Target tracking represents a state estimation problem recurrent in many practical scenarios like air traffic control, autonomous vehicles, marine radar surveillance and so on. In a Bayesian perspective, when phenomena like clutter are present, the vast majority of the existing tracking algorithms have to deal with association hypotheses which can grow in the number over time; in that case, the posterior state distribution can become computationally intractable and approximations have to be introduced. In this work, the impact of the number of hypotheses and corresponding reductions is investigated both in terms of employed computational resources and tracking performances. For this purpose, a recently developed adaptive mixture model reduction algorithm is considered in order to assess its performances when applied to the problem of single object tracking in the presence of clutter and to provide additional insights on the addressed problem.
翻译:目标跟踪是许多实际情景(如空中交通管制、自主车辆、海洋雷达监视等)中反复出现的国家估计问题。 从巴耶斯的角度来看,当出现诸如杂乱现象时,绝大多数现有的跟踪算法必须处理关联假设,这些假设随着时间而增加;在这种情况下,后州分布会变得难以计算,必须采用近似值。 在这项工作中,从使用计算资源和跟踪性能的角度对假设数量和相应减少量的影响进行了调查。 为此,考虑最近开发的适应性混合模型减少算法,以便在应用到在杂乱乱状态下单一物体跟踪问题时评估其性能,并就所处理的问题提供更多的见解。