BRASS: Visualizing Scores for Assisting Music Learning
نویسندگان
چکیده
We propose a system, called BRASS (BRowsing and Administration of Sound Sources), which provides an interactive digital score environment for assisting the users browse and explore the global structure of music in a flexible manner. When making cooperative performances, it is important to learn the global structure to deepen understanding of the piece. The score visualization of our system can show the entire piece in a computer window, however long the piece and no matter how many parts it includes. The users can insert comments or links on this score to note down their understanding. A particular focus is placed on the conceptual design of spatial substrate and properties of the environment and related level-of-detail (LoD) operations with some functions. A user evaluation of the prototype is also included.
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