A measurement correlation algorithm for Line-of-Bearing geo-location

Big Sky, MT(2013)

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摘要
This paper develops an algorithm that can be used to solve the data association problem faced by a surveillance aircraft using Direction of Arrival angle measurements to locate a stationary RF signal source. The algorithm is based on statistical clustering of measurements with clusters being formed using a Mahalanobis distance association criterion. This approach accounts for angle measurement error statistics and avoids the computational complexity of an exhaustive combinatorial assignment. The optimal cluster is the one that maximized the target position log-likelihood function. This cluster is used to compute a target position estimate then removed from the set of measurements. The process is repeated until no additional clusters can be formed. Simulation results are shown where 100 measurements are distributed randomly across 7 target signal sources.
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关键词
angular measurement,direction-of-arrival estimation,error statistics,log normal distribution,signal sources,statistical analysis,surveillance,mahalanobis distance association criterion,angle measurement error statistics,combinatorial assignment,computational complexity,data association problem,direction-of-arrival angle measurements,line-of-bearing geo-location,measurement correlation algorithm,optimal cluster,position log-likelihood function,stationary rf signal source,surveillance aircraft,clustering algorithms,computational modeling,correlation,measurement errors
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