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Harmonic Classification with Enhancing Music Using Deep Learning Techniques

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  • Wen Tang
  • Linlin Gu
  • Dan Selistean

Abstract

Automatic extraction of features from harmonic information of music audio is considered in this paper. Automatically obtaining of relevant information is necessary not just for analysis but also for the commercial issue such as music program of tutoring and generating of lead sheet. Two aspects of harmony are considered, chord and global key, facing the issue of the extraction problem by the algorithm of machine learning. Contribution here is to recognize chords in the music by the feature extraction method (voiced models) that performd better than manually one. The modelling carried out chord sequence, getting from frame-by-frame basis, which is known in recognition of the chord system. Technique of machine learning such the convolutional neural network (CNN) will systematically extract the chord sequence to achieve the superiority context model. Then, traditional classification is used to create the key classifier which is better than others or manually one. Datasets used to evaluate the proposed model show good achievement results compared with existing one.

Suggested Citation

  • Wen Tang & Linlin Gu & Dan Selistean, 2021. "Harmonic Classification with Enhancing Music Using Deep Learning Techniques," Complexity, Hindawi, vol. 2021, pages 1-10, September.
  • Handle: RePEc:hin:complx:5590996
    DOI: 10.1155/2021/5590996
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