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Improved Gaussian mixture probability hypothesis density smoother

机译:改进的高斯混合概率假设密度更平滑

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摘要

The Gaussian mixture probability hypothesis density (GM-PHD) smoother proposed recently is a closed-form solution to the forward-backward PHD smoother for the linear Gaussian model, it can yield better state estimates than the GM-PHD filter. However, for the standard GM-PHD smoother, when one or more targets disappear during forward filtering, the smoothed PHD will be adjusted improperly in the backward smoothing, thus leading to a target number misestimation problem. In this paper, an improved GM-PHD smoother is proposed to solve such a problem, in which a modified backward corrector is used to adjust the smoothed PHD. Simulated results show that the improved GM-PHD smoother is superior to the standard GM-PHD smoother in both the aspects of target state estimate and target number estimate so that this improved GM-PHD smoother will have an applicable potential in related fields.
机译:最近提出的高斯混合概率假设密度(GM-PHD)平滑器是线性高斯模型的前向-后向PHD平滑器的封闭形式解决方案,它可以提供比GM-PHD滤波器更好的状态估计。但是,对于标准GM-PHD平滑器,当一个或多个目标在前向滤波过程中消失时,平滑的PHD在向后平滑中将被不适当地调整,从而导致目标数估计错误。本文提出了一种改进的GM-PHD平滑器来解决这一问题,其中使用改进的后向校正器来调整平滑的PHD。仿真结果表明,改进的GM-PHD平滑器在目标状态估计和目标数量估计方面均优于标准GM-PHD平滑器,因此该改进的GM-PHD平滑器将在相关领域具有应用潜力。

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