Department of Mechanical Engineering, The University of Michigan, Ann Arbor, MI 48105, USA.
Department of Industrial and Systems Engineering, Virginia Tech, Blacksburg, VA 24060, USA.
Sensors (Basel). 2019 Jul 16;19(14):3133. doi: 10.3390/s19143133.
Physical activities can have important impacts on human health. For example, a physically active lifestyle, which is one of the most important goals for overall health promotion, can diminish the risk for a range of physical disorders, as well as reducing health-related expenditures. Thus, a long-term goal is to detect different physical activities, and an important initial step toward this goal is the ability to classify such activities. A recent and promising technology to discriminate among diverse physical activities is the smart textile system (STS), which is becoming increasingly accepted as a low-cost activity monitoring tool for health promotion. Accordingly, our primary aim was to assess the feasibility and accuracy of using a novel STS to classify physical activities. Eleven participants completed a lab-based experiment to evaluate the accuracy of an STS that featured a smart undershirt (SUS) and commercially available smart socks (SSs) in discriminating several basic postures (sitting, standing, and lying down), as well as diverse activities requiring participants to walk and run at different speeds. We trained three classification methods-K-nearest neighbor, linear discriminant analysis, and artificial neural network-using data from each smart garment separately and in combination. Overall classification performance (global accuracy) was ~98%, which suggests that the STS was effective for discriminating diverse physical activities. We conclude that, overall, smart garments represent a promising area of research and a potential alternative for discriminating a range of physical activities, which can have positive implications for health promotion.
身体活动对人类健康有重要影响。例如,积极的生活方式是促进整体健康的最重要目标之一,可以降低一系列身体障碍的风险,同时减少与健康相关的支出。因此,长期目标是检测不同的身体活动,而实现这一目标的重要初始步骤是能够对这些活动进行分类。一种最近出现的、有前途的区分不同身体活动的技术是智能纺织品系统(STS),它作为一种促进健康的低成本活动监测工具,越来越被人们所接受。因此,我们的主要目的是评估使用新型 STS 对身体活动进行分类的可行性和准确性。11 名参与者完成了一项基于实验室的实验,以评估一种新型智能内衣(SUS)和商用智能袜子(SSs)的准确性,这些智能内衣和智能袜子可以区分几种基本姿势(坐、站和躺),以及需要参与者以不同速度行走和跑步的各种活动。我们分别使用来自每个智能服装的数据以及组合数据,训练了三种分类方法-最近邻法、线性判别分析和人工神经网络。总体分类性能(全局准确性)约为 98%,这表明 STS 可有效区分各种身体活动。我们得出结论,总的来说,智能服装是一个很有前途的研究领域,也是区分各种身体活动的潜在替代方法,这对促进健康具有积极意义。