多目标跟踪模糊数据关联算法性能评价

S. Ermin, N. Sundararajan, P. Saratchandran
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引用次数: 2

摘要

本文介绍了一种新的多目标跟踪模糊数据关联算法与联合概率数据关联算法的性能比较。该方案首先构造了一个模糊逻辑多模型算法。它使用不同的目标模型,如恒定速度,恒定加速度等来描述系统的所有状态。对每个模型建立一个卡尔曼滤波来估计它们的状态。最终状态估计是用模糊推理对模型条件估计的加权平均。在此基础上,在构造了相应规则集的基础上,提出了一种利用全状态、先验知识和经验的模糊数据关联算法。仿真场景考虑了模糊算法和JPDA算法在二维环境下对两个和四个目标的跟踪。在仿真结果的基础上,分析了两种方法的优缺点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance evaluation of a fuzzy data association algorithm for multitarget tracking (MTT)
In this paper, a performance comparison of a recently developed fuzzy data association algorithm for multitarget tracking (MTT) with the well known joint probabilistic data association (JPDA) algorithm is presented. In this scheme, a fuzzy logic multiple models algorithm is constructed first. It uses different target models like constant velocity, constant acceleration etc. to describe all the states of the system. A Kalman filter is set up for each model to estimate their states. The final state estimate is a weighted average of the model conditioned estimates with the fuzzy reasoning. Based on this algorithm and after constructing the corresponding rule set, a fuzzy data association algorithm is developed, which uses full states, prior knowledge and experience. The simulation scenario considers both the fuzzy and JPDA algorithms for tracking two and four targets in a two dimensional setting. Based on the simulation results, the advantages and disadvantages of both the approaches for MTT are presented.
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