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Towards Robust Neural Vocoding for Speech Generation: A Survey

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arxiv 1912.02461 v3 pith:5U6XXJHF submitted 2019-12-05 cs.SD cs.LGeess.AS

Towards Robust Neural Vocoding for Speech Generation: A Survey

classification cs.SD cs.LGeess.AS
keywords neuralvocodersvoiceconversiontext-to-speechunseendataincluding
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Recently, neural vocoders have been widely used in speech synthesis tasks, including text-to-speech and voice conversion. However, when encountering data distribution mismatch between training and inference, neural vocoders trained on real data often degrade in voice quality for unseen scenarios. In this paper, we train four common neural vocoders, including WaveNet, WaveRNN, FFTNet, Parallel WaveGAN alternately on five different datasets. To study the robustness of neural vocoders, we evaluate the models using acoustic features from seen/unseen speakers, seen/unseen languages, a text-to-speech model, and a voice conversion model. We found out that the speaker variety is much more important for achieving a universal vocoder than the language. Through our experiments, we show that WaveNet and WaveRNN are more suitable for text-to-speech models, while Parallel WaveGAN is more suitable for voice conversion applications. Great amount of subjective MOS results in naturalness for all vocoders are presented for future studies.

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