Literature DB >> 33446858

Estimation of stride-by-stride spatial gait parameters using inertial measurement unit attached to the shank with inverted pendulum model.

Yufeng Mao1, Taiki Ogata2, Hiroki Ora1, Naoto Tanaka3, Yoshihiro Miyake1.   

Abstract

Inertial measurement unit (IMU)-based gait analysis systems have become popular in clinical environments because of their low cost and quantitative measurement capability. When a shank is selected as the IMU mounting position, an inverted pendulum model (IPM) can accurately estimate its spatial gait parameters. However, the stride-by-stride estimation of gait parameters using one IMU on each shank and the IPMs has not been validated. This study validated a spatial gait parameter estimation method using a shank-based IMU system. Spatial parameters were estimated via the double integration of the linear acceleration transformed by the IMU orientation information. To reduce the integral drift error, an IPM, applied with a linear error model, was introduced at the mid-stance to estimate the update velocity. the gait data of 16 healthy participants that walked normally and slowly were used. The results were validated by comparison with those extracted from an optical motion-capture system; the results showed strong correlation ([Formula: see text]) and good agreement with the gait metrics (stride length, stride velocity, and shank vertical displacement). In addition, the biases of the stride length and stride velocity extracted using the motion capture system were smaller in the IPM than those in the previous method using the zero-velocity-update. The error variabilities of the gait metrics were smaller in the IPM than those in the previous method. These results indicated that the reconstructed shank trajectory achieved a greater accuracy and precision than that of previous methods. This was attributed to the IPM, which demonstrates that shank-based IMU systems with IPMs can accurately reflect many spatial gait parameters including stride velocity.

Entities:  

Year:  2021        PMID: 33446858      PMCID: PMC7809129          DOI: 10.1038/s41598-021-81009-w

Source DB:  PubMed          Journal:  Sci Rep        ISSN: 2045-2322            Impact factor:   4.379


  33 in total

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6.  Walking speed estimation using a shank-mounted inertial measurement unit.

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7.  Gait assessment in Parkinson's disease: toward an ambulatory system for long-term monitoring.

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Authors:  Chris J Hass; Paul Malczak; Joe Nocera; Elizabeth L Stegemöller; Aparna Wagle Shukla; Aparna Shukala; Irene Malaty; Charles E Jacobson; Michael S Okun; Nick McFarland
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5.  Three-dimensional continuous gait trajectory estimation using single Shank-Worn inertial measurement units and clinical walk test application.

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6.  Adaptive Pedestrian Stride Estimation for Localization: From Multi-Gait Perspective.

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  6 in total

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