/SC-GlowTTS

SC-GlowTTS: an Efficient Zero-Shot Multi-Speaker Text-To-Speech Model

MIT LicenseMIT

SC-GlowTTS: an Efficient Zero-Shot Multi-Speaker Text-To-Speech Model

Edresson Casanova, Christopher Shulby, Eren Gölge, Nicolas Michael Müller, Frederico Santos de Oliveira, Arnaldo Candido Junior, Anderson da Silva Soares, Sandra Maria Aluisio, Moacir Antonelli Ponti

In our recent paper we propose SC-GlowTTS: an efficient zero-shot multi-speaker text-to-speech model that improves similarity for speakers unseen in training. We propose a speaker conditional architecture that explores a flow-based decoder that can work in a zero-shot scenario. As text encoders, we explored a dilated residual convolutional-based encoder, gated convolutional-based encoder, and transformer-based encoder. Additionally, we have shown that adjusting a GAN-based vocoder for the spectrograms predicted by the TTS model on the training dataset can significantly improve the similarity and speech quality for new speakers. We showed that our model can converge in training, using only 11 speakers, reaching state-of-the-art results for similarity with new speakers and speech quality.

Audios samples

Visit our website for audio samples.

Implementation

All of our experiments were implemented at Coqui TTS.

Checkpoints

Model URL
Speaker Encoder by @mueller91 link
Tacotron 2 link
SC-GlowTTS-Trans link
SC-GlowTTS-Res link
SC-GlowTTS-Gated link
SC-GlowTTS-Trans 11 speakers link
HiFi-GAN link
All checkpoints link

Colab demos

SC-GlowTTS-Trans

SC-GlowTTS-Res

SC-GlowTTS-Gated

SC-GlowTTS-Trans trained with 11 speakers

Preprocessed datasets

VCTK Removed Silences

MOS details

MOS Sentences

MOS samples