Cargando…

Stride Segmentation during Free Walk Movements Using Multi-Dimensional Subsequence Dynamic Time Warping on Inertial Sensor Data

Changes in gait patterns provide important information about individuals’ health. To perform sensor based gait analysis, it is crucial to develop methodologies to automatically segment single strides from continuous movement sequences. In this study we developed an algorithm based on time-invariant...

Descripción completa

Detalles Bibliográficos
Autores principales: Barth, Jens, Oberndorfer, Cäcilia, Pasluosta, Cristian, Schülein, Samuel, Gassner, Heiko, Reinfelder, Samuel, Kugler, Patrick, Schuldhaus, Dominik, Winkler, Jürgen, Klucken, Jochen, Eskofier, Björn M.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2015
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4435165/
https://www.ncbi.nlm.nih.gov/pubmed/25789489
http://dx.doi.org/10.3390/s150306419
_version_ 1782371865387335680
author Barth, Jens
Oberndorfer, Cäcilia
Pasluosta, Cristian
Schülein, Samuel
Gassner, Heiko
Reinfelder, Samuel
Kugler, Patrick
Schuldhaus, Dominik
Winkler, Jürgen
Klucken, Jochen
Eskofier, Björn M.
author_facet Barth, Jens
Oberndorfer, Cäcilia
Pasluosta, Cristian
Schülein, Samuel
Gassner, Heiko
Reinfelder, Samuel
Kugler, Patrick
Schuldhaus, Dominik
Winkler, Jürgen
Klucken, Jochen
Eskofier, Björn M.
author_sort Barth, Jens
collection PubMed
description Changes in gait patterns provide important information about individuals’ health. To perform sensor based gait analysis, it is crucial to develop methodologies to automatically segment single strides from continuous movement sequences. In this study we developed an algorithm based on time-invariant template matching to isolate strides from inertial sensor signals. Shoe-mounted gyroscopes and accelerometers were used to record gait data from 40 elderly controls, 15 patients with Parkinson’s disease and 15 geriatric patients. Each stride was manually labeled from a straight 40 m walk test and from a video monitored free walk sequence. A multi-dimensional subsequence Dynamic Time Warping (msDTW) approach was used to search for patterns matching a pre-defined stride template constructed from 25 elderly controls. F-measure of 98% (recall 98%, precision 98%) for 40 m walk tests and of 97% (recall 97%, precision 97%) for free walk tests were obtained for the three groups. Compared to conventional peak detection methods up to 15% F-measure improvement was shown. The msDTW proved to be robust for segmenting strides from both standardized gait tests and free walks. This approach may serve as a platform for individualized stride segmentation during activities of daily living.
format Online
Article
Text
id pubmed-4435165
institution National Center for Biotechnology Information
language English
publishDate 2015
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-44351652015-05-19 Stride Segmentation during Free Walk Movements Using Multi-Dimensional Subsequence Dynamic Time Warping on Inertial Sensor Data Barth, Jens Oberndorfer, Cäcilia Pasluosta, Cristian Schülein, Samuel Gassner, Heiko Reinfelder, Samuel Kugler, Patrick Schuldhaus, Dominik Winkler, Jürgen Klucken, Jochen Eskofier, Björn M. Sensors (Basel) Article Changes in gait patterns provide important information about individuals’ health. To perform sensor based gait analysis, it is crucial to develop methodologies to automatically segment single strides from continuous movement sequences. In this study we developed an algorithm based on time-invariant template matching to isolate strides from inertial sensor signals. Shoe-mounted gyroscopes and accelerometers were used to record gait data from 40 elderly controls, 15 patients with Parkinson’s disease and 15 geriatric patients. Each stride was manually labeled from a straight 40 m walk test and from a video monitored free walk sequence. A multi-dimensional subsequence Dynamic Time Warping (msDTW) approach was used to search for patterns matching a pre-defined stride template constructed from 25 elderly controls. F-measure of 98% (recall 98%, precision 98%) for 40 m walk tests and of 97% (recall 97%, precision 97%) for free walk tests were obtained for the three groups. Compared to conventional peak detection methods up to 15% F-measure improvement was shown. The msDTW proved to be robust for segmenting strides from both standardized gait tests and free walks. This approach may serve as a platform for individualized stride segmentation during activities of daily living. MDPI 2015-03-17 /pmc/articles/PMC4435165/ /pubmed/25789489 http://dx.doi.org/10.3390/s150306419 Text en © 2015 by the authors; licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Barth, Jens
Oberndorfer, Cäcilia
Pasluosta, Cristian
Schülein, Samuel
Gassner, Heiko
Reinfelder, Samuel
Kugler, Patrick
Schuldhaus, Dominik
Winkler, Jürgen
Klucken, Jochen
Eskofier, Björn M.
Stride Segmentation during Free Walk Movements Using Multi-Dimensional Subsequence Dynamic Time Warping on Inertial Sensor Data
title Stride Segmentation during Free Walk Movements Using Multi-Dimensional Subsequence Dynamic Time Warping on Inertial Sensor Data
title_full Stride Segmentation during Free Walk Movements Using Multi-Dimensional Subsequence Dynamic Time Warping on Inertial Sensor Data
title_fullStr Stride Segmentation during Free Walk Movements Using Multi-Dimensional Subsequence Dynamic Time Warping on Inertial Sensor Data
title_full_unstemmed Stride Segmentation during Free Walk Movements Using Multi-Dimensional Subsequence Dynamic Time Warping on Inertial Sensor Data
title_short Stride Segmentation during Free Walk Movements Using Multi-Dimensional Subsequence Dynamic Time Warping on Inertial Sensor Data
title_sort stride segmentation during free walk movements using multi-dimensional subsequence dynamic time warping on inertial sensor data
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4435165/
https://www.ncbi.nlm.nih.gov/pubmed/25789489
http://dx.doi.org/10.3390/s150306419
work_keys_str_mv AT barthjens stridesegmentationduringfreewalkmovementsusingmultidimensionalsubsequencedynamictimewarpingoninertialsensordata
AT oberndorfercacilia stridesegmentationduringfreewalkmovementsusingmultidimensionalsubsequencedynamictimewarpingoninertialsensordata
AT pasluostacristian stridesegmentationduringfreewalkmovementsusingmultidimensionalsubsequencedynamictimewarpingoninertialsensordata
AT schuleinsamuel stridesegmentationduringfreewalkmovementsusingmultidimensionalsubsequencedynamictimewarpingoninertialsensordata
AT gassnerheiko stridesegmentationduringfreewalkmovementsusingmultidimensionalsubsequencedynamictimewarpingoninertialsensordata
AT reinfeldersamuel stridesegmentationduringfreewalkmovementsusingmultidimensionalsubsequencedynamictimewarpingoninertialsensordata
AT kuglerpatrick stridesegmentationduringfreewalkmovementsusingmultidimensionalsubsequencedynamictimewarpingoninertialsensordata
AT schuldhausdominik stridesegmentationduringfreewalkmovementsusingmultidimensionalsubsequencedynamictimewarpingoninertialsensordata
AT winklerjurgen stridesegmentationduringfreewalkmovementsusingmultidimensionalsubsequencedynamictimewarpingoninertialsensordata
AT kluckenjochen stridesegmentationduringfreewalkmovementsusingmultidimensionalsubsequencedynamictimewarpingoninertialsensordata
AT eskofierbjornm stridesegmentationduringfreewalkmovementsusingmultidimensionalsubsequencedynamictimewarpingoninertialsensordata