jramcast/music-genre-classification-audioset
Music genre classification experiments with Audioset
This project helps researchers and musicologists automatically categorize music by genre. By feeding in raw audio data from large datasets like Audioset, it applies various machine learning models to output genre classifications. It's designed for individuals studying music information retrieval or the ambiguity of music genre definitions.
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Use this if you are a researcher in music information retrieval looking to compare different machine learning models for music genre classification using existing audio datasets.
Not ideal if you're a casual user looking for a simple tool to tag your personal music library, as it requires downloading large datasets and running Python scripts.
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Jupyter Notebook
License
MIT
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Last pushed
Sep 23, 2022
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