Human physical motion activity identification has many potential applications in various fields, such as medical diagnosis, military sensing, sports analysis, and human-computer security interaction. With the recent advances in smartphones and wearable technologies, it has become common for such devices to have embedded motion sensors that are able to sense even small body movements. This study collected human activity data from 60 participants across two different days for a total of six activities recorded by gyroscope and accelerometer sensors in a modern smartphone. The paper investigates to what extent different activities can be identified by utilising machine learning algorithms using approaches such as majority algorithmic voting. More analyses are also provided that reveal which time and frequency domain based features were best able to identify individuals motion activity types. Overall, the proposed approach achieved a classification accuracy of 98 percent in identifying four different activities: walking, walking upstairs, walking downstairs, and sitting while the subject is calm and doing a typical desk-based activity.
翻译:人类运动活动识别在许多领域有许多潜在应用,如医学诊断、军事感测、体育分析和人体计算机安全互动等。随着智能手机和可磨损技术的最近进步,这类装置通常会安装内嵌运动感应器,能够感知即使是小身体运动。这项研究收集了60名参与者在两个不同的天里收集的人类活动数据,总共记录了6项活动,这些活动由一台现代智能手机中的陀螺仪和加速计感仪传感器记录。本文调查了使用机器学习算法使用多数算法等方法可以在多大程度上确定不同活动。还提供了更多的分析,揭示了哪些基于时间和频率域的特征最能够确定个人运动活动类型。总体而言,拟议方法在确定四种不同活动时达到了98%的分类精确度:行走、上楼下行走、在楼下行走和坐坐坐时,主题保持平静并进行典型的案头活动。