Code viewer for World: Character recognition neur...

// Cloned by Harshita Tyagi on 27 Nov 2022 from World "Character recognition neural network" by "Coding Train" project
// Please leave this clone trail here.


// Port of Character recognition neural network from here:
// https://github.com/CodingTrain/Toy-Neural-Network-JS/tree/master/examples/mnist
// with many modifications


// --- defined by MNIST - do not change these ---------------------------------------

const PIXELS        = 28;                       // images in data set are tiny
const PIXELSSQUARED = PIXELS * PIXELS;

// number of training and test exemplars in the data set:
const NOTRAIN = 60000;
const NOTEST  = 10000;


//by Harshita Tyagi
//--- can modify all these --------------------------------------------------
var letters = ["a","b","c","d","e","f","g","h","i","j","k","l","m","n","o","p","q","r","s","t","u","v","w","x","y","z"];

// no of nodes in network
const noinput  = PIXELSSQUARED;
const nohidden = 40;
const nooutput = 26;

const learningrate = 0.1;   // default 0.1

// should we train every timestep or not
let do_training = true;

// how many to train and test per timestep
const TRAINPERSTEP = 30;
const TESTPERSTEP  = 5;

// multiply it by this to magnify for display
const ZOOMFACTOR    = 7;
const ZOOMPIXELS    = ZOOMFACTOR * PIXELS;

// 3 rows of
// large image + 50 gap + small image
// 50 gap between rows

const canvaswidth = ( PIXELS + ZOOMPIXELS ) + 50;
const canvasheight = ( ZOOMPIXELS * 3 ) + 100;


const DOODLE_THICK = 10;    // thickness of doodle lines
const DOODLE_BLUR = 3;      // blur factor applied to doodles


let mnist;
// all data is loaded into this
// mnist.train_images
// mnist.train_labels
// mnist.test_images
// mnist.test_labels


let nn;

let trainrun = 1;
let train_index = 0;

let testrun = 1;
let test_index = 0;
let total_tests = 0;
let total_correct = 0;

// images in LHS:
let doodle, demo;
let doodle_exists = false;
let demo_exists = false;

let mousedrag = false;      // are we in the middle of a mouse drag drawing?

AB.runloggedin;                 // Boolean. Are we running logged in.  
AB.myuserid;                    // The userid of the run, if running logged in.  
// save inputs to global var to inspect
// type these names in console
var train_inputs, test_inputs, demo_inputs, doodle_inputs;

function saveData()
{
    
    AB.saveData (nn);
}

function restoreData()
{
	 AB.restoreData ( function ( nnet )            
	 {
    	nn = NeuralNetwork.deserialize(nnet);
	    loadData();
	 });
}
// Matrix.randomize() is changed to point to this. Must be defined by user of Matrix.

function randomWeight()
{
    return ( AB.randomFloatAtoB ( -0.5, 0.5 ) );
            // Coding Train default is -1 to 1
}


// make run header bigger
AB.headerCSS ( { "max-height": "95vh" } );




//--- start of AB.msgs structure: ---------------------------------------------------------
// We output a serious of AB.msgs to put data at various places in the run header
var thehtml;

  // 1 Doodle header
  thehtml = "<hr> <h1> 1. Doodle </h1> Top row: Doodle (left) and shrunk (right). <br> " +
        " Draw your doodle in top LHS. <button onclick='wipeDoodle();' class='normbutton' >Clear doodle</button> <br> ";
   AB.msg ( thehtml, 1 );

  // 2 Doodle variable data (guess)

  // 3 Training header
  thehtml = "<hr> <h1> 2. Training </h1> Middle row: Training image magnified (left) and original (right). <br>  " +
        " <button onclick='do_training = false;' class='normbutton' >Stop training</button> <br> ";
  AB.msg ( thehtml, 3 );

  // 4 variable training data

  // 5 Testing header
  thehtml = "<h3> Hidden tests </h3> " ;
  AB.msg ( thehtml, 5 );

  // 6 variable testing data

  // 7 Demo header
  thehtml = "<hr> <h1> 3. Demo </h1> Bottom row: Test image magnified (left) and  original (right). <br>" +
        " The network is <i>not</i> trained on any of these images. <br> " +
        " <button onclick='makeDemo();' class='normbutton' >Demo test image</button> <br> ";
   AB.msg ( thehtml, 7 );

  // 8 Demo variable data (random demo ID)
  // 9 Demo variable data (changing guess)
  thehtml = "<br> <button id='save' onclick='saveData();' class='normbutton mybutton' >Save work</button> <br> " +
                "<br> <button onclick='restoreData();' class='normbutton mybutton' >Restore work</button> ";
    AB.msg(thehtml, 15);
    

const greenspan = "<span style='font-weight:bold; font-size:x-large; color:darkgreen'> "  ;

//--- end of AB.msgs structure: ---------------------------------------------------------




function setup()
{
  createCanvas ( canvaswidth, canvasheight );

  doodle = createGraphics ( ZOOMPIXELS, ZOOMPIXELS );       // doodle on larger canvas
  doodle.pixelDensity(1);

