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Polynomial-Time Algorithms for the Exact MMOSPA Estimate of a Multi-Object Probability Density Represented by Particles

机译:粒子表示的多目标概率密度的精确MMOSPA估计的多项式时间算法

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摘要

In multi-object estimation, the traditional minimum mean squared error (MMSE) objective is unsuitable: a simple permutation of object identities can turn a very good estimate into what is apparently a very bad one. Fortunately, a criterion tailored to sets—minimization of the mean optimal sub-pattern assignment (MMOSPA)—has recently evolved. Aside from special cases, exact MMOSPA estimates have seemed difficult to compute. But in this work we present the first exact polynomial-time algorithms for calculating the MMOSPA estimate for probability densities that are represented by particles. The key insight is that the MMOSPA estimate can be found by means of enumerating the cells of a hyperplane arrangement, which is a traditional problem from computational geometry. Although the runtime complexity is still high for the general case, efficient algorithms are obtained for two special cases, i.e., (i) two targets with arbitrary state dimensions and (ii) an arbitrary number of one-dimensional targets.
机译:在多对象估计中,传统的最小均方误差(MMSE)目标是不合适的:对象身份的简单排列就可以将一个很好的估计变成一个非常糟糕的估计。幸运的是,最近针对集合而制定的标准(即平均最优子模式分配(MMOSPA)的最小化)得以发展。除了特殊情况外,确切的MMOSPA估计值似乎很难计算。但是在这项工作中,我们提出了第一个精确的多项式时间算法,用于计算由粒子表示的概率密度的MMOSPA估计。关键的见解是,可以通过枚举超平面布置的单元来找到MMOSPA估计,这是计算几何学中的传统问题。尽管在一般情况下运行时复杂度仍然很高,但是对于两种特殊情况,即(i)具有任意状态尺寸的两个目标和(ii)任意数量的一维目标,可以获得有效的算法。

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