Shandong University of Arts, Jinan 250000, China.
Comput Intell Neurosci. 2022 Jun 30;2022:3682261. doi: 10.1155/2022/3682261. eCollection 2022.
Folk dance is a very unique local culture in China, and dances in different regions have different characteristics. With the development of 3D digital technology and human gesture recognition technology, how to apply it in folk dance is a question worth thinking about. So, this paper recognizes and collects dance movements through human body detection and tracking technology in human gesture recognition technology. Then, this paper writes the data into the AAM model for 3D digital modeling and retains the information by integrating the manifold ordering. Finally, this paper designs a folk dance learning method combined with the Few-Shot learning method. This paper also designs a data set test experiment, an algorithm data set comparison experiment, and a target matching algorithm comparison experiment to optimize the learning method designed in this paper. The final results show that the Few-Shot learning method based on gesture recognition 3D digital modeling of folk dances designed in this paper reduces the learning time by 17% compared with the traditional folk dance learning methods. And the Few-Shot learning method designed in this paper improves the dance action score by 14% compared with the traditional learning method.
民间舞蹈是中国极具特色的本土文化,不同地区的舞蹈具有不同的特点。随着 3D 数字技术和人体姿态识别技术的发展,如何将其应用于民间舞蹈是一个值得思考的问题。因此,本文在人体姿态识别技术中通过人体检测和跟踪技术识别和收集舞蹈动作。然后,本文将数据写入 AAM 模型进行 3D 数字建模,并通过流形排序保留信息。最后,本文设计了一种结合 Few-Shot 学习方法的民间舞蹈学习方法。本文还设计了数据集测试实验、算法数据集比较实验和目标匹配算法比较实验,以优化本文设计的学习方法。最终结果表明,本文设计的基于姿态识别的民间舞蹈 3D 数字建模的 Few-Shot 学习方法与传统民间舞蹈学习方法相比,学习时间减少了 17%。并且本文设计的 Few-Shot 学习方法与传统学习方法相比,舞蹈动作得分提高了 14%。