Optimization of Choreography Teaching with Deep Learning and Neural Networks

被引:0
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作者
Zhou, Qianling [1 ]
Tong, Yan [2 ]
Si, Hongwei [3 ]
Zhou, Kai [4 ]
机构
[1] School of Music and Dance, Hunan Women's University, Changsha, Hunan,410004, China
[2] School of Music, South China Normal University, Guangzhou, Guangdong,510631, China
[3] Department of the History of Science, Tsinghua University, Beijing, China
[4] School of Social Development and Management, Hunan Women's University, Changsha, Hunan,410004, China
关键词
Deep learning - Learning systems - Memory architecture - Network architecture - Stamping;
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学科分类号
摘要
To improve the development level of intelligent dance education and choreography network technology, the research mainly focuses on the automatic formation system of continuous choreography by using the deep learning method. Firstly, it overcomes the technical difficulty that the dynamic segmentation and process segmentation of the automatic generation architecture in traditional choreography cannot achieve global optimization. Secondly, it is an automatic generation architecture for end-to-end continuous dance notation with access to temporal classifiers. Based on this, a dynamic time-stamping model is designed for frame clustering. Finally, it is concluded through experiments that the model successfully achieves high-performance movement time-stamping. And combined with continuous motion recognition technology, it realizes the refined production of continuous choreography with global motion recognition and then marks motion duration. This research effectively realizes the efficient and refined production of digital continuous choreography, provides advanced technical means for choreography education, and provides useful experience for school network choreography education. © 2022 Qianling Zhou et al.
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