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Consistent debiased method for converting between polar and Cartesian coordinate systems

机译:一致的脱叠方法,用于转换极性和笛卡尔坐标系之间的方法

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A significant problem in tracking and estimation is the consistent transformation of uncertain state estimates between Cartesian and spherical coordinate systems. For example, a radar system generates measurements in its own local spherical coordinate system. In order to combine those measurements with those from other radars, however, a tracking system typically transforms all measurements to a common Cartesian coordinate system. The most common approach is to approximate the transformation through linearization. However, this approximation can lead to biases and inconsistencies, especially when the uncertainties on the measurements are large. A number of approaches have been proposed for using higher order transformation modes, but these approaches have found only limited use due to the often enormous implementation burdens incurred by the need to derive Jacobians and Hessians. This paper expands a method for nonlinear propagation which is described in a companion paper. A discrete set of samples are used to capture the first four moments of the untransformed measurement. The transformation is then applied to each of the samples, and the mean and covariance are calculated from the result. It is shown that the performance of the algorithm is comparable to that of fourth order filters, thus ensuring consistency even when the uncertainty is large. It is not necessary to calculate any derivatives, and the algorithm can be extended to incorporate higher order information. The benefits of this algorithm are illustrated in the contexts of autonomous vehicle navigation and missile tracking.
机译:跟踪和估计的显着问题是笛卡尔和球面坐标系之间不确定状态估计的一致变换。例如,雷达系统在其本地球形坐标系中产生测量。然而,为了将那些与来自其他雷达的测量结果组合,但是跟踪系统通常将所有测量变换为共同的笛卡尔坐标系。最常见的方法是通过线性化近似转换。然而,这种近似可能导致偏差和不一致,特别是当测量的不确定性很大时。已经提出了许多方法,用于使用更高阶转换模式,但这些方法仅发现了有限的使用,由于需要派生雅各比人和黑森斯人的需求往往产生的巨大实施负担。本文扩展了一种用于伴随纸张中描述的非线性传播的方法。采用离散的样本集用于捕获未转化测量的前四个矩。然后将转化施加到每个样本,并且从结果计算平均值和协方差。结果表明,算法的性能与第四阶滤波器的性能相当,因此即使在不确定性大时也能确保一致性。没有必要计算任何衍生物,并且可以扩展算法以结合更高阶信息。该算法的益处在自主车辆导航和导弹跟踪的背景下说明。

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