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A New Motion Model Selection Approach for Multi-Model Particle Filters

机译:多模型粒子过滤器的新运动模型选择方法

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One of the important factors in real-time tracking of the moving radar targets is the speed of the algorithm. In the multi-model particle filters (MMPFs) which is frequently preferred tracking of such targets, the numbers of particles and motion models are important parameters determining the speed of the filter. Reducing the number of particles and/or the model transitions processes as much as possible will facilitate real-time tracking of moving targets by accelerating the algorithm. In this study, for reducing the time cost of the MMPF, a new approach called weighted statistical model selection (WSMS) which reduces the number of model estimation calculations is proposed. A new basic MMPF algorithm that allows the use of the WSMS approach is also constituted. In order to evaluate the success of the WSMS; the MMPFs integrated with the WSMS, are simulated for different noise variances, particle numbers, and scenarios. The simulation results are compared based on processing time and prediction error criterions. The results demonstrate that the WSMS approach increases the speed of the algorithm by reducing the processing time at high rates without any change in the prediction error and, thus it can be used in real-time tracking of the moving targets.
机译:移动雷达目标实时跟踪中的一个重要因素是算法的速度。在经常优选地跟踪这种目标的多模型粒子滤波器(MMPF)中,粒子和运动模型的数量是确定滤波器速度的重要参数。尽可能减少粒子的数量和/或模型转换过程将通过加速算法来促进移动目标的实时跟踪。在该研究中,为了减少MMPF的时间成本,提出了一种称为加权统计模型选择(WSM)的新方法,这减少了模型估计计算的数量。一种允许使用WSMS方法的新基本MMPF算法也是构成的。为了评估WSM的成功;与WSM集成的MMPF是针对不同噪声差异,粒子编号和场景的模拟。基于处理时间和预测误差标准进行比较模拟结果。结果表明,WSMS方法通过在高速率下降低处理时间而没有预测误差的任何变化,因此可以用于移动目标的实时跟踪。

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