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Maneuvering target tracking with improved unbiased FIR filter

机译:带有改进的无偏FIR滤波器的机动目标跟踪

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In the field of maneuvering target tracking, the performance of Kalman filter and its improved algorithms depends on the accuracy of pre-designed process noise statistics. When the pre-designed process noise statistics do not match with the actual situation, it will be difficult to obtain a good filtering performance. But unbiased finite impulse response (UFIR) filter does not need the prior knowledge of process noise statistics. Furthermore, the iterative UFIR filter decreases the calculation of UFIR filter greatly. So this paper applies UFIR filter to the maneuvering target tracking. Then considering the generalized noise power gain (GNPG) of existing UFIR filer cannot change when linear models are fixed, an improved UFIR filer is proposed, which can dynamically adjust GNPG during filtering. The simulation results illustrates that the Kalman filter is optimal under linear minimum mean square error (LMMSE) criterion when process noise statistics is certain. But when process noise statistics is unknown, UFIR filter shows more robustness than Kalman filter and our improved UFIR filter has an even better filter performance.
机译:在机动目标跟踪领域,卡尔曼滤波器及其改进算法的性能取决于预先设计的过程噪声统计的准确性。当预先设计的过程噪声统计与实际情况不符时,将很难获得良好的滤波性能。但是无偏有限冲激响应(UFIR)滤波器不需要过程噪声统计信息的先验知识。此外,迭代UFIR滤波器大大减少了UFIR滤波器的计算。因此本文将UFIR滤波器应用于机动目标跟踪。然后考虑到固定线性模型时现有UFIR滤波器的通用噪声功率增益(GNPG)不能改变,提出了一种改进的UFIR滤波器,可以在滤波过程中动态调整GNPG。仿真结果表明,当确定过程噪声统计量时,卡尔曼滤波器在线性最小均方误差(LMMSE)准则下是最优的。但是当未知过程噪声统计信息时,UFIR滤波器比Kalman滤波器显示出更高的鲁棒性,而我们改进后的UFIR滤波器具有更好的滤波器性能。

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