Simultaneous Localization, Calibration, and Tracking in an ad Hoc Sensor Network
Author(s)
Taylor, Christopher; Rahimi, Ali; Bachrach, Jonathan; Shrobe, Howard
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We introduce Simultaneous Localization and Tracking (SLAT), the problem of tracking a target in a sensor network while simultaneously localizing and calibrating the nodes of the network. Our proposed solution, LaSLAT, is a Bayesian filter providing on-line probabilistic estimates of sensor locations and target tracks. It does not require globally accessible beacon signals or accurate ranging between the nodes. When applied to a network of 27 sensor nodes, our algorithm can localize the nodes to within one or two centimeters.
Date issued
2005-04-26Other identifiers
MIT-CSAIL-TR-2005-029
AIM-2005-016
Series/Report no.
Massachusetts Institute of Technology Computer Science and Artificial Intelligence Laboratory
Keywords
AI, sensor network, localization, bayesian filter, extended kalman filter