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Tracking with ranked signals

机译:跟踪排名信号

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摘要

We present a novel graphical model approach for a problem not previously considered in the machine learning literature: that of tracking with ranked signals. The problem consists of tracking a single target given observations about the target that consist of ranked continuous signals, from unlabeled sources in a cluttered environment. We introduce appropriate factors to handle the imposed ordering assumption, and also incorporate various systematic errors that can arise in this problem, particularly clutter or noise signals as well as missing signals. We show that inference in the obtained graphical model can be simplified by adding bipartite structures with appropriate factors. We apply a hybrid approach consisting of belief propagation and particle filtering in this mixed graphical model for inference and validate the approach on simulated data. We were motivated to formalize and study this problem by a key task in Oceanography, that of tracking the motion of RAFOS ocean floats, using range measurements sent from a set of fixed beacons, but where the identities of the beacons corresponding to the measurements are not known. However, unlike the usual tracking problem in artificial intelligence, there is an implicit ranking assumption among signal arrival times. Our experiments show that the proposed graphical model approach allows us to effectively leverage the problem constraints and improve tracking accuracy over baseline tracking methods yielding results similar to the ground truth hand-labeled data.
机译:对于机器学习文献中以前未考虑的问题,我们提出了一种新颖的图形模型方法:使用排名信号进行跟踪的问题。问题在于,在混乱的环境中,根据给定的目标跟踪,跟踪单个目标,该观测由排名连续的信号组成,这些信号来自未标记的源。我们介绍了适当的因素来处理所施加的排序假设,并且还结合了可能在此问题中出现的各种系统错误,尤其是杂波或噪声信号以及丢失信号。我们表明,通过添加具有适当因子的二分结构,可以简化所获得图形模型中的推论。我们在此混合图形模型中应用了一种由信念传播和粒子滤波组成的混合方法进行推理,并在模拟数据上验证了该方法。我们被激励着要通过海洋学中的一项关键任务来对这一问题进行形式化和研究,该任务是使用一组固定信标发送的距离测量值来跟踪RAFOS海洋浮标的运动,但其中与测量值相对应的信标的身份却没有众所周知。但是,与人工智能中常见的跟踪问题不同,信号到达时间之间存在隐式的排名假设。我们的实验表明,所提出的图形模型方法使我们能够有效地利用问题约束条件,并比基线跟踪方法提高跟踪精度,从而产生类似于地面真实手工标记数据的结果。

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