Acknowledgement
This research was supported by Culture, Sports and Tourism R&D Program through the Korea Creative Content Agency grant funded by the Ministry of Culture, Sprots and Tourism in 2022 (Project Name: Development of Virtual Reality Performance Platform Supporting Multiuser Participation and Realtime Interaction, Project Number: R2021040046, Contribution Rate: 100%)
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