ina-foss / inaSpeechSegmenter

CNN-based audio segmentation toolkit. Allows to detect speech, music, noise and speaker gender. Has been designed for large scale gender equality studies based on speech time per gender.
MIT License
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audio-analysis female gender gender-classification gender-equality male mirex music music-detection noise praat segmentation speaker-gender speech speech-activity-detection speech-detection speech-music speech-segmentation transgender voice-activity-detection

inaSpeechSegmenter

Python Python 3.7 to 3.12 unit tests PyPI version Docker Pulls

inaSpeechSegmenter is a CNN-based audio segmentation toolkit suited to the tasks of Voice Activity Detection and Speaker Gender Segmentation.

It splits audio signals into homogeneous zones of speech, music and noise. Speech zones are split into segments tagged using speaker gender (male or female). Male and female classification models are optimized for French language since they were trained using French speakers (accoustic correlates of speaker gender are language dependent). Zones corresponding to speech over music or speech over noise are tagged as speech. Singing voice is tagged as music.

Highlights

Installation

inaSpeechSegmenter works with Python 3.7 to Python 3.12. It is based on Tensorflow which does not yet support Python 3.13+.

It is available on Python Package Index inaSpeechSegmenter and packaged as a docker image inafoss/inaspeechsegmenter.

Prerequisites

inaSpeechSegmenter requires ffmpeg for decoding any type of format. Installation of ffmpeg for ubuntu can be done using the following commandline:

$ sudo apt-get install ffmpeg

PIP installation

# create a python 3 virtual environement and activate it
$ virtualenv -p python3 env
$ source env/bin/activate
# install framework and dependencies
$ pip install inaSpeechSegmenter

Installing from from sources

# clone git repository
$ git clone https://github.com/ina-foss/inaSpeechSegmenter.git
# create a python 3 virtual environement and activate it
$ virtualenv -p python3 env
$ source env/bin/activate
# install framework and dependencies
# you should use pip instead of setup.py for installing from source
$ cd inaSpeechSegmenter
$ pip install .
# check program behavior
$ python setup.py test

Using inaSpeechSegmenter

Command-Line Interface

Binary program ina_speech_segmenter.py may be used to segment multimedia archives encoded in any format supported by ffmpeg. It requires input media and provide 2 segmentation output formats : csv (can be displayed with Sonic Visualiser) and TextGrid (Praat format). Detailed command line options can be obtained using the following command :

# get help
$ ina_speech_segmenter.py --help

Application Programming Interface

InaSpeechSegmentation API is intended to be very simple to use, and is illustrated by these 2 notebooks :

The class allowing to perform segmentations is called Segmenter. It is the only class that you need to import in a program. Class constructor accept 3 optional arguments:

Citing

inaSpeechSegmenter has been presented at the IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP) 2018 conference in Calgary, Canada. If you use this toolbox in your research, you can cite the following work in your publications :

@inproceedings{ddoukhanicassp2018,
  author = {Doukhan, David and Carrive, Jean and Vallet, Félicien and Larcher, Anthony and Meignier, Sylvain},
  title = {An Open-Source Speaker Gender Detection Framework for Monitoring Gender Equality},
  year = {2018},
  organization={IEEE},
  booktitle={Acoustics Speech and Signal Processing (ICASSP), 2018 IEEE International Conference on}
}

inaSpeechSegmenter won MIREX 2018 speech detection challenge Details on the speech detection submodule can be found bellow:

@inproceedings{ddoukhanmirex2018,
  author = {Doukhan, David and Lechapt, Eliott and Evrard, Marc and Carrive, Jean},
  title = {INA’S MIREX 2018 MUSIC AND SPEECH DETECTION SYSTEM},
  year = {2018},
  booktitle={Music Information Retrieval Evaluation eXchange (MIREX 2018)}
}

Sibling Projects

CREDITS

This work has been partially funded by the French National Research Agency (project GEM : Gender Equality Monitor : ANR-19-CE38-0012) and by European Union's Horizon 2020 research and innovation programme (project MeMAD : H2020 grant agreement No 780069).

The code used to extract mel bands features is copy-pasted from SIDEKIT project

Relevant contributions to the project were done by: