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Unscented Particle Filter Algorithm Based on Divide-and-Conquer Sampling for Target Tracking

机译:基于划分的粒子滤波器算法基于分割和征服目标跟踪的抽样

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摘要

Unscented particle filter (UPF) struggles to completely cover the target state space when handling the maneuvering target tracing problem, and the tracking performance can be affected by the low sample diversity and algorithm redundancy. In order to solve this problem, the method of divide-and-conquer sampling is applied to the UPF tracking algorithm. By decomposing the state space, the descending dimension processing of the target maneuver is realized. When dealing with the maneuvering target, particles are sampled separately in each subspace, which directly prevents particles from degeneracy. Experiments and a comparative analysis were carried out to comprehensively analyze the performance of the divide-and-conquer sampling unscented particle filter (DCS-UPF). The simulation result demonstrates that the proposed algorithm can improve the diversity of particles and obtain higher tracking accuracy in less time than the particle swarm algorithm and intelligent adaptive filtering algorithm. This algorithm can be used in complex maneuvering conditions.
机译:在处理机动目标追踪问题时,无需粒子滤波器(UPF)努力完全覆盖目标状态空间,并且跟踪性能可能受到低样本分集和算法冗余的影响。为了解决这个问题,将分割和征服采样的方法应用于UPF跟踪算法。通过分解状态空间,实现了目标操纵的下行尺寸处理。当处理操纵靶标时,颗粒在每个子空间中分别进行采样,直接防止粒子退化。进行实验和比较分析以综合分析除征收除粒子过滤器(DCS-UPF)的分裂和征服的性能。仿真结果表明,所提出的算法可以提高粒子的分集,并在比粒子群算法和智能自适应过滤算法的时间内更少的时间内获得更高的跟踪精度。该算法可用于复杂的操纵条件。

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