Investigating self-supervised features for expressive, multilingual voice conversion
Abstract
Voice conversion (VC) systems are widely used for several applications, from speaker anonymisation to personalised speech synthesis. Supervised approaches learn a mapping between different speakers using parallel data, which is expensive to produce. Unsupervised approaches are typically trained to reconstruct the input signal, which is composed of the content and the speaker information. Disentangling these components is a challenge and often leads to speaker leakage or prosodic information removal. In this paper, we explore voice conversion by leveraging the potential of self-supervised learning (SSL). A combination of the latent representations of SSL models, concatenated with speaker embeddings, is fed to a vocoder which is trained to reconstruct the input. Zero-shot voice conversion results show that this approach allows to keep the prosody and content of the source speaker while matching the speaker similarity of a VC system based on phonetic posteriorgrams (PPGs).
Cite
@article{arxiv.2505.08278,
title = {Investigating self-supervised features for expressive, multilingual voice conversion},
author = {Álvaro Martín-Cortinas and Daniel Sáez-Trigueros and Grzegorz Beringer and Iván Vallés-Pérez and Roberto Barra-Chicote and Biel Tura-Vecino and Adam Gabryś and Piotr Bilinski and Thomas Merritt and Jaime Lorenzo-Trueba},
journal= {arXiv preprint arXiv:2505.08278},
year = {2025}
}
Comments
Published as a conference paper at ICASSP 2024