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Quantized genetic resampling particle filtering for vision-based ground moving target tracking

机译:基于视觉基础地面移动目标跟踪的量化遗传重采样粒子滤波

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This paper concentrates on the quantized measurements fusion problem. Because of the non-Gaussian property of quantized measurements, classical nonlinear filters become not applicable, especially when the quantization noise is large. Motivated by the above problem, we propose a novel particle-based filtering named quantized genetic resampling particle filtering (QGRPF) in order to fuse quantized measurements optimally and improve estimation accuracy. Unlike the Gaussian assumption in traditional filers, the probability density function (PDF) of sensor measurement is modeled here as a discrete PDF that consists of a series of Dirac impulses. The particle filtering is employed to estimate the state, where the posterior of the state based on quantized measurements is approximated and updated by a set of weighted particles. As the likelihood function is a multi-dimensional integral of Gaussian density, which has no analytical solution, Genz's transformation and quasi-Monte Carlo method are combined to calculate the integral numerically. By integrating genetic resampling method into the particle filtering method, the proposed method can avoid particle degeneracy, in the meantime, guarantee particle diversity. The proposed QGRPF is demonstrated with an illustrative vision-based ground moving target (GMT) tracking example. Simulation results show the proposed approach is effective in fusing quantized measurements. (C) 2020 Elsevier Masson SAS. All rights reserved.
机译:本文专注于量化测量融合问题。由于量化测量的非高斯性能,经典的非线性滤波器变得不适用,特别是当量化噪声大时。通过上述问题,我们提出了一种名为量化遗传重采样粒子滤波(QGRPF)的新型粒子的滤波,以便最佳地融合量化测量并提高估计精度。与传统滤波器中的高斯假设不同,传感器测量的概率密度函数(PDF)在此进行建模,作为由一系列DIRAC脉冲组成的离散PDF。粒子过滤用于估计基于量化测量的状态后的状态近似并通过一组加权粒子更新。随着似然函数是高斯密度的多维积分,其没有分析解决方案,结合了Genz的转化和准蒙特卡罗方法以计算数量的数量。通过将遗传重采样方法集成到颗粒滤波方法中,所提出的方法可以避免粒子退化,同时保证粒子多样性。通过说明性视觉基地移动目标(GMT)跟踪示例来证明所提出的QGRPF。仿真结果表明,所提出的方法是有效的融合量化测量。 (c)2020 Elsevier Masson SAS。版权所有。

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