SingOMD: Singing Oriented Multi-resolution Discrete Representation Construction from Speech Models
Abstract
Discrete representation has shown advantages in speech generation tasks, wherein discrete tokens are derived by discretizing hidden features from self-supervised learning (SSL) pre-trained models. However, the direct application of speech SSL models to singing generation encounters domain gaps between speech and singing. Furthermore, singing generation necessitates a more refined representation than typical speech. To address these challenges, we introduce SingOMD, a novel method to extract singing-oriented multi-resolution discrete representations from speech SSL models. Specifically, we first adapt the features from speech SSL through a resynthesis task and incorporate multi-resolution modules based on resampling to better serve singing generation. These adapted multi-resolution features are then discretized via clustering. Extensive experiments demonstrate the robustness, efficiency, and effectiveness of these representations in singing vocoders and singing voice synthesis.
Cite
@article{arxiv.2406.08905,
title = {SingOMD: Singing Oriented Multi-resolution Discrete Representation Construction from Speech Models},
author = {Yuxun Tang and Yuning Wu and Jiatong Shi and Qin Jin},
journal= {arXiv preprint arXiv:2406.08905},
year = {2024}
}
Comments
Accepted by Interspeech 2024