Department of Kinesiology, College of Health and Human Science, San José State University, San Jose, CA 95129, USA.
School of Information Sciences, University of Illinois Urbana-Champaign, Urbana, IL 61801, USA.
Sensors (Basel). 2024 Jul 31;24(15):4955. doi: 10.3390/s24154955.
Tai Chi is a Chinese martial art that provides an adaptive and accessible exercise for older adults with varying functional capacity. While Tai Chi is widely recommended for its physical benefits, wider adoption in at-home practice presents challenges for practitioners, as limited feedback may hamper learning. This study examined the feasibility of using a wearable sensor, combined with machine learning (ML) approaches, to automatically and objectively classify Tai Chi expertise. We hypothesized that the combination of wrist acceleration profiles with ML approaches would be able to accurately classify practitioners' Tai Chi expertise levels. Twelve older active Tai Chi practitioners were recruited for this study. The self-reported lifetime practice hours were used to identify subjects in low, medium, or highly experienced groups. Using 15 acceleration-derived features from a wearable sensor during a self-guided Tai Chi movement and 8 ML architectures, we found multiclass classification performance to range from 0.73 to 0.97 in accuracy and F1-score. Based on feature importance analysis, the top three features were found to each result in a 16-19% performance drop in accuracy. These findings suggest that wrist-wearable-based ML models may accurately classify practice-related changes in movement patterns, which may be helpful in quantifying progress in at-home exercises.
太极拳是一种中国武术,为不同功能能力的老年人提供了一种适应性强且易于接受的锻炼方式。虽然太极拳因其身体益处而被广泛推荐,但在家庭实践中更广泛地采用却给练习者带来了挑战,因为有限的反馈可能会阻碍学习。本研究探讨了使用可穿戴传感器结合机器学习 (ML) 方法自动和客观地对太极拳专家进行分类的可行性。我们假设,将腕部加速度曲线与 ML 方法相结合,将能够准确地对练习者的太极拳专业水平进行分类。本研究招募了 12 名年龄较大的、积极练习太极拳的参与者。根据自我报告的终生练习时间,将参与者分为低、中或高经验组。在自我指导的太极拳运动中使用可穿戴传感器的 15 个加速度衍生特征和 8 个 ML 架构,我们发现多类分类性能在准确性和 F1 分数方面的范围从 0.73 到 0.97。基于特征重要性分析,前三个特征的性能分别下降了 16-19%。这些发现表明,基于腕部可穿戴的 ML 模型可能能够准确地对与练习相关的运动模式变化进行分类,这可能有助于量化家庭锻炼中的进展。