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다양한 보행 및 주행 조건에서의 관성센서 기반 관절각 추정

IMU-Based Joint Angle Estimation Under Various Walking and Running Conditions

Journal of the Korean Society for Precision Engineering 2018;35(12):1199-1204.
Published online: December 1, 2018

1 국립한경대학교 기계공학과

1 Department of Mechanical Engineering, Hankyong National University

#E-mail: jklee@hknu.ac.kr, TEL: +82-31-670-5112
• Received: March 27, 2018   • Revised: June 7, 2018   • Accepted: July 16, 2018

Copyright © The Korean Society for Precision Engineering

This is an Open-Access article distributed under the terms of the Creative Commons Attribution Non-Commercial License (http://creativecommons.org/licenses/by-nc/3.0) which permits unrestricted non-commercial use, distribution, and reproduction in any medium, provided the original work is properly cited.

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IMU-Based Joint Angle Estimation Under Various Walking and Running Conditions
J. Korean Soc. Precis. Eng.. 2018;35(12):1199-1204.   Published online December 1, 2018
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J. Korean Soc. Precis. Eng.. 2018;35(12):1199-1204.   Published online December 1, 2018
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IMU-Based Joint Angle Estimation Under Various Walking and Running Conditions
Image Image
Fig. 1 Test setup in which three IMUs and optical markers are placed on the right foot, lower leg, and upper leg parts of the test participant. A plastic right triangle ruler was mounted on top of each MTw IMU, and three reflective markers from the OptiTrack motion capture system were attached to each of the vertices of the ruler using adhesive tape
Fig. 2 Comparison of the joint angles estimated based on the proposed IMU-based method and the optical motion capture system. The thick red solid and dotted lines represent the means and one standard deviation bands of the IMU-based angle estimation method, and the black lines are the means estimated with the use of the optical system. A colour version of this figure is available online. (a) – (f) correspond to tests 1 – 6.
IMU-Based Joint Angle Estimation Under Various Walking and Running Conditions

Results of root-mean-squared errors estimated at different times

(unit: °)

Knee
Flexion/Extension
Ankle
dorsiflexion
/Plantarflexion
Average
Test 1 2.70 2.18 2.44
Test 2 4.29 5.48 4.89
Test 3 3.14 2.04 2.59
Test 4 3.40 3.40 3.40
Test 5 4.33 4.50 4.42
Test 6 5.86 6.60 6.23
Table 1 Results of root-mean-squared errors estimated at different times (unit: °)