This chapter presents an overview of Interactive Machine Learning (IML) techniques applied to the analysis and design of musical gestures. We go through the main challenges and needs related to capturing, analysing, and applying IML techniques to human bodily gestures with the purpose of performing with sound synthesis systems. We discuss how different algorithms may be used to accomplish different tasks, including interacting with complex synthesis techniques and exploring interaction possibilities by means of Reinforcement Learning (RL) in an interaction paradigm we developed called Assisted Interactive Machine Learning (AIML). We conclude the chapter with a description of how some of these techniques were employed by the authors for the development of four musical pieces, thus outlining the implications that IML has for musical practice.
CITATION STYLE
Visi, F. G., & Tanaka, A. (2021). Interactive Machine Learning of Musical Gesture. In Handbook of Artificial Intelligence for Music: Foundations, Advanced Approaches, and Developments for Creativity (pp. 771–798). Springer International Publishing. https://doi.org/10.1007/978-3-030-72116-9_27
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