A Pytorch Implementation of GoogleBrain's SpecAugment: A Simple Data Augmentation Method for Automatic Speech Recognition
SpecAugment is a state of the art data augmentation approach for speech recognition.
The paper's authors did not publish code that I could find and their implementation was in TensorFlow. We implemented all three SpecAugment transforms using Pytorch, torchaudio, and fastai / fastai-audio.
- Run
install.sh
(I recommend using a uniqueconda
env for the project)
After the install script runs, you should have a torchaudio
folder in your project folder.
- Check out SpecAugment.ipynb (a Jupyter notebook) for the functions.
The Time Warp augmentation relies on Tensorflow-specific functionality not supported in Pytorch. We implemented supporting functions for this augmentation in SparseImageWarp.ipynb
. You do not need to look at this notebook to use the augmentations. But the Time Warp augmentation depends on code exposed in the SparseImageWarp
notebook.
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