DocumentCode :
43717
Title :
Estimating Energy Expenditure Using Body-Worn Accelerometers: A Comparison of Methods, Sensors Number and Positioning
Author :
Altini, Marco ; Penders, Julien ; Vullers, Ruud ; Amft, Oliver
Author_Institution :
Eindhoven Univ. of Technol., Eindhoven, Netherlands
Volume :
19
Issue :
1
fYear :
2015
fDate :
Jan. 2015
Firstpage :
219
Lastpage :
226
Abstract :
Several methods to estimate energy expenditure (EE) using body-worn sensors exist; however, quantifications of the differences in estimation error are missing. In this paper, we compare three prevalent EE estimation methods and five body locations to provide a basis for selecting among methods, sensors number, and positioning. We considered 1) counts-based estimation methods, 2) activity-specific estimation methods using METs lookup, and 3) activity-specific estimation methods using accelerometer features. The latter two estimation methods utilize subsequent activity classification and EE estimation steps. Furthermore, we analyzed accelerometer sensors number and on-body positioning to derive optimal EE estimation results during various daily activities. To evaluate our approach, we implemented a study with 15 participants that wore five accelerometer sensors while performing a wide range of sedentary, household, lifestyle, and gym activities at different intensities. Indirect calorimetry was used in parallel to obtain EE reference data. Results show that activity-specific estimation methods using accelerometer features can outperform counts-based methods by 88% and activity-specific methods using METs lookup for active clusters by 23%. No differences were found between activity-specific methods using METs lookup and using accelerometer features for sedentary clusters. For activity-specific estimation methods using accelerometer features, differences in EE estimation error between the best combinations of each number of sensors (1 to 5), analyzed with repeated measures ANOVA, were not significant. Thus, we conclude that choosing the best performing single sensor does not reduce EE estimation accuracy compared to a five sensors system and can reliably be used. However, EE estimation errors can increase up to 80% if a nonoptimal sensor location is chosen.
Keywords :
accelerometers; biomechanics; biomedical telemetry; body sensor networks; calorimetry; error analysis; estimation theory; feature extraction; medical signal processing; optimisation; sensor arrays; signal classification; statistical analysis; telemedicine; EE estimation accuracy reduction; EE estimation error; EE estimation selection; EE reference data; MET lookup; accelerometer feature; accelerometer on-body positioning; accelerometer sensor number; active cluster; activity classification; activity intensity; activity-specific estimation; body location; body-worn accelerometer; body-worn sensor; counts-based estimation; daily activity; energy expenditure estimation; estimation error difference quantification; five-accelerometer sensor; gym activity; household activity; indirect calorimetry; lifestyle activity; nonoptimal sensor location effect; optimal EE estimation; repeated measure ANOVA; sedentary activity; sedentary cluster; sensor number combination; sensor number selection; sensor positioning selection; single-sensor selection; Accelerometers; Accuracy; Estimation error; Sensor phenomena and characterization; Vectors; Accelerometers; energy expenditure (EE); physical activity (PA); wearable sensors;
fLanguage :
English
Journal_Title :
Biomedical and Health Informatics, IEEE Journal of
Publisher :
ieee
ISSN :
2168-2194
Type :
jour
DOI :
10.1109/JBHI.2014.2313039
Filename :
6776412
Link To Document :
بازگشت