PLoS ONE (Jan 2021)

Differential privacy for eye tracking with temporal correlations.

  • Efe Bozkir,
  • Onur Günlü,
  • Wolfgang Fuhl,
  • Rafael F Schaefer,
  • Enkelejda Kasneci

DOI
https://doi.org/10.1371/journal.pone.0255979
Journal volume & issue
Vol. 16, no. 8
p. e0255979

Abstract

Read online

New generation head-mounted displays, such as VR and AR glasses, are coming into the market with already integrated eye tracking and are expected to enable novel ways of human-computer interaction in numerous applications. However, since eye movement properties contain biometric information, privacy concerns have to be handled properly. Privacy-preservation techniques such as differential privacy mechanisms have recently been applied to eye movement data obtained from such displays. Standard differential privacy mechanisms; however, are vulnerable due to temporal correlations between the eye movement observations. In this work, we propose a novel transform-coding based differential privacy mechanism to further adapt it to the statistics of eye movement feature data and compare various low-complexity methods. We extend the Fourier perturbation algorithm, which is a differential privacy mechanism, and correct a scaling mistake in its proof. Furthermore, we illustrate significant reductions in sample correlations in addition to query sensitivities, which provide the best utility-privacy trade-off in the eye tracking literature. Our results provide significantly high privacy without any essential loss in classification accuracies while hiding personal identifiers.