DocumentCode :
1260034
Title :
Identifying Types of Physical Activity With a Single Accelerometer: Evaluating Laboratory-trained Algorithms in Daily Life
Author :
Gyllensten, Illapha Cuba ; Bonomi, Alberto G.
Author_Institution :
Dept. of Care & Health Applica tions, Philips Res. Labs., Eindhoven, Netherlands
Volume :
58
Issue :
9
fYear :
2011
Firstpage :
2656
Lastpage :
2663
Abstract :
Accurate identification of physical activity types has been achieved in laboratory conditions using single-site accelerometers and classification algorithms. This methodology is then applied to free-living subjects to determine activity behavior. This study is aimed at analyzing the reproducibility of the accuracy of laboratory-trained classification algorithms in free-living subjects during daily life. A support vector machine (SVM), a feed-forward neural network (NN), and a decision tree (DT) were trained with data collected by a waist-mounted accelerometer during a laboratory trial. The reproducibility of the classification performance was tested on data collected in daily life using a multiple-site accelerometer augmented with an activity diary for 20 healthy subjects (age: 30 ± 9; BMI: 23.0 ± 2.6 kg/m2). Leave-one-subject-out cross validation of the training data showed accuracies of 95.1 ± 4.3%, 91.4 ± 6.7%, and 92.2 ± 6.6% for the SVM, NN, and DT, respectively. All algorithms showed a significantly decreased accuracy in daily life as compared to the reference truth represented by the IDEEA and diary classifications (75.6 ± 10.4%, 74.8 ± 9.7%, and 72.2 ± 10.3 %; p <; 0.05). In conclusion, cross validation of training data overestimates the accuracy of the classification algorithms in daily life.
Keywords :
accelerometers; biological techniques; decision trees; feedforward neural nets; gait analysis; support vector machines; accelerometer; decision tree; feed-forward neural network; laboratory-trained algorithms; physical activity; reproducibility; support vector machine; Accelerometers; Accuracy; Artificial neural networks; Classification algorithms; Laboratories; Support vector machines; Training data; Assessment of daily physical activity; classification algorithms; intelligent device for energy expenditure and physical activity (IDEEA); physical activity; triaxial accelerometer; Acceleration; Activities of Daily Living; Adult; Decision Trees; Female; Humans; Locomotion; Male; Models, Statistical; Monitoring, Ambulatory; Motor Activity; Neural Networks (Computer); Principal Component Analysis; Reproducibility of Results; Support Vector Machines;
fLanguage :
English
Journal_Title :
Biomedical Engineering, IEEE Transactions on
Publisher :
ieee
ISSN :
0018-9294
Type :
jour
DOI :
10.1109/TBME.2011.2160723
Filename :
5934365
Link To Document :
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