Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

Does anyone have any ideas or steps or algorithms for performing Eye Detection on 2d images using javascript and HTML5?

I have already done converting RGB to YCbCr color space

Now I need some help on eye extraction

function hellow(e)
    var r,g,b,a,gray;
    var imageData = ctxBg.createImageData(gameWidth,gameHeight);
    var das =imageData.data;

    for(var i=0;i<=800;i++)
        for(var j=0;j<=640;j++)
            var d = (j*imageData.width+i)*4;
            var helow = ctxBg.getImageData(i,j,1,1);
            das[d]=Math.round((0.299 *r) - (0.168935*g) + (0.499813*b));
            das[d+1]=Math.round((0.587 *r) - (0.331665*g) + (0.418531*b));
            das[d+2]=Math.round((0.114 *r) - (0.50059*g) + (0.081282*b));

That's my code for converting the rgb to YCbCr color space.

Please help me also improve the code for faster execution.

Thanks guys!

share|improve this question
You're telling me that code does eye extraction? That's incredible –  mattdodge Jan 3 '13 at 7:56
No hes telling this code does RGB to YCbCr convertion –  C5H8NNaO4 Jan 3 '13 at 7:57
I don't recommend to do such a task client-side. Client-side scripts are ideal to make the interface more usable, not for heavy image manipulations. –  MaxArt Jan 3 '13 at 8:08
how about the code up.. is there any way to make the scope chain less? –  Oli Soproni B. Jan 3 '13 at 9:04

5 Answers 5

You can use tracking.js to detect eyes using various techniques from a real scene captured by the camera.

Once you import the script with the library and add the canvas to the HTML you can do something like:

var videoCamera = new tracking.VideoCamera().hide().render().renderVideoCanvas(),
    ctx = videoCamera.canvas.context;

    type: 'human',
    data: 'eye',
    onFound: function(track) {
        for (var i = 0, len = track.length; i < len; i++) {
            var rect = track[i];
            ctx.strokeStyle = "rgb(0,255,0)";
            ctx.strokeRect(rect.x, rect.y, rect.size, rect.size);

The code above comes from one of the examples in the library. Hope that help you

share|improve this answer
This library is very nice but quite resource hungry. Do you know any other which is just for the purpose of eye and face tracking it delivers a better performance? –  Taner Topal Mar 15 '14 at 14:57
not Tanel sorry :( –  German Attanasio Ruiz Apr 4 '14 at 14:06
See my just updated github.com/mtschirs/js-objectdetect#performance performance comparison for fast eye detection libraries. For pure eye tracking, stay with tracker.js though or adapt the camshift algorithm found in github.com/auduno/headtrackr. –  le_m Feb 7 at 5:03

What i did recently trying to solve same problem was:

  1. Scale down processed image to achieve decent performance (I downscaled everything to 320px width)

  2. Detect face in image using Core Computer Vision Library - https://github.com/liuliu/ccv

  3. Based on the detected face rectangle information detect eyes using HAAR object detector (it has cascade for eyes only detection - https://github.com/inspirit/jsfeat

For step 2 i also used "grayscale" and "equalize_histogram" from JSFEAT library.

Also if step 3 fails you can try to guess eyes position (depends on how high accuracy you're going for).

This workflow gave me satisfying results and performance. It tested it both on desktop (~500ms on iMac) and mobile devices (~3000ms on iphone 4 using image from webcam). Unfortunately I cannot post a link to working example at this point, but i'll post a link to github once i have something there.

share|improve this answer

I don't really know if something specifical is implemented only for eye detection, but for face detection you should look after a library named as Core Computer Vision Library, which is hosted on github: https://github.com/liuliu/ccv.

Another possibility would be https://github.com/inspirit/jsfeat, where face, and pixel edge detection is implemented using different algorithms, like Lucas-Kanade optical flow and HAAR object detector.

Please read this post for further techniques: Face detection javascript/html5/flash

share|improve this answer

I daresay that luminance only could be enough to detect eye / face position - so you can make your code faster by just dripping computation of CbCr. One usually looks for yeas / faces using Haar cascade:


share|improve this answer
kindly give me an explanation on how to do it correctly –  Oli Soproni B. Jan 4 '13 at 0:05

There is an example of eye detection (with custom eye haar openCV cascades) in pure javascript/html5 using the HAAR.js library (ps i am the author).

The project is stopped, no new features added, but it does what it states.

share|improve this answer

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

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