近似跟踪自动机——结合MHT和GBT的优点进行高值目标跟踪

Lucas I. Finn, Steven Schoenecker, L. Bookman, John Grimes
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引用次数: 0

摘要

在密集的多目标环境中保持高价值目标(hvt)的轨迹仍然是一个具有计算挑战性的问题。在感知和计算能力有限的情况下,方法必须权衡假设管理和状态估计精度。当传感器提供额外的、不常见的特征时,这个问题变得更加困难:在长时间尺度上与跟踪状态相关的信息,如目标大小和颜色,或唯一标识符,如车牌。传统的实时多假设跟踪(MHT)算法必须在特征信息到达之前对假设进行修剪,往往会从解空间中去除正确的关联假设。基于图的轨迹拼接(GBT)算法存在两个相关问题:它们依赖于上游跟踪算法来正确地关联短时间尺度的测量,并且必须在不常见的特征信息存在的情况下仍然关联轨迹。因此,HVT跟踪问题需要在短时间和长时间尺度上正确地为跟踪分配报告。在本文中,我们扩展了近似轨迹自动机(ATA)算法,在给定一组HVT假设和特征信息模型的情况下进行动态假设管理。原始的ATA算法采用单一策略管理整个假设空间;我们根据hvt和目标特征量身定制了这种方法。我们比较了HVT和背景目标的传统跟踪指标,如均方根误差、跟踪概率和跟踪纯度。此外,我们研究了缩放整数线性规划(ILP)变量的数量,即MHT和ATA假设的数量,对这些指标的影响。有趣的是,我们注意到虽然求解ILP(通常)是np完全的,但ILP约束矩阵和成本向量包含的结构在实践中通常会导致高效的运行时间。对于为什么ILP问题结构允许这种接近多项式的运行时,我们提供了可能的解释。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Approximate Track Automata - Combining the Best of MHT and GBT for High Value Target Tracking
Maintaining tracks on High-Value Targets (HVTs) in dense multi-target environments remains a computationally challenging problem. Approaches must trade off hypothesis management with state estimation accuracy in the presence of finite sensing and computational capabilities. This problem becomes more difficult when sensors provide additional, infrequent features: information that correlates track states over long timescales such as target size and color, or unique identifiers such as a license plate. Traditional real-time Multi-Hypothesis Tracking (MHT) algorithms must prune hypotheses before feature information arrives, often removing the correct association hypothesis from the solution space. Graph-Based Track stitching (GBT) algorithms suffer from two related problems: they rely on an upstream tracking algorithm to correctly associate measurements across short timescales, and must still associate tracks in the presence of infrequent feature information. As a result, the HVT tracking problem requires correctly assigning reports to tracks on both short and long timescales. In this paper, we extend the Approximate Track Automata (ATA) algorithm to perform dynamic hypothesis management given a set of HVT hypotheses and feature information models. The original ATA algorithm applied a single strategy to manage the entire hypothesis space; we tailor that approach here given HVTs and target features. We compare traditional tracking metrics such as root mean square error, probability of track, and track purity for HVT and background targets. In addition, we investigate the effect of scaling the number of Integer Linear Program (ILP) variables, i.e. the number of MHT and ATA hypotheses, on these metrics. Interestingly, we note that while solving ILPs is (in general) NP-complete, the ILP constraint matrices and cost vectors contain structure that often results in efficient runtimes in practice. We offer possible explanations as to why the ILP problem structure allows this near-polynomial runtime.
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