Discomfort of Visual Perception in Virtual and Mixed Reality Systems

Andrey Zhdanov1, Dmitry Zhdanov2, N. N. Bogdanov2, Igor S. Potemin2, В. А. Галактионов3, Maxim Sorokin2
1Petersburg National Research University of Information Technologies, Mechanics, and Optics, St. Petersburg, Russia
2Petersburg National Research University of Information Technologies, Mechanics, and Optics, 197101, St. Petersburg, Russia
3Keldysh Institute of Applied Mathematics, Russian Academy of Sciences, Moscow, Russia

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