Drysdale, Jake and Hockman, Jason (2024) Latent Space Exploration for Drum Samples. In: 21st International Conference on Content-based Multimedia Indexing, 18 September 2024 - 20 September 2024, Reykjavik, Iceland. (In Press)
Accepted Version
File not available for download. Available under License In Copyright. Download (4MB) |
Abstract
Sample-based electronic music production relies predominantly on sourcing, sampling, and transforming existing audio to create new compositions. With proliferation of digital music access, sample libraries, and online resource services, there is an increasing challenge in navigating and managing these extensive collections of musical material. This scenario underscores the necessity to explore new technological approaches to assist producers in efficiently handling and creatively using these resources. Building upon a previously developed generative adversarial network by the authors, this paper presents methods for latent space arithmetic, dimensionality reduction, and enhanced visualisations to simplify control interfaces for music producers. These techniques enable more intuitive music sample navigation and introduce new avenues for creative expression in neural audio synthesis. The efficacy of these methods is demonstrated through their application in generating diverse drum sounds, showcasing their practicality in music production.
Impact and Reach
Statistics
Additional statistics for this dataset are available via IRStats2.