NVIDIA Deep Learning Examples
NVIDIA Deep Learning Examples
FastPitch checkpoint (PyTorch, AMP, LJSpeech-1.1)
Model
NVIDIA Deep Learning Examples
NVIDIA Deep Learning Examples
FastPitch checkpoint (PyTorch, AMP, LJSpeech-1.1)

FastPitch PyTorch checkpoint trained on LJSpeech-1.1

Model Overview

The FastPitch model generates mel-spectrograms from raw input text and allows to exert additional control over the synthesized utterances.

Model Architecture

FastPitch is a fully feedforward Transformer model that predicts mel-spectrograms from raw text (Figure 1). The entire process is parallel, which means that all input letters are processed simultaneously to produce a full mel-spectrogram in a single forward pass.

FastPitch model architecture

Figure 1. Architecture of FastPitch (source). The model is composed of a bidirectional Transformer backbone (also known as a Transformer encoder), a pitch predictor, and a duration predictor. After passing through the first *N* Transformer blocks, encoding, the signal is augmented with pitch information and discretely upsampled. Then it goes through another set of *N* Transformer blocks, with the goal of smoothing out the upsampled signal, and constructing a mel-spectrogram.

Training

This model was trained using script available on NGC and in GitHub repo

Dataset

The following datasets were used to train this model:

  • LJSpeech-1.1 - Dataset consisting of 13,100 short audio clips of a single speaker reading passages from 7 non-fiction books. A transcription is provided for each clip. Clips vary in length from 1 to 10 seconds and have a total length of approximately 24 hours.

Performance

Performance numbers for this model are available in NGC

References

License

This model was trained using open-source software available in Deep Learning Examples repository. For terms of use, please refer to the license of the script and the datasets the model was derived from.

Publisher
NVIDIA Deep Learning Examples
NVIDIA Deep Learning Examples
Latest Version20.02.0
UpdatedApril 4, 2023 UTC
Compressed Size170.81 MB