Publication: The identification of individualized eye tracking metrics in vr using data driven iterative- adaptive algorithm
Abstract
Eye tracking metrics provide information about cognitive function and basic
oculomotor characteristics. There have been many studies analyzing eye tracking
signals using different algorithms. However, these algorithms generally are based on
the initial setting parameter. This might cause the subjective interpretation of eye
tracking analysis. The main aim of this study was to develop a data-driven algorithm
to detect fixations and saccades without any subjective settings. Five subjects were
included in this study. Eye tracking signal was acquired with the VIVE Pro Eye in
virtual reality (VR) environment while subjects were reading a paragraph. The
algorithms based on the calculation of threshold were employed to calculate eye
metrics including total fixation duration, total fixation number, total saccades
number and average pupil diameter. The proposed algorithm, which is based on
calculating the initial threshold, based on mean, and standard deviation of eye
tracking signal within experiment duration, gave the same results obtained adaptive
filtering reported in literature (average fixation duration for five subjects= 10634.6
ms ± 5117.9, average fixation count for five subjects= 21.8 ± 7.5). On the other hand,
our proposed algorithm didn’t use any certain objective parameter as like adaptive
filtering. As a conclusion, VIVE Pro Eye may be utilized as an eye movement
assessment device, and, the suggested approach might be utilized to analyze objective
eye tracking metrics.
Description
Citation
Arslan D. B., Sükuti M., Duru A. D., "The Identification of Individualized Eye Tracking Metrics in VR Using Data Driven Iterative- Adaptive Algorithm", AJIT-e: Bilişim Teknolojileri Online Dergisi, cilt.14, sa.52, ss.8-21, 2023
