Electrical Engineering Department, College of Engineering, Najran University, Najran 61441, Saudi Arabia.
Department of Computer and Information Sciences, Northumbria University, Newcastle-upon-Tyne NE1 8ST, UK.
Int J Environ Res Public Health. 2020 Feb 8;17(3):1082. doi: 10.3390/ijerph17031082.
Physical activity is essential for physical and mental health, and its absence is highly associated with severe health conditions and disorders. Therefore, tracking activities of daily living can help promote quality of life. Wearable sensors in this regard can provide a reliable and economical means of tracking such activities, and such sensors are readily available in smartphones and watches. This study is the first of its kind to develop a wearable sensor-based physical activity classification system using a special class of supervised machine learning approaches called boosting algorithms. The study presents the performance analysis of several boosting algorithms (extreme gradient boosting-XGB, light gradient boosting machine-LGBM, gradient boosting-GB, cat boosting-CB and AdaBoost) in a fair and unbiased performance way using uniform dataset, feature set, feature selection method, performance metric and cross-validation techniques. The study utilizes the Smartphone-based dataset of thirty individuals. The results showed that the proposed method could accurately classify the activities of daily living with very high performance (above 90%). These findings suggest the strength of the proposed system in classifying activity of daily living using only the smartphone sensor's data and can assist in reducing the physical inactivity patterns to promote a healthier lifestyle and wellbeing.
体育活动对身心健康至关重要,缺乏体育活动与严重的健康状况和疾病高度相关。因此,跟踪日常生活活动可以帮助提高生活质量。在这方面,可穿戴传感器可以提供一种可靠和经济的跟踪此类活动的手段,智能手机和手表中都可以轻易找到这种传感器。本研究是首次使用一种特殊的监督机器学习方法(称为提升算法)开发基于可穿戴传感器的日常活动分类系统。本研究以公平和无偏的方式展示了几种提升算法(极端梯度提升-XGB、轻梯度提升机-LGBM、梯度提升-GB、Catboost-CB 和 AdaBoost)的性能分析,使用了统一的数据集、特征集、特征选择方法、性能指标和交叉验证技术。本研究利用 30 名个体的基于智能手机的数据集。结果表明,所提出的方法可以非常准确地分类日常生活活动,性能非常高(超过 90%)。这些发现表明,该系统仅使用智能手机传感器的数据就可以有效地分类日常生活活动,并有助于减少身体活动不足的模式,以促进更健康的生活方式和幸福感。