// JS load other JS
// maybe have a loading screen while loading the JS and the data set

      AB.loadingScreen();

 $.getScript ( "/uploads/codingtrain/matrix.js", function()
 {
   $.getScript ( "/uploads/codingtrain/nn.js", function()
   {
        $.getScript ( "/uploads/harshita1995/mymnist.js", function() // added by Harshita Tyagi
        {
            console.log ("All JS loaded");
            nn = new NeuralNetwork(  noinput, nohidden, nooutput );
            nn.setLearningRate ( learningrate );
            loadData();
        });
   });
 });
}



// load data set from local file (on this server)

function loadData()
{
  loadMNIST ( function(data)
  {
    mnist = data;
    console.log ("All data loaded into mnist object:")
    console.log(mnist);
    AB.removeLoading();     // if no loading screen exists, this does nothing
  });
}



function getImage ( img )      // make a P5 image object from a raw data array
{
    let theimage  = createImage (PIXELS, PIXELS);    // make blank image, then populate it
    theimage.loadPixels();

    for (let i = 0; i < PIXELSSQUARED ; i++)
    {
        let bright = img[i];
        let index = i * 4;
        theimage.pixels[index + 0] = bright;
        theimage.pixels[index + 1] = bright;
        theimage.pixels[index + 2] = bright;
        theimage.pixels[index + 3] = 255;
    }

    theimage.updatePixels();
    return theimage;
}


function getInputs ( img )      // convert img array into normalised input array
{
    let inputs = [];
    for (let i = 0; i < PIXELSSQUARED ; i++)
    {
        let bright = img[i];
        inputs[i] = bright / 255;       // normalise to 0 to 1
    }
    return ( inputs );
}



function trainit (show)        // train the network with a single exemplar, from global var "train_index", show visual on or off
{
  let img   = mnist.train_images[train_index];
  let label = mnist.train_labels[train_index];

  // optional - show visual of the image
  if (show)
  {
    var theimage = getImage ( img );    // get image from data array
    image ( theimage,   0,                ZOOMPIXELS+50,    ZOOMPIXELS,     ZOOMPIXELS  );      // magnified
    image ( theimage,   ZOOMPIXELS+50,    ZOOMPIXELS+50,    PIXELS,         PIXELS      );      // original
  }

  // set up the inputs
  let inputs = getInputs ( img );       // get inputs from data array

  //added by Harshita Tyagi
  // set up the outputs
  let targets = [0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0];
  targets[label] = 1;       // change one output location to 1, the rest stay at 0

  // console.log(train_index);
  // console.log(inputs);
  // console.log(targets);

  train_inputs = inputs;        // can inspect in console
  if(targets.length ==26) nn.train ( inputs, targets ); // Added by Harshita Tyagi

  thehtml = " trainrun: " + trainrun + "<br> no: " + train_index ;
  AB.msg ( thehtml, 4 );

  train_index++;
  if ( train_index == NOTRAIN )
  {
    train_index = 0;
    console.log( "finished trainrun: " + trainrun );
    trainrun++;
  }
}


function testit()    // test the network with a single exemplar, from global var "test_index"
{
  let img   = mnist.test_images[test_index];
  let label = mnist.test_labels[test_index];

  // set up the inputs
  let inputs = getInputs ( img );

  test_inputs = inputs;        // can inspect in console
  let prediction    = nn.predict(inputs);       // array of outputs
  let guess         = findMax(prediction);      // the top output

  total_tests++;
  if (guess == label)  total_correct++;

  let percent = (total_correct / total_tests) * 100 ;

  thehtml =  " testrun: " + testrun + "<br> no: " + total_tests + " <br> " +
        " correct: " + total_correct + "<br>" +
        "  score: " + greenspan + percent.toFixed(2) + "</span>";
  AB.msg ( thehtml, 6 );

  test_index++;
  if ( test_index == NOTEST )
  {
    console.log( "finished testrun: " + testrun + " score: " + percent.toFixed(2) );
    testrun++;
    test_index = 0;
    total_tests = 0;
    total_correct = 0;
  }
}




//--- find no.1 (and maybe no.2) output nodes ---------------------------------------
// (restriction) assumes array values start at 0 (which is true for output nodes)


function find12 (a)         // return array showing indexes of no.1 and no.2 values in array
{
  let no1 = 0;
  let no2 = 0;
  let no1value = 0;
  let no2value = 0;

  for (let i = 0; i < a.length; i++)
  {
    if (a[i] > no1value)   // new no1
    {
      // old no1 becomes no2
      no2 = no1;
      no2value = no1value;
      // now put in the new no1
      no1 = i;
      no1value = a[i];
    }
    else if (a[i] > no2value)  // new no2
    {
      no2 = i;
      no2value = a[i];
    }
  }

  var b = [ no1, no2 ];
  return b;
}



// just get the maximum - separate function for speed - done many times
// find our guess - the max of the output nodes array

function findMax (a)
{
  let no1 = 0;
  let no1value = 0;

  for (let i = 0; i < a.length; i++)
  {
    if (a[i] > no1value)
    {
      no1 = i;
      no1value = a[i];
    }
  }

  return no1;
}




// --- the draw function -------------------------------------------------------------
// every step:

function draw()
{
  // check if libraries and data loaded yet:
  if ( typeof mnist == 'undefined' ) return;


