Skip to content

A command-line application to convert images, PDFs, and audio files to text using Apple's APIs

License

Notifications You must be signed in to change notification settings

fzmdesign/freedmand-textra

 
 

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

20 Commits
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

textra

A command-line application to extract text from images, PDFs, and audio files using Apple's Vision and Speech APIs.

A terminal window showing the text: | % textra The-Mueller-Report.pdf -o report.txt | Converting: | - Input (448 pg) The-Mueller-Report.pdf | - Output full text report.txt | | 16 of 448 [-      ] ETA: 00:05:21 (at 1.34 it/s)

Installation

Textra requires Mac OS version 13 or greater to access the latest VisionKit APIs.

The easiest way to install textra is to open a terminal window and run the following command:

curl -L https://github.com/freedmand/textra/raw/main/install.sh | bash

Alternatively, download the latest release, unzip it, and place the textra executable somewhere on your $PATH.

Usage

textra [options] FILE1 [FILE2...] [outputOptions]

Options

-h, --help: Show advanced help

-s, --silent: Suppress non-essential output

-l, --locale: Specify a locale (e.g. en-US) for text recognition

-v, --version: Show version number

Output options

-x, --outputStdout: Output everything to stdout (default)

-o, --outputText: Output everything to a single text file

-t, --outputPageText: Output each file/page to a text file

-p, --outputPositions: Output positional text for each file/page to json (experimental; results may differ from page text)

Examples

textra audio.mp3: Extract the text from "audio.mp3" and output to stdout

textra page1.png page2.png -o combined.txt: Extract the text from "page1.png" and "page2.png" and output the combined text to "combined.txt"

textra doc.pdf -o doc.txt -t doc/page-{}.txt: Extract text from "doc.pdf" and output in two formats: 1) combined text of all the pages stored in "doc.txt" and 2) positional text from each page extracted at the pattern "doc/page-{}.txt" (e.g. "doc/page-1.txt", "doc/page-2.txt", etc.)

textra image1.png -o text1.txt image2.png -o text2.txt: Extract text from "image1.png" and output at "text1.txt"; extract text from "image2.png" and output at "text2.txt"

textra image.png --outputPositions positionalText.json: Extract positional text from "image.png" and output at "positionalText.json"

Instructions

To use textra, you must provide at least one input file.

textra will then extract all the text from the inputted image/PDF/audio files. By default, textra will print the output to stdout, where it can be viewed or piped into another program.

You can use the output options above at any point to extract the specified files to disk in various formats. For instance, textra doc.png -o page.txt -p page.json will extract "doc.png" in two formats: as page text to "page.txt" and as positional text to "page.json".

You can punctuate chains of inputs with output options to finely control where multiple extracted documents will end up. For example, textra doc.png -o image.txt speech.mp3 -o audio.txt will extract "doc.png" to "image.txt" and "speech.mp3" to "audio.txt" respectively.

For output options that write to each page (-t, -p), textra allows an output path that contains curly braces {}. These braces will be substituted with page numbers in the case of a PDF file, base file names in the case of image files, or baseFileName-pageNumber in the case of multiple PDF files. Without specifying the braces, textra will append a dash followed by the page number/base file name to the specified path.

License

MIT

Contributions

This repo is in early stages but contributions are welcome. Please submit an issue or feel free to fork and contribute a pull request.

Credits

Many thanks to Brandon Roberts and Marcos Huerta for their help and encouragement with positional text extraction.

About

A command-line application to convert images, PDFs, and audio files to text using Apple's APIs

Resources

License

Stars

Watchers

Forks

Packages

No packages published

Languages

  • Swift 83.8%
  • Python 10.6%
  • Shell 5.6%