Crowdsourcing Gaze Data Collection

16 Apr 2012  ·  Dmitry Rudoy, Dan B. Goldman, Eli Shechtman, Lihi Zelnik-Manor ·

Knowing where people look is a useful tool in many various image and video applications. However, traditional gaze tracking hardware is expensive and requires local study participants, so acquiring gaze location data from a large number of participants is very problematic. In this work we propose a crowdsourced method for acquisition of gaze direction data from a virtually unlimited number of participants, using a robust self-reporting mechanism (see Figure 1). Our system collects temporally sparse but spatially dense points-of-attention in any visual information. We apply our approach to an existing video data set and demonstrate that we obtain results similar to traditional gaze tracking. We also explore the parameter ranges of our method, and collect gaze tracking data for a large set of YouTube videos.

PDF Abstract

Categories


Social and Information Networks Human-Computer Interaction

Datasets


  Add Datasets introduced or used in this paper