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RelaWorld: Neuroadaptive and Immersive Virtual Reality Meditation System

Published:07 March 2016Publication History

ABSTRACT

Meditation in general and mindfulness in particular have been shown to be useful techniques in the treatment of a plethora of ailments, yet they can be challenging for novices. We present RelaWorld: a neuroadaptive virtual reality meditation system that combines virtual reality with neurofeedback to provide a tool that is easy for novices to use yet provides added value even for experienced meditators. Using a head-mounted display, users can levitate in a virtual world by doing meditation exercises. The system measures users' brain activity in real time via EEG and calculates estimates for the level of conCentration and relaxation. These values are then mapped into the virtual reality. In a user study of 43 subjects, we were able to show that the RelaWorld system elicits deeper relaxation, feeling of presence and a deeper level of meditation when compared to a similar setup without head-mounted display or neurofeedback.

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          cover image ACM Conferences
          IUI '16: Proceedings of the 21st International Conference on Intelligent User Interfaces
          March 2016
          446 pages
          ISBN:9781450341370
          DOI:10.1145/2856767

          Copyright © 2016 ACM

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          • Published: 7 March 2016

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          IUI '16 Paper Acceptance Rate49of194submissions,25%Overall Acceptance Rate746of2,811submissions,27%

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