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Jointly-Optimized Searching and Tracking with Random Finite Sets

机译:随机有限集共同优化的搜索和跟踪

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摘要

In this paper, we investigate the problem of joint searching and tracking of multiple mobile targets by a group of mobile agents. The targets appear and disappear at random times inside a surveillance region and their positions are random and unknown. The agents have limited sensing range and receive noisy measurements from the targets. A decision and control problem arises, where the mode of operation (i.e., search or track) as well as the mobility control action for each agent, at each time instance, must be determined so that the collective goal of searching and tracking is achieved. We build our approach upon the theory of random finite sets (RFS) and we use Bayesian multi-object stochastic filtering to simultaneously estimate the time-varying number of targets and their states from a sequence of noisy measurements. We formulate the above problem as a non-linear binary program (NLBP) and show that it can be approximated by a genetic algorithm. Finally, to study the effectiveness and performance of the proposed approach we have conducted extensive simulation experiments.
机译:在本文中,我们调查了一组移动代理的联合搜索和跟踪多个移动目标的问题。目标出现并在监视区域内随机消失,它们的位置是随机的和未知的。该试剂具有有限的感测范围,并从目标中接受噪声测量。出现了决策和控制问题,其中必须确定操作模式(即搜索或追踪)以及每个代理的移动性控制操作,必须确定,以便实现搜索和跟踪的集体目标。我们在随机有限套(RFS)理论上建立我们的方法,我们使用贝叶斯多对象随机滤波来同时估计从一系列噪声测量中的时变数量的目标和状态。我们将上述问题作为非线性二进制程序(NLBP)制定,并显示它可以通过遗传算法近似。最后,研究所提出的方法的有效性和性能,我们进行了广泛的模拟实验。

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