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Build Status GoDoc

OpenOCR makes it simple to host your own OCR REST API.

The heavy lifting OCR work is handled by Tesseract OCR.

Docker is used to containerize the various components of the service.

screenshot

Features

  • Scalable message passing architecture via RabbitMQ.
  • Platform independence via Docker containers.
  • Supports 31 languages in addition to English
  • Ability to use an image pre-processing chain. An example using Stroke Width Transform is provided.
  • Pass arguments to Tesseract such as character whitelist and page segment mode.
  • REST API docs
  • A Go REST client is available.

Launching OpenOCR on a Docker PAAS

OpenOCR can easily run on any PAAS that supports Docker containers. Here are the instructions for a few that have already been tested:

If your preferred PAAS isn't listed, please open a Github issue to request instructions.

Launching OpenOCR on Ubuntu 14.04

OpenOCR can be launched on anything that supports Docker, such as Ubuntu 14.04.

Here's how to install it from scratch and verify that it's working correctly.

Install Docker

See Installing Docker on Ubuntu instructions.

Find out your host address

$ ifconfig
eth0      Link encap:Ethernet  HWaddr 08:00:27:43:40:c7
          inet addr:10.0.2.15  Bcast:10.0.2.255  Mask:255.255.255.0
          ...

The ip address 10.0.2.15 will be used as the RABBITMQ_HOST env variable below.

Launch docker images

Here's how to launch the docker images needed for OpenOCR.

$ curl -O https://raw.githubusercontent.com/tleyden/open-ocr/master/launcher/launcher.sh
$ export RABBITMQ_HOST=10.0.2.15 RABBITMQ_PASS=supersecret2 HTTP_PORT=8080
$ chmod +x launcher.sh
$ ./launcher.sh

This will start three docker instances:

You are now ready to decode images → text via your REST API.

Launching OpenOCR with Fig

  • Install docker
  • Install fig
  • Checkout OpenOCR repository or at least copy all files and subdirectories from OpenOCR fig directory
  • cd fig directory
  • run fig up to see the log in console or fig up -d to run containers as daemons

Fig will start four docker instances

Test the REST API

Request

$ curl -X POST -H "Content-Type: application/json" -d '{"img_url":"http://bit.ly/ocrimage","engine":"tesseract"}' http://10.0.2.15:$HTTP_PORT/ocr

Response

It will return the decoded text for the test image:

< HTTP/1.1 200 OK
< Date: Tue, 13 May 2014 16:18:50 GMT
< Content-Length: 283
< Content-Type: text/plain; charset=utf-8
<
You can create local variables for the pipelines within the template by
prefixing the variable name with a “$" sign. Variable names have to be
composed of alphanumeric characters and the underscore. In the example
below I have used a few variations that work for variable names.

The REST API also supports:

  • Uploading the image content via multipart/related, rather than passing an image URL. (example client code provided in the Go REST client)
  • Tesseract config vars (eg, equivalent of -c arguments when using Tesseract via the command line) and Page Seg Mode
  • Ability to use an image pre-processing chain, eg Stroke Width Transform.
  • Non-English languages

See the REST API docs and the Go REST client for details.

Uploading local files using curl

The supplied docs/upload-local-file.sh provides an example of how to upload a local file using curl with multipart/related encoding of the json and image data:

  • usage: docs/upload-local-file.sh <urlendpoint> <file> [mimetype]
  • download the example ocr image wget http://bit.ly/ocrimage
  • example: docs/upload-local-file.sh http://10.0.2.15:$HTTP_PORT/ocr-file-upload ocrimage

Community

License

OpenOCR is Open Source and available under the Apache 2 License.

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Run your own OCR-as-a-Service using Tesseract and Docker

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