一种新的运动模型和跟踪算法

Dang Jianwu, H. Jianguo
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引用次数: 4

摘要

提出了一种新的机动目标跟踪运动模型和自适应算法,该模型将机动目标的加速度视为一个均值非零的时间相关随机过程,并采用高斯分布假设加速度的概率密度。分布函数的均值是当前目标加速度的最优估计值,其方差与当前目标加速度最优估计值的微分系数的平方成正比。蒙特卡罗仿真结果表明,无论目标以何种形式运动,本文提出的模型和自适应算法都能较好地估计目标的位置、速度和加速度,且计算量少。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A novel motion model and tracking algorithm
A novel motion model and adaptive algorithm for tracking maneuvering target are proposed, in which the acceleration of maneuvering targets is considered as a time-correlation random process with non-zero mean values and the probability density of the acceleration is assumed by Gaussian distribution. The mean value of the distribution function is the optimal estimation of the target acceleration at present and its variance is directly proportional to the square of the differential coefficient of the optimal estimations of the target acceleration at present. The Monte Carlo simulation results show that the model and adaptive algorithm proposed in this paper can estimate the position, velocity and acceleration of a target well and requires less computation than the others, no matter what the target is maneuvering at any form.
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