Towards Clustering of Mobile and Smartwatch Accelerometer Data for Physical Activity Recognition

Mobile and wearable devices now have a greater capability of sensing human activity ubiquitously and unobtrusively through advancements in miniaturization and sensing abilities. However, outstanding issues remain around the energy restrictions of these devices when processing large sets of data. Thi...

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Main Authors: Chelsea Dobbins, Reza Rawassizadeh
Format: Article
Language:English
Published: MDPI AG 2018-06-01
Series:Informatics
Subjects:
Online Access:http://www.mdpi.com/2227-9709/5/2/29
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spelling doaj-5c11ceb5d2ed4c439af640b992eb887b2020-11-24T23:13:11ZengMDPI AGInformatics2227-97092018-06-01522910.3390/informatics5020029informatics5020029Towards Clustering of Mobile and Smartwatch Accelerometer Data for Physical Activity RecognitionChelsea Dobbins0Reza Rawassizadeh1Department of Computer Science, Liverpool John Moores University, Byrom Street, Liverpool L3 3AF, UKDepartment of Computer Science, University of Rochester, 3700 Wegmans Hall, P.O. Box 14620, Rochester, NY, USAMobile and wearable devices now have a greater capability of sensing human activity ubiquitously and unobtrusively through advancements in miniaturization and sensing abilities. However, outstanding issues remain around the energy restrictions of these devices when processing large sets of data. This paper presents our approach that uses feature selection to refine the clustering of accelerometer data to detect physical activity. This also has a positive effect on the computational burden that is associated with processing large sets of data, as energy efficiency and resource use is decreased because less data is processed by the clustering algorithms. Raw accelerometer data, obtained from smartphones and smartwatches, have been preprocessed to extract both time and frequency domain features. Principle component analysis feature selection (PCAFS) and correlation feature selection (CFS) have been used to remove redundant features. The reduced feature sets have then been evaluated against three widely used clustering algorithms, including hierarchical clustering analysis (HCA), k-means, and density-based spatial clustering of applications with noise (DBSCAN). Using the reduced feature sets resulted in improved separability, reduced uncertainty, and improved efficiency compared with the baseline, which utilized all features. Overall, the CFS approach in conjunction with HCA produced higher Dunn Index results of 9.7001 for the phone and 5.1438 for the watch features, which is an improvement over the baseline. The results of this comparative study of feature selection and clustering, with the specific algorithms used, has not been performed previously and provides an optimistic and usable approach to recognize activities using either a smartphone or smartwatch.http://www.mdpi.com/2227-9709/5/2/29clusteringsmartwatchsmartphoneactivity recognitionfeature selection
collection DOAJ
language English
format Article
sources DOAJ
author Chelsea Dobbins
Reza Rawassizadeh
spellingShingle Chelsea Dobbins
Reza Rawassizadeh
Towards Clustering of Mobile and Smartwatch Accelerometer Data for Physical Activity Recognition
Informatics
clustering
smartwatch
smartphone
activity recognition
feature selection
author_facet Chelsea Dobbins
Reza Rawassizadeh
author_sort Chelsea Dobbins
title Towards Clustering of Mobile and Smartwatch Accelerometer Data for Physical Activity Recognition
title_short Towards Clustering of Mobile and Smartwatch Accelerometer Data for Physical Activity Recognition
title_full Towards Clustering of Mobile and Smartwatch Accelerometer Data for Physical Activity Recognition
title_fullStr Towards Clustering of Mobile and Smartwatch Accelerometer Data for Physical Activity Recognition
title_full_unstemmed Towards Clustering of Mobile and Smartwatch Accelerometer Data for Physical Activity Recognition
title_sort towards clustering of mobile and smartwatch accelerometer data for physical activity recognition
publisher MDPI AG
series Informatics
issn 2227-9709
publishDate 2018-06-01
description Mobile and wearable devices now have a greater capability of sensing human activity ubiquitously and unobtrusively through advancements in miniaturization and sensing abilities. However, outstanding issues remain around the energy restrictions of these devices when processing large sets of data. This paper presents our approach that uses feature selection to refine the clustering of accelerometer data to detect physical activity. This also has a positive effect on the computational burden that is associated with processing large sets of data, as energy efficiency and resource use is decreased because less data is processed by the clustering algorithms. Raw accelerometer data, obtained from smartphones and smartwatches, have been preprocessed to extract both time and frequency domain features. Principle component analysis feature selection (PCAFS) and correlation feature selection (CFS) have been used to remove redundant features. The reduced feature sets have then been evaluated against three widely used clustering algorithms, including hierarchical clustering analysis (HCA), k-means, and density-based spatial clustering of applications with noise (DBSCAN). Using the reduced feature sets resulted in improved separability, reduced uncertainty, and improved efficiency compared with the baseline, which utilized all features. Overall, the CFS approach in conjunction with HCA produced higher Dunn Index results of 9.7001 for the phone and 5.1438 for the watch features, which is an improvement over the baseline. The results of this comparative study of feature selection and clustering, with the specific algorithms used, has not been performed previously and provides an optimistic and usable approach to recognize activities using either a smartphone or smartwatch.
topic clustering
smartwatch
smartphone
activity recognition
feature selection
url http://www.mdpi.com/2227-9709/5/2/29
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