Division of Information and Electronic Engineering, Muroran Institute of Technology, Muroran 050-8585, Japan.
Sensors (Basel). 2022 Jul 20;22(14):5402. doi: 10.3390/s22145402.
Various genres of dance, such as Yosakoi Soran, have contributed to the health of many people and contributed to their sense of belonging to a community. However, due to the effects of COVID-19, various face-to-face activities have been restricted and group dance practice has become difficult. Hence, there is a need to facilitate remote dance practice. In this paper, we propose a system for detecting and visualizing the very important dance motions known as stops. We measure dance movements by motion capture and calculate the features of each movement based on velocity and acceleration. Using a neural network to learn motion features, the system detects stops and visualizes them using a human-like 3D model. In an experiment using dance data, the proposed method obtained highly accurate stop detection results and demonstrated its effectiveness as an information and communication technology support for remote group dance practice.
各种舞蹈类型,如“Yosakoi Soran”,都有助于许多人的健康,并增强他们对社区的归属感。然而,由于 COVID-19 的影响,各种面对面的活动受到限制,团体舞蹈练习变得困难。因此,有必要促进远程舞蹈练习。在本文中,我们提出了一种检测和可视化停止动作的系统。我们通过运动捕捉来测量舞蹈动作,并根据速度和加速度计算每个动作的特征。系统使用神经网络学习运动特征,检测停止动作,并使用类人 3D 模型进行可视化。在使用舞蹈数据的实验中,所提出的方法获得了非常准确的停止检测结果,证明了它作为远程团体舞蹈练习的信息和通信技术支持的有效性。