Creating Latent Spaces for Modern Music Genre Rhythms Using Minimal Training Data

Vigliensoni, Gabriel; McCallum, Louis; and Fiebrink, Rebecca. 2020. 'Creating Latent Spaces for Modern Music Genre Rhythms Using Minimal Training Data'. In: International Conference on Computational Creativity (ICCC). Coimbra, Portugal 7 – 11 September 2020. [Conference or Workshop Item]
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In this paper we present R-VAE, a system designed for the exploration of latent spaces of musical rhythms. Unlike most previous work in rhythm modeling, R-VAE can be trained with small datasets, enabling rapid customization and exploration by individual users. R-VAE employs a data representation that encodes simple and compound meter rhythms. To the best of our knowledge, this is the first time that a network architecture has been used to encode rhythms with these characteristics, which are common in some modern popular music genres.


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