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A Particle Filter Track-before-detect Algorithm for Multi-Radar System

机译:一种多雷达系统的粒子滤波先验跟踪算法

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摘要

Current particle filter track-before-detect (PF-TBD) algorithms assume a single sensor system and a target being contained within the sensor detection coverage. In this paper, we develop PF-TBD for multiple asynchronous radar system. The radars in this system have different detection coverage, thus a target may move across the detection coverage of different radars (i.e. the target is not contained within the common detection coverage). For detecting dim target in this multi-radar system, a novel algorithm called classification PF-TBD (CPF-TBD) is proposed. It uses a classification criterion to divide the particles into two parts. This criterion is designed based on the detection coverage and the sampling rates of radars. According to the criterion, one part of the particles is used to estimate the target state, and the other part is used to preserve adequate particles in all radar detection coverage, which is conducive for next stage calculation. With this approach, the dim target can be centrally detected and tracked using all of the data, which is collected from asynchronous radars with different detection coverage. Simulation results show that CPF-TBD is able to produce higher accuracy compared with conventional PF-TBD.
机译:当前的粒子过滤器检测前跟踪(PF-TBD)算法假定单个传感器系统和目标包含在传感器检测范围内。在本文中,我们开发了用于多异步雷达系统的PF-TBD。该系统中的雷达具有不同的检测范围,因此目标可能会跨越不同雷达的检测范围(即目标不包含在公共检测范围内)。为了在这种多雷达系统中检测昏暗目标,提出了一种称为分类PF-TBD(CPF-TBD)的新算法。它使用分类标准将粒子分为两部分。该标准是根据雷达的探测范围和采样率设计的。根据该准则,粒子的一部分用于估计目标状态,另一部分用于在所有雷达检测范围内保留足够的粒子,这有助于进行下一步计算。通过这种方法,可以使用从具有不同检测范围的异步雷达收集的所有数据集中检测和跟踪暗淡目标。仿真结果表明,与传统的PF-TBD相比,CPF-TBD能够产生更高的精度。

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