Potempski Filip, Sabo Andrea, Patterson Kara K
KITE-Toronto Rehabilitation Institute, University Health Network, Toronto, Canada; Department of Physical Therapy, University of Toronto, Toronto, Canada; Department of Arts & Sciences, University of Toronto, Toronto, Canada; Department of Applied Health Sciences, Brock University, St. Catherines, Canada.
KITE-Toronto Rehabilitation Institute, University Health Network, Toronto, Canada; Institute of Biomedical Engineering, University of Toronto, Toronto, Canada.
J Biomech. 2022 Aug;141:111178. doi: 10.1016/j.jbiomech.2022.111178. Epub 2022 Jun 8.
Dance interventions hold promise for improving gait and balance in people with neurological conditions. It is possible that synchronization of movement to the music is one of the mechanisms through which dance bestows physical benefits. This technical note will describe a novel method using a deep learning-based 2D pose estimator: OpenPose, alongside beat analysis of music to quantify movement-music synchrony during salsa dancing. This method has four components: i) camera setup and recording, ii) tempo/downbeat analysis and waveform cleanup, iii) OpenPose estimation and data extraction, and iv) synchronization analysis. Four participants performed a solo basic salsa step continuously for 90 s to a salsa track while their movements and the music were recorded with a webcam. Two conditions were recorded for each participant: one in which they danced on the beat of the music and one where they did not. This data was then extracted from OpenPose and analyzed. Median asynchrony values highlighted differences between participants with and without dance training and between on- and off-beat conditions, indicating that this method may be an effective means to quantify a dancer's asynchrony while performing a basic salsa step.
舞蹈干预有望改善神经系统疾病患者的步态和平衡。运动与音乐的同步可能是舞蹈带来身体益处的机制之一。本技术说明将描述一种使用基于深度学习的二维姿态估计器OpenPose的新方法,同时结合音乐节拍分析,以量化萨尔萨舞期间的运动与音乐同步性。该方法有四个组成部分:i)相机设置与录制,ii)节奏/强拍分析与波形清理,iii)OpenPose估计与数据提取,以及iv)同步分析。四名参与者随着萨尔萨音乐曲目连续90秒表演单人基本萨尔萨舞步,同时用网络摄像头记录他们的动作和音乐。为每位参与者记录了两种情况:一种是他们跟随音乐节拍跳舞,另一种是不跟随节拍跳舞。然后从OpenPose中提取这些数据并进行分析。中位数异步值突出显示了有舞蹈训练和没有舞蹈训练的参与者之间以及合拍与不合拍情况之间的差异,表明该方法可能是量化舞者在执行基本萨尔萨舞步时异步性的有效手段。