Visualizing Gait Patterns of Able bodied Individuals and Transtibial Amputees with the Use of Accelerometry in Smart Phones

Human gait analysis is used to indirectly monitor the rehabilitation of patients affected by diseases or to directly monitor patients under orthotic care. Visualization of gait patterns on the instrument are used to capture the data. In this study, we created a mobile application that serves as a wi...

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Main Authors: KARDI TEKNOMO, MARIA REGINA ESTUAR
Format: Article
Language:English
Published: Universidad Nacional de Colombia 2014-12-01
Series:Revista Colombiana de Estadística
Subjects:
Online Access:http://www.scielo.org.co/scielo.php?script=sci_arttext&pid=S0120-17512014000200012&lng=en&tlng=en
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spelling doaj-a8b666fe17c54082affe96890e278dbb2020-11-25T02:21:26ZengUniversidad Nacional de Colombia Revista Colombiana de Estadística0120-17512014-12-0137247148810.15446/rce.v37n2spe.47951S0120-17512014000200012Visualizing Gait Patterns of Able bodied Individuals and Transtibial Amputees with the Use of Accelerometry in Smart PhonesKARDI TEKNOMO0MARIA REGINA ESTUAR1Ateneo de Manila UniversityAteneo de Manila UniversityHuman gait analysis is used to indirectly monitor the rehabilitation of patients affected by diseases or to directly monitor patients under orthotic care. Visualization of gait patterns on the instrument are used to capture the data. In this study, we created a mobile application that serves as a wireless sensor to capture movement through a smartphone accelerometer. The application was used to collect gait data from two groups (able-bodied and unilateral transtibial amputees). Standard gait activities such as walking, running and climbing, including non-movement, sitting were captured, stored and analyzed. This paper discusses different visualization techniques that can be derived from accelerometer data. Removing gravity data, accelerometer data can be transformed into distribution data using periodicity; features were derived from histograms. Decision tree analysis shows that only three significant features are necessary to classify subject activity, namely: average of minimum peak values, student t-statistics of minimum peak values and mode of maximum peak values. We found that the amputee group had a higher acceleration and a lower skewness period between peaks of accelerations than the able-bodied group.http://www.scielo.org.co/scielo.php?script=sci_arttext&pid=S0120-17512014000200012&lng=en&tlng=enanálisis de árboles de desicióndiscapacitadosmonitores de pasoselección de característicasensores inalámbricos
collection DOAJ
language English
format Article
sources DOAJ
author KARDI TEKNOMO
MARIA REGINA ESTUAR
spellingShingle KARDI TEKNOMO
MARIA REGINA ESTUAR
Visualizing Gait Patterns of Able bodied Individuals and Transtibial Amputees with the Use of Accelerometry in Smart Phones
Revista Colombiana de Estadística
análisis de árboles de desición
discapacitados
monitores de paso
selección de característica
sensores inalámbricos
author_facet KARDI TEKNOMO
MARIA REGINA ESTUAR
author_sort KARDI TEKNOMO
title Visualizing Gait Patterns of Able bodied Individuals and Transtibial Amputees with the Use of Accelerometry in Smart Phones
title_short Visualizing Gait Patterns of Able bodied Individuals and Transtibial Amputees with the Use of Accelerometry in Smart Phones
title_full Visualizing Gait Patterns of Able bodied Individuals and Transtibial Amputees with the Use of Accelerometry in Smart Phones
title_fullStr Visualizing Gait Patterns of Able bodied Individuals and Transtibial Amputees with the Use of Accelerometry in Smart Phones
title_full_unstemmed Visualizing Gait Patterns of Able bodied Individuals and Transtibial Amputees with the Use of Accelerometry in Smart Phones
title_sort visualizing gait patterns of able bodied individuals and transtibial amputees with the use of accelerometry in smart phones
publisher Universidad Nacional de Colombia
series Revista Colombiana de Estadística
issn 0120-1751
publishDate 2014-12-01
description Human gait analysis is used to indirectly monitor the rehabilitation of patients affected by diseases or to directly monitor patients under orthotic care. Visualization of gait patterns on the instrument are used to capture the data. In this study, we created a mobile application that serves as a wireless sensor to capture movement through a smartphone accelerometer. The application was used to collect gait data from two groups (able-bodied and unilateral transtibial amputees). Standard gait activities such as walking, running and climbing, including non-movement, sitting were captured, stored and analyzed. This paper discusses different visualization techniques that can be derived from accelerometer data. Removing gravity data, accelerometer data can be transformed into distribution data using periodicity; features were derived from histograms. Decision tree analysis shows that only three significant features are necessary to classify subject activity, namely: average of minimum peak values, student t-statistics of minimum peak values and mode of maximum peak values. We found that the amputee group had a higher acceleration and a lower skewness period between peaks of accelerations than the able-bodied group.
topic análisis de árboles de desición
discapacitados
monitores de paso
selección de característica
sensores inalámbricos
url http://www.scielo.org.co/scielo.php?script=sci_arttext&pid=S0120-17512014000200012&lng=en&tlng=en
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