Publication | Closed Access
Comparison of two measurement fusion methods for Kalman-filter-based multisensor data fusion
500
Citations
13
References
2001
Year
State EstimationDecision FusionEngineeringMulti-sensor ManagementMultisensor DataMeasurementCalibrationData FusionMulti-sensor Information FusionSystems EngineeringSensor FusionMeasurement Fusion MethodsSignal ProcessingKalman Filter
Currently there exist two commonly used measurement fusion methods for Kalman-filter-based multisensor data fusion. The first (Method I) simply merges the multisensor data through the observation vector of the Kalman filter, whereas the second (Method II) combines the multisensor data based on a minimum-mean-square-error criterion. This paper, based on an analysis of the fused state estimate covariances of the two measurement fusion methods, shows that the two measurement fusion methods are functionally equivalent if the sensors used for data fusion, with different and independent noise characteristics, have identical measurement matrices. Also presented are simulation results on state estimation using the two measurement fusion methods, followed by the analysis of the computational advantages of each method.
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