Dance to your own drum: Identification of musical genre and individual dancer from motion capture using machine learning
Emily Carlson, Pasi Saari, Birgitta Burger, Petri Toiviainen
Abstract
Machine learning has been used to accurately classify musical genre using features derived from audio signals. Musical genre, as well as lower-level audio features of music, have also been shown to influence music-induced movement, however, the degree to which such movements are genre-specific has not been explored. The current paper addresses this using motion capture data from participants dancing freely to eight genres. Using a Support Vector Machine model, data were classified by genre and by individual dancer. Against expectations, individual classification was notably more accurate than genre classification. Results are discussed in terms of embodied cognition and culture.
Topics & Concepts
MusicalEmbodied cognitionDanceMotion (physics)Computer scienceMotion captureIdentification (biology)Movement (music)Electronic dance musicArtificial intelligenceSpeech recognitionNatural language processingHuman–computer interactionVisual artsArtAestheticsBotanyBiologyMusic and Audio ProcessingNeuroscience and Music PerceptionMusic Technology and Sound Studies