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Using Joint Training Speaker Encoder With Consistency Loss to Achieve Cross-Lingual Voice Conversion and Expressive Voice Conversion

Houjian Guo, Chaoran Liu, Carlos Toshinori Ishi, Hiroshi Ishiguro

202314 citationsDOI

Abstract

Voice conversion systems have made significant advancements in terms of naturalness and similarity in common voice conversion tasks. However, their performance in more complex tasks such as cross-lingual voice conversion and expressive voice conversion remains imperfect. In this study, we propose a novel approach that combines a joint training speaker encoder and content features extracted from the cross-lingual speech recognition model Whisper to achieve high-quality cross-lingual voice conversion. Additionally, we introduce a speaker consistency loss to the joint encoder, which improves the similarity between the converted speech and the reference speech. To further explore the capabilities of the joint speaker encoder, we use the Phonetic posteriorgram as the content feature, which enables the model to effectively reproduce both the speaker characteristics and the emotional aspects of the reference speech.

Topics & Concepts

Speech recognitionComputer scienceEncoderJoint (building)Consistency (knowledge bases)Speaker recognitionArtificial intelligenceEngineeringArchitectural engineeringOperating systemSpeech Recognition and SynthesisSpeech and Audio ProcessingSpeech and dialogue systems