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Research on Autoarrangement System of Accompaniment Chords Based on Hidden Markov Model with Machine Learning

Author

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  • Shuo Shi
  • Shuting Xi
  • Sang-Bing Tsai

Abstract

Accompaniment production is one of the most important elements in music work, and chord arrangement is the key link of accompaniment production, which usually requires more musical talent and profound music theory knowledge to be competent. In this article, the machine learning model is used to replace manual accompaniment chords’ arrangement, and an automatic computer means is provided to complete and assist accompaniment chords’ arrangement. Also, through music feature extraction, automatic chord label construction, and model construction and training, the whole system finally has the ability of automatic accompaniment chord arrangement for the main melody. Based on the research of automatic chord label construction method and the characteristics of MIDI data format, a chord analysis method based on interval difference is proposed to construct chord labels of the whole track and realize the construction of automatic chord labels. In this study, the hidden Markov model is constructed according to the chord types, in which the input features are the improved theme PCP features proposed in this paper, and the input labels are the label data set constructed by the automated method proposed in this paper. After the training is completed, the PCP features of the theme to be predicted and improved are input to generate the accompaniment chords of the final arrangement. Through PCP features and template-matching model, the system designed in this paper improves the matching accuracy of the generated chords compared with that generated by the traditional method.

Suggested Citation

  • Shuo Shi & Shuting Xi & Sang-Bing Tsai, 2021. "Research on Autoarrangement System of Accompaniment Chords Based on Hidden Markov Model with Machine Learning," Mathematical Problems in Engineering, Hindawi, vol. 2021, pages 1-10, October.
  • Handle: RePEc:hin:jnlmpe:6551493
    DOI: 10.1155/2021/6551493
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