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scikit-maad is a modular toolbox to analyze ecoacoustics datasets

Project description

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scikit-maad is a free, open-source and modular toolbox to analyze ecoacoustics datasets in Python 3. This package was designed to bring flexibility to (1) find regions of interest, and (2) to compute acoustic features in audio recordings. This workflow opens the possibility to use powerfull machine learning algorithms through scikit-learn, allowing to identify key patterns in all kind of soundscapes.

DOI

Installation

scikit-maad dependencies:

  • Python >= 3.5
  • NumPy >= 1.13
  • SciPy >= 0.18
  • scikit-image >= 0.14

scikit-maad is hosted on PyPI. To install, run the following command in your Python environment:

$ pip install scikit-maad

To install the latest version from source clone the master repository and from the top-level folder call:

$ python setup.py install

Examples and documentation

Contributions and bug report

Improvements and new features are greatly appreciated. If you would like to contribute developing new features or making improvements to the available package, please refer to our wiki. Bug reports and especially tested patches may be submitted directly to the bug tracker.

About the authors

This work started in 2016 at the Museum National d'Histoire Naturelle (MNHN) in Paris, France. It was initiated by Juan Sebastian Ulloa, supervised by Jérôme Sueur and Thierry Aubin at the Muséum National d'Histoire Naturelle and the Université Paris Saclay respectively. Python functions were added by Sylvain Haupert, Juan Felipe Latorre and Juan Sebastián Ulloa in 2018. New features are currently being developped and a stable release will be available by 2021.

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