Publication | Open Access
Improving Sequence-to-sequence Voice Conversion by Adding Text-supervision
33
Citations
26
References
2019
Year
Unknown Venue
EngineeringMachine LearningSpoken Language ProcessingSeq2seq Voice ConversionSpeech RecognitionNatural Language ProcessingData ScienceText SupervisionComputational LinguisticsSequence-to-sequence Voice ConversionMachine TranslationHealth SciencesVoice ConversionSequence ModellingSpeech SynthesisLinguisticsSpeech OutputText-to-speechVoiceSpeech ProcessingSpeech Translation
This paper presents methods of making using of text supervision to improve the performance of sequence-to-sequence (seq2seq) voice conversion. Compared with conventional frame-to-frame voice conversion approaches, the seq2seq acoustic modeling method proposed in our previous work achieved higher naturalness and similarity. In this paper, we further improve its performance by utilizing the text transcriptions of parallel training data. First, a multi-task learning structure is designed which adds auxiliary classifiers to the middle layers of the seq2seq model and predicts linguistic labels as a secondary task. Second, a data-augmentation method is proposed which utilizes text alignment to produce extra parallel sequences for model training. Experiments are conducted to evaluate our proposed method with training sets at different sizes. Experimental results show that the multi-task learning with linguistic labels is effective at reducing the errors of seq2seq voice conversion. The data-augmentation method can further improve the performance of seq2seq voice conversion when only 50 or 100 training utterances are available.
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