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Released Models

Eren Gölge edited this page Sep 22, 2020 · 41 revisions

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TTS Models Dataset Commit Audio Sample Details
Tacotron2 LJSpeech branch soon to come details
Tacotron2 with Graves (soon) LJSpeech branch soon to come details
Tacotron2 DDC LJSpeech 72a6ac5 voice samples Trained with DDC and includes PyTorch, Tensorflow and TFLite models. Check Colab notebooks or notebooks folder.
Glow-TTS LJSpeech 08394e4 ---
Speaker Encoder Models Dataset Commit
Speaker-Encoder-iter25k LibriSpeech ...
Vocoder Models Dataset Commit Details
ParallelWaveGAN LJSpeech 72a6ac5 Trained using TTS.vocoder. It produces better results than MelGAN model but it is slightly slower. Check notebooks for testing.
Multi-Band MelGAN LJSpeech 72a6ac5 Trained using TTS.vocoder. It is the fastest vocoder model. Check notebooks for testing.
WaveRNN models go to repo for the models. (Soon to be deprecated)
Full-Band MelGAN LibriTTS c514628 Trained using TTS.vocoder. Generic vocoder that can sample any voice. Sampling rate 24Khz. To use with a different sampling rate follow this issue.

Simple packaging - self contained package that runs an HTTP API for a pre-trained TTS model

How to use:

  1. Create a fresh virtual environment with Python 3.6
  2. $ apt-get install espeak libsndfile1
  3. $ pip install python_package_url_from_table_below
  4. $ python -m TTS.server.server
  5. Open http://localhost:5002
Model Dataset Python package nginx/uWSGI config files
Tacotron 2 + Forward Attention + PWGAN LJSpeech TTS-0.0.1+92aea2a-py3-none-any.whl tts-nginx-uwsgi.zip

The server is a Flask application. For deployment with multiple workers see the nginx/uWSGI config files also linked in the table above. Pass --use_cuda 1 to use GPUs when available.


German

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Portuguese

model details by @Edresson

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