Title :
Tracking with estimate-conditioned debiased 3-D converted measurements
Author :
Spitzmiller, John N. ; Adhami, Reza R.
Author_Institution :
Cobham Anal. Solutions, Huntsville, AL, USA
Abstract :
This paper describes a new algorithm for the 3-D converted-measurement Kalman filter (CMKF) which estimates a target´s Cartesian state given spherical position measurements. At each processing index, the new algorithm chooses the more accurate of (1) the sensor´s spherical position measurement and (2) the CMKF´s Cartesian position prediction. The new algorithm then computes the raw converted measurement´s error bias and the corresponding debiased converted measurement´s error covariance conditioned on the chosen position estimate. The paper derives explicit expressions for the spherical-measurement-conditioned bias and covariance and shows the resulting spherical-measurement-conditioned CMKF´s mathematical equivalence with the 3-D modified unbiased CMKF (MUCMKF). The paper also describes a method, based upon the unscented transformation, for approximating the raw converted measurement´s error bias and the debiased converted measurement´s error covariance conditioned on the CMKF´s Cartesian position prediction. Simulation results demonstrate the new CMKF´s improved tracking performance and statistical credibility as compared to those of the 3-D MUCMKF.
Keywords :
Kalman filters; position measurement; state estimation; 3D converted-measurement Kalman filter; 3D modified unbiased CMKF; Cartesian position prediction; Cartesian state estimation; MUCMKF; error covariance; estimate-conditioned debiased 3D converted measurements; mathematical equivalence; position estimate; raw converted measurement error bias; sensor spherical position measurement; spherical position measurements; spherical-measurement-conditioned CMKF; spherical-measurement-conditioned bias; statistical credibility; Algorithm design and analysis; Area measurement; Biographies; Computational modeling; Kinematics; Measurement errors; Position measurement; Prediction algorithms; State estimation; Target tracking;
Conference_Titel :
Aerospace Conference, 2010 IEEE
Conference_Location :
Big Sky, MT
Print_ISBN :
978-1-4244-3887-7
Electronic_ISBN :
1095-323X
DOI :
10.1109/AERO.2010.5446680