Abstract

In order to achieve fast and accurate music technique recognition and enhancement for vocal music teaching, the paper proposed a music recognition method based on a combination of migration learning and CNN (convolutional neural network). Firstly, the most standard timbre vocal music is preprocessed by panning, flipping, rotating, and scaling and then manually classified by vocal technique features such as breathing method, articulation method, pronunciation method, and pitch region training. Then, based on the migration learning method, the weight parameters obtained from the convolutional model trained on the sound dataset CNN are migrated to the sound recognition, and the convolutional and pooling layers of the convolutional model are used as feature extraction layers, while the top layer is redesigned as a global average pooling layer and a Softmax output layer, and some of the convolutional layers are frozen during training. The experimental results show that the average test accuracy of the model is 86%, the training time is about 1/2 of the original model, and the model size is only 74.2 M. The F1 values of the model are 0.88, 0.80, 0.83, and 0.85 in four aspects, such as breathing method, exhaling method, articulation method, and phonetic region training, etc. The experimental results show that the method is efficient for voice and vocal music teaching recognition. The experimental results show that the method is efficient, effective, and transferable for voice and vocal music teaching research.

Highlights

  • With the continuous development of economy, people’s needs for material and spiritual aspects become more comprehensive and high level

  • In order to improve the technical level of vocal teaching, this requires better technical development skills and error correction. e improvement of vocal technique is directly related to the content of vocal art. erefore, the exploration of the status and role of vocal technique in vocal art can help the further development of vocal art by providing a better understanding of the current situation and future direction of vocal art

  • Gregory chant National singing popular singing et al [15, 16] proposed an end-to-end convolutional neural network based on the frequency domain representation of vibration signals to achieve fault classification of bearings with an accuracy of 93.6%. 97.58% accuracy was achieved by Qiao et al using a convolutional neural network model to process SAR type images for classification

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Summary

Zhuo He

Received 24 November 2021; Revised 18 December 2021; Accepted 31 December 2021; Published 2 February 2022. In order to achieve fast and accurate music technique recognition and enhancement for vocal music teaching, the paper proposed a music recognition method based on a combination of migration learning and CNN (convolutional neural network). The most standard timbre vocal music is preprocessed by panning, flipping, rotating, and scaling and manually classified by vocal technique features such as breathing method, articulation method, pronunciation method, and pitch region training. E experimental results show that the method is efficient for voice and vocal music teaching recognition. E experimental results show that the method is efficient, effective, and transferable for voice and vocal music teaching research. In order to improve the technical level of vocal teaching, this requires better technical development skills and error correction.

Gregory chant National singing popular singing
Connective cell myelin sheath
Multi feature extraction
Zone Training
Error variation
Conclusion
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