Smart target tracking using sensor scheduling and particle filter

B. Liu, Xiaochuan Ma, C. Hou
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引用次数: 2

Abstract

This paper addresses the problem of tracking a ldquosmartrdquo target, wherein the issue of the observerpsilas concealment against the target should be taken into account, as a smart target is able to detect when it is under surveillance and react in a manner that makes future surveillance more difficult. This work proposes a sensor scheduling strategy (SSS), which balances the tracking performance and the concealing quality of the observer. This SSS uses an approach known as covariance control, to reduce the use of the active sensor whilst guaranteeing the estimation accuracy. A robust unscented particle filtering (UPF) method is utilized to deal with the nonlinear and non-Gaussian problem. Meanwhile, a Rao-Blackwellised technique is adopted to improve the estimation performance and reduce the computational burdens. Results based on experiments with synthetic data are reported.
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基于传感器调度和粒子滤波的智能目标跟踪
本文解决了跟踪智能目标的问题,其中应该考虑到观察者对目标的隐藏问题,因为智能目标能够在监视时检测到它并以一种使未来监视更加困难的方式做出反应。本文提出了一种传感器调度策略(SSS),以平衡跟踪性能和观测器的隐藏质量。这种SSS使用一种称为协方差控制的方法,以减少主动传感器的使用,同时保证估计精度。采用鲁棒无气味粒子滤波(UPF)方法处理非线性非高斯问题。同时,采用rao - blackwell技术提高了估计性能,减少了计算量。本文报道了基于合成数据的实验结果。
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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