This is general info. Click here for the complete wiki and here for a more generic intro to audio data handling
- [2022-01-01] If you are not interested in training audio models from your own data, you can check the Deep Audio API, were you can directly send audio data and receive predictions with regards to the respective audio content (speech vs silence, musical genre, speaker gender, etc).
- [2021-08-06] deep-audio-features deep audio classification and feature extraction using CNNs and Pytorch
- Check out paura a Python script for realtime recording and analysis of audio data
pyAudioAnalysis is a Python library covering a wide range of audio analysis tasks. Through pyAudioAnalysis you can:
- Extract audio features and representations (e.g. mfccs, spectrogram, chromagram)
- Train, parameter tune and evaluate classifiers of audio segments
- Classify unknown sounds
- Detect audio events and exclude silence periods from long recordings
- Perform supervised segmentation (joint segmentation - classification)
- Perform unsupervised segmentation (e.g. speaker diarization) and extract audio thumbnails
- Train and use audio regression models (example application: emotion recognition)
- Apply dimensionality reduction to visualize audio data and content similarities
- Clone the source of this library:
git clone https://github.com/tyiannak/pyAudioAnalysis.git
- Install dependencies:
pip install -r ./requirements.txt
- Install using pip:
pip install -e .
More examples and detailed tutorials can be found at the wiki
pyAudioAnalysis provides easy-to-call wrappers to execute audio analysis tasks. Eg, this code first trains an audio segment classifier, given a set of WAV files stored in folders (each folder representing a different class) and then the trained classifier is used to classify an unknown audio WAV file
from pyAudioAnalysis import audioTrainTest as aT
aT.extract_features_and_train(["classifierData/music","classifierData/speech"], 1.0, 1.0, aT.shortTermWindow, aT.shortTermStep, "svm", "svmSMtemp", False)
aT.file_classification("data/doremi.wav", "svmSMtemp","svm")
Result: (0.0, array([ 0.90156761, 0.09843239]), ['music', 'speech'])
In addition, command-line support is provided for all functionalities. E.g. the following command extracts the spectrogram of an audio signal stored in a WAV file: python audioAnalysis.py fileSpectrogram -i data/doremi.wav
Apart from this README file, to bettern understand how to use this library one should read the following:
- Audio Handling Basics: Process Audio Files In Command-Line or Python, if you want to learn how to handle audio files from command line, and some basic programming on audio signal processing. Start with that if you don't know anything about audio.
- Intro to Audio Analysis: Recognizing Sounds Using Machine Learning This goes a bit deeper than the previous article, by providing a complete intro to theory and practice of audio feature extraction, classification and segmentation (includes many Python examples).
- The library's wiki
- How to Use Machine Learning to Color Your Lighting Based on Music Mood. An interesting use-case of using this lib to train a real-time music mood estimator.
- A more general and theoretic description of the adopted methods (along with several experiments on particular use-cases) is presented in this publication. Please use the following citation when citing pyAudioAnalysis in your research work:
@article{giannakopoulos2015pyaudioanalysis,
title={pyAudioAnalysis: An Open-Source Python Library for Audio Signal Analysis},
author={Giannakopoulos, Theodoros},
journal={PloS one},
volume={10},
number={12},
year={2015},
publisher={Public Library of Science}
}
For Matlab-related audio analysis material check this book.
Theodoros Giannakopoulos, Principal Researcher of Multimodal Machine Learning at the Multimedia Analysis Group of the Computational Intelligence Lab (MagCIL) of the Institute of Informatics and Telecommunications, of the National Center for Scientific Research "Demokritos"