ASCLSDOct 8, 2020

Latent linguistic embedding for cross-lingual text-to-speech and voice conversion

arXiv:2010.03717v14 citations
Originality Incremental advance
AI Analysis

This work addresses the problem of generating speech in new languages for target speakers, which is incremental as it builds on an existing voice cloning system.

The authors tackled cross-lingual speech generation by developing a unified system for text-to-speech and voice conversion using latent linguistic embeddings, achieving high speaker similarity but with varying naturalness across speakers.

As the recently proposed voice cloning system, NAUTILUS, is capable of cloning unseen voices using untranscribed speech, we investigate the feasibility of using it to develop a unified cross-lingual TTS/VC system. Cross-lingual speech generation is the scenario in which speech utterances are generated with the voices of target speakers in a language not spoken by them originally. This type of system is not simply cloning the voice of the target speaker, but essentially creating a new voice that can be considered better than the original under a specific framing. By using a well-trained English latent linguistic embedding to create a cross-lingual TTS and VC system for several German, Finnish, and Mandarin speakers included in the Voice Conversion Challenge 2020, we show that our method not only creates cross-lingual VC with high speaker similarity but also can be seamlessly used for cross-lingual TTS without having to perform any extra steps. However, the subjective evaluations of perceived naturalness seemed to vary between target speakers, which is one aspect for future improvement.

Foundations

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