Title :
Posture and Activity Recognition and Energy Expenditure Estimation in a Wearable Platform
Author :
Sazonov, Edward ; Hegde, Nagaraj ; Browning, Raymond C. ; Melanson, Edward L. ; Sazonova, Nadezhda A.
Author_Institution :
Dept. of Electr. & Comput. Eng., Univ. of Alabama, Tuscaloosa, AL, USA
Abstract :
The use of wearable sensors coupled with the processing power of mobile phones may be an attractive way to provide real-time feedback about physical activity and energy expenditure (EE). Here, we describe the use of a shoe-based wearable sensor system (SmartShoe) with a mobile phone for real-time recognition of various postures/physical activities and the resulting EE. To deal with processing power and memory limitations of the phone, we compare the use of support vector machines (SVM), multinomial logistic discrimination (MLD), and multilayer perceptrons (MLP) for posture and activity classification followed by activity-branched EE estimation. The algorithms were validated using data from 15 subjects who performed up to 15 different activities of daily living during a 4-h stay in a room calorimeter. MLD and MLP demonstrated activity classification accuracy virtually identical to SVM (~ 95%) while reducing the running time and the memory requirements by a factor of >103. Comparison of per-minute EE estimation using activity-branched models resulted in accurate EE prediction (RMSE = 0.78 kcal/min for SVM and MLD activity classification, 0.77 kcal/min for MLP versus RMSE of 0.75 kcal/min for manual annotation). These results suggest that low-power computational algorithms can be successfully used for real-time physical activity monitoring and EE estimation on a wearable platform.
Keywords :
biomechanics; calorimeters; footwear; medical signal processing; mobile handsets; multilayer perceptrons; signal classification; support vector machines; MLD; MLP; SVM; SmartShoe; activity classification accuracy; activity-branched EE estimation; energy expenditure estimation; memory requirements; mobile phones; multilayer perceptrons; multinomial logistic discrimination; physical activity recognition; posture recognition; processing power; real-time feedback; room calorimeter; running time; shoe-based wearable sensor system; support vector machines; time 4 h; wearable platform; Accuracy; Computational modeling; Data models; Estimation; Predictive models; Support vector machines; Training; Energy expenditure; physical activity; shoe sensors; wearable sensors;
Journal_Title :
Biomedical and Health Informatics, IEEE Journal of
DOI :
10.1109/JBHI.2015.2432454