The rapid development of intelligent communication technologies has brought innovative opportunities to the field of music education, as traditional models are no longer sufficient to meet students' learning needs.This study employs a convolutional neural network (CNN) as the core algorithm to process audio and dance data, extracting high-level features such as rhythm and body movements through its multi-layered hierarchical structure.A support vector machine (SVM) algorithm is used to assess student abilities, while the convolutional neural network processes data to extract features, and intelligent sensor technology is integrated to build a teaching platform.The study found that the support vector machine achieved an accuracy of 93.7% in music feature classification, while the convolutional neural network improved the accuracy of dance movement classification to 96.3%.This model significantly improves the accuracy of teaching assessment, providing an intelligent solution for music and dance education and promoting humancomputer interactive teaching.
Huazhao Lu (Thu,) studied this question.
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