Code viewer for World: Character recognition neur...
// Name:Sagar Gatla
// Student no.: 22262265
// Credits: Dheera(21261395)
// Cloned by sagar gatla on 3 Dec 2022 from World "CharRecognition_UsingCNN (clone by Dheera(21261395))" by Dheera 
// Please leave this clone trail here.
 

const PIXELS = 28, PIXELSSQUARED = PIXELS * PIXELS, NOTRAIN = 124800, NOTEST = 20800, noinput = PIXELSSQUARED, nohidden = 64, nooutput = 10, learningrate = 0.1;
let do_training = true;
const TRAINPERSTEP = 15, TESTPERSTEP = 5, ZOOMFACTOR = 7, ZOOMPIXELS = 7 * PIXELS, canvaswidth = PIXELS + ZOOMPIXELS + 50, canvasheight = 3 * ZOOMPIXELS + 100, DOODLE_THICK = 18, DOODLE_BLUR = 3;
let mnist, mycnn, mycnnTrain, mycnnModel, doodle, demo, alphabets = ["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"], trainrun = 1, train_index = 0, testrun = 1, test_index = 0, total_tests = 0, total_correct = 0, doodle_exists = false, demo_exists = false, mousedrag = false;
var train_inputs, test_inputs, demo_inputs, doodle_inputs, thehtml;
AB.headerCSS({"max-height": "95vh"}), 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 and Re-draw</button> <br> ", AB.msg(thehtml, 1), thehtml = "<hr> <h1> 2. Training </h1> Middle row: Training image magnified (left) and original (right). <br>   <button onclick='do_training = false;' class='normbutton' >Pause training</button>  <button onclick='do_training = true;' class='normbutton' >Resume training</button> <br> ", AB.msg(thehtml, 3), thehtml = "<h3> Hidden tests </h3> ", AB.msg(thehtml, 5), 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);
const bluespan = "<span style='font-weight:bold; font-size:large; color:darkblue'> ";

function setup() {
  createCanvas(canvaswidth, canvasheight), (doodle = createGraphics(ZOOMPIXELS, ZOOMPIXELS)).pixelDensity(1), wipeDoodle(), AB.loadingScreen(), $.getScript("/uploads/codingtrain/matrix.js", function () {
    $.getScript("/uploads/sagarg/NN.js", function () {
      $.getScript("/uploads/sagarg/mnist_sagarg.js", function () {
        console.log("All JS Files loaded");
        
        // three input parameter to put in convnetJS library's Net library Net class
        let t = [];
        t.push({
                    type: "input",
                    out_sx: 28,
                    out_sy: 28,
                    out_depth: 1
                }), t.push({
                    type: "conv",
                    sx: 5,
                    filters: 8,
                    stride: 1,
                    pad: 2,
                    activation: "relu"
                }), t.push({
                    type: "pool",
                    sx: 2,
                    stride: 2
                }), t.push({
                    type: "conv",
                    sx: 5,
                    filters: 16,
                    stride: 1,
                    pad: 2,
                    activation: "relu"
                }), t.push({
                    type: "pool",
                    sx: 3,
                    stride: 3
                }), t.push({
                    type: "softmax",
                    num_classes: 26
                }), (mycnnModel = new convnetjs.Net).makeLayers(t), mycnnTrain = new convnetjs.SGDTrainer(mycnnModel, {
                    method: "adadelta",
                    momentum: .9,
                    batch_size: 10,
                    l2_decay: .001
                }), loadData()
      });
    });
  });
}

function loadData() {
  loadMNIST(function (t) {
    mnist = t;
    let e = 0;
    for (; e < NOTRAIN; e++) rotateImage(mnist.train_images[e]);            //rotate the image
    for (e = 0; e < NOTEST; e++) rotateImage(mnist.test_images[e]);
    console.log("All data loaded into Emnist object."), console.log(mnist), AB.removeLoading();
  });
}

// make a P5 image object from a raw data array
function getImage(t) {
  let e = createImage(PIXELS, PIXELS);
  e.loadPixels();
  for (let n = 0; n < PIXELSSQUARED; n++) {
    let o = t[n], s = 4 * n;
    e.pixels[s + 0] = o, e.pixels[s + 1] = o, e.pixels[s + 2] = o, e.pixels[s + 3] = 255;
  }
  return e.updatePixels(), e;
}

// convert img array into normalised input array
function getInputs(t) {    
  let e = [];
  for (let n = 0; n < PIXELSSQUARED; n++) {
    let o = t[n];
    e[n] = o / 255;
  }
  return e;
}


//rotation of MNIST dataset images
function rotateImage(t) {
  for (let e = 0; e < PIXELS; e++) for (let n = e; n < PIXELS; n++) {
    let o = e * PIXELS + n, s = n * PIXELS + e, i = t[o];
    t[o] = t[s], t[s] = i;
  }
}


// train the network with a single exemplar, from global var "train_index", show visual on or off 

function trainit(t) {           
  let e = mnist.train_images[train_index], n = mnist.train_labels[train_index];
  if (t) {
    var o = getImage(e);
    image(o, 0, ZOOMPIXELS + 50, ZOOMPIXELS, ZOOMPIXELS), image(o, ZOOMPIXELS + 50, ZOOMPIXELS + 50, PIXELS, PIXELS);
  }
  let s = getInputs(e);
  train_inputs = s;
  {
    let t = getmycnnInputs(s);
    mycnnTrain.train(t, n);
  }
  thehtml = " trainrun: " + trainrun + "<br> no: " + train_index, AB.msg(thehtml, 4), ++train_index == NOTRAIN && (train_index = 0, console.log("finished trainrun: " + trainrun), trainrun++);
}



//To compute the convolutional neural network's inputs
function getmycnnInputs(t) {
  for (var e = new convnetjs.Vol(28, 28, 1, 0), n = 0; n < PIXELSSQUARED; n++) e.w[n] = t[n];
  return e;
}


function testit() {
  let t = mnist.test_images[test_index], e = mnist.test_labels[test_index], n = getInputs(t), o = getmycnnInputs(n);
  test_inputs = n;
  let s = findMax(mycnnModel.forward(o).w);
  var i = getImage(t);
  image(i, 0, ZOOMPIXELS + 50, ZOOMPIXELS, ZOOMPIXELS), image(i, ZOOMPIXELS + 50, ZOOMPIXELS + 50, PIXELS, PIXELS), total_tests++, s == e && total_correct++;
  let a = total_correct / total_tests * 100;
  thehtml = " testrun: " + testrun + "<br> no: " + total_tests + " <br>  correct: " + total_correct + "<br>  score: " + bluespan + a.toFixed(2) + "</span>", AB.msg(thehtml, 6), ++test_index == NOTEST && (console.log("finished testrun: " + testrun + " score: " + a.toFixed(2)), testrun++, test_index = 0, total_tests = 0, total_correct = 0);
}


function find12(t) {
  let e = 0, n = 0, o = 0, s = 0;
  for (let i = 0; i < t.length; i++) t[i] > o ? (n = e, s = o, e = i, o = t[i]) : t[i] > s && (n = i, s = t[i]);
  return [e, n];
}
function findMax(t) {
  let e = 0, n = 0;
  for (let o = 0; o < t.length; o++) t[o] > n && (e = o, n = t[o]);
  return e;
}
function draw() {
  if (void 0 !== mnist) {
    if (background("black"), strokeWeight(1), stroke("green"), rect(0, 0, ZOOMPIXELS, ZOOMPIXELS), textSize(10), textAlign(CENTER), text("DOODLE HERE", ZOOMPIXELS / 2, ZOOMPIXELS / 2), do_training) {
      for (let t = 0; t < TRAINPERSTEP; t++) trainit(0 === t);
      for (let t = 0; t < TESTPERSTEP; t++) testit();
    }
    if (demo_exists && (drawDemo(), guessDemo()), doodle_exists && (drawDoodle(), guessDoodle()), mouseIsPressed) {
      var t = ZOOMPIXELS + 20;
      mouseX < t && mouseY < t && pmouseX < t && pmouseY < t && (mousedrag = true, doodle_exists = true, doodle.stroke("red"), strokeJoin(ROUND), doodle.strokeWeight(DOODLE_THICK), doodle.line(mouseX, mouseY, pmouseX, pmouseY));
    } else mousedrag && (mousedrag = false, doodle.filter(BLUR, DOODLE_BLUR));
  }
}
function makeDemo() {
  demo_exists = true;
  var t = AB.randomIntAtoB(0, NOTEST - 1);
  demo = mnist.test_images[t];
  var e = mnist.test_labels[t];
  thehtml = "Test image no: " + t + "<br>Classification: " + alphabets[e - 1] + "<br>", AB.msg(thehtml, 8);
}
function drawDemo() {
  var t = getImage(demo);
  image(t, 0, canvasheight - ZOOMPIXELS, ZOOMPIXELS, ZOOMPIXELS), image(t, ZOOMPIXELS + 50, canvasheight - ZOOMPIXELS, PIXELS, PIXELS);
}
function guessDemo() {
  let t = getInputs(demo);
  demo_inputs = t;
  let e = getmycnnInputs(t), n = findMax(mycnnModel.forward(e).w);
  thehtml = " We classify it as: " + bluespan + alphabets[n - 1] + "</span>", AB.msg(thehtml, 9);
}
function drawDoodle() {
  let t = doodle.get();
  image(t, 0, 0, ZOOMPIXELS, ZOOMPIXELS), image(t, ZOOMPIXELS + 20, 0, PIXELS, PIXELS);
}
function guessDoodle() {
  let t = doodle.get();
  t.resize(PIXELS, PIXELS), t.loadPixels();
  let e = [];
  for (let n = 0; n < PIXELSSQUARED; n++) e[n] = t.pixels[4 * n] / 255;
  doodle_inputs = e;
  let n = getmycnnInputs(e), o = find12(mycnnModel.forward(n).w);
  thehtml = " Our 1st Guess is: " + bluespan + alphabets[o[0] - 1] + "</span> <br> Our 2nd Guess is: " + bluespan + alphabets[o[1] - 1] + "</span>", AB.msg(thehtml, 2);
}
function wipeDoodle() {
  doodle_exists = false, doodle.background("black");
}
function showInputs(t) {
  var e = "";
  for (let n = 0; n < t.length; n++) {
    n % PIXELS == 0 && (e += "\n"), e = e + " " + t[n].toFixed(2);
  }
  console.log(e);
}