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Physical activity classification in free-living conditions using smartphone accelerometer data and exploration of predicted results

机译:使用智能手机加速度计数据在自由生活条件下进行体育活动分类并探索预测结果

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In recent decades, decreasing physical activity has emerged as one of the major issues affecting human health since people increasingly engaged in sedentary behavior in their homes and workplaces. In physical activity research, using GPS trajectories and advanced GIS methods has a potential for greatly enhancing our understanding of the association between objectively measured moderate and vigorous physical activity and physical and social environments. Relying only on objectively measured physical activity intensity, however, ignores the role of different places and types of physical activity on people's health outcomes. The aim of this study is to propose an approach to classifying physical activity in free-living conditions for physical activity research using published smartphone accelerometer data. Random forest and gradient boosting are used to predict jogging, walking, sitting, and standing. Generated training models based on the two classifiers are tested on accelerometer data collected from the smartphones of two subjects in free-living conditions. GPS trajectories with predicted physical activity labels are visually explored on a map to offer new insight on the assessment of the predicted results of daily activities and the identification of any difference in the results between random forest and gradient boosting. The findings of this study indicate that random forest and gradient boosting enable accurate physical activity classification in free-living conditions. GPS trajectories linked with predicted labels on a map assist the visual exploration of the erroneous prediction in daily activities including in-vehicle activities.
机译:近几十年来,自从人们日益在家中和工作场所从事久坐行为以来,减少体育锻炼已成为影响人类健康的主要问题之一。在体育活动研究中,使用GPS轨迹和先进的GIS方法有可能极大地增进我们对客观测量的中度和剧烈体育活动与身体和社会环境之间联系的理解。但是,仅依靠客观测量的体育活动强度,忽略了不同地点和类型的体育活动对人们健康结果的作用。这项研究的目的是提出一种使用公开的智能手机加速度计数据对自由活动条件下的身体活动进行分类的方法,以进行身体活动研究。随机森林和梯度增强可用于预测慢跑,走路,坐着和站立。基于两个分类器生成的训练模型在自由生活条件下,根据从两个对象的智能手机收集的加速度计数据进行测试。在地图上直观地浏览了具有预测的身体活动标签的GPS轨迹,从而为评估日常活动的预测结果以及识别随机森林和梯度增强之间的结果差异提供了新的见解。这项研究的结果表明,随机森林和梯度促进能够在自由生活条件下进行准确的身体活动分类。 GPS轨迹与地图上的预测标签链接在一起,有助于在视觉上探索包括汽车活动在内的日常活动中的错误预测。

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