DocumentCode
3683985
Title
Fitness activity classification by using multiclass support vector machines on head-worn sensors
Author
Darrell Loh;Tien J. Lee;Shaghayegh Zihajehzadeh;Reynald Hoskinson;Edward J. Park
Author_Institution
School of Mechatronic Systems Engineering, Simon Fraser University, 250-13450 102nd Avenue, Surrey, BC, Canada, V3T 0A3
fYear
2015
Firstpage
502
Lastpage
505
Abstract
Fitness activity classification on wearable devices can provide activity-specific information and generate more accurate performance metrics. Recently, optical head-mounted displays (OHMD) like Google Glass, Sony SmartEyeglass and Recon Jet have emerged. This paper presents a novel method to classify fitness activities using head-worn accelerometer, barometric pressure sensor and GPS, with comparisons to other common mounting locations on the body. Using multiclass SVM on head-worn sensors, we obtained an average F-score of 96.66% for classifying standing, walking, running, ascending/descending stairs and cycling. The best sensor location combinations were found to be on the ankle plus another upper body location. Using three or more sensors did not show a notable improvement over the best two-sensor combinations.
Keywords
"Wrist","Legged locomotion","Support vector machines","Intelligent sensors","Global Positioning System","Accelerometers"
Publisher
ieee
Conference_Titel
Engineering in Medicine and Biology Society (EMBC), 2015 37th Annual International Conference of the IEEE
ISSN
1094-687X
Electronic_ISBN
1558-4615
Type
conf
DOI
10.1109/EMBC.2015.7318409
Filename
7318409
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