| Literature DB >> 25075266 |
Bo Dong1, Alexander Montoye2, Rebecca Moore2, Karin Pfeiffer2, 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 for the on-body scenario are also characterized in terms of detection accuracy, by varying the background processing load in the sensor units. Impacts of varying number of sensors in terms of activity classification accuracy are also evaluated. 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: 2013 PMID: 25075266 PMCID: PMC4112101 DOI: 10.1117/12.2018134
Source DB: PubMed Journal: Proc SPIE Int Soc Opt Eng ISSN: 0277-786X