Title of article :
Tracking with Estimate-Conditioned Debiased 2-D Converted Measurements
Author/Authors :
John N. Spitzmiller، نويسنده , , Brian J. Smith and Reza R. Adhami، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2010
Abstract :
This paper describes a new algorithm for the 2-D converted-measurement Kalman filter (CMKF) which estimates
a target’s Cartesian state given polar position measurements. At each processing index, the new algorithm
chooses the more accurate of (1) the sensor’s polar 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 polar-measurement-conditioned bias and covariance
and shows the resulting polar-measurement-conditioned CMKF’s mathematical equivalence with the 2-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 2-D MUCMKF.
Keywords :
Tracking , Converted Measurements , Kalman filter , Unscented transformation
Journal title :
Intelligent Information Management
Journal title :
Intelligent Information Management