Spaces:
Sleeping
Sleeping
<div align="center"> | |
# Vocos for StableTTS | |
Modified from the official implementation of [Vocos](https://github.com/gemelo-ai/vocos/tree/main). | |
</div> | |
## Introduction | |
Vocos is a fast neural vocoder designed to synthesize audio waveforms from acoustic features. Trained using a Generative Adversarial Network (GAN) objective, Vocos can generate waveforms in a single forward pass. Unlike other typical GAN-based vocoders, Vocos does not model audio samples in the time domain. Instead, it generates spectral coefficients, facilitating rapid audio reconstruction through inverse Fourier transform. | |
## Inference | |
For detailed inference instructions, please refer to `inference.ipynb` | |
## Training | |
Setting up and training your model with Vocos is straightforward. Follow these steps to get started: | |
### Preparing Your Data | |
1. **Configure Data Settings**: Update the `DataConfig` in `preprocess.py`. Specifically, adjust the audio_dir to point to your collection of audio files. | |
2. **Run Preprocessing**: Run `preprocess.py`. This script will search (glob) for all audio files in the specified directory, resample them to the target sample_rate (modifiable in config.py), and generate a file list for training. | |
### Start training | |
1. **Adjust Training Configuration**: Edit `TrainConfig` in `config.py` to specify the file list path and tweak training hyperparameters to your needs. | |
2. **Start the Training Process**: Launch `train.py` to begin training your model. | |
### Experiment with Configurations | |
Feel free to explore and modify settings in `config.py` to modify the hyperparameters of vocos! | |
## References | |
[Vocos](https://github.com/gemelo-ai/vocos/tree/main) |