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Development and Calibration of an Eye-Tracking Fixation Identification Algorithm for Immersive Virtual Reality.

Jose Llanes-JuradoJavier Marín-MoralesJaime GuixeresMariano Alcañiz
Published in: Sensors (Basel, Switzerland) (2020)
Fixation identification is an essential task in the extraction of relevant information from gaze patterns; various algorithms are used in the identification process. However, the thresholds used in the algorithms greatly affect their sensitivity. Moreover, the application of these algorithm to eye-tracking technologies integrated into head-mounted displays, where the subject's head position is unrestricted, is still an open issue. Therefore, the adaptation of eye-tracking algorithms and their thresholds to immersive virtual reality frameworks needs to be validated. This study presents the development of a dispersion-threshold identification algorithm applied to data obtained from an eye-tracking system integrated into a head-mounted display. Rules-based criteria are proposed to calibrate the thresholds of the algorithm through different features, such as number of fixations and the percentage of points which belong to a fixation. The results show that distance-dispersion thresholds between 1-1.6° and time windows between 0.25-0.4 s are the acceptable range parameters, with 1° and 0.25 s being the optimum. The work presents a calibrated algorithm to be applied in future experiments with eye-tracking integrated into head-mounted displays and guidelines for calibrating fixation identification algorithms.
Keyphrases
  • machine learning
  • virtual reality
  • deep learning
  • minimally invasive
  • artificial intelligence
  • big data
  • bioinformatics analysis
  • optic nerve
  • healthcare
  • electronic health record