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eynollah/README.md

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Eynollah

Document Layout Analysis with Deep Learning and Heuristics

PyPI Version CircleCI Build Status GH Actions Test License: ASL

Features

  • Support for up to 10 segmentation classes:
  • Support for various image optimization operations:
    • cropping (border detection), binarization, deskewing, dewarping, scaling, enhancing, resizing
  • Text line segmentation to bounding boxes or polygons (contours) including for curved lines and vertical text
  • Detection of reading order
  • Output in PAGE-XML
  • OCR-D interface
  • Examples

Installation

Python versions 3.8-3.11 with Tensorflow version 2.13 on Linux are currently supported.

For (limited) GPU support the CUDA toolkit needs to be installed.

You can either install from PyPI

pip install eynollah

or clone the repository, enter it and install (editable) with

git clone git@github.com:qurator-spk/eynollah.git
cd eynollah; pip install -e .

Alternatively, run make install or make install-dev for editable installation.

Models

Pre-trained models can be downloaded either from qurator-data.de or huggingface.

Train

🚧 Work in progress

In case you want to train your own model, have a look at train.

Use

The command-line interface can be called like this:

eynollah \
  -i <single image file> | -di <directory containing image files> \
  -o <output directory> \
  -m <directory containing model files> \
     [OPTIONS]

The following options can be used to further configure the processing:

option description
-fl full layout analysis including all steps and segmentation classes
-light lighter and faster but simpler method for main region detection and deskewing
-tab apply table detection
-ae apply enhancement (the resulting image is saved to the output directory)
-as apply scaling
-cl apply contour detection for curved text lines instead of bounding boxes
-ib apply binarization (the resulting image is saved to the output directory)
-ep enable plotting (MUST always be used with -sl, -sd, -sa, -si or -ae)
-ho ignore headers for reading order dectection
-si <directory> save image regions detected to this directory
-sd <directory> save deskewed image to this directory
-sl <directory> save layout prediction as plot to this directory
-sp <directory> save cropped page image to this directory
-sa <directory> save all (plot, enhanced/binary image, layout) to this directory

If no option is set, the tool will perform layout detection of main regions (background, text, images, separators and marginals). The tool produces better quality output when RGB images are used as input than greyscale or binarized images.

Use as OCR-D processor

Eynollah ships with a CLI interface to be used as OCR-D processor.

In this case, the source image file group with (preferably) RGB images should be used as input like this:

ocrd-eynollah-segment -I OCR-D-IMG -O SEG-LINE -P models

Any image referenced by @imageFilename in PAGE-XML is passed on directly to Eynollah as a processor, so that e.g.

ocrd-eynollah-segment -I OCR-D-IMG-BIN -O SEG-LINE -P models

uses the original (RGB) image despite any binarization that may have occured in previous OCR-D processing steps

Additional documentation

Please check the wiki.

How to cite

If you find this useful in your work, please consider citing our paper:

@inproceedings{rezanezhad2023eynollah,
  title     = {Document Layout Analysis with Deep Learning and Heuristics},
  author    = {Rezanezhad, Vahid and Baierer, Konstantin and Gerber, Mike and Labusch, Kai and Neudecker, Clemens},
  booktitle = {Proceedings of the 7th International Workshop on Historical Document Imaging and Processing {HIP} 2023,
               San José, CA, USA, August 25-26, 2023},
  publisher = {Association for Computing Machinery},
  address   = {New York, NY, USA},
  year      = {2023},
  pages     = {73--78},
  url       = {https://doi.org/10.1145/3604951.3605513}
}