Comparing a Kalman Filter and a Particle Filter in a Multiple Objects Tracking Application

M. Marrón, J.C. Garcia, M. Sotelo, M. Cabello, D. Pizarro, F. Huerta, J. Cerro
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引用次数: 28

Abstract

Two of the most important solutions in position estimation are compared, in this paper, in order to test their efficiency in a multi-tracking application in an unstructured and complex environment. A particle filter is extended and adapted with a clustering process in order to track a variable number of objects. The other approach is to use a Kalman filter with an association algorithm for each of the objects to track. Both algorithms are described in the paper and the results obtained with their real-time execution in the mentioned application are shown. Finally interesting conclusions extracted from this comparison are remarked at the end.
卡尔曼滤波与粒子滤波在多目标跟踪中的比较
本文比较了两种最重要的位置估计方法,以测试它们在非结构化和复杂环境下的多跟踪应用中的效率。为了跟踪可变数量的目标,对粒子滤波器进行了扩展,并采用了聚类过程。另一种方法是对每个要跟踪的对象使用带有关联算法的卡尔曼滤波器。本文描述了这两种算法,并给出了在上述应用中实时执行的结果。最后,从这一比较中得出了一些有趣的结论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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