Skip to content

React Native library for TensorFlow Lite forked from shaqian repository and updated for personal use.

License

Notifications You must be signed in to change notification settings

leonamjlpaula/tflite-react-native-alternative

 
 

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

13 Commits
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

tflite-react-native-alternative

A React Native library for accessing TensorFlow Lite API. Supports Classification, Object Detection, Deeplab and PoseNet on both iOS and Android.

Table of Contents

Installation

$ npm install tflite-react-native-alternative --save

Add models to the project

iOS

In XCode, right click on the project folder, click Add Files to "xxx"..., select the model and label files.

Android

  1. In Android Studio (1.0 & above), right-click on the app folder and go to New > Folder > Assets Folder. Click Finish to create the assets folder.

  2. Place the model and label files at app/src/main/assets.

  3. In android/app/build.gradle, add the following setting in android block.

    aaptOptions {
        noCompress 'tflite'
    }

Usage

import Tflite from 'tflite-react-native';

let tflite = new Tflite();

Load model:

tflite.loadModel({
  model: 'models/mobilenet_v1_1.0_224.tflite',// required
  labels: 'models/mobilenet_v1_1.0_224.txt',  // required
  numThreads: 1,                              // defaults to 1  
},
(err, res) => {
  if(err)
    console.log(err);
  else
    console.log(res);
});

Image classification:

tflite.runModelOnImage({
  path: imagePath,  // required
  imageMean: 128.0, // defaults to 127.5
  imageStd: 128.0,  // defaults to 127.5
  numResults: 3,    // defaults to 5
  threshold: 0.05   // defaults to 0.1
},
(err, res) => {
  if(err)
    console.log(err);
  else
    console.log(res);
});
  • Output fomart:
{
  index: 0,
  label: "person",
  confidence: 0.629
}

Object detection:

SSD MobileNet

tflite.detectObjectOnImage({
  path: imagePath,
  model: 'SSDMobileNet',
  imageMean: 127.5,
  imageStd: 127.5,
  threshold: 0.3,       // defaults to 0.1
  numResultsPerClass: 2,// defaults to 5
},
(err, res) => {
  if(err)
    console.log(err);
  else
    console.log(res);
});

Tiny YOLOv2

tflite.detectObjectOnImage({
  path: imagePath,
  model: 'YOLO',
  imageMean: 0.0,
  imageStd: 255.0,
  threshold: 0.3,        // defaults to 0.1
  numResultsPerClass: 2, // defaults to 5
  anchors: [...],        // defaults to [0.57273,0.677385,1.87446,2.06253,3.33843,5.47434,7.88282,3.52778,9.77052,9.16828]
  blockSize: 32,         // defaults to 32 
},
(err, res) => {
  if(err)
    console.log(err);
  else
    console.log(res);
});
  • Output fomart:

x, y, w, h are between [0, 1]. You can scale x, w by the width and y, h by the height of the image.

{
  detectedClass: "hot dog",
  confidenceInClass: 0.123,
  rect: {
    x: 0.15,
    y: 0.33,
    w: 0.80,
    h: 0.27
  }
}

Deeplab

tflite.runSegmentationOnImage({
  path: imagePath,
  imageMean: 127.5,      // defaults to 127.5
  imageStd: 127.5,       // defaults to 127.5
  labelColors: [...],    // defaults to https://github.com/shaqian/tflite-react-native/blob/master/index.js#L59
  outputType: "png",     // defaults to "png"
},
(err, res) => {
  if(err)
    console.log(err);
  else
    console.log(res);
});
  • Output format:

    The output of Deeplab inference is Uint8List type. Depending on the outputType used, the output is:

    • (if outputType is png) byte array of a png image

    • (otherwise) byte array of r, g, b, a values of the pixels

PoseNet

Model is from StackOverflow thread.

tflite.runPoseNetOnImage({
  path: imagePath,
  imageMean: 127.5,      // defaults to 127.5
  imageStd: 127.5,       // defaults to 127.5
  numResults: 3,         // defaults to 5
  threshold: 0.8,        // defaults to 0.5
  nmsRadius: 20,         // defaults to 20 
},
(err, res) => {
  if(err)
    console.log(err);
  else
    console.log(res);
});
  • Output format:

x, y are between [0, 1]. You can scale x by the width and y by the height of the image.

[ // array of poses/persons
  { // pose #1
    score: 0.6324902,
    keypoints: {
      0: {
        x: 0.250,
        y: 0.125,
        part: nose,
        score: 0.9971070
      },
      1: {
        x: 0.230,
        y: 0.105,
        part: leftEye,
        score: 0.9978438
      }
      ......
    }
  },
  { // pose #2
    score: 0.32534285,
    keypoints: {
      0: {
        x: 0.402,
        y: 0.538,
        part: nose,
        score: 0.8798978
      },
      1: {
        x: 0.380,
        y: 0.513,
        part: leftEye,
        score: 0.7090239
      }
      ......
    }
  },
  ......
]

Release resources:

tflite.close();

About

React Native library for TensorFlow Lite forked from shaqian repository and updated for personal use.

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Objective-C++ 47.4%
  • Java 46.4%
  • JavaScript 4.6%
  • Ruby 1.1%
  • Other 0.5%