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Extended object tracking with unknown association, missing observations, and clutter using particle filters

机译:使用粒子过滤器进行未知对象关联,缺少观测值和混乱情况的扩展对象跟踪

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摘要

A new method for target tracking of multiple points on an object by using particle filter with its novel importance function is proposed. The assumptions are such that the number of points is fixed and known, and the association between points of object and observed points are unknown. There exists missing and clutter in observation process where which observation corresponds to them are also unknown. The main difficulty of this problem is the formidable number of combinations in the association. The novel importance function using an idea of soft gating makes the problem tractable in a proper framework of particle filter. Simulation experiment illustrates the performance of the method.
机译:提出了一种具有新颖重要性函数的粒子滤波目标跟踪多点目标的新方法。这样的假设是,点的数量是固定的并且是已知的,并且对象的点与观察到的点之间的关联是未知的。在观察过程中存在缺失和混乱,其中与它们相对应的观察也是未知的。这个问题的主要困难是关联中组合的数量庞大。使用软门控思想的新颖重要性函数使该问题在适当的粒子过滤器框架下可以解决。仿真实验说明了该方法的性能。

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