Appearance-Based Gaze Estimation With Online Calibration From Mouse Operations

作者:Sugano Yusuke*; Matsushita Yasuyuki; Sato Yoichi; Koike Hideki
来源:IEEE Transactions on Human-Machine Systems, 2015, 45(6): 750-760.
DOI:10.1109/THMS.2015.2400434

摘要

This paper presents an unconstrained gaze estimation method using an online learning algorithm. We focus on a desktop scenario, where a user operates a personal computer, and use the mouse-clicked positions to infer, where on the screen the user is looking at. Our method continuously captures the user's head pose and eye images with a monocular camera, and each mouse click triggers learning sample acquisition. In order to handle head pose variations, the samples are adaptively clustered according to the estimated head pose. Then, local reconstruction-based gaze estimation models are incrementally updated in each cluster. We conducted a prototype evaluation in real-world environments, and our method achieved an estimation accuracy of 2.9 degrees.

  • 出版日期2015-12