DocumentCode
698212
Title
ML-based sensor network localization and tracking: Batch and time-recursive approaches
Author
Oguz-Ekim, Pinar ; Gomes, Joao ; Xavier, Joao ; Oliveira, Paulo
Author_Institution
Inst. for Syst. & Robot., Inst. Super. Tecnico, Lisbon, Portugal
fYear
2009
fDate
24-28 Aug. 2009
Firstpage
80
Lastpage
84
Abstract
Simultaneous localization and tracking (SLAT) in sensor networks aims to determine the positions of sensor nodes and a moving target in a network, given incomplete and inaccurate range measurements. One of the established methods for achieving this goal is to maximize a likelihood function (ML), which requires initialization with an approximate solution to avoid convergence towards local extrema. In this paper a Euclidean Distance Matrix (EDM) completion problem is solved to obtain initial sensor/target positions. The likelihood function is then iteratively optimized through either a Majorization-Minimization (MM) or Newton method. To reduce the computational load, an incremental scheme is proposed whereby each new target position is estimated from range measurements, providing additional initialization for ML without the need for solving an expanded EDM completion problem. The performance of these methods is assessed through simulation.
Keywords
Newton method; matrix algebra; maximum likelihood estimation; minimisation; sensor placement; target tracking; EDM; Euclidean distance matrix completion problem; ML; ML-based sensor network localization and tracking; MM; Newton method; SLAT; batch-recursive approaches; inaccurate range measurements; incremental scheme; majorization-minimization method; maximize a likelihood function; sensor-target positions; simultaneous localization and tracking; time-recursive approaches; Convergence; Convex functions; Cost function; Estimation; Newton method; Robot sensing systems;
fLanguage
English
Publisher
ieee
Conference_Titel
Signal Processing Conference, 2009 17th European
Conference_Location
Glasgow
Print_ISBN
978-161-7388-76-7
Type
conf
Filename
7077787
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