// how can we get white doodle on black background on yellow canvas?
       //background('black');    doodle.background('white');

      background ('black');

if ( do_training )
{
  // do some training per step
    for (let i = 0; i < TRAINPERSTEP; i++)
    {
      if (i == 0)    trainit(true);    // show only one per step - still flashes by
      else           trainit(false);
    }

  // do some testing per step
    for (let i = 0; i < TESTPERSTEP; i++)
      testit();
}

  // keep drawing demo and doodle images
  // and keep guessing - we will update our guess as time goes on

  if ( demo_exists )
  {
    drawDemo();
    guessDemo();
  }
  if ( doodle_exists )
  {
    drawDoodle();
    guessDoodle();
  }


// detect doodle drawing
// (restriction) the following assumes doodle starts at 0,0

  if ( mouseIsPressed )         // gets called when we click buttons, as well as if in doodle corner
  {
     // console.log ( mouseX + " " + mouseY + " " + pmouseX + " " + pmouseY );
     var MAX = ZOOMPIXELS + 20;     // can draw up to this pixels in corner
     if ( (mouseX < MAX) && (mouseY < MAX) && (pmouseX < MAX) && (pmouseY < MAX) )
     {
        mousedrag = true;       // start a mouse drag
        doodle_exists = true;
        doodle.stroke('white');
        doodle.strokeWeight( DOODLE_THICK );
        doodle.line(mouseX, mouseY, pmouseX, pmouseY);
     }
  }
  else
  {
      // are we exiting a drawing
      if ( mousedrag )
      {
            mousedrag = false;
            // console.log ("Exiting draw. Now blurring.");
            doodle.filter (BLUR, DOODLE_BLUR);    // just blur once
            //   console.log (doodle);
      }
  }
}




//--- demo -------------------------------------------------------------
// demo some test image and predict it
// get it from test set so have not used it in training


function makeDemo()
{
    demo_exists = true;
    var  i = AB.randomIntAtoB ( 0, NOTEST - 1 );

    demo        = mnist.test_images[i];
    var label   = mnist.test_labels[i];

   thehtml =  "Test image no: " + i + "<br>" +
            "Classification: " + label + "<br>" ;
   AB.msg ( thehtml, 8 );

   // type "demo" in console to see raw data
}


function drawDemo()
{
    var theimage = getImage ( demo );
     //  console.log (theimage);

    image ( theimage,   0,                canvasheight - ZOOMPIXELS,    ZOOMPIXELS,     ZOOMPIXELS  );      // magnified
    image ( theimage,   ZOOMPIXELS+50,    canvasheight - ZOOMPIXELS,    PIXELS,         PIXELS      );      // original
}


function guessDemo()
{
   let inputs = getInputs ( demo );

  demo_inputs = inputs;  // can inspect in console

  let prediction    = nn.predict(inputs);       // array of outputs
  let guess         = findMax(prediction);      // the top output

   thehtml =   " We classify it as: " + greenspan + letters[guess-1] + "</span>" ;
   AB.msg ( thehtml, 9 );
}




//--- doodle -------------------------------------------------------------

function drawDoodle()
{
    // doodle is createGraphics not createImage
    let theimage = doodle.get();
    // console.log (theimage);

    image ( theimage,   0,                0,    ZOOMPIXELS,     ZOOMPIXELS  );      // original
    image ( theimage,   ZOOMPIXELS+50,    0,    PIXELS,         PIXELS      );      // shrunk
}


function guessDoodle()
{
   // doodle is createGraphics not createImage
   let img = doodle.get();

  img.resize ( PIXELS, PIXELS );
  img.loadPixels();

  // set up inputs
  let inputs = [];
  for (let i = 0; i < PIXELSSQUARED ; i++)
  {
     inputs[i] = img.pixels[i * 4] / 255;
  }

  doodle_inputs = inputs;     // can inspect in console

  // feed forward to make prediction
  let prediction    = nn.predict(inputs);       // array of outputs
  let b             = find12(prediction);       // get no.1 and no.2 guesses

  thehtml =   " We classify it as: " + greenspan + letters[b[0]] + "</span> <br>" +
            " No.2 guess is: " + greenspan + letters[b[1]] + "</span>";
  AB.msg ( thehtml, 2 );
}


function wipeDoodle()
{
    doodle_exists = false;
    doodle.background('black');
}




// --- debugging --------------------------------------------------
// in console
// showInputs(demo_inputs);
// showInputs(doodle_inputs);


function showInputs ( inputs )
// display inputs row by row, corresponding to square of pixels
{
    var str = "";
    for (let i = 0; i < inputs.length; i++)
    {
      if ( i % PIXELS == 0 )    str = str + "\n";                                   // new line for each row of pixels
      var value = inputs[i];
      str = str + " " + value.toFixed(2) ;
    }
    console.log (str);
}