You cannot select more than 25 topics Topics must start with a letter or number, can include dashes ('-') and can be up to 35 characters long.
 
 
Eric Ihli 01406752d4 Update docs to describe ocr_image defaults
The example scripts now work with the included tessdata models.
4 years ago
dist Include tesseract traineddata files 4 years ago
resources/examples Update exported html 4 years ago
table_ocr Include tesseract traineddata files 4 years ago
.gitignore Include tesseract traineddata files 4 years ago
LICENSE Update license and setup.py 4 years ago
README.org Update docs to describe ocr_image defaults 4 years ago
ocr_tables Update docs to describe ocr_image defaults 4 years ago
pdf_table_extraction_and_ocr.html Update docs to describe ocr_image defaults 4 years ago
pdf_table_extraction_and_ocr.org Update docs to describe ocr_image defaults 4 years ago
setup.py Include tesseract traineddata files 4 years ago

README.org

#+TITLE:Readme

This python package contains modules to help with finding and extracting tabular data from a PDF or image into a CSV format.

Given an image that contains a table…

/eihli/image-table-ocr/src/commit/01406752d450a45cc40fd3368b26804f2a8d5657/resources/examples/example-page.png

Extract the the text into a CSV format…

PRIZE,ODDS 1 IN:,# OF WINNERS*
$3,9.09,"282,447"
$5,16.66,"154,097"
$7,40.01,"64,169"
$10,26.67,"96,283"
$20,100.00,"25,677"
$30,290.83,"8,829"
$50,239.66,"10,714"
$100,919.66,"2,792"
$500,"6,652.07",386
"$40,000","855,899.99",3
1,i223,
Toa,,
,,
,,"* Based upon 2,567,700"

The package is split into modules with narrow focuses.

  • pdf_to_images uses Poppler and ImageMagick to extract images from a PDF.
  • extract_tables finds and extracts table-looking things from an image.
  • extract_cells extracts and orders cells from a table.
  • ocr_image uses Tesseract to OCR the text from an image of a cell.
  • ocr_to_csv converts into a CSV the directory structure that ocr_image outputs.

The outputs of a previous module can be used by a subsequent module so that they can be chained together to create the entire workflow, as demonstrated by the following shell script.

#!/bin/sh

PDF=$1

python -m table_ocr.pdf_to_images $PDF | grep .png > /tmp/pdf-images.txt
cat /tmp/pdf-images.txt | xargs -I{} python -m table_ocr.extract_tables {}  | grep table > /tmp/extracted-tables.txt
cat /tmp/extracted-tables.txt | xargs -I{} python -m table_ocr.extract_cells {} | grep cells > /tmp/extracted-cells.txt
cat /tmp/extracted-cells.txt | xargs -I{} python -m table_ocr.ocr_image {}

for image in $(cat /tmp/extracted-tables.txt); do
    dir=$(dirname $image)
    python -m table_ocr.ocr_to_csv $(find $dir/cells -name "*.txt")
done

The package was written in a literate programming style. The source code at https://eihli.github.io/image-table-ocr/pdf_table_extraction_and_ocr.html is meant to act as the documentation and reference material.