Title :
Appearance-Based Gaze Estimation With Online Calibration From Mouse Operations
Author :
Sugano, Yusuke ; Matsushita, Yasuyuki ; Sato, Yoichi ; Koike, Hideki
Author_Institution :
Perceptual User Interfaces Group, Max Planck Inst. for Inf., Saarbrucken, Germany
Abstract :
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°.
Keywords :
adaptive signal processing; calibration; cameras; gaze tracking; human computer interaction; image reconstruction; learning (artificial intelligence); pattern clustering; pose estimation; adaptive clustering; appearance-based gaze estimation; desktop scenario; eye images; head pose estimation; head pose variations; human computer interface; local reconstruction-based gaze estimation models; monocular camera; mouse click; mouse operations; mouse-clicked positions; online calibration; online learning algorithm; personal computer; unconstrained gaze estimation method; user head pose images; Calibration; Computer vision; Estimation; Gaze tracking; Human computer interaction; Computer vision; eye movement; human–computer interface; human???computer interface; tracking;
Journal_Title :
Human-Machine Systems, IEEE Transactions on
DOI :
10.1109/THMS.2015.2400434