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http://dx.doi.org/10.6109/jkiice.2020.24.7.842

Deep Learning Music Genre Classification System Model Improvement Using Generative Adversarial Networks (GAN)  

Bae, Jun (Department of Computer Science, The University of Suwon)
Abstract
Music markets have entered the era of streaming. In order to select and propose music that suits the taste of music consumers, there is an active demand and research on an automatic music genre classification system. We propose a method to improve the accuracy of genre unclassified songs, which was a lack of the previous system, by using a generative adversarial network (GAN) to further develop the automatic voting system for deep learning music genre using Softmax proposed in the previous paper. In the previous study, if the spectrogram of the song was ambiguous to grasp the genre of the song, it was forced to leave it as an unclassified song. In this paper, we proposed a system that increases the accuracy of genre classification of unclassified songs by converting the spectrogram of unclassified songs into an easy-to-read spectrogram using GAN. And the result of the experiment was able to derive an excellent result compared to the existing method.
Keywords
GAN; Deep Learning; CNN; Automatic Music Genre Classification;
Citations & Related Records
Times Cited By KSCI : 2  (Citation Analysis)
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