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Multi-target joint detection, tracking and classification with merged measurements using generalized labeled multi-Bernoulli filter

机译:使用广义标记的多伯努利滤波器进行合并测量的多目标关节检测,跟踪和分类

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In real world multiple extended target tracking problems, the presence of merged measurements is a frequently occurring phenomenon, however, most existing tracking algorithms in the literature assume that each target generates independent measurements. When this measurement merging phenomenon occurs, it increases the computational complexity of the tracking algorithms. Recently, the conditional joint decision and estimation (CJDE) algorithm based on the generalized Bayes risk was proposed to solve problems of joint detection, tracking and classification (JDTC) of targets. In this paper, we develop a principled Bayesian solution to the important problem involving inter-dependent decision and estimation conditioned on data based on the theory of random finite sets (RFS), and a tractable implementation based on the recently proposed generalized labeled multi-Bernoulli (GLMB) filter. The performance of the proposed technique is demonstrated by simulation of a multi-target bearings-only tracking scenario, where measurements become merged due to finite resolution effects.
机译:在现实世界中,多个扩展的目标跟踪问题中,合并测量的存在是一种经常发生的现象,但是,文献中大多数现有的跟踪算法都假定每个目标都生成独立的测量。当发生这种测量合并现象时,它会增加跟踪算法的计算复杂性。近年来,提出了一种基于广义贝叶斯风险的条件联合决策与估计(CJDE)算法,以解决目标的联合检测,跟踪和分类(JDTC)问题。在本文中,我们基于随机有限集(RFS)理论,针对涉及数据的相互依赖的决策和估计的重要问题,开发了一种有原则的贝叶斯解决方案,并基于最近提出的广义标记多伯努利(Bernoulli)提出了一种易于实现的解决方案(GLMB)过滤器。通过模拟多目标纯方位跟踪情况证明了所提出技术的性能,在这种情况下,由于有限的分辨率效应,测量结果合并了。

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