MediaEval 2017 AcousticBrainz Genre Task: Multilayer Perceptron Approach

نویسندگان

  • Khaled Koutini
  • Alina Imenina
  • Matthias Dorfer
  • Alexander Gruber
  • Markus Schedl
چکیده

This report describes the approach developed by the JKU team for the MediaEval 2017 AcousticBrainz Genre Task. After experimenting with various classifiers on the development dataset, our final approach is based on multilayer perceptron classifiers.

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تاریخ انتشار 2017