nakosung / audio

Data manipulation and transformation for audio signal processing, powered by PyTorch

Geek Repo:Geek Repo

Github PK Tool:Github PK Tool

torchaudio: an audio library for PyTorch

Build Status

The aim of torchaudio is to apply PyTorch to the audio domain. By supporting PyTorch, torchaudio follows the same philosophy of providing strong GPU acceleration, having a focus on trainable features through the autograd system, and having consistent style (tensor names and dimension names). Therefore, it is primarily a machine learning library and not a general signal processing library. The benefits of Pytorch is be seen in torchaudio through having all the computations be through Pytorch operations which makes it easy to use and feel like a natural extension.

Dependencies

  • pytorch (nightly version needed for development)
  • libsox v14.3.2 or above
  • [optional] vesis84/kaldi-io-for-python commit cb46cb1f44318a5d04d4941cf39084c5b021241e or above

Quick install on OSX (Homebrew):

brew install sox

Linux (Ubuntu):

sudo apt-get install sox libsox-dev libsox-fmt-all

Anaconda

conda install -c conda-forge sox

Installation

Binaries

To install the latest pip wheels, run:

pip install torchaudio -f https://download.pytorch.org/whl/torch_stable.html

(If you do not have torch already installed, this will default to installing torch from PyPI. If you need a different torch configuration, preinstall torch before running this command.)

At the moment, there is no automated nightly build process, but we occasionally build nightlies based on PyTorch nightlies by hand following the instructions in packaging. To install the latest nightly, run:

pip install torchaudio_nightly -f https://download.pytorch.org/whl/nightly/torch_nightly.html

From Source

If your system configuration is not among the supported configurations above, you can build from source.

# Linux
python setup.py install

# OSX
MACOSX_DEPLOYMENT_TARGET=10.9 CC=clang CXX=clang++ python setup.py install

Quick Usage

import torchaudio
waveform, sample_rate = torchaudio.load('foo.mp3')  # load tensor from file
torchaudio.save('foo_save.mp3', waveform, sample_rate)  # save tensor to file

API Reference

API Reference is located here: http://pytorch.org/audio/

Conventions

With torchaudio being a machine learning library and built on top of PyTorch, torchaudio is standardized around the following naming conventions. Tensors are assumed to have channel as the first dimension and time as the last dimension (when applicable). This makes it consistent with PyTorch's dimensions. For size names, the prefix n_ is used (e.g. "a tensor of size (n_freq, n_mel)") whereas dimension names do not have this prefix (e.g. "a tensor of dimension (channel, time)")

  • waveform: a tensor of audio samples with dimensions (channel, time)
  • sample_rate: the rate of audio dimensions (samples per second)
  • specgram: a tensor of spectrogram with dimensions (channel, freq, time)
  • mel_specgram: a mel spectrogram with dimensions (channel, mel, time)
  • hop_length: the number of samples between the starts of consecutive frames
  • n_fft: the number of Fourier bins
  • n_mel, n_mfcc: the number of mel and MFCC bins
  • n_freq: the number of bins in a linear spectrogram
  • min_freq: the lowest frequency of the lowest band in a spectrogram
  • max_freq: the highest frequency of the highest band in a spectrogram
  • win_length: the length of the STFT window
  • window_fn: for functions that creates windows e.g. torch.hann_window

Transforms expect and return the following dimensions.

  • Spectrogram: (channel, time) -> (channel, freq, time)
  • AmplitudeToDB: (channel, freq, time) -> (channel, freq, time)
  • MelScale: (channel, time) -> (channel, mel, time)
  • MelSpectrogram: (channel, time) -> (channel, mel, time)
  • MFCC: (channel, time) -> (channel, mfcc, time)
  • MuLawEncode: (channel, time) -> (channel, time)
  • MuLawDecode: (channel, time) -> (channel, time)
  • Resample: (channel, time) -> (channel, time)

Complex numbers are supported via tensors of dimension (..., 2), and torchaudio provides complex_norm and angle to convert such a tensor into its magnitude and phase.

Contributing Guidelines

Please let us know if you encounter a bug by filing an issue.

We appreciate all contributions. If you are planning to contribute back bug-fixes, please do so without any further discussion.

If you plan to contribute new features, utility functions or extensions to the core, please first open an issue and discuss the feature with us. Sending a PR without discussion might end up resulting in a rejected PR, because we might be taking the core in a different direction than you might be aware of.

Disclaimer on Datasets

This is a utility library that downloads and prepares public datasets. We do not host or distribute these datasets, vouch for their quality or fairness, or claim that you have license to use the dataset. It is your responsibility to determine whether you have permission to use the dataset under the dataset's license.

If you're a dataset owner and wish to update any part of it (description, citation, etc.), or do not want your dataset to be included in this library, please get in touch through a GitHub issue. Thanks for your contribution to the ML community!

About

Data manipulation and transformation for audio signal processing, powered by PyTorch

License:BSD 2-Clause "Simplified" License


Languages

Language:Python 86.7%Language:C++ 7.8%Language:Shell 5.5%