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Multi-object tracking with multiple birth, death, and spawn scenarios using a randomized hypothesis generation technique (RFISST)

机译:使用随机假设生成技术(RFISST)对多个出生,死亡和产卵场景进行多对象跟踪

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In multi-object tracking one may encounter situations were at any time step the number of possible hypotheses is too large to generate exhaustively. These situations generally occur when there are multiple ambiguous measurement returns that can be associated to many objects. This paper contains a newly developed approach that keeps the aforementioned situations computationally tractable. Utilizing a hypothesis level derivation of the Finite Set Statistics (FISST) Bayesian recursions for multi-object tracking we are able to propose a randomized method called randomized FISST (R-FISST). Like our previous methods [1], [2], this approach utilizes Markov Chain Monte Carlo (MCMC) methods to sample highly probable hypotheses, however, the newly developed (R-FISST) can account for hypotheses containing multiple births and death within the MCMC sampling. This alleviates the burden of having to exhaustively enumerate all birth and death hypotheses and makes the method more equipped to handle spawn scenarios. We test our method on Space Situational Awareness (SSA) scenarios with spawn events.
机译:在多目标跟踪中,可能遇到的情况是,在任何时间步长,可能的假设的数量太大而无法穷举。这些情况通常发生在有可能与许多对象相关联的多个不明确的测量返回值时。本文包含一种新开发的方法,可以使上述情况在计算上易于处理。利用有限集统计(FISST)贝叶斯递归的假设水平推导进行多目标跟踪,我们能够提出一种称为随机FISST(R-FISST)的随机方法。像我们之前的方法[1],[2]一样,该方法利用马尔可夫链蒙特卡罗(MCMC)方法对高度可能的假设进行抽样,但是,新近开发的(R-FISST)可以解释包含多个出生和死亡的假设。 MCMC采样。这减轻了必须详尽枚举所有生死假设的负担,并使该方法更适合处理产卵情况。我们在产生事件的空间状况感知(SSA)场景中测试了我们的方法。

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