Hendry Danica, Chai Kevin, Campbell Amity, Hopper Luke, O'Sullivan Peter, Straker Leon
School of Physiotherapy and Exercise Science, Curtin University, Perth, Western Australia, Australia.
Curtin Institute for Computations, Curtin University, Perth, Western Australia, Australia.
Sports Med Open. 2020 Feb 7;6(1):10. doi: 10.1186/s40798-020-0237-5.
Accurate and detailed measurement of a dancer's training volume is a key requirement to understanding the relationship between a dancer's pain and training volume. Currently, no system capable of quantifying a dancer's training volume, with respect to specific movement activities, exists. The application of machine learning models to wearable sensor data for human activity recognition in sport has previously been applied to cricket, tennis and rugby. Thus, the purpose of this study was to develop a human activity recognition system using wearable sensor data to accurately identify key ballet movements (jumping and lifting the leg). Our primary objective was to determine if machine learning can accurately identify key ballet movements during dance training. The secondary objective was to determine the influence of the location and number of sensors on accuracy.
Convolutional neural networks were applied to develop two models for every combination of six sensors (6, 5, 4, 3, etc.) with and without the inclusion of transition movements. At the first level of classification, including data from all sensors, without transitions, the model performed with 97.8% accuracy. The degree of accuracy reduced at the second (83.0%) and third (75.1%) levels of classification. The degree of accuracy reduced with inclusion of transitions, reduction in the number of sensors and various sensor combinations.
The models developed were robust enough to identify jumping and leg lifting tasks in real-world exposures in dancers. The system provides a novel method for measuring dancer training volume through quantification of specific movement tasks. Such a system can be used to further understand the relationship between dancers' pain and training volume and for athlete monitoring systems. Further, this provides a proof of concept which can be easily translated to other lower limb dominant sporting activities.
准确且详细地测量舞者的训练量是理解舞者疼痛与训练量之间关系的关键要求。目前,尚无能够针对特定运动活动量化舞者训练量的系统。机器学习模型在可穿戴传感器数据用于体育活动中人类活动识别方面的应用,此前已应用于板球、网球和橄榄球运动。因此,本研究的目的是开发一种利用可穿戴传感器数据的人类活动识别系统,以准确识别关键的芭蕾舞动作(跳跃和抬腿)。我们的主要目标是确定机器学习能否在舞蹈训练期间准确识别关键的芭蕾舞动作。次要目标是确定传感器的位置和数量对准确性的影响。
应用卷积神经网络为六种传感器(6、5、4、3等)的每种组合开发了两个模型,有无包含过渡动作。在第一级分类中,包括来自所有传感器的数据且无过渡动作时,模型的准确率为97.8%。在第二级(83.0%)和第三级(75.1%)分类中准确率降低。随着包含过渡动作、传感器数量减少以及各种传感器组合,准确率降低。
所开发的模型足够强大,能够在现实世界中舞者的活动中识别跳跃和抬腿任务。该系统通过量化特定运动任务提供了一种测量舞者训练量的新方法。这样的系统可用于进一步理解舞者疼痛与训练量之间的关系以及用于运动员监测系统。此外,这提供了一个概念验证,可轻松转化为其他以下肢为主的体育活动。