1 research outputs found
A privacy-preserving approach to streaming eye-tracking data
Eye-tracking technology is being increasingly integrated into mixed reality
devices. Although critical applications are being enabled, there are
significant possibilities for violating user privacy expectations. We show that
there is an appreciable risk of unique user identification even under natural
viewing conditions in virtual reality. This identification would allow an app
to connect a user's personal ID with their work ID without needing their
consent, for example. To mitigate such risks we propose a framework that
incorporates gatekeeping via the design of the application programming
interface and via software-implemented privacy mechanisms. Our results indicate
that these mechanisms can reduce the rate of identification from as much as 85%
to as low as 30%. The impact of introducing these mechanisms is less than
1.5 error in gaze position for gaze prediction. Gaze data streams can
thus be made private while still allowing for gaze prediction, for example,
during foveated rendering. Our approach is the first to support
privacy-by-design in the flow of eye-tracking data within mixed reality use
cases.Comment: 12 pages, 4 figures, to appear in IEEE TVCG Special Issue on IEEE VR
202