English

Convolution channel separation and frequency sub-bands aggregation for music genre classification

Audio and Speech Processing 2022-11-04 v1 Sound

Abstract

In music, short-term features such as pitch and tempo constitute long-term semantic features such as melody and narrative. A music genre classification (MGC) system should be able to analyze these features. In this research, we propose a novel framework that can extract and aggregate both short- and long-term features hierarchically. Our framework is based on ECAPA-TDNN, where all the layers that extract short-term features are affected by the layers that extract long-term features because of the back-propagation training. To prevent the distortion of short-term features, we devised the convolution channel separation technique that separates short-term features from long-term feature extraction paths. To extract more diverse features from our framework, we incorporated the frequency sub-bands aggregation method, which divides the input spectrogram along frequency bandwidths and processes each segment. We evaluated our framework using the Melon Playlist dataset which is a large-scale dataset containing 600 times more data than GTZAN which is a widely used dataset in MGC studies. As the result, our framework achieved 70.4% accuracy, which was improved by 16.9% compared to a conventional framework.

Keywords

Cite

@article{arxiv.2211.01599,
  title  = {Convolution channel separation and frequency sub-bands aggregation for music genre classification},
  author = {Jungwoo Heo and Hyun-seo Shin and Ju-ho Kim and Chan-yeong Lim and Ha-Jin Yu},
  journal= {arXiv preprint arXiv:2211.01599},
  year   = {2022}
}
R2 v1 2026-06-28T05:04:35.991Z