Publication | Open Access
Pretraining Techniques for Sequence-to-Sequence Voice Conversion
48
Citations
72
References
2021
Year
EngineeringMachine LearningSeq2seq Vc ModelsSpeech RecognitionNatural Language ProcessingRobust Speech RecognitionVoice RecognitionReal-time LanguageSequence-to-sequence Voice ConversionMachine TranslationHealth SciencesVoice ConversionSpeech SynthesisSpeech OutputText-to-speechSpeech CommunicationVoiceVc ModelsMulti-speaker Speech RecognitionSpeech ProcessingSpeech InputSpeech PerceptionLinguistics
Sequence-to-sequence (seq2seq) voice conversion (VC) models are attractive owing to their ability to convert prosody. Nonetheless, without sufficient data, seq2seq VC models can suffer from unstable training and mispronunciation problems in the converted speech, thus far from practical. To tackle these shortcomings, we propose to transfer knowledge from other speech processing tasks where large-scale corpora are easily available, typically text-to-speech (TTS) and automatic speech recognition (ASR). We argue that VC models initialized with such pretrained ASR or TTS model parameters can generate effective hidden representations for high-fidelity, highly intelligible converted speech. In this work, we examine our proposed method in a parallel, one-to-one setting. We employed recurrent neural network (RNN)-based and Transformer based models, and through systematical experiments, we demonstrate the effectiveness of the pretraining scheme and the superiority of Transformer based models over RNN-based models in terms of intelligibility, naturalness, and similarity.
| Year | Citations | |
|---|---|---|
Page 1
Page 1