| Literature DB >> 25530911 |
Bo Dong1, Subir Biswas1.
Abstract
This paper presents implementation details, system characterization, and the performance of a wearable sensor network that was designed for human activity analysis. Specific machine learning mechanisms are implemented for recognizing a target set of activities with both out-of-body and on-body processing arrangements. Impacts of energy consumption by the on-body sensors are analyzed in terms of activity detection accuracy for out-of-body processing. Impacts of limited processing abilities in the on-body scenario are also characterized in terms of detection accuracy, by varying the background processing load in the sensor units. Through a rigorous systems study, it is shown that an efficient human activity analytics system can be designed and operated even under energy and processing constraints of tiny on-body wearable sensors.Entities:
Keywords: Activity Analytics; Machine Learning; Neural Network; On-body Processing; Wearable Sensor Network
Year: 2012 PMID: 25530911 PMCID: PMC4269838 DOI: 10.1109/COMSNETS.2012.6151376
Source DB: PubMed Journal: Int Conf Commun Syst Netw ISSN: 2155-2509