Reconstruction of physical dance teaching content and movement recognition based on a machine learning model

Lei Li, Tingting Yang
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Abstract

With the technological development of movement recognition based on machine learning model algorithms, the content and movements for physical dance teaching are also seeking changes and innovations. In this paper, a set of three-dimensional convolutional neural network recognition algorithms based on a machine learning model is constructed through the collection to recognition of sports dance movement data. By collecting the skeleton information of typical movements of physical dance, a typical movement dataset of physical dance is constructed, which is recognized by the improved 3D convolutional neural network recognition algorithm under the machine learning model, and the method is validated on the public dataset. The experimental results show that the 3D CNNs in this paper can produce relatively satisfactory results for sports dance action recognition with high accuracy of action recognition, which verifies the feasibility of the 3D convolutional neural network action recognition algorithm under the machine learning model for the acquisition to recognition of sports dance actions. It illustrates that the future can be better to open a new direction of physical dance education content through machine learning models in this form.
基于机器学习模型的物理舞蹈教学内容重构与动作识别
随着基于机器学习模型算法的动作识别技术的发展,体育课舞蹈教学的内容和动作也在寻求变化和创新。本文通过对体育舞蹈动作数据的采集与识别,构建了一套基于机器学习模型的三维卷积神经网络识别算法。通过采集物理舞蹈典型动作的骨架信息,构建物理舞蹈典型动作数据集,采用机器学习模型下改进的三维卷积神经网络识别算法进行识别,并在公共数据集上对该方法进行验证。实验结果表明,本文的3D cnn对运动舞蹈动作识别能够产生较为满意的结果,动作识别准确率较高,验证了机器学习模型下三维卷积神经网络动作识别算法对运动舞蹈动作采集识别的可行性。说明通过这种形式的机器学习模型,未来可以更好地开辟体育舞蹈教育内容的新方向。
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