Skip to content

Latest commit

 

History

History
71 lines (55 loc) · 2.32 KB

README.md

File metadata and controls

71 lines (55 loc) · 2.32 KB

AdaSpeech: Adaptive Text to Speech for Custom Voice [WIP]

Unofficial Pytorch implementation of AdaSpeech.

Note:

  • I am not considering multi-speaker use case, Iam much more focus only on single speaker.
  • I will use only Utterance level encoder and Phoneme level encoder not condition layer norm (which is the soul of AdaSpeech paper), it definelty restrict the adaptive nature of AdaSpeech but my focus is to improve FastSpeech 2 acoustic generalization rather than adaptation.

Citations

@misc{chen2021adaspeech,
      title={AdaSpeech: Adaptive Text to Speech for Custom Voice}, 
      author={Mingjian Chen and Xu Tan and Bohan Li and Yanqing Liu and Tao Qin and Sheng Zhao and Tie-Yan Liu},
      year={2021},
      eprint={2103.00993},
      archivePrefix={arXiv},
      primaryClass={eess.AS}
}

Requirements :

All code written in Python 3.6.2 .

  • Install Pytorch

Before installing pytorch please check your Cuda version by running following command : nvcc --version

pip install torch torchvision

In this repo I have used Pytorch 1.6.0 for torch.bucketize feature which is not present in previous versions of PyTorch.

  • Installing other requirements :
pip install -r requirements.txt
  • To use Tensorboard install tensorboard version 1.14.0 seperatly with supported tensorflow (1.14.0)

For Preprocessing :

filelists folder contains MFA (Motreal Force aligner) processed LJSpeech dataset files so you don't need to align text with audio (for extract duration) for LJSpeech dataset. For other dataset follow instruction here. For other pre-processing run following command :

python nvidia_preprocessing.py -d path_of_wavs

For finding the min and max of F0 and Energy

python compute_statistics.py

Update the following in hparams.py by min and max of F0 and Energy

p_min = Min F0/pitch
p_max = Max F0
e_min = Min energy
e_max = Max energy

For training

 python train_fastspeech.py --outdir etc -c configs/default.yaml -n "name"

Note

  • For more complete and end to end Voice cloning or Text to Speech (TTS) toolbox please visit Deepsync Technologies.