mtg / music-classifiers

Transfer learning models for music classification by genres, moods, and instrumentation

  • Public
  • 9.6K runs
  • GitHub
  • Paper
  • License

This demo runs transfer learning classifiers trained on various public and in-house MTG datasets using different audio embeddings.

Source models used for embeddings

  • MusiCNN. A musically motivated CNN with two variants trained on the Million Song Dataset and the MagnaTagATune.
  • VGGish. A large VGG variant trained on a preliminary version of the AudioSet Dataset.

Transfer learning classifiers

Our models consist of single-hidden-layer MLPs trained on the considered embeddings.

License

These models are part of Essentia Models made by MTG-UPF and are publicly available under CC by-nc-sa and commercial license.