DocumentCode :
1609753
Title :
PEAR: Power efficiency through activity recognition (for ECG-based sensing)
Author :
Sun, Feng-Tso ; Kuo, Cynthia ; Griss, Martin
fYear :
2011
Firstpage :
115
Lastpage :
122
Abstract :
The PEAR (Power Efficiency though Activity Recognition) framework is presented using an ECG-based body sensor network as a case study. PEAR addresses real-world challenges in continuously monitoring physiological signals. PEAR leverages a wearable sensor´s embedded processing power to conserve energy resources. This is accomplished by performing some data processing on the sensor and reducing the overhead of wireless data transmission. A coarse-grained decision tree-based activity classifier was implemented on a sensor node to recognize the sensor wearer´s activity level. Using the wearer´s activity level, the sensor dynamically manages its activities-sampling of the ECG sensor, processing of the data, and wireless transmission - to minimize overall power consumption. This paper describes the design and implementation of RR interval extraction and activity recognition modules on a SHIMMER sensor node. An activity-aware energy model is presented along with energy profiling results. The level of energy conservation varies with a wearer´s level of activity, and a sensitivity analysis shows that PEAR´s advantage over standard body sensor network architectures increases with more activity. In a user study, our participants were active 18%-28% of the time. Based on this level of activity, our implementation of PEAR increases battery life up to 2.5 times when compared to conventional ECG sensing approaches. This approach is applicable to a broad range of pervasive health applications that incorporate continuous monitoring of physiological signals.
Keywords :
body sensor networks; decision trees; electrocardiography; health care; medical signal processing; ubiquitous computing; ECG-based body sensor network; PEAR; RR interval extraction; SHIMMER sensor node; activity-aware energy model; coarse-grained decision tree-based activity classifier; pervasive health applications; physiological signals; power efficiency through activity recognition; Accelerometers; Batteries; Biomedical monitoring; Electrocardiography; Feature extraction; Mobile handsets; Monitoring;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Pervasive Computing Technologies for Healthcare (PervasiveHealth), 2011 5th International Conference on
Conference_Location :
Dublin
Print_ISBN :
978-1-61284-767-2
Type :
conf
Filename :
6038777
Link To Document :
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