• Corpus ID: 15194729

AcousticBrainz: A Community Platform for Gathering Music Information Obtained from Audio

@inproceedings{Porter2015AcousticBrainzAC,
  title={AcousticBrainz: A Community Platform for Gathering Music Information Obtained from Audio},
  author={Alastair Porter and Dmitry Bogdanov and Robert Kaye and Roman Tsukanov and Xavier Serra},
  booktitle={ISMIR},
  year={2015}
}
Comunicacio presentada a la 16th International Society for Music Information Retrieval Conference (ISMIR 2015), celebrada els dies 26 a 30 d'octubre de 2015 a Malaga, Espanya. 

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