@inproceedings{537a5d7898cf4d26baacf01cbc00838f,
title = "Neural grey-box guitar amplifier modelling with limited data",
abstract = "This paper combines recurrent neural networks (RNNs) with the discretised Kirchhoff nodal analysis (DK-method) to create a grey-box guitar amplifier model. Both the objective and subjective results suggest that the proposed model is able to outperform a baseline black-box RNN model in the task of modelling a guitar amplifier, including realistically recreating the behaviour of the amplifier equaliser circuit, whilst requiring significantly less training data. Furthermore, we adapt the linear part of the DK-method in a deep learning scenario to derive multiple state-space filters simultaneously. We frequency sample the filter transfer functions in parallel and perform frequency domain filtering to considerably reduce the required training times compared to recursive state-space filtering. This study shows that it is a powerful idea to separately model the linear and nonlinear parts of a guitar amplifier using supervised learning.",
keywords = "Audio Signal Processing, Digital Filter Design, Deep Learning",
author = "Alec Wright and Vesa Valimaki and Stepan Miklanek and Jiri Schimmel",
year = "2023",
month = sep,
day = "4",
language = "English",
series = "Proceedings of the International Conference on Digital Audio Effects",
publisher = "Aalborg University",
pages = "151--158",
booktitle = "Proceedings of the 26th International Conference on Digital Audio Effects (DAFx23)",
}