iPhone加速度计用于步态检测的可行性研究

Herman Chan, Huiru Zheng, Haiying Wang, Rachel E. Gawley, Mingjing Yang, Roy Sterritt
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引用次数: 36

摘要

老年人跌倒正在成为一个主要问题,超过50%的老年人因跌倒相关事故受伤而住院。由于老年人口的增加,医疗费用急剧上升。许多目前的步态分析技术都是基于实验室的,并且可能会给医疗保健部门带来大量的跌倒治疗费用。然而,利用商业上可获得的替代技术可以潜在地降低成本。加速度计就是这样一种选择,它是用于检测方向和运动的动态运动传感器。智能移动设备被认为是非侵入性的,并且越来越多地包含用于检测设备方向的加速度计。这项研究着眼于智能移动设备加速计的功能,即iPhone,用于识别在平面上行走时的步态事件。结果证明,从iPhone的加速度计中提取步数检测、步幅时间和节奏等特征是可能的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Feasibility study on iPhone accelerometer for gait detection
Falls amongst the elderly is becoming a major problem with over 50% of elderly hospitalizations due to injury from fall related accidents. Healthcare expenses are dramatically rising due to growing elderly population. Many current technologies for gait analysis are laboratory-based and can incur substantial costs for the healthcare sector for treatment of falls. However utilization of alternative commercially available technologies can potentially reduce costs. Accelerometers are one such option, being ambulatory motion sensors for the detection of orientation and movement. Smart mobile devices are considered as non-invasive and increasingly contain accelerometers for detecting device orientation. This study looks at the capabilities of the accelerometer within a smart mobile device, namely the iPhone, for identification of gait events from walking along a flat surface. The results prove that it is possible to extract features from the accelerometer of an iPhone such as step detection, stride time and cadence.
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