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Energy Efficient Object Tracking in Sensor Networks by Mining Temporal Moving Patterns. Outline . Introduction Data Mining Algorithm Proposed Prediction Strategies Experimental Evaluation. Introduction. Sensor network Environmental data collection Object tracking …… etc …
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Energy Efficient Object Tracking in Sensor Networks by Mining Temporal Moving Patterns
Outline • Introduction • Data Mining Algorithm • Proposed Prediction Strategies • Experimental Evaluation
Introduction • Sensor network • Environmental data collection • Object tracking • ……etc… • The intrinsic limitation • Power constraints ( focus on energy saving ) • Synchronization • Deployment • Data routing
Introduction • Several researchers tried to save the energy through the software approach like scheduling of sensors • Non-prediction based tracking • periodically turn the sensor nodes off and only activate the sensor nodes when it is time to monitor their sensing regions • Prediction-based tracking • use the information of a moving object like velocity or moving direction to predict the next location the object might visit
Proposed Prediction Strategies • PTMP is a non-velocity based prediction strategy that exploits the TMRs to predict the location of the missing object • PES+PTMP , using both information of detected velocity and the TMRs
Experimental Evaluation • TECindicates the total energy consumed by sensor nodes in the OTSN during data mining and object tracking phases • Missing ratedenotes the number of erroneous predictions in a specified time period in ratio of the total number of movement of objects