Pattern classification of foot strike type using body worn accelerometers

B. Eskofier, Ed Musho, H. Schlarb
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引用次数: 12

Abstract

The automatic classification of foot strike patterns into the three basic categories forefoot, midfoot and rearfoot striking plays an important role for applications like shoe fitting with instant feedback. This paper presents methods for this classification based on body worn accelerometers that allow giving the required direct feedback to the user. For our study, we collected data from 40 runners who had a standard accelerometer in a custom-built sensor pod attached to the laces of their running shoes. The acceleration in three axes was recorded continuously while the runners conducted their runs. Data for repeated runs at two different speed levels were collected in order to have sufficient sensor data for classification. The data was analyzed using features computed for individual steps of the runners to distinguish the three foot strike pattern classes. The labels for the strike pattern classes were established using high-speed video that was concurrently collected. We could show that the classification of the strike types based on the measured accelerations and the extracted features was up to 95.3% accurate. The established classification system can be used to support runners, for example by giving running shoe recommendations that ideally match the prevailing strike type of the runner.
用穿戴式加速度计对足击类型进行模式分类
自动将脚击模式分为前足、中足和后足三种基本类别,这对于即时反馈的鞋楦等应用具有重要作用。本文提出了基于人体穿戴加速度计的分类方法,该方法允许向用户提供所需的直接反馈。在我们的研究中,我们收集了40名跑步者的数据,他们在跑鞋的鞋带上安装了一个特制的传感器吊舱,里面装有一个标准的加速度计。当跑步者进行跑步时,连续记录三个轴上的加速度。收集了两种不同速度水平下重复运行的数据,以便有足够的传感器数据进行分类。数据分析使用特征计算的个人步骤的跑步者,以区分三种足打击模式类别。利用同时采集的高速视频建立走向模式类的标签。结果表明,基于实测加速度和提取特征的走向类型分类准确率高达95.3%。建立的分类系统可以用来支持跑步者,例如,通过提供跑鞋建议,理想地匹配跑步者的主要打击类型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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