Constructing a Multimodal Music Teaching Model in College by Integrating Emotions

Author:

Song Jia1

Affiliation:

1. College of Arts , Hubei University of Education , Wuhan , Hubei , , China .

Abstract

Abstract In this study, we enhanced the CaffeNet network for recognizing students’ facial expressions in a music classroom and extracted emotional features from their expressions. Additionally, students’ speech signals were processed through filters to identify emotional characteristics. Using the LRLR fusion strategy, these expression and speech-based emotional features were combined to derive multimodal fusion emotion results. Subsequently, a music teaching model incorporating this multimodal emotion recognition was developed. Our analysis indicates a mere 6.03% discrepancy between the model’s emotion recognition results and manual emotional assessments, underscoring its effectiveness. Implementation of this model in a music teaching context led to a noticeable increase in positive emotional responses—happy and surprised emotions peaked at 30.04% and 27.36%, respectively, during the fourth week. Furthermore, 70% of students displayed a positive learning status, demonstrating a significant boost in engagement and motivation for music learning. This approach markedly enhances student interest in learning and provides a solid basis for improving educational outcomes in music classes.

Publisher

Walter de Gruyter GmbH

Reference21 articles.

1. Hong, H., & Luo, W. (2021). The method of emotional education in music teaching. International Journal of Electrical Engineering Education, 002072092098355.

2. Zhang, Y., & Li, Z. (2021). Automatic synthesis technology of music teaching melodies based on recurrent neural network. Scientific programming(Pt.13), 2021.

3. Xia, X., & Yan, J. (2021). Construction of music teaching evaluation model based on weighted nave bayes. Scientific Programming.

4. Xue, L. (2019). Construction of the music teaching resource library in the view of digitalization. Basic & clinical pharmacology & toxicology.(S3), 124.

5. Liu, Y. (2019). Exploration on the application of the internet and the network multimedia in the vocal music teaching. Basic & clinical pharmacology & toxicology.(S2), 125.

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