一种多目标连续时间弹道评估度量

Yue Xin, Yan Song, Tiancheng Li
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引用次数: 0

摘要

现有的目标跟踪器以及相应的评估度量都是基于离散时间点状态估计的。一种新兴的目标跟踪方法是估计由时间状态函数给出的连续时间轨迹,该轨迹比离散时间点估计包含更多的信息,而离散时间点估计仍然缺乏适当的度量。本文提出了一种适合于评价连续时间曲线轨迹的基本度量——积分多目标轨迹分配距离(IMTA)。基于估计轨迹与真实轨迹的最优匹配,定位距离由时间一致轨迹部分的积分和时间不一致轨迹部分的惩罚组成。此外,还定义了基数误差,以考虑整个轨迹水平上的误报和误检。通过理论分析和数值算例验证了所提度量的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Metric for Multi-Target Continuous-Time Trajectory Evaluation
Existing target trackers, as well as the corresponding evaluation metrics, are based on discrete-time point-state estimates. An emerging approach to target tracking is to estimate the continuous-time trajectories that are given by a state function of time and contain more information than discrete-time point estimates, for which a proper metric is still missing. In this study, a fundamental metric called the integral multi-target trajectory assignment (IMTA) distance that is suitable for evaluating the continuous-time curve trajectories is proposed. Based on optimal matching between the estimated and ground-truth trajectories, the localization distance consists of the integral for the time-consistent trajectory parts and the penalty for the trajectory time-inconsistent parts. Furthermore, the cardinality error is also defined to account for the false alarm and mis-detection in the level of a whole trajectory. Theoretical analysis and numerical examples are presented to demonstrate the performance of the proposed metric.
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