多帧分配的PMHT算法

R. Streit
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引用次数: 8

摘要

概率多假设跟踪(PMHT)是一种在测量到目标分配未知的情况下,必须与目标轨迹共同估计的多目标跟踪算法。PMHT在目标数量和测量数量上呈线性关系;并且保证了算法收敛到局部最优状态估计。然而,它违反了不能为目标分配多个度量的规则。因此,这会导致过多的局部最大值,从而导致性能问题。将PMHT方法应用于多帧数据序列,即最后L次扫描中所有可能的测量序列的集合,大大减少了这些问题。PMHT和有限枚举的混合减少了由于违反“每个目标最多一次测量”规则而引起的不匹配。提出了两种新的PMHT算法。两者在目标数量和枚举序列数量上都是线性的
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PMHT Algorithms for Multi-Frame Assignment
Probabilistic multi-hypothesis tracking (PMHT) is an algorithm for tracking multiple targets when measurement-to-target assignments are unknown and must be estimated jointly with the target tracks. PMHT is linear in the number of targets and the number of measurements; moreover, it is guaranteed to converge to locally optimal state estimates. However, it violates the rule that no target can be assigned more than one measurement. This hereby leads to a plethora of local maxima that cause performance problems. These problems are greatly reduced by applying the PMHT method to multi-frame data sequences, that is, to the set of all possible measurement sequences in the last L scans. The blend of PMHT and limited enumeration reduces the mismatch induced by violating the "at most one measurement per target" rule. Two new PMHT algorithms are presented. Both are linear in the number of targets and the number of enumerated sequences
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