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arxiv: 1712.00334 · v1 · pith:QXMCLPTFnew · submitted 2017-11-30 · 💻 cs.HC · cs.CL· cs.IR· cs.LG· cs.MM

Enabling Embodied Analogies in Intelligent Music Systems

classification 💻 cs.HC cs.CLcs.IRcs.LGcs.MM
keywords musicaudiocapturedancedatasetlearninglyricsmachine
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The present methodology is aimed at cross-modal machine learning and uses multidisciplinary tools and methods drawn from a broad range of areas and disciplines, including music, systematic musicology, dance, motion capture, human-computer interaction, computational linguistics and audio signal processing. Main tasks include: (1) adapting wisdom-of-the-crowd approaches to embodiment in music and dance performance to create a dataset of music and music lyrics that covers a variety of emotions, (2) applying audio/language-informed machine learning techniques to that dataset to identify automatically the emotional content of the music and the lyrics, and (3) integrating motion capture data from a Vicon system and dancers performing on that music.

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