Using a metric based tuning of Converted Measurement Kalman Filter (CMKF) for realistic target tracking scenario

M. Saha, B. Goswami, R. Ghosh
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引用次数: 0

Abstract

Converted measurement Kalman filter (CMKF), which is used in target tracking problems, converts polar measurements into Cartesian form to match Cartesian states. However, filter performance may degrade due to incorrect filter tuning of the biases and nonlinearities that arise due to the conversion. In this paper, the necessary converted measurement noise covariances have been derived in a 6 degree of freedom (6DOF) realistic target tracking scenario. In order to do so, the necessary frame conversions have also been accounted for to enable the estimation of the relative kinematics of the target. Thereafter, existing notions of robustness and sensitivity metrics have been suitably adapted to interpret the performance of CMKF in the 6DOF platform for various choices of tuning parameters and to predict the optimal tuning choice. The predicted performances and the optimal filter tuning choice have been validated in simulations in terms of the root mean squared errors (RMSE) for all measurements for 5000 Monte Carlo runs.
采用基于度量的转换测量卡尔曼滤波(CMKF)进行目标跟踪
转换测量卡尔曼滤波(CMKF)用于目标跟踪问题,它将极坐标测量值转换成直角坐标形式以匹配直角坐标状态。然而,由于转换引起的偏差和非线性的不正确的滤波器调谐,滤波器性能可能会下降。本文推导了六自由度(6DOF)现实目标跟踪场景中必要的测量噪声协方差转换。为了做到这一点,还考虑了必要的帧转换,以便能够估计目标的相对运动学。此后,现有的鲁棒性和灵敏度指标的概念被适当地用于解释CMKF在各种调谐参数选择的6DOF平台上的性能,并预测最优调谐选择。预测的性能和最优的滤波器调谐选择已经在模拟中验证了5000蒙特卡罗运行的所有测量的均方根误差(RMSE)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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