This paper considers the problem of tracking a large-scale number of group targets. Usually, multi-target in most tracking scenarios are assumed to have independent motion and are well-separated. However, for group target tracking (GTT), the targets within groups are closely spaced and move in a coordinated manner, the groups can split or merge, and the numbers of targets in groups may be large, which lead to more challenging data association, filtering and computation problems. Within the belief propagation (BP) framework, we propose a scalable group target belief propagation (GTBP) method by jointly inferring target existence variables, group structure, data association and target states. The method can efficiently calculate the approximations of the marginal posterior distributions of these variables by performing belief propagation on the devised factor graph. As a consequence, GTBP is capable of capturing the changes in group structure, e.g., group splitting and merging. Furthermore, we model the evolution of targets as the co-action of the group or single-target motions specified by the possible group structures and corresponding probabilities. This flexible modeling enables seamless and simultaneous tracking of multiple group targets and ungrouped targets. Particularly, GTBP has excellent scalability and low computational complexity. It not only maintains the same scalability as BP, i.e., scaling linearly in the number of sensor measurements and quadratically in the number of targets, but also only scales linearly in the number of preserved group partitions. Finally, numerical experiments are presented to demonstrate the effectiveness and scalability of the proposed GTBP method.
翻译:本文考虑的是跟踪大规模群体目标的问题。通常,多数跟踪情景中的多目标假设具有独立的动态,并且是分开的。然而,对于群体目标跟踪(GTT),小组内目标的距离很近,以协调的方式移动,小组可以分裂或合并,小组内目标的数量可能很大,导致更具有挑战性的数据关联、过滤和计算问题。在信仰传播(BP)框架内,我们通过联合推断目标存在变量、群体结构、数据关联和目标状态,提出一个可扩缩群体目标信仰传播(GTBP)方法。对于群体目标跟踪(GTT)而言,该方法可以有效地计算这些变量的边边边边边边边的边边上分布分布的近点,在设计要素图表上进行传播。因此,GTB能够捕捉到群体结构的变化,例如群体分裂和计算。此外,我们将目标的演变模式作为群体共同行动或可能群体结构及相应概率规定的单一目标动作(GTB)。这种灵活的模型使多组目标的边际和同步和同时跟踪,BTA目标的边际的精确性和不精确性,最后的精确性,BBL的缩缩缩缩缩缩。 和不以显示。