Demonstrating Eye Movement Biometrics in Virtual Reality
@article{Lohr2022DemonstratingEM, title={Demonstrating Eye Movement Biometrics in Virtual Reality}, author={Dillon James Lohr and Saide Johnson and Samantha Aziz and Oleg V. Komogortsev}, journal={ArXiv}, year={2022}, volume={abs/2207.02325} }
Thanks to the eye-tracking sensors that are embedded in emerging consumer devices like the Vive Pro Eye, we demonstrate that it is feasible to deliver user authentication via eye movement biometrics.
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