Electric Guitar Sound Restoration with Diffusion Models
There is a more recent version of this item available. |
Mo, Ronald K. (2023) Electric Guitar Sound Restoration with Diffusion Models. In: DMRN+18: Digital Music Research Network One-day Workshop 2023, 19 Dec 2023, Queen Mary University of London, London, UK. (In Press)
Item Type: | Conference or Workshop Item (Speech) |
---|
Abstract
This work aims to investigate the potential of employing Denoising diffusion probabilistic models, commonly referred to as diffusion models, to revert a processed electric guitar recording to its original, unaltered form while retaining all the expressive elements of the performance such as dynamics and articulation. Specifically, a parallel dataset is constructed, containing both the unprocessed and processed versions of the guitar recordings, which is used for training a diffusion model. To preserve the expressiveness, the model is conditioned on the processed guitar recording when restoring the raw guitar sound. This research has the potential to enhance the accuracy of various music information retrieval tasks, such as automatic
music transcription.
More Information
Depositing User: Ronald Mo |
Identifiers
Item ID: 17101 |
URI: http://sure.sunderland.ac.uk/id/eprint/17101 | Official URL: https://www.qmul.ac.uk/dmrn/dmrn18/ |
Users with ORCIDS
Catalogue record
Date Deposited: 18 Dec 2023 11:59 |
Last Modified: 18 Dec 2023 11:59 |
Author: | Ronald K. Mo |
University Divisions
Faculty of Technology > School of Computer ScienceSubjects
Computing > Artificial IntelligencePerforming Arts > Music
Actions (login required)
View Item (Repository Staff Only) |
Available Versions of this Item
- Electric Guitar Sound Restoration with Diffusion Models. (deposited 18 Dec 2023 11:59) [Currently Displayed]