks with their own positions in PDF(page number and rectangular positions).
 -   - Tables with cropped image from the PDF, and contents which has already translated into natural language sentences.
 -   - Figures with caption and text in the figures.
 -   
 - ### Résumé
 - 
 - The résumé is a very complicated kind of document. A résumé which is composed of unstructured text 
 - with various layouts could be resolved into structured data composed of nearly a hundred of fields.
 - We haven't opened the parser yet, as we open the processing method after parsing procedure.
 - 
 -     
 
 
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