Solfeggio Teaching Method Based on MIDI Technology in the Background of Digital Music Teaching

Q2 Social Sciences
Shuo Shen, Kehui Wu
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引用次数: 0

Abstract

This research aims at teaching solfeggio and ear training in college music and proposes a teaching method for college music note recognition that combines the musical instrument digital interface (MIDI) and hidden Markov models (HMM). The experiment showcases that after preprocessing the music frequency sample signal using HMM model, it achieves the target accuracy after 20 times of training. From the HMM transition probability matrix diagram estimated from all training data sets, it can be seen that the transition matrix is close to the diagonal matrix. This indicates its high transfer efficiency. This study compares the HMM model with the other two algorithms, and the results show that its accuracy rate is about 99.56%. The probability of insertion errors and elimination errors is 0.52% and 2.58%. This is superior to the other two algorithms. In summary, the HMM model proposed in the study has extremely strong performance in the teaching of music note feature recognition in universities and can provide better teaching methods.
数字音乐教学背景下基于MIDI技术的视唱练耳教学方法
本研究针对高校音乐视唱练耳教学,提出了一种结合乐器数字接口(MIDI)和隐马尔可夫模型(HMM)的高校音符识别教学方法。实验表明,使用HMM模型对音乐频率样本信号进行预处理后,经过20次训练,达到了目标准确率。从所有训练数据集估计的HMM转移概率矩阵图可以看出,转移矩阵接近对角矩阵。这说明它的传递效率高。本研究将HMM模型与其他两种算法进行了比较,结果表明其准确率约为99.56%。插入错误和消除错误的概率分别为0.52%和2.58%。这优于其他两种算法。综上所述,本研究提出的HMM模型在高校音符特征识别教学中具有极强的表现,可以提供更好的教学方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
2.40
自引率
0.00%
发文量
68
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