The Internet for Ensemble Performance ?
نویسندگان
چکیده
The goal of Distributed Immersive Performance (DIP) is to allow musicians to collaborate synchronously over distance. Remote collaboration over the Internet poses many challenges such as delayed auditory and visual feedback to the musicians and a reduced sense of presence of the other musicians. We are systematically studying the effects of performing under remote conditions so as to guide the development of systems that will best enable remote musical collaboration.
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