RAVE for Speech: Efficient Voice Conversion at High Sampling Rates

Anders R. Bargum, Simon Lajboschitz, Cumhur Erkut

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Abstract

Voice conversion has gained increasing popularity within the field of audio manipulation and speech synthesis. Often, the main objective is to transfer the input identity to that of a target speaker without changing its linguistic content. While current work provides high-fidelity solutions they rarely focus on model simplicity, high-sampling rate environments or stream-ability. By incorporating speech representation learning into a generative timbre transfer model, traditionally created for musical purposes, we investigate the realm of voice conversion generated directly in the time domain at high sampling rates. More specifically, we guide the latent space of a baseline model towards linguistically relevant representations and condition it on external speaker information. Through objective and subjective assessments, we demonstrate that the proposed solution can attain levels of naturalness, quality, and intelligibility comparable to those of a state-of-the-art solution for seen speakers, while significantly decreasing inference time. However, despite the presence of target speaker characteristics in the converted output, the actual similarity to unseen speakers remains a challenge.
OriginalsprogEngelsk
TitelProceedings of the 27th International Conference on Digital Audio Effects (DAFx24)
Antal sider8
UdgivelsesstedGuildford, UK
Publikationsdato29 aug. 2024
Sider41-48
StatusUdgivet - 29 aug. 2024
Begivenhed27th International Conference on Digital Audio Effects - Guildford, Surrey, Storbritannien
Varighed: 3 sep. 20247 sep. 2024
Konferencens nummer: 27
https://dafx24.surrey.ac.uk/

Konference

Konference27th International Conference on Digital Audio Effects
Nummer27
Land/OmrådeStorbritannien
ByGuildford, Surrey
Periode03/09/202407/09/2024
Internetadresse

Bibliografisk note

Accepted for publication in Proceedings of the 27th International Conference on Digital Audio Effects (DAFx24), Guildford, United Kingdom, 3 - 7 September 2024

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