10

I'm currently attempting to figure out how to convert a input png into a tensor with tensorflow.js so I can feed it into my model for training. Currently I'm capturing the image, saving it locally, reading it with fs.readFileSync, and then creating a buffer. Where i'm a bit lost is normalizing the buffer values from 0-244 to 0-1, then creating a tensor from this buffer to feed into the model.fit function as the X arg. I also don't really know how to set up my labels file and properly convert that into a buffer for the Y arg. (https://js.tensorflow.org/api/0.11.2/#tf.Model.fit) Any insight into the proper usage / configuration of images into tensors for using tensorflow.js would be greatly appreciated.

Repo is here; https://github.com/Durban-Designer/Fighter-Ai

code for loading local image in data.js;

const tf = require('@tensorflow/tfjs');
const assert = require('assert');
const IMAGE_HEADER_BYTES = 32;
const IMAGE_HEIGHT = 600;
const IMAGE_WIDTH = 800;
const IMAGE_FLAT_SIZE = IMAGE_HEIGHT * IMAGE_WIDTH;

function loadHeaderValues(buffer, headerLength) {
  const headerValues = [];
  for (let i = 0; i < headerLength / 4; i++) {
    headerValues[i] = buffer.readUInt32BE(i * 4);
  }
  return headerValues;
}

...
...
class Dataset {
 async loadLocalImage(filename) {
 const buffer = fs.readFileSync(filename);

 const headerBytes = IMAGE_HEADER_BYTES;
 const recordBytes = IMAGE_HEIGHT * IMAGE_WIDTH;

 const headerValues = loadHeaderValues(buffer, headerBytes);
 console.log(headerValues, buffer);
 assert.equal(headerValues[5], IMAGE_HEIGHT);
 assert.equal(headerValues[4], IMAGE_WIDTH);

 const images = [];
 let index = headerBytes;
 while (index < buffer.byteLength) {
  const array = new Float32Array(recordBytes);
  for (let i = 0; i < recordBytes; i++) {
    // Normalize the pixel values into the 0-1 interval, from
    // the original 0-255 interval.
    array[i] = buffer.readUInt8(index++) / 255;
  }
  images.push(array);
 }

 assert.equal(images.length, headerValues[1]);
 return images;
 }
}
module.exports = new Dataset();

image capture loop in app.js;

const ioHook = require("iohook");
const tf = require('@tensorflow/tfjs');
var screenCap = require('desktop-screenshot');
require('@tensorflow/tfjs-node');
const data = require('./src/data');
const virtKeys = require('./src/virtKeys');
const model = require('./src/model');
var dir = __dirname;
var paused = true;
var loopInterval,
  image,
  imageData,
  result

ioHook.on('keyup', event => {
  if (event.keycode === 88) {
    if (paused) {
      paused = false;
      gameLoop();
    } else {
      paused = true;
    }
  }
});

ioHook.start();
function gameLoop () {
  if (!paused) {
    screenCap(dir + '\\image.png', {width: 800, height: 600, quality: 60}, function (error, complete) {
      if (error) {
        console.log(error);
      } else {
        imageData = await data.getImage(dir + '\\image.png')
        console.log(imageData);
        result = model.predict(imageData, {batchSize: 4});
        console.log(result);
        gameLoop();
      }
    })
  }
}

I know I use model.predict here, I wanted to get the actual image to tensor part working then figure out labels and model.fit() in train-tensor.js in the repo. I don't have any actual working code for training so I didn't include it in this question, sorry if it caused any confusion.

Thank you again!

Edit final working code

const { Image, createCanvas } = require('canvas');
const canvas = createCanvas(800, 600);
const ctx = canvas.getContext('2d');

async function loadLocalImage (filename) {
  try {
    var img = new Image()
    img.onload = () => ctx.drawImage(img, 0, 0);
    img.onerror = err => { throw err };
    img.src = filename;
    image = tf.fromPixels(canvas);
    return image;
  } catch (err) {
    console.log(err);
  }
}
...
...
async getImage(filename) {
    try {
      this.image = await loadLocalImage(filename);
    } catch (error) {
      console.log('error loading image', error);
    }
    return this.image;
  }
  • 1
    tf.fromPixels was deprecated in version 1.0.0, use: tf.browser.fromPixels() – Rajat Bhatt May 26 '19 at 14:28
9

tensorflowjs already has a method for this: tf.fromPixels(), tf.browser.fromPixels().

You just need to load the image into on of the accepted types(ImageData|HTMLImageElement|HTMLCanvasElement|HTMLVideoElement).

Your image loading Promise returns nothing because your async function doesn't return anything, just your callback, to fix this you need to create and resolve a promise yourself:

const imageGet = require('get-image-data');
async loadLocalImage(filename) {
    return new Promise((res,rej)=>{
    imageGet(filename, (err, info) => {
      if(err){
         rej(err);
         return;
      }
      const image = tf.fromPixels(info.data)
      console.log(image, '127');
      res(image);
    });
  }
  • I tried that but i'm still getting an undefined result from the promise, i'll edit the function into above since comments don't have breaks. – Royce Birnbaum Nov 9 '18 at 19:57
  • Your callback returns something not your async function – Sebastian Speitel Nov 9 '18 at 20:08
  • Thank you so much! – Royce Birnbaum Nov 9 '18 at 20:12
  • 3
    What about in tfjs-node? – Jodh Singh Jul 10 '19 at 9:57
  • 4
    In tfjs-node, things are much easier, const readImage = path => { const imageBuffer = fs.readFileSync(path); const tfimage = tfnode.node.decodeImage(imageBuffer); //default #channel 4 return tfimage; } – Mithilesh Feb 22 '20 at 6:26

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