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The derivation of multiple extended object intensity filter based on nonhomogenous poisson process

机译:基于非齐次泊松过程的多重扩展目标强度滤波器的推导

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Most of traditional multiple target tracking algorithms depend on the fundamental assumption that one target at most produces one measurement at each time. However, this assumption is not yet appropriate for the current multiple target tracking scenes due to the high resolution capabilities of modern sensors. Several measurements can be generated by one target at the same time because of the high resolution capabilities. Under these circumstances it is more reasonable to treat the multiple target tracking as the multiple extended object tracking. The multiple extended object intensity filter is derived based on nonhomogenous Poisson process. The whole derivation is done in the framework of Bayesian theory. The multiple extended-object intensity filter consists of intensity predicting step and intensity updating step. The intensity predictor is exactly derived by Markov transformation of target state. The intensity connector is approximately done by marginal probability density, under the assumption that the observation process of extended object is a nonhomogenous Poisson process. The derived intensity filter provides an alternative to estimate the multiple extended-object states in the form of set.
机译:大多数传统的多目标跟踪算法都依赖于以下基本假设:一个目标每次最多只能产生一个测量值。然而,由于现代传感器的高分辨率能力,该假设还不适用于当前的多个目标跟踪场景。由于具有高分辨率功能,一个目标可以同时生成多个测量值。在这些情况下,将多目标跟踪视为多扩展对象跟踪更为合理。基于非均匀泊松过程推导了多个扩展对象强度滤波器。整个推导是在贝叶斯理论的框架内完成的。多个扩展对象强度滤波器包括强度预测步骤和强度更新步骤。强度预测值是通过目标状态的马尔可夫变换精确得出的。在假设扩展对象的观察过程是非均匀泊松过程的假设下,强度连接器大约由边际概率密度完成。派生的强度滤波器提供了一种以集合的形式估计多个扩展对象状态的方法。

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