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Seamless Tracking of Apparent Point and Extended Targets Using Gaussian Process PMHT

机译:使用高斯过程PMHT无缝跟踪视点和扩展目标

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In practical target tracking scenarios, targets of different sizes (or extents) may be near or far away from the sensor, which may result in targets appearing as point sources or as extended targets spanning one or more resolution cells, respectively, depending on distance and sensor resolution. In this paper, a new Gaussian Process (GP) measurement model is proposed to explicitly describe the observation about each basis point of GP by an individual dynamic Poisson measurement rate. By employing this model, a novel algorithm to track multiple point targets and extended targets, simultaneously and seamlessly, in the presence of clutter and missed detections is proposed within the Probabilistic Multi-Hypothesis Tracker (PMHT) framework. The proposed algorithm can adapt to spatio-temporally varying target sizes or extents of extended targets and temporally varying target cardinality. In addition, the posterior Cramer-Rao lower bound (PCRLB) for extended targets, which quantifies the accuracies of estimates of multiple extended target states in scenarios with clutter, is derived. Simulations with a scenario consisting of multiple extended targets and point targets are used to verify the effectiveness of the proposed algorithm and to compare its performance with the extended target PCRLB and with those of existing extended target tracking algorithms.
机译:在实际的目标跟踪场景中,不同大小(或范围)的目标可能会接近或远离传感器,这可能会导致目标显示为点源或扩展目标,分别取决于一个或多个分辨率单元,具体取决于距离和距离传感器分辨率。本文提出了一种新的高斯过程(GP)测量模型,以通过单独的动态泊松测量速率来明确描述关于GP的每个基点的观测结果。通过使用此模型,在概率多假设跟踪器(PMHT)框架内,提出了一种新颖的算法,可在出现混乱和漏检的情况下同时无缝地跟踪多个点目标和扩展目标。所提出的算法可以适应时空变化的目标大小或扩展目标的范围以及时变的目标基数。此外,推导了扩展目标的后Cramer-Rao下界(PCRLB),它量化了在混乱情况下多个扩展目标状态的估计精度。使用由多个扩展目标和点目标组成的场景进行的仿真用于验证所提出算法的有效性,并将其性能与扩展目标PCRLB和现有扩展目标跟踪算法的性能进行比较。

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