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首页> 外文期刊>IEEE Transactions on Aerospace and Electronic Systems >Particle filters for tracking with out-of-sequence measurements
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Particle filters for tracking with out-of-sequence measurements

机译:粒子过滤器可用于乱序测量

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摘要

An extension is presented to the particle filtering toolbox that enables nonlinearon-Gaussian filtering to be performed in the presence of out-of-sequence measurements (OOSMs) with arbitrary lag, without the need to adopt linearising approximations in the filter and without the degradation of performance that would occur if the OOSMs were simply discarded. An estimate of the performance of the OOSM particle filter (OOSM-PF) is obtained for bearings-only tracking scenarios with a single target and a small number of sensors. These performance estimates are then compared with the posterior Cramer-Rao lower bound (CRLB) for the state estimate rms error and similar performance estimates obtained from the oosm extended Kalman filter (OOSM-EKF) algorithms recently introduced in the literature. For a mildly nonlinear bearings-only tracking problem the OOSM-PF and OOSM-EKF are shown to achieve broadly similar performance.
机译:扩展了对粒子滤波工具箱的支持,该扩展使得能够在具有任意滞后的失序测量(OOSM)的情况下执行非线性/非高斯滤波,而无需在滤波器中采用线性化近似,并且无需如果仅丢弃OOSM,将会降低性能。对于仅具有单个目标和少量传感器的仅轴承跟踪方案,可以获得OOSM粒子滤波器(OOSM-PF)的性能估计。然后,将这些性能估计值与后Cramer-Rao下界(CRLB)进行状态估计均方根误差,并从最近在文献中引入的oosm扩展卡尔曼滤波器(OOSM-EKF)算法获得的类似性能估计值进行比较。对于轻度非线性的仅轴承跟踪问题,OOSM-PF和OOSM-EKF表现出大致相似的性能。

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