Skip to main content

A core package for acoustic communication research in Python

Project description



A core package for acoustic communication research in Python

Project Status: WIP – Initial development is in progress, but there has not yet been a stable, usable release suitable for the public. Build Status Documentation Status DOI PyPI version PyPI Python versions codecov All Contributors

There are many great software tools for researchers studying acoustic communication in animals[^1]. But our research groups work with a wide range of different data formats: for audio, for array data, for annotations. This means we write a lot of low-level code to deal with those formats, and then our code for analyses is tightly coupled to those formats. In turn, this makes it hard for other groups to read our code, and it takes a real investment to understand our analyses, workflows and pipelines. It also means that it requires significant work to translate from a pipeline or analysis worked out by a scientist-coder in a Jupyter notebook into a generalized, robust service provided by an application.

In particular, acoustic communication researchers working with the Python programming language face these problems. How can our scripts and libraries talk to each other? Luckily, Python is a great glue language! Let's use it to solve these problems.

The goals of VocalPy are to:

  • make it easy to work with a wide array of data formats: audio, array (spectrograms, features), annotation
  • provide classes that represent commonly-used data types: audio, spectograms, features, annotations
  • provide classes that represent common processes and steps in pipelines: segmenting audio, computing spectrograms, extracting features
  • make it easier for scientist-coders to flexibly and iteratively build datasets, without needing to deal directly with a database if they don't want to
  • make it possible to re-use code you have already written for your own research group
  • and finally:
    • make code easier to share and read across research groups, by providing these classes, and idiomiatic ways of coding with them; think of VocalPy as an interoperability layer and a common language
    • facilitate collaboration between scientist-coders writing imperative analysis scripts and research software engineers developing libraries and applications

A paper introducing VocalPy and its design has been accepted at Forum Acusticum 2023 as part of the session "Open-source software and cutting-edge applications in bio-acoustics", and will be published in the proceedings.

[^1]: For a curated collection, see https://github.com/rhine3/bioacoustics-software.

Features

Data types for acoustic communication data: audio, spectrogram, annotations, features

The vocalpy.Sound data type

  • Works with a wide array of audio formats, thanks to soundfile.
  • Also works with the cbin audio format saved by the LabView app EvTAF used by many neuroscience labs studying birdsong, thanks to evfuncs.
>>> import vocalpy as voc
>>> data_dir = ('tests/data-for-tests/source/audio_wav_annot_birdsongrec/Bird0/Wave/')
>>> wav_paths = voc.paths.from_dir(data_dir, 'wav')
>>> sounds = [voc.Sound.read(wav_path) for wav_path in wav_paths]
>>> print(sounds[0])
vocalpy.Sound(data=array([3.0517...66210938e-04]), samplerate=32000, channels=1))

The vocalpy.Spectrogram data type

  • Save expensive-to-compute spectrograms to array files, so you don't regenerate them over and over again
>>> import vocalpy as voc
>>> data_dir = ('tests/data-for-tests/generated/spect_npz/')
>>> spect_paths = voc.paths.from_dir(data_dir, 'wav.npz')
>>> spects = [voc.Spectrogram.read(spect_path) for spect_path in spect_paths]
>>> print(spects[0])
vocalpy.Spectrogram(data=array([[3.463...7970774e-14]]), frequencies=array([    0....7.5, 16000. ]), times=array([0.008,...7.648, 7.65 ]))

The vocalpy.Annotation data type

  • Load many different annotation formats using the pyOpenSci package crowsetta
>>> import vocalpy as voc
>>> data_dir = ('tests/data-for-tests/source/audio_cbin_annot_notmat/gy6or6/032312/')
>>> notmat_paths = voc.paths.from_dir(data_dir, '.not.mat')
>>> annots = [voc.Annotation.read(notmat_path, format='notmat') for notmat_path in notmat_paths]
>>> print(annots[1])
Annotation(data=Annotation(annot_path=PosixPath('tests/data-for-tests/source/audio_cbin_annot_notmat/gy6or6/032312/gy6or6_baseline_230312_0809.141.cbin.not.mat'), 
notated_path=PosixPath('tests/data-for-tests/source/audio_cbin_annot_notmat/gy6or6/032312/gy6or6_baseline_230312_0809.141.cbin'), 
seq=<Sequence with 57 segments>), path=PosixPath('tests/data-for-tests/source/audio_cbin_annot_notmat/gy6or6/032312/gy6or6_baseline_230312_0809.141.cbin.not.mat'))

