Research on Musical Tone Recognition Method Based on Improved RNN for Vocal Music Teaching Network Courses

Kaiyi Long
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Abstract

The test results show that the fast Fourier process with multiple time superposition and a dimension length of 40 is most beneficial to the accuracy of the model. The loss curve value of the convolutional recurrent network model (CRN) is much lower than the other three models. The music tone recognition model learns better. The accuracy rate value and recall rate value of the CRN are the highest, and the accuracy rates of the four music tone indicators are 94.6%, 92.4%, 93.5%, 92.5%, and the recall rates were 93.2%, 94.9%, 95.2%, and 88.6% respectively; the improved algorithm was the most accurate in terms of F1 values and is suitable for use in vocal music teaching courses. The results show that the algorithm can be broadly performed in the zone of music tone recognition and has a certain contribution to the development of the field of music tone recognition.
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基于改进RNN的声乐教学网络课程音色识别方法研究
实验结果表明,多时间叠加的快速傅立叶处理和40维长度最有利于提高模型的精度。卷积循环网络模型(CRN)的损失曲线值远低于其他三种模型。音乐音调识别模型学习效果更好。CRN的准确率值和召回率值最高,四个音乐音调指标的准确率分别为94.6%、92.4%、93.5%、92.5%,召回率分别为93.2%、94.9%、95.2%和88.6%;改进后的算法在F1值上是最准确的,适合在声乐教学课程中使用。结果表明,该算法可广泛应用于音乐语音识别领域,对音乐语音识别领域的发展有一定的贡献。
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