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Best linear unbiased filtering for target tracking with spherical measurements

机译:具有球面测量的目标跟踪的最佳线性无偏滤波

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In tracking applications, target dynamics is usually modeled in the Cartesian coordinates, while target measurements are directly available in the original sensor coordinates. Measurement conversion is widely used to do linearization such that the Kalman filter can be applied in the Cartesian coordinates. A number of improved measurement-conversion techniques have been proposed recently. However, they have fundamental limitations, resulting in performance degradation, as pointed out in Part III of a recent survey conducted by the authors. This paper proposes a recursive filter that is theoretically optimal in the sense of minimizing the mean-square error among all linear unbiased filters in the Cartesian coordinates. The proposed filter is free of the fundamental limitations of the measurement-conversion approach. Results of an approximate implementation for measurements in the spherical coordinates are compared with those obtained by two state-of-the-art conversion techniques. Simulation results are provided.
机译:在跟踪应用程序中,目标动态通常在笛卡尔坐标中建模,而目标测量可直接在原始传感器坐标中可用。测量转换广泛用于进行线性化,使得卡尔曼滤波器可以应用于笛卡尔坐标。最近提出了许多改进的测量转换技术。然而,它们具有基本限制,导致绩效退化,如作者最近进行的一项调查的第三部分所指出的。本文提出了一种递归过滤器,在理论上是在最小化笛卡尔坐标中的所有线性无偏的滤波器中的平均误差的意义上最佳的。所提出的过滤器没有测量转换方法的基本局限性。将球形坐标测量的近似实施的结果与通过两种最新的转换技术获得的结果进行比较。提供了仿真结果。

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