Drum Beats and Where To Find Them: Sampling Drum Patterns from a Latent Space

07/13/2020
by   Alexey Tikhonov, et al.
0

This paper presents a large dataset of drum patterns and compares two different architectures of artificial neural networks that produce latent explorable spaces with some recognizable genre areas. Adversarially constrained autoencoder interpolations (ACAI) show better results in comparison with a standard variational autoencoder. To our knowledge, this is the first application of ACAI to drum-pattern generation.

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