Publication | Closed Access
Space-time registration of radar and ESM using unscented Kalman filter
82
Citations
17
References
2004
Year
RadarState EstimationTime AlignmentsSpace-time Registration ModelEngineeringLocation EstimationSynthetic Aperture RadarAerospace EngineeringCalibrationSpace-time BiasesPositioning SystemMulti-sensor Information FusionRadar Image ProcessingRadar ApplicationRadar Signal ProcessingSpace-time RegistrationLocalizationSignal Processing
Space and time alignments are the prerequisites for the successful fusion of multiple sensors. A space-time registration model is proposed to estimate the system biases and to perform time synchronization together for mobile radar and electronic support measure (ESM) systems. A space-time registration model for radar and ESM is first developed, and an unscented Kalman filter (UKF) is proposed to estimate the space-time biases and target states simultaneously. The posterior Cramer-Rao bounds (PCRBs) are derived for the proposed UKF registration algorithm for ESM detection probability less than or equal to one. Theoretical analyses are performed to evaluate the accuracy and robustness of the proposed method. Computer simulations show that the UKF registration algorithm is indeed effective and robust for different radar and ESM tracking scenarios.
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