Abstract

With the advent of the digital music era, digital audio sources have exploded. Music classification (MC) is the basis of managing massive music resources. In this paper, we propose a MC method based on deep learning to improve feature extraction and classifier design based on MIDI (musical instrument digital interface) MC task. Considering that the existing classification technology is limited by the shallow structure, it is difficult for the classifier to learn the time sequence and semantic information of music; this paper proposes a MIDIMC method based on deep learning. In the experiment, we use the MC method proposed in this paper to achieve 90.1% classification accuracy, which is better than the existing classification method based on BP neural network, and verify the music with its classification accuracy. The key point is that the music division method used in this paper has correct MC efficiency. However, due to the limited ability and time involved in the interdisciplinary field, the methodology of this paper has certain limitations, which still needs further research and improvement.

Highlights

  • Song can improve attention, relieve people’s pressure in work and study, and benefit their physical and mental health

  • Understanding the MIDI file format is of great help to the analysis and processing of sequential MIDI data

  • Erefore, in this paper, we propose a MIDIMC method based on deep learning

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Summary

Fang Zhang

Received 19 October 2021; Revised 12 November 2021; Accepted 22 November 2021; Published 8 December 2021. We propose a MC method based on deep learning to improve feature extraction and classifier design based on MIDI (musical instrument digital interface) MC task. Considering that the existing classification technology is limited by the shallow structure, it is difficult for the classifier to learn the time sequence and semantic information of music; this paper proposes a MIDIMC method based on deep learning. We use the MC method proposed in this paper to achieve 90.1% classification accuracy, which is better than the existing classification method based on BP neural network, and verify the music with its classification accuracy. E key point is that the music division method used in this paper has correct MC efficiency. Due to the limited ability and time involved in the interdisciplinary field, the methodology of this paper has certain limitations, which still needs further research and improvement

Introduction
Piano BigBand Fusion
Spatial feature
Ot U
Experiments and Result Analysis
Findings
Dance music
Full Text
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