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An Automatic Gait Feature Extraction Method for Identifying Gait Asymmetry Using Wearable Sensors

Anwary, Arif; Yu, Hongnian; Vassallo, Michael

Authors

Arif Anwary

Michael Vassallo



Abstract

This paper aims to assess the use of Inertial Measurement Unit (IMU) sensors to identify gait asymmetry by extracting automatic gait features. We design and develop an android app to collect real time synchronous IMU data from legs. The results from our method are validated using a Qualisys Motion Capture System. The data are collected from 10 young and 10 older subjects. Each performed a trial in a straight corridor comprising 15 strides of normal walking, a turn around and another 15 strides. We analyse the data for total distance, total time, total velocity, stride, step, cadence, step ratio, stance, and swing. The accuracy of detecting the stride number using the proposed method is 100% for young and 92.67% for older subjects. The accuracy of estimating travelled distance using the proposed method for young subjects is 97.73% and 98.82% for right and left legs; and for the older, is 88.71% and 89.88% for right and left legs. The average travelled distance is 37.77 (95% CI ± 3.57) meters for young subjects and is 22.50 (95% CI ± 2.34) meters for older subjects. The average travelled time for young subjects is 51.85 (95% CI ± 3.08) seconds and for older subjects is 84.02 (95% CI ± 9.98) seconds. The results show that wearable sensors can be used for identifying gait asymmetry without the requirement and expense of an elaborate laboratory setup. This can serve as a tool in diagnosing gait abnormalities in individuals and opens the possibilities for home based self-gait asymmetry assessment.

Citation

Anwary, A., Yu, H., & Vassallo, M. (2018). An Automatic Gait Feature Extraction Method for Identifying Gait Asymmetry Using Wearable Sensors. Sensors, 18(2), 676. https://doi.org/10.3390/s18020676

Journal Article Type Article
Acceptance Date Feb 20, 2018
Online Publication Date Feb 24, 2018
Publication Date Feb 24, 2018
Deposit Date Nov 28, 2019
Publicly Available Date Nov 28, 2019
Journal Sensors
Electronic ISSN 1424-8220
Publisher MDPI
Peer Reviewed Peer Reviewed
Volume 18
Issue 2
Pages 676
DOI https://doi.org/10.3390/s18020676
Keywords inertial measurement unit; accelerometer; gyroscope; asymmetry; feature extraction; wearable sensors; gait analysis
Public URL http://researchrepository.napier.ac.uk/Output/2354717

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