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We Need Variations in Speech Synthesis: Sub-center Modelling for Speaker Embeddings

Authors :
Ulgen, Ismail Rasim
Busso, Carlos
Hansen, John H. L.
Sisman, Berrak
Publication Year :
2024

Abstract

In speech synthesis, modeling of rich emotions and prosodic variations present in human voice are crucial to synthesize natural speech. Although speaker embeddings have been widely used in personalized speech synthesis as conditioning inputs, they are designed to lose variation to optimize speaker recognition accuracy. Thus, they are suboptimal for speech synthesis in terms of modeling the rich variations at the output speech distribution. In this work, we propose a novel speaker embedding network which utilizes multiple class centers in the speaker classification training rather than a single class center as traditional embeddings. The proposed approach introduces variations in the speaker embedding while retaining the speaker recognition performance since model does not have to map all of the utterances of a speaker into a single class center. We apply our proposed embedding in voice conversion task and show that our method provides better naturalness and prosody in synthesized speech.<br />Comment: Submitted to IEEE Signal Processing Letters

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2407.04291
Document Type :
Working Paper