使用腕带加速度计的个性化步态检测

Guglielmo Cola, M. Avvenuti, Fabio Musso, Alessio Vecchio
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引用次数: 13

摘要

智能手表和智能手环等腕带设备带来了前所未有的机会,可以在日常活动中持续监测步态。然而,由于各种原因,使用单个腕带单元进行步态分析是具有挑战性的。实际上,在用户手腕处收集的信号相对于其他身体位置(例如腰部)会受到明显的“噪声”的影响,这主要是由于走路时手臂的摆动和其他不可预测的手部运动。本文的目的是研究一种轻巧可靠的腕戴式步态检测技术的设计和评估。为此,提出的方法创建了用户步态模式的个性化模型。该模型是通过一个自动训练阶段创建的,这需要临时使用一个额外的设备(智能手机)来收集真实的步态片段。然后,使用异常检测将步态与其他活动区分开来。研究人员收集了20名志愿者的步态数据,以测试和评估所提出的技术。志愿者们被要求以不同的速度走路,要么摆臂,要么把手放在口袋里。结果表明,该方法能够可靠地区分步态和虚假的手部运动。
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Personalized gait detection using a wrist-worn accelerometer
Wrist-worn devices, such as smartwatches and smart bands, have brought about the unprecedented opportunity to continuously monitor gait during daily routines. However, the use of a single wrist-worn unit for gait analysis is challenging for a variety of reasons. Indeed, the signal collected at the user's wrist is subject to a significant “noise” with respect to other body positions (e.g. waist), mainly due to the arm swing while walking and other unpredictable hand movements. The aim of this paper is to investigate the design and evaluation of a lightweight and reliable gait detection technique for wrist-worn devices. To this end, the proposed method creates a personalized model of the user's gait patterns. The model is created through an automatic training phase, which requires the temporary use of an additional device (smartphone) to gather true gait segments. After, anomaly detection is used to distinguish gait from other activities. Gait data from 20 volunteers have been collected to test and evaluate the proposed technique. Volunteers were asked to walk at different pace, with their normal arm swing or placing the hand inside of a pocket. Results show that the proposed method can reliably distinguish gait from spurious hand movements.
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