Skip to content

A Unified Toolkit for Deep Learning Based Document Image Analysis

License

Notifications You must be signed in to change notification settings

NNstorm/layout-parser

 
 

Repository files navigation

Layout Parser Logo

A unified toolkit for Deep Learning Based Document Image Analysis

PyPI - Downloads


What is LayoutParser

Example Usage

LayoutParser aims to provide a wide range of tools that aims to streamline Document Image Analysis (DIA) tasks. Please check the LayoutParser demo video (1 min) or full talk (15 min) for details. And here are some key features:

  • LayoutParser provides a rich repository of deep learning models for layout detection as well as a set of unified APIs for using them. For example,

    Perform DL layout detection in 4 lines of code
    import layoutparser as lp
    model = lp.AutoLayoutModel('lp://EfficientDete/PubLayNet')
    # image = Image.open("path/to/image")
    layout = model.detect(image) 
  • LayoutParser comes with a set of layout data structures with carefully designed APIs that are optimized for document image analysis tasks. For example,

    Selecting layout/textual elements in the left column of a page
    image_width = image.size[0]
    left_column = lp.Interval(0, image_width/2, axis='x')
    layout.filter_by(left_column, center=True) # select objects in the left column 
    Performing OCR for each detected Layout Region
    ocr_agent = lp.TesseractAgent()
    for layout_region in layout: 
        image_segment = layout_region.crop(image)
        text = ocr_agent.detect(image_segment)
    Flexible APIs for visualizing the detected layouts
    lp.draw_box(image, layout, box_width=1, show_element_id=True, box_alpha=0.25)
    Loading layout data stored in json, csv, and even PDFs
    layout = lp.load_json("path/to/json")
    layout = lp.load_csv("path/to/csv")
    pdf_layout = lp.load_pdf("path/to/pdf")
  • LayoutParser is also a open platform that enables the sharing of layout detection models and DIA pipelines among the community.

    Check the LayoutParser open platform
    Submit your models/pipelines to LayoutParser

Installation

After several major updates, layoutparser provides various functionalities and deep learning models from different backends. But it still easy to install layoutparser, and we designed the installation method in a way such that you can choose to install only the needed dependencies for your project:

pip install layoutparser # Install the base layoutparser library with  
pip install "layoutparser[layoutmodels]" # Install DL layout model toolkit 
pip install "layoutparser[ocr]" # Install OCR toolkit

Extra steps are needed if you want to use Detectron2-based models. Please check installation.md for additional details on layoutparser installation.

Examples

We provide a series of examples for to help you start using the layout parser library:

  1. Table OCR and Results Parsing: layoutparser can be used for conveniently OCR documents and convert the output in to structured data.

  2. Deep Layout Parsing Example: With the help of Deep Learning, layoutparser supports the analysis very complex documents and processing of the hierarchical structure in the layouts.

Contributing

We encourage you to contribute to Layout Parser! Please check out the Contributing guidelines for guidelines about how to proceed. Join us!

Citing layoutparser

If you find layoutparser helpful to your work, please consider citing our tool and paper using the following BibTeX entry.

@article{shen2021layoutparser,
  title={LayoutParser: A Unified Toolkit for Deep Learning Based Document Image Analysis},
  author={Shen, Zejiang and Zhang, Ruochen and Dell, Melissa and Lee, Benjamin Charles Germain and Carlson, Jacob and Li, Weining},
  journal={arXiv preprint arXiv:2103.15348},
  year={2021}
}

About

A Unified Toolkit for Deep Learning Based Document Image Analysis

Resources

License

Code of conduct

Stars

Watchers

Forks

Packages

No packages published

Languages

  • Python 100.0%