Classes for common steps in your pipelines and workflows

A Segmenter for segmentation into sequences of units

>>> import evfuncs
>>> import vocalpy as voc
>>> data_dir = ('tests/data-for-tests/source/audio_cbin_annot_notmat/gy6or6/032312/')
>>> cbin_paths = voc.paths.from_dir(data_dir, 'cbin')
>>> audios = [voc.Sound.read(cbin_path) for cbin_path in cbin_paths]
>>> segment_params = {'threshold': 1500, 'min_syl_dur': 0.01, 'min_silent_dur': 0.006}
>>> segmenter = voc.Segmenter(callback=evfuncs.segment_song, segment_params=segment_params)
>>> seqs = segmenter.segment(audios, parallelize=True)
[  ########################################] | 100% Completed | 122.91 ms
>>> print(seqs[1])
Sequence(units=[Unit(onset=2.19075, offset=2.20428125, label='-', audio=None, spectrogram=None),
                Unit(onset=2.35478125, offset=2.38815625, label='-', audio=None, spectrogram=None),
                Unit(onset=2.8410625, offset=2.86715625, label='-', audio=None, spectrogram=None),
                Unit(onset=3.48234375, offset=3.49371875, label='-', audio=None, spectrogram=None),
                Unit(onset=3.57021875, offset=3.60296875, label='-', audio=None, spectrogram=None),
                Unit(onset=3.64403125, offset=3.67721875, label='-', audio=None, spectrogram=None),
                Unit(onset=3.72228125, offset=3.74478125, label='-', audio=None, spectrogram=None),
                Unit(onset=3.8036875, offset=3.8158125, label='-', audio=None, spectrogram=None),
                Unit(onset=3.82328125, offset=3.83646875, label='-', audio=None, spectrogram=None),
                Unit(onset=4.13759375, offset=4.16346875, label='-', audio=None, spectrogram=None),
                Unit(onset=4.80278125, offset=4.814, label='-', audio=None, spectrogram=None),
                Unit(onset=4.908125, offset=4.922875, label='-', audio=None, spectrogram=None),
                Unit(onset=4.9643125, offset=4.992625, label='-', audio=None, spectrogram=None),
                Unit(onset=5.039625, offset=5.0506875, label='-', audio=None, spectrogram=None),
                Unit(onset=5.10165625, offset=5.1385, label='-', audio=None, spectrogram=None),
                Unit(onset=5.146875, offset=5.16203125, label='-', audio=None, spectrogram=None),
                Unit(onset=5.46390625, offset=5.49409375, label='-', audio=None, spectrogram=None),
                Unit(onset=6.14503125, offset=6.1565625, label='-', audio=None, spectrogram=None),
                Unit(onset=6.31003125, offset=6.346125, label='-', audio=None, spectrogram=None),
                Unit(onset=6.38996875, offset=6.4018125, label='-', audio=None, spectrogram=None),
                Unit(onset=6.46053125, offset=6.4796875, label='-', audio=None, spectrogram=None),
                Unit(onset=6.83525, offset=6.8643125, label='-', audio=None, spectrogram=None)], method='segment_song',
         segment_params={'threshold': 1500, 'min_syl_dur': 0.01, 'min_silent_dur': 0.006},
         audio=vocalpy.Sound(data=None, samplerate=None, channels=None), path=tests / data -
for -tests / source / audio_cbin_annot_notmat / gy6or6 / 032312 / gy6or6_baseline_230312_0809.141.cbin), spectrogram=None)

A SpectrogramMaker for computing spectrograms

>>> import vocalpy as voc
>>> wav_paths = voc.paths.from_dir('wav')
>>> audios = [voc.Sound(wav_path) for wav_path in wav_paths]
>>> spect_params = {'fft_size': 512, 'step_size': 64}
>>> spect_maker = voc.SpectrogramMaker(spect_params=spect_params)
>>> spects = spect_maker.make(audios, parallelize=True)

And more!

For a crash course in VocalPy, please see the quickstart in the documentation. And for walkthroughs on how to use VocalPy for common tasks, please see the How-Tos section of the user guide.

Installation

With pip

pip install vocalpy

With conda

conda install vocalpy -c conda-forge

For more detail see Getting Started - Installation

Support

To report a bug or request a feature, please use the issue tracker on GitHub:
https://github.com/vocalpy/vocalpy/issues

To ask a question about vocalpy, discuss its development, or share how you are using it, please start a new topic on the VocalPy forum with the vocalpy tag:
https://forum.vocalpy.org/

Contribute

Code of conduct

Please note that this project is released with a Contributor Code of Conduct. By participating in this project you agree to abide by its terms.

Contributing Guidelines

Below we provide some quick links, but you can learn more about how you can help and give feedback
by reading our Contributing Guide.

To ask a question about vocalpy, discuss its development, or share how you are using it, please start a new "Q&A" topic on the VocalPy forum with the vocalpy tag:
https://forum.vocalpy.org/

To report a bug, or to request a feature, please use the issue tracker on GitHub:
https://github.com/vocalpy/vocalpy/issues

CHANGELOG

You can see project history and work in progress in the CHANGELOG

License

The project is licensed under the BSD license.

Citation

If you use vocalpy, please cite the DOI:
DOI

Contributors ✨

Thanks goes to these wonderful people (emoji key):

Ralph Emilio Peterson
Ralph Emilio Peterson

🤔 📓 📖 🐛 💻
Tetsuo Koyama
Tetsuo Koyama

📖

This project follows the all-contributors specification. Contributions of any kind welcome!

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

biosound-0.10.0.post1.tar.gz (5.2 MB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

biosound-0.10.0.post1-py3-none-any.whl (1.5 MB view details)

Uploaded Python 3

File details

Details for the file biosound-0.10.0.post1.tar.gz.

File metadata

  • Download URL: biosound-0.10.0.post1.tar.gz
  • Upload date:
  • Size: 5.2 MB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: python-requests/2.32.3

File hashes

Hashes for biosound-0.10.0.post1.tar.gz
Algorithm Hash digest
SHA256 b88a675b41a364d62d598c1250ee6be5eee4e2f3204d8ca6cf5978ed84a13c5f
MD5 45d620856717e78efc5e79a9e6323803
BLAKE2b-256 454115fdc2876799c2df6c0860f9c06d140ce44d66afd91624d609180c98e68a

See more details on using hashes here.

File details

Details for the file biosound-0.10.0.post1-py3-none-any.whl.

File metadata

File hashes

Hashes for biosound-0.10.0.post1-py3-none-any.whl
Algorithm Hash digest
SHA256 6d16700f691b85facf7908fcc7f730f25b5ead38839a885a90509dda5d40e537
MD5 8f5923226edb710d7f574727d428e75a
BLAKE2b-256 b91532b67f3f277bb5bf8f5bcb1e6d35895b6c35673fe946b47c77478f0cb027

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page