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Transfer Learning in Vocal Education: Technical Evaluation of Limited Samples Describing Mezzo-soprano

30 October 2024
Zhenyi Hou
Xu Zhao
Kejie Ye
Xinyu Sheng
Shanggerile Jiang
Jiajing Xia
Yitao Zhang
Chenxi Ban
Daijun Luo
Jiaxing Chen
Yan Zou
Yuchao Feng
Guangyu Fan
Xin Yuan
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Abstract

Vocal education in the music field is difficult to quantify due to the individual differences in singers' voices and the different quantitative criteria of singing techniques. Deep learning has great potential to be applied in music education due to its efficiency to handle complex data and perform quantitative analysis. However, accurate evaluations with limited samples over rare vocal types, such as Mezzo-soprano, requires extensive well-annotated data support using deep learning models. In order to attain the objective, we perform transfer learning by employing deep learning models pre-trained on the ImageNet and Urbansound8k datasets for the improvement on the precision of vocal technique evaluation. Furthermore, we tackle the problem of the lack of samples by constructing a dedicated dataset, the Mezzo-soprano Vocal Set (MVS), for vocal technique assessment. Our experimental results indicate that transfer learning increases the overall accuracy (OAcc) of all models by an average of 8.3%, with the highest accuracy at 94.2%. We not only provide a novel approach to evaluating Mezzo-soprano vocal techniques but also introduce a new quantitative assessment method for music education.

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