Here

From TSG Doc
Revision as of 10:35, 27 August 2020 by Wiki-admin (talk | contribs) (credits webgazer example)
(diff) ← Older revision | Latest revision (diff) | Newer revision → (diff)
Jump to navigation Jump to search

Examples

Webgazer is an open source library for eye tracking solutions using common webcams. For more detailed information about it, please visit the authors website: https://webgazer.cs.brown.edu, it explains how it can be used in your own application. An example of how Webgazer can be used in your own jsPsych experiment is described below.

Webgazer credits:

If you use WebGazer.js please cite the following paper (https://jeffhuang.com/Final_WebGazer_IJCAI16.pdf):@inproceedings{papoutsaki2016webgazer,
author = {Alexandra Papoutsaki and Patsorn Sangkloy and James Laskey and Nediyana Daskalova and Jeff Huang and James Hays},
title = {WebGazer: Scalable Webcam Eye Tracking Using User Interactions},
booktitle = {Proceedings of the 25th International Joint Conference on Artificial Intelligence (IJCAI)},
pages = {3839--3845}, year = {2016}, organization={AAAI}

WebGazer download:

webgazer.js: https://webgazer.cs.brown.edu

WebGazer dependencies:

In webgazer.js original web page links were changed to local copies of the models:

  // const BLAZEFACE_MODEL_URL="https://tfhub.dev/tensorflow/tfjs-model/blazeface/1/default/1";
     const BLAZEFACE_MODEL_URL="./model/tfjs/blazeface";
  // const FACEMESH_GRAPHMODEL_PATH = 'https://tfhub.dev/mediapipe/tfjs-model/facemesh/1/default/1';
     const FACEMESH_GRAPHMODEL_PATH = './model/tfjs/facemesh';
  models downloaded from:
     Model BlazeFace: https://tfhub.dev/tensorflow/tfjs-model/blazeface/1/default/1
     Model FaceMesh: https://tfhub.dev/mediapipe/tfjs-model/facemesh/1/default/1

Other dependencies: localforage: https://raw.githubusercontent.com/localForage/localForage/master/dist/localforage.js
bootstrap: https://getbootstrap.com/docs/4.3/getting-started/download/
sweetalert: sweetalert.min.js just copied from webgazer demo because not found here: https://github.com/t4t5/sweetalert