Personalization of Gaze Direction Estimation with Deep Learning
Conference Paper, Proceedings of Joint German/Austrian Conference on Artificial Intelligence (KI '16), pp. 200 - 207, September, 2016
Abstract
There is a growing interest in behavior based biometrics. Although biometric data has considerable variations for an individual and may be faked, yet the combination of such 'weak experts' can be rather strong. A remotely detectable component is gaze direction estimation and thus, eye movement patterns. Here, we present a novel personalization method for gaze estimation systems, which does not require a precise calibration setup, can be non-obtrusive, is fast and easy to use. We show that it improves the precision of gaze direction estimation algorithms considerably. The method is convenient; we exploit 3D face model reconstruction for the enrichment of a small number of collected data artificially.
BibTeX
@conference{Toser-2016-119668,author = {Zoltán Tősér and Robert Rill and Kinga Faragó and Laszlo A. Jeni and András Lőrincz},
title = {Personalization of Gaze Direction Estimation with Deep Learning},
booktitle = {Proceedings of Joint German/Austrian Conference on Artificial Intelligence (KI '16)},
year = {2016},
month = {September},
pages = {200 - 207},
}
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