Title
A Neural Network For 3d Gaze Recording With Binocular Eye Trackers
Abstract
Using eye tracking for the investigation of visual attention has become increasingly popular during the last few decades. Nevertheless, only a small number of eye tracking studies have employed 3D displays, although such displays would closely resemble our natural visual environment. Besides higher cost and effort for the experimental setup, the main reason for the avoidance of 3D displays is the problem of computing a subject's current 3D gaze position based on the measured binocular gaze angles. The geometrical approaches to this problem that have been studied so far involved substantial error in the measurement of 3D gaze trajectories. In order to tackle this problem, we developed an anaglyph-based 3D calibration procedure and used a well-suited type of artificial neural network-a parametrized self-organizing map (PSOM)-to estimate the 3D gaze point from a subject's binocular eye-position data. We report an experiment in which the accuracy of the PSOM gaze-point estimation is compared to a geometrical solution. The results show that the neural network approach produces more accurate results than the geometrical method, especially for the depth axis and for distant stimuli.
Year
DOI
Venue
2006
10.1080/17445760500354440
INTERNATIONAL JOURNAL OF PARALLEL EMERGENT AND DISTRIBUTED SYSTEMS
Keywords
DocType
Volume
Eye tracking, Neural network, 3D calibration, Anaglyphs
Journal
21
Issue
ISSN
Citations 
2
1744-5760
13
PageRank 
References 
Authors
1.19
4
3
Name
Order
Citations
PageRank
KAI ESSIG1334.49
Marc Pomplun221531.83
Helge Ritter32020415.97