在无控制的自由生活条件下使用单个加速度计进行活动检测

S. Lee, M. Y. Ozsecen, Luca Della Toffola, J. Daneault, A. Puiatti, Shyamal Patel, P. Bonato
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引用次数: 10

摘要

为了在移动环境中对膝关节骨性关节炎患者进行准确的评估和监测,开发了一种由膝关节角度传感器和放置在大腿上的三轴加速度计组成的可穿戴式测角仪。准确评估膝关节运动学需要在日常生活的动态、异质性和个体化活动中准确检测步行。本文基于从4名健康受试者收集的数据集,研究了四种不同的机器学习技术,用于检测在不受控制的环境中行走的情况。基于多类分类器(随机森林)的检测方法表现最好,准确率达到90%,召回率达到75%。对研究结果的深入分析和解读表明,1)快走与下楼梯、2)慢走与上楼梯、3)慢走与过渡活动之间需要准确的决策边界。这项工作提供了一种系统的方法来检测在不受控制的生活条件下行走的情况,这也可以扩展到其他活动。
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Activity detection in uncontrolled free-living conditions using a single accelerometer
Motivated by a need for accurate assessment and monitoring of patients with knee osteoarthritis in an ambulatory setting, a wearable electrogoniometer composed of a knee angular sensor and a three-axis accelerometer placed on the thigh is developed. Accurate assessment of knee kinematics requires accurate detection of walking amongst dynamic, heterogeneous, and individualized activities of daily living. This paper investigates four different machine learning techniques for detecting occurrences of walking in uncontrolled environments based on a dataset collected from a total of 4 healthy subjects. Multi-class classifier (random forest) based detection method showed the best performance, which supports 90% precision and 75% recall. The in-depth analysis and interpretation of the results show that accurate decision boundaries are necessary between 1) fast walking and descending stairs, 2) slow walking and ascending stairs, as well as 3) slow walking and transitional activities. This work provides a systematic approach to detect occurrences of walking in uncontrolled living conditions, which can also be extended to other activities.
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