TY - GEN
T1 - A predictive surveillance system using context-aware data of u-city
AU - Cho, Jaehyuk
PY - 2012
Y1 - 2012
N2 - As sensor-related technology advances a variety of sensor data, information interchange among relevant systems have become more active. We also need a system that can either prevent crimes by forecasting context and coping with crime results as well as context management of city for high level of safety for city life with efficiency. In this dissertation a context awareness and prediction system are presented for more efficient and advanced management of u-City based on an ontology modeling for utilization of huge amount of information involved. Inference rules and facts are presented and generated so they can be effectively applied to contexts of u-City. The mechanism realizes higher accuracy of context prediction of events which can be predictable by existing history information. Especially, the system can be applied distinctively on each function of u-City to the ontology models with information transferred from sensors to the legacy system. The results of the proposed system can be used as practically useful references on customized context awareness, inference, mining and prediction that can support efficient responding methods according to u-City modeling, definition, and inference rule of complicated context information.
AB - As sensor-related technology advances a variety of sensor data, information interchange among relevant systems have become more active. We also need a system that can either prevent crimes by forecasting context and coping with crime results as well as context management of city for high level of safety for city life with efficiency. In this dissertation a context awareness and prediction system are presented for more efficient and advanced management of u-City based on an ontology modeling for utilization of huge amount of information involved. Inference rules and facts are presented and generated so they can be effectively applied to contexts of u-City. The mechanism realizes higher accuracy of context prediction of events which can be predictable by existing history information. Especially, the system can be applied distinctively on each function of u-City to the ontology models with information transferred from sensors to the legacy system. The results of the proposed system can be used as practically useful references on customized context awareness, inference, mining and prediction that can support efficient responding methods according to u-City modeling, definition, and inference rule of complicated context information.
KW - Context awareness
KW - OWL
KW - Prediction
KW - U-city
UR - https://www.scopus.com/pages/publications/84867051035
U2 - 10.1007/978-94-007-5064-7_48
DO - 10.1007/978-94-007-5064-7_48
M3 - Conference paper
AN - SCOPUS:84867051035
SN - 9789400750630
T3 - Lecture Notes in Electrical Engineering
SP - 343
EP - 351
BT - Future Information Technology, Application, and Service, FutureTech 2012
T2 - 7th FTRA International Conference on Future Information Technology, FutureTech 2012
Y2 - 26 June 2012 through 28 June 2012
ER -