Skip to content

VisionCamera Frame Processor Plugin to detect text in real time using MLKit Text Detector (OCR)

License

Notifications You must be signed in to change notification settings

robinheinze/vision-camera-ocr

 
 

Repository files navigation

vision-camera-ocr

Summary

A VisionCamera Frame Processor Plugin to preform text detection on images using MLKit Vision Text Recognition.

Installation

yarn add vision-camera-ocr
cd ios && pod install

Add the plugin to your babel.config.js:

module.exports = {
  plugins: [
    [
      'react-native-reanimated/plugin',
      {
        globals: ['__scanOCR'],
      },
    ],

    // ...

Note: You have to restart metro-bundler for changes in the babel.config.js file to take effect.

Usage

import { labelImage } from "vision-camera-image-labeler";

// ...
const frameProcessor = useFrameProcessor((frame) => {
  'worklet';
  const scannedOcr = scanOCR(frame);
}, []);

Data

scanOCR(frame) returns an OCRFrame with the following data shape. See the example for how to use this in your app.

 OCRFrame = {
   result: {
     text: string, // Raw result text
     blocks: Block[], // Each recognized element broken into blocks
   ;
};

The text object closely resembles the object documented in the MLKit documents. https://developers.google.com/ml-kit/vision/text-recognition#text_structure

The Text Recognizer segments text into blocks, lines, and elements. Roughly speaking:

a Block is a contiguous set of text lines, such as a paragraph or column,

a Line is a contiguous set of words on the same axis, and

an Element is a contiguous set of alphanumeric characters ("word") on the same axis in most Latin languages, or a character in others

Contributing

See the contributing guide to learn how to contribute to the repository and the development workflow.

License

MIT

About

VisionCamera Frame Processor Plugin to detect text in real time using MLKit Text Detector (OCR)

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Java 24.6%
  • Kotlin 20.2%
  • Swift 16.8%
  • TypeScript 14.0%
  • Objective-C 13.4%
  • JavaScript 6.0%
  • Other 5.0%