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Image tracking using a scale function-based nonlinear estimation algorithm

机译:基于比例函数的非线性估计算法的图像跟踪

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A refined version of a nonlinear estimation algorithm for tracking extended targets using imaging array data is presented. The algorithm is applied to a situation in which there is no closed-form functional representation for the image of the target. Based on the reduced sufficient statistic method of R Kulhavy, the algorithm recursