Abstract

Walking speed is widely used to study human health status. Wearable inertial measurement units (IMU) are promising tools for the ambulatory measurement of walking speed. Among wearable inertial sensors, the ones worn on the wrist, such as a watch or band, have relatively higher potential to be easily incorporated into daily lifestyle. Using the arm swing motion in walking, this paper proposes a regression model-based method for longitudinal walking speed estimation using a wrist-worn IMU. A novel kinematic variable is proposed, which finds the wrist acceleration in the principal axis (i.e. the direction of the arm swing). This variable (called pca-acc) is obtained by applying sensor fusion on IMU data to find the orientation followed by the use of principal component analysis. An experimental evaluation was performed on 15 healthy young subjects during free walking trials. The experimental results show that the use of the proposed pca-acc variable can significantly improve the walking speed estimation accuracy when compared to the use of raw acceleration information (p<0.01). When Gaussian process regression is used, the resulting walking speed estimation accuracy and precision is about 5.9% and 4.7%, respectively.

Highlights

  • Walking speed is widely used to study human health status

  • Similar observation has been made in [40]; when raw 3D acceleration data are used to estimate energy expenditure, the x-axis acceleration is coincidently aligned with the forward direction of motion, providing better accuracy compared to the y- and z-axis

  • A regression model-based human walking speed estimation algorithm is presented, which uses the inertial data from a wrist-worn inertial measurement units (IMU)

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Summary

Introduction

Walking speed is widely used to study human health status. Based on previous studies, walking speed can be used as a marker of mild cognitive impairment (MCI) [1,2,3]. In addition to MCI, walking speed can be used as a marker of multiple sclerosis (MS) [4], Parkinson’s disease [5, 6], risk of falls [7], kidney disease [8], and adverse outcomes in aging [9]. It can be considered as a powerful predictor of hospitalization, disability, and survival [10, 11]. The walking speed results of clinical tests cannot be fully applied to the PLOS ONE | DOI:10.1371/journal.pone.0165211 October 20, 2016

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