DocumentCode
68069
Title
Designing a Robust Activity Recognition Framework for Health and Exergaming Using Wearable Sensors
Author
Alshurafa, Nabil ; Wenyao Xu ; Liu, Jason J. ; Ming-Chun Huang ; Mortazavi, Bobak ; Roberts, Christian K. ; Sarrafzadeh, Majid
Author_Institution
Dept. of Comput. Sci., Univ. of California, Los Angeles, Los Angeles, CA, USA
Volume
18
Issue
5
fYear
2014
fDate
Sept. 2014
Firstpage
1636
Lastpage
1646
Abstract
Detecting human activity independent of intensity is essential in many applications, primarily in calculating metabolic equivalent rates and extracting human context awareness. Many classifiers that train on an activity at a subset of intensity levels fail to recognize the same activity at other intensity levels. This demonstrates weakness in the underlying classification method. Training a classifier for an activity at every intensity level is also not practical. In this paper, we tackle a novel intensity-independent activity recognition problem where the class labels exhibit large variability, the data are of high dimensionality, and clustering algorithms are necessary. We propose a new robust stochastic approximation framework for enhanced classification of such data. Experiments are reported using two clustering techniques, K-Means and Gaussian Mixture Models. The stochastic approximation algorithm consistently outperforms other well-known classification schemes which validate the use of our proposed clustered data representation. We verify the motivation of our framework in two applications that benefit from intensity-independent activity recognition. The first application shows how our framework can be used to enhance energy expenditure calculations. The second application is a novel exergaming environment aimed at using games to reward physical activity performed throughout the day, to encourage a healthy lifestyle.
Keywords
Gaussian processes; biomedical equipment; computer games; gait analysis; medical computing; mixture models; pattern classification; pattern clustering; sensors; stochastic processes; Gaussian mixture models; K-mean models; classification method; clustered data representation; clustering algorithms; energy expenditure calculations; exergaming; human activity detection; human context; intensity levels; intensity-independent activity recognition; intensity-independent activity recognition problem; metabolic equivalent rates; physical activity; robust activity recognition framework; stochastic approximation algorithm; wearable sensors; Accelerometers; Approximation algorithms; Approximation methods; Clustering algorithms; Feature extraction; Legged locomotion; Stochastic processes; Classification; clustering; energy expenditure (EE); exergaming; intensity-varying activity; mixture models; stochastic approximation model;
fLanguage
English
Journal_Title
Biomedical and Health Informatics, IEEE Journal of
Publisher
ieee
ISSN
2168-2194
Type
jour
DOI
10.1109/JBHI.2013.2287504
Filename
6648432
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