Dataset Restricted Access

MedleyDB Audio: A Dataset of Multitrack Audio for Music Research

Rachel Bittner; Justin Salamon; Mike Tierney; Matthias Mauch; Chris Cannam; Juan Pablo Bello

Audio files for the MedleyDB multitrack dataset. Annotation and Metadata files are version controlled and are available in the MedleyDB github repository: Metadata can be found here, Annotations can be found here.

For detailed information about the dataset, please visit MedleyDB's website.

 

If you make use of MedleyDB for academic purposes, please cite the following publication:

R. Bittner, J. Salamon, M. Tierney, M. Mauch, C. Cannam and J. P. Bello, "MedleyDB: A Multitrack Dataset for Annotation-Intensive MIR Research", in 15th International Society for Music Information Retrieval Conference, Taipei, Taiwan, Oct. 2014.

Restricted Access

You may request access to the files in this upload, provided that you fulfil the conditions below. The decision whether to grant/deny access is solely under the responsibility of the record owner.


Dataset compiled by Rachel Bittner, Justin Salamon, Mike Tierney, Matthias Mauch, Chris Cannam, and Juan P. Bello. MedleyDB is offered free of charge for non-commercial research use only under the terms of the Creative Commons Attribution Noncommercial License: http://creativecommons.org/licenses/by-nc-sa/4.0/. The dataset and its contents are made available on an "as is" basis and without warranties of any kind, including without limitation satisfactory quality and conformity, merchantability, fitness for a particular purpose, accuracy or completeness, or absence of errors. Subject to any liability that may not be excluded or limited by law, NYU is not liable for, and expressly excludes, all liability for loss or damage however and whenever caused to anyone by any use of the MedleyDB dataset or any part of it.


  • R. Bittner, J. Salamon, M. Tierney, M. Mauch, C. Cannam and J. P. Bello, "MedleyDB: A Multitrack Dataset for Annotation-Intensive MIR Research", in 15th International Society for Music Information Retrieval Conference, Taipei, Taiwan, Oct. 2014.

2,814
1,550
views
downloads
All versions This version
Views 2,8142,827
Downloads 1,5501,550
Data volume 61.8 TB61.8 TB
Unique views 1,9731,984
Unique downloads 721721

Share

Cite as