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Convolutional Neural Network Achieves Human-level Accuracy in Music Genre Classification (1802.09697v1)

Published 27 Feb 2018 in cs.SD, cs.LG, and eess.AS

Abstract: Music genre classification is one example of content-based analysis of music signals. Traditionally, human-engineered features were used to automatize this task and 61% accuracy has been achieved in the 10-genre classification. However, it's still below the 70% accuracy that humans could achieve in the same task. Here, we propose a new method that combines knowledge of human perception study in music genre classification and the neurophysiology of the auditory system. The method works by training a simple convolutional neural network (CNN) to classify a short segment of the music signal. Then, the genre of a music is determined by splitting it into short segments and then combining CNN's predictions from all short segments. After training, this method achieves human-level (70%) accuracy and the filters learned in the CNN resemble the spectrotemporal receptive field (STRF) in the auditory system.

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Authors (1)
  1. Mingwen Dong (6 papers)
Citations (36)

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