一种混合GM/SMC实现的概率假设密度滤波器

Y. Petetin, F. Desbouvries
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引用次数: 8

摘要

概率假设密度(PHD)滤波器是一种针对多目标环境下未知目标跟踪的新方法。PHD滤波器不能精确计算,但流行的实现包括高斯混合(GM)和基于顺序蒙特卡罗(SMC)的算法。GM实现遭受修剪和合并近似,但能够轻松提取状态;另一方面,如果离散近似是相关的,则SMC实现是有意义的,但由于难以将粒子引导到有希望的区域和提取状态而受到惩罚。在本文中,我们提出了一种混合GM/SMC实现的PHD滤波器,它不会受到上述缺点的影响。由于SMC部分,我们的算法可以用于无法实现GM的模型;但它也受益于转基因技术的简单状态提取,不需要修剪或合并近似。仿真结果验证了算法的有效性。
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A mixed GM/SMC implementation of the probability hypothesis density filter
The Probability Hypothesis Density (PHD) filter is a recent solution for tracking an unknown number of targets in a multi-object environment. The PHD filter cannot be computed exactly, but popular implementations include Gaussian Mixture (GM) and Sequential Monte Carlo (SMC) based algorithms. GM implementations suffer from pruning and merging approximations, but enable to extract the states easily; on the other hand, SMC implementations are of interest if the discrete approximation is relevant, but are penalized by the difficulty to guide particles towards promising regions and to extract the states. In this paper, we propose a mixed GM/SMC implementation of the PHD filter which does not suffer from the above mentioned drawbacks. Due to the SMC part, our algorithm can be used in models where the GM implementation is unavailable; but it also benefits from the easy state extraction of GM techniques, without requiring pruning or merging approximations. Our algorithm is validated on simulations.
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