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Joint Registration and State Estimation for Two-station Passive Tracking

机译:双站被动跟踪的联合登记和国家估算

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Registration and nonlinearity are two crucial factors affecting the performance of the two-station passive locating system. In this paper, an online joint registration and data fusion algorithm is proposed to estimate the sensor bias and target state simultaneously using the angle-only measurements from the two own ship stations. The system model of the passive radar is firstly developed followed by the expectation-maximization (EM) approach dealing with the derivation of maximum likelihood (ML) function of the complete data. The unscented Kalman filter (UKF) is chosen to alleviate the influence caused by nonlinearity generated in the measurement function. Computer simulation shows that the proposed method is effective and reliable for this specific tracking scenario.
机译:注册和非线性是影响双站被动定位系统性能的两个关键因素。在本文中,提出了一种在线联合登记和数据融合算法,以使用来自两个自己的船站的角度测量来估计传感器偏置和目标状态。首先开发了无源雷达的系统模型,然后进行了预期最大化(EM)方法,处理完整数据的最大似然(ML)函数的推导。选择未入的卡尔曼滤波器(UKF)以缓解在测量功能中产生的非线性引起的影响。计算机仿真表明,该方法对该特定跟踪方案有效可靠。

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