Sample rate independent recurrent neural networks for audio effects processing

Alistair Carson, Alec Wright, Vesa Valimaki, Jatin Chowdhury, Stefan Bilbao

Research output: Chapter in Book/Report/Conference proceedingConference contribution

Abstract

In recent years, machine learning approaches to modelling guitar amplifiers and effects pedals have been widely investigated and have become standard practice in some consumer products. In particular, recurrent neural networks (RNNs) are a popular choice for modelling non-linear devices such as vacuum tube amplifiers and distortion circuitry. One limitation of such models is that they are trained on audio at a specific sample rate and therefore give unreliable results when operating at another rate. Here, we investigate several methods of modifying RNN structures to make them approximately sample rate independent, with a focus on oversampling. In the case of integer oversampling, we demonstrate that a previously proposed delay-based approach provides high fidelity sample rate conversion whilst additionally reducing aliasing. For non-integer sample rate adjustment, we propose two novel methods and show that one of these, based on cubic Lagrange interpolation of a delay-line, provides a significant improvement over existing methods. To our knowledge, this work provides the first in-depth study into this problem.
Original languageEnglish
Title of host publicationProceedings of the 27th International Conference on Digital Audio Effects (DAFx24)
Pages17-24
Number of pages8
Publication statusPublished - 7 Sept 2024

Publication series

NameProceedings of the International Conference on Digital Audio Effects
ISSN (Print)2413-6700
ISSN (Electronic)2413-6689

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