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Toward detection and monitoring of gait pathology using inertial sensors under rotation, scale, and offset invariant dynamic time warping

Publication ,  Conference
Engelhard, MM; Dandu, SR; Lach, JC; Goldman, MD; Patek, SD
Published in: Bodynets International Conference on Body Area Networks
January 1, 2015

Walking ability can be degraded by a number of pathologies, including movement disorders, stroke, and injury. Personal activity tracking devices gather inertial data needed to measure walking quality, but the required algorithmic methods are an active area of study. To detect changes in walking ability, the similarity between a person's current gait cycles and their known baseline gait cycles may be measured on an ongoing basis. This strategy requires a similarity measure robust to variability encountered in an outpatient scenario, including changes in walking surface, walking speed, and sensor orientation. Here we propose rotation, scale, and offset invariant dynamic time warping (RSOI-DTW), a variant of the well-known dynamic time warping (DTW) algorithm, as a generalization of DTW appropriate for three-dimensional inertial data. RSOI-DTW is invariant under rotation, scaling, and offset, yet it preserves the salient features of gait cycles required for gait monitoring. To support this claim, gait cycles from 21 subjects walking with four different styles were compared using both DTW and RSOI-DTW. The data show that RSOI-DTW converges quickly and achieves rotation, scale, and offset invariance. Both algorithms distinguish persons and detect abnormal walking, but only RSOI-DTW does so in the presence of sensor rotation. Variations in walking speed pose a challenge for both algorithms, but performance is improved by collecting base-line information at a variety of speeds.

Duke Scholars

Published In

Bodynets International Conference on Body Area Networks

DOI

EISSN

2310-3582

Publication Date

January 1, 2015

Related Subject Headings

  • 4609 Information systems
  • 4601 Applied computing
  • 4203 Health services and systems
 

Citation

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Engelhard, M. M., Dandu, S. R., Lach, J. C., Goldman, M. D., & Patek, S. D. (2015). Toward detection and monitoring of gait pathology using inertial sensors under rotation, scale, and offset invariant dynamic time warping. In Bodynets International Conference on Body Area Networks. https://doi.org/10.4108/eai.28-9-2015.2261503
Engelhard, M. M., S. R. Dandu, J. C. Lach, M. D. Goldman, and S. D. Patek. “Toward detection and monitoring of gait pathology using inertial sensors under rotation, scale, and offset invariant dynamic time warping.” In Bodynets International Conference on Body Area Networks, 2015. https://doi.org/10.4108/eai.28-9-2015.2261503.
Engelhard MM, Dandu SR, Lach JC, Goldman MD, Patek SD. Toward detection and monitoring of gait pathology using inertial sensors under rotation, scale, and offset invariant dynamic time warping. In: Bodynets International Conference on Body Area Networks. 2015.
Engelhard, M. M., et al. “Toward detection and monitoring of gait pathology using inertial sensors under rotation, scale, and offset invariant dynamic time warping.” Bodynets International Conference on Body Area Networks, 2015. Scopus, doi:10.4108/eai.28-9-2015.2261503.
Engelhard MM, Dandu SR, Lach JC, Goldman MD, Patek SD. Toward detection and monitoring of gait pathology using inertial sensors under rotation, scale, and offset invariant dynamic time warping. Bodynets International Conference on Body Area Networks. 2015.

Published In

Bodynets International Conference on Body Area Networks

DOI

EISSN

2310-3582

Publication Date

January 1, 2015

Related Subject Headings

  • 4609 Information systems
  • 4601 Applied computing
  • 4203 Health services and systems