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Comparing the Accuracy of Deep Neural Networks and Convolutional Neural Network in Music Genre Recognition : Experiments on Kurdish Music

2021-11-22 09:21:48
Aza Zuhair, Hossein Hassani

Abstract

Musicologists use various labels to classify similar music styles under a shared title. But, non-specialists may categorize music differently. That could be through finding patterns in harmony, instruments, and form of the music. People usually identify a music genre solely by listening, but now computers and Artificial Intelligence (AI) can automate this process. The work on applying AI in the classification of types of music has been growing recently, but there is no evidence of such research on the Kurdish music genres. In this research, we developed a dataset that contains 880 samples from eight different Kurdish music genres. We evaluated two machine learning approaches, a Deep Neural Network (DNN) and a Convolutional Neural Network (CNN), to recognize the genres. The results showed that the CNN model outperformed the DNN by achieving 92% versus 90% accuracy.

Abstract (translated)

URL

https://arxiv.org/abs/2111.11063

PDF

https://arxiv.org/pdf/2111.11063.pdf


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