Estimating Correlated Angles Using the Hypertoroidal Grid Filter

F. Pfaff, Kailai Li, U. Hanebeck
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引用次数: 4

Abstract

Estimation for multiple correlated quantities generally requires considering a domain whose dimension is equal to the sum of the dimensions of the individual quantities. For multiple correlated angular quantities, considering a hyper-toroidal manifold may be required. Based on a Cartesian product of d equidistant one-dimensional grids for the unit circle, a grid for the d-dimensional hypertorus can be constructed. This grid is used for a novel filter. For n grid points, the update step is in O(n) for arbitrary likelihoods and the prediction step is in O(n2) for arbitrary transition densities. The run time of the latter can be reduced to O(n log n) for identity models with additive noise. In an evaluation scenario, the novel filter shows faster convergence than a particle filter for hypertoroidal domains and is on par with the recently proposed Fourier filters.
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利用超环面网格滤波器估计相关角度
对多个相关量的估计通常需要考虑一个维数等于单个量维数之和的域。对于多个相关角量,可能需要考虑超环面流形。基于单位圆的d等距一维网格的笛卡尔积,可以构造d维超环面的网格。该网格用于一种新型滤波器。对于n个网格点,对于任意似然,更新步长为O(n),对于任意过渡密度,预测步长为O(n2)。对于具有加性噪声的恒等模型,后者的运行时间可以减少到O(n log n)。在评估场景中,新型滤波器在超环面域表现出比粒子滤波器更快的收敛速度,并且与最近提出的傅里叶滤波器相当。
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