Title :
Resource-Optimized Quality-Assured Ambiguous Context Mediation Framework in Pervasive Environments
Author :
Roy, Nirmalya ; Das, Sajal K. ; Julien, Christine
Author_Institution :
Networking Protocols Dept., Inst. for Infocomm Res. (I2R), Singapore, Singapore
Abstract :
Pervasive computing applications often involve sensor-rich networking environments that capture various types of user contexts such as locations, activities, vital signs, and so on. Such context information is useful in a variety of applications, for example, monitoring health information to promote independent living in "aging-in-place” scenarios, or providing safety and security of people and infrastructures. In reality, both sensed and interpreted contexts are often ambiguous, thus leading to potentially dangerous decisions if not properly handled. Therefore, a significant challenge in the design and development of realistic and deployable context-aware services for pervasive computing applications lies in the ability to deal with ambiguous contexts. In this paper, we propose a resource-optimized, quality-assured context mediation framework for sensor networks. The underlying approach is based on efficient context-aware data fusion, information-theoretic reasoning, and selection of sensor parameters, leading to an optimal state estimation. In particular, we apply dynamic Bayesian networks to derive context and deal with context ambiguity or error in a probabilistic manner. Experimental results using SunSPOT sensors demonstrate the promise of this approach.
Keywords :
belief networks; inference mechanisms; information theory; sensor fusion; state estimation; ubiquitous computing; SunSPOT sensors; context-aware data fusion; context-aware services; dynamic Bayesian networks; information-theoretic reasoning; optimal state estimation; pervasive computing applications; pervasive environments; resource-optimized quality-assured ambiguous context mediation framework; sensor parameter selection; sensor-rich networking environments; Bayesian methods; Context modeling; Data models; Information theory; Mobile computing; Wireless sensor networks; Bayesian networks; Context-awareness; SunSPOT.; ambiguous contexts; information theory; multisensor fusion;
Journal_Title :
Mobile Computing, IEEE Transactions on
DOI :
10.1109/TMC.2011.20