WaveRNN

WaveRNN Vocoder + TTS

Github星跟踪图

WaveRNN

(Update: Vanilla Tacotron One TTS system just implemented - more coming soon!)

Tacotron with WaveRNN diagrams

Pytorch implementation of Deepmind's WaveRNN model from Efficient Neural Audio Synthesis

Installation

Ensure you have:

Then install the rest with pip:

pip install -r requirements.txt

How to Use

Quick Start

If you want to use TTS functionality immediately you can simply use:

python quick_start.py

This will generate everything in the default sentences.txt file and output to a new 'quick_start' folder where you can playback the wav files and take a look at the attention plots

You can also use that script to generate custom tts sentences and/or use '-u' to generate unbatched (better audio quality):

python quick_start.py -u --input_text "What will happen if I run this command?"

Training your own Models

Attenion and Mel Training GIF

Download the LJSpeech Dataset.

Edit hparams.py, point wav_path to your dataset and run:

python preprocess.py

or use preprocess.py --path to point directly to the dataset


Here's my recommendation on what order to run things:

1 - Train Tacotron with:

python train_tacotron.py

2 - You can leave that finish training or at any point you can use:

python train_tacotron.py --force_gta

this will force tactron to create a GTA dataset even if it hasn't finish training.

3 - Train WaveRNN with:

python train_wavernn.py --gta

NB: You can always just run train_wavernn.py without --gta if you're not interested in TTS.

4 - Generate Sentences with both models using:

python gen_tacotron.py wavernn

this will generate default sentences. If you want generate custom sentences you can use

python gen_tacotron.py --input_text "this is whatever you want it to be" wavernn

And finally, you can always use --help on any of those scripts to see what options are available :)

Samples

Can be found here.

Pretrained Models

Currently there are two pretrained models available in the /pretrained/ folder':

Both are trained on LJSpeech

  • WaveRNN (Mixture of Logistics output) trained to 800k steps
  • Tacotron trained to 180k steps

References

Acknowlegements

主要指标

概览
名称与所有者fatchord/WaveRNN
主编程语言Python
编程语言Python (语言数: 1)
平台
许可证MIT License
所有者活动
创建于2018-03-16 14:03:52
推送于2022-07-02 14:21:35
最后一次提交2022-07-02 16:21:21
发布数0
用户参与
星数2.2k
关注者数87
派生数698
提交数215
已启用问题?
问题数227
打开的问题数99
拉请求数7
打开的拉请求数8
关闭的拉请求数10
项目设置
已启用Wiki?
已存档?
是复刻?
已锁定?
是镜像?
是私有?