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Gait Activity Classification on Unbalanced Data from Inertial Sensors Using Shallow and Deep Learning

Activity recognition is one of the most active areas of research in ubiquitous computing. In particular, gait activity recognition is useful to identify various risk factors in people’s health that are directly related to their physical activity. One of the issues in activity recognition, and gait i...

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Autores principales: Lopez-Nava, Irvin Hussein, Valentín-Coronado, Luis M., Garcia-Constantino, Matias, Favela, Jesus
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7506657/
https://www.ncbi.nlm.nih.gov/pubmed/32842459
http://dx.doi.org/10.3390/s20174756
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author Lopez-Nava, Irvin Hussein
Valentín-Coronado, Luis M.
Garcia-Constantino, Matias
Favela, Jesus
author_facet Lopez-Nava, Irvin Hussein
Valentín-Coronado, Luis M.
Garcia-Constantino, Matias
Favela, Jesus
author_sort Lopez-Nava, Irvin Hussein
collection PubMed
description Activity recognition is one of the most active areas of research in ubiquitous computing. In particular, gait activity recognition is useful to identify various risk factors in people’s health that are directly related to their physical activity. One of the issues in activity recognition, and gait in particular, is that often datasets are unbalanced (i.e., the distribution of classes is not uniform), and due to this disparity, the models tend to categorize into the class with more instances. In the present study, two methods for classifying gait activities using accelerometer and gyroscope data from a large-scale public dataset were evaluated and compared. The gait activities in this dataset are: (i) going down an incline, (ii) going up an incline, (iii) walking on level ground, (iv) going down stairs, and (v) going up stairs. The proposed methods are based on conventional (shallow) and deep learning techniques. In addition, data were evaluated from three data treatments: original unbalanced data, sampled data, and augmented data. The latter was based on the generation of synthetic data according to segmented gait data. The best results were obtained with classifiers built with augmented data, with F-measure results of 0.812 ([Formula: see text] = 0.078) for the shallow learning approach, and of 0.927 ([Formula: see text] = 0.033) for the deep learning approach. In addition, the data augmentation strategy proposed to deal with the unbalanced problem resulted in increased classification performance using both techniques.
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spelling pubmed-75066572020-09-26 Gait Activity Classification on Unbalanced Data from Inertial Sensors Using Shallow and Deep Learning Lopez-Nava, Irvin Hussein Valentín-Coronado, Luis M. Garcia-Constantino, Matias Favela, Jesus Sensors (Basel) Article Activity recognition is one of the most active areas of research in ubiquitous computing. In particular, gait activity recognition is useful to identify various risk factors in people’s health that are directly related to their physical activity. One of the issues in activity recognition, and gait in particular, is that often datasets are unbalanced (i.e., the distribution of classes is not uniform), and due to this disparity, the models tend to categorize into the class with more instances. In the present study, two methods for classifying gait activities using accelerometer and gyroscope data from a large-scale public dataset were evaluated and compared. The gait activities in this dataset are: (i) going down an incline, (ii) going up an incline, (iii) walking on level ground, (iv) going down stairs, and (v) going up stairs. The proposed methods are based on conventional (shallow) and deep learning techniques. In addition, data were evaluated from three data treatments: original unbalanced data, sampled data, and augmented data. The latter was based on the generation of synthetic data according to segmented gait data. The best results were obtained with classifiers built with augmented data, with F-measure results of 0.812 ([Formula: see text] = 0.078) for the shallow learning approach, and of 0.927 ([Formula: see text] = 0.033) for the deep learning approach. In addition, the data augmentation strategy proposed to deal with the unbalanced problem resulted in increased classification performance using both techniques. MDPI 2020-08-23 /pmc/articles/PMC7506657/ /pubmed/32842459 http://dx.doi.org/10.3390/s20174756 Text en © 2020 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 (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Lopez-Nava, Irvin Hussein
Valentín-Coronado, Luis M.
Garcia-Constantino, Matias
Favela, Jesus
Gait Activity Classification on Unbalanced Data from Inertial Sensors Using Shallow and Deep Learning
title Gait Activity Classification on Unbalanced Data from Inertial Sensors Using Shallow and Deep Learning
title_full Gait Activity Classification on Unbalanced Data from Inertial Sensors Using Shallow and Deep Learning
title_fullStr Gait Activity Classification on Unbalanced Data from Inertial Sensors Using Shallow and Deep Learning
title_full_unstemmed Gait Activity Classification on Unbalanced Data from Inertial Sensors Using Shallow and Deep Learning
title_short Gait Activity Classification on Unbalanced Data from Inertial Sensors Using Shallow and Deep Learning
title_sort gait activity classification on unbalanced data from inertial sensors using shallow and deep learning
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7506657/
https://www.ncbi.nlm.nih.gov/pubmed/32842459
http://dx.doi.org/10.3390/s20174756
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