0

I'm trying to use FrameDetector to process an existing MP4 file. I've put the video file and the HTML/JavaScript below inside a node.js server and run it at localhost, so there shouldn't be aby CORS issues.

The detector starts correctly, but when I send image data to it, the same two things happen every time:

  1. The first request returns an empty faces array
  2. The second request returns an error (with a unique, trailing number each time): worker code reported an exception14920304.

I'm not really sure what to do with that message- does anyone have any suggestions?

//- FrameDetector.pug
html
  head
    title FrameDetector Demo
    script(src='https://download.affectiva.com/js/3.2/affdex.js')
  body
    canvas#canvas
    video#video-to-analyze(preload="auto" controls="true")
      source(type="video/mp4" src="video/my-video.mp4")
    script(src='js/FrameDetector.js')

and

// FrameDetector.js
var heartbeat, startTimestamp;

document.addEventListener('DOMContentLoaded', function(){
  var v = document.getElementById('video-to-analyze');
  var canvas = document.getElementById('canvas');
  var context = canvas.getContext('2d');

  var cw = Math.floor(canvas.clientWidth / 100);
  var ch = Math.floor(canvas.clientHeight / 100);
  canvas.width = cw;
  canvas.height = ch;

  v.addEventListener('play', function(){
      draw(this,context,cw,ch);
  },false);

},false);

function draw(v,c,w,h) {
  if(v.paused || v.ended) return false;
  c.drawImage(v,0,0,w,h);
  setTimeout(draw,20,v,c,w,h);
}







function analyzeVideoFrame() {
  //Get a canvas element from DOM
  var aCanvas = document.getElementById("canvas");
  var context = aCanvas.getContext('2d');

  //Get imageData object.
  var imageData = context.getImageData(0, 0, 640, 360);
  console.log("Captured imageData.", imageData);

  //Get current time in seconds
  var now = (new Date()).getTime() / 1000;

  //Get delta time between the first frame and the current frame.
  var deltaTime = now - startTimestamp;

  //Process the frame
  detector.process(imageData, deltaTime);
}

function onImageResultsSuccess(faces, image, timestamp) {
  console.log("onImageResultsSuccess:", timestamp, faces.length, faces[0]);
}

function onImageResultsFailure(image, timestamp, err_detail) {
  console.error("onImageResultsFailure:", timestamp, err_detail);
  clearInterval(heartbeat);
}



if (typeof(affdex)=="undefined") {
  console.log("The affdex global variable has not been loaded.");
}

var detector = new affdex.FrameDetector(affdex.FaceDetectorMode.LARGE_FACES);

detector.detectAllExpressions();
detector.detectAllEmotions();
detector.detectAllAppearance();

detector.addEventListener("onInitializeSuccess", function() {
  document.getElementById('video-to-analyze').play();
  startTimestamp = (new Date()).getTime() / 1000;
  heartbeat = setInterval(analyzeVideoFrame, 1000);
});
detector.addEventListener("onInitializeFailure", function() {
  console.error("Affectiva failed to initialize.");
});

detector.addEventListener("onImageResultsSuccess", onImageResultsSuccess);
detector.addEventListener("onImageResultsFailure", onImageResultsFailure);

detector.start();

Output in the console:

Captured imageData. ImageData {data: Uint8ClampedArray(921600), width: 640, height: 360}
onImageResultsSuccess: 0.005000114440917969 0 undefined
Captured imageData. ImageData {data: Uint8ClampedArray(921600), width: 640, height: 360}
onImageResultsFailure: 0.0009999275207519531 worker code reported an exception14920304
0

Got it. Once I got the image drawn correctly to the canvas element, the Affectiva code worked fine. Here's a my corrected code:

//- FrameDetector.pug
html
  head
    title FrameDetector Demo
    script(src='http://ajax.googleapis.com/ajax/libs/jquery/1/jquery.min.js')
    script(src='https://download.affectiva.com/js/3.2/affdex.js')
  body
    canvas#canvas(width="640" height="360" style="display:none;")
    video#video(preload="auto" controls="true")
      source(type="video/mp4" src="video/my-video.mp4")
    script(src='js/FrameDetector.js')

and

// FrameDetector.js
var heartbeat, startTimestamp;

function onVideoPlay() {
  var $this = this; //cache
  (function loop() {
    if (!$this.paused && !$this.ended) {
      ctx.drawImage($this, 0, 0);
      setTimeout(loop, 1000 / 30); // drawing at 30fps
    }
  })();
}

function analyzeVideoFrame() {
  //Get a canvas element from DOM
  var aCanvas = document.getElementById("canvas");
  var context = aCanvas.getContext('2d');


  //Get imageData object.
  var imageData = context.getImageData(0, 0, 640, 360);
  console.log("Captured imageData.", imageData);

  //Get current time in seconds
  var now = (new Date()).getTime() / 1000;

  //Get delta time between the first frame and the current frame.
  var deltaTime = now - startTimestamp;

  //Process the frame
  detector.process(imageData, deltaTime);
}

function onImageResultsSuccess(faces, image, timestamp) {
  console.log("onImageResultsSuccess:", timestamp, faces.length, faces[0]);
}

function onImageResultsFailure(image, timestamp, err_detail) {
  console.error("onImageResultsFailure:", timestamp, err_detail);
  clearInterval(heartbeat);
}


$(function() {
  if (typeof(affdex)=="undefined") {
    console.log("The affdex global variable has not been loaded.");
  }

  var canvas = document.getElementById('canvas');
  var ctx = canvas.getContext('2d');
  var video = document.getElementById('video');
  var detector = new affdex.FrameDetector(affdex.FaceDetectorMode.LARGE_FACES);

  // Set up a loop to draw frames to the canvas element
  video.addEventListener('play', onVideoPlay, 0);


  // Set up and start the detector
  detector.detectAllExpressions();
  detector.detectAllEmotions();
  detector.detectAllAppearance();

  detector.addEventListener("onInitializeSuccess", function() {
    document.getElementById('video').play();
    startTimestamp = (new Date()).getTime() / 1000;
    heartbeat = setInterval(analyzeVideoFrame, 1000);
  });
  detector.addEventListener("onInitializeFailure", function() {
    console.error("Affectiva failed to initialize.");
  });

  detector.addEventListener("onImageResultsSuccess", onImageResultsSuccess);
  detector.addEventListener("onImageResultsFailure", onImageResultsFailure);

  detector.start();
});

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.