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关于多人智能家居中被动测量的居家步态速度的消歧

On the Disambiguation of Passively Measured In-home Gait Velocities from Multi-person Smart Homes.

作者信息

Austin Daniel, Hayes Tamara L, Kaye Jeffrey, Mattek Nora, Pavel Misha

机构信息

Department of Biomedical Engineering, Oregon Health and Science University, Portland, OR USA.

出版信息

J Ambient Intell Smart Environ. 2011;3(2):165-174. doi: 10.3233/AIS-2011-0107.

DOI:10.3233/AIS-2011-0107
PMID:21572911
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC3093199/
Abstract

In-home monitoring of gait velocity with passive PIR sensors in a smart home has been shown to be an effective method of continuously and unobtrusively measuring this important predictor of cognitive function and mobility. However, passive measurements of velocity are nonspecific with regard to who generated each measurement or walking event. As a result, this method is not suitable for multi-person homes without additional information to aid in the disambiguation of gait velocities. In this paper we propose a method based on Gaussian mixture models (GMMs) combined with infrequent clinical assessments of gait velocity to model in-home walking speeds of two or more residents. Modeling the gait parameters directly allows us to avoid the more difficult problem of assigning each measured velocity individually to the correct resident. We show that if the clinically measured gait velocities of residents are separated by at least 15 cm/s a GMM can be accurately fit to the in-home gait velocity data. We demonstrate the accuracy of this method by showing that the correlation between the means of the GMMs and the clinically measured gait velocities is 0.877 (p value < 0.0001) with bootstrapped 95% confidence intervals of (0.79, 0.94) for 54 measurements of 20 subjects living in multi-person homes. Example applications of using this method to track in-home mean velocities over time are also given.

摘要

在智能家居中使用被动式红外传感器对步态速度进行居家监测,已被证明是一种持续且不干扰地测量认知功能和行动能力这一重要预测指标的有效方法。然而,速度的被动测量对于每次测量或行走事件的产生者并不具有特异性。因此,在没有额外信息来帮助区分步态速度的情况下,这种方法不适用于多人居住的家庭。在本文中,我们提出了一种基于高斯混合模型(GMM)并结合不频繁的步态速度临床评估的方法,以对两名或更多居民的居家行走速度进行建模。直接对步态参数进行建模使我们能够避免将每个测量速度分别分配给正确居民这一更为困难的问题。我们表明,如果居民的临床测量步态速度至少相差15厘米/秒,高斯混合模型就能准确拟合居家步态速度数据。我们通过展示高斯混合模型均值与临床测量步态速度之间的相关性为0.877(p值<0.0001),以及对居住在多人家庭中的二十名受试者进行54次测量的自展95%置信区间为(0.79,0.94),来证明该方法的准确性。文中还给出了使用此方法随时间跟踪居家平均速度的示例应用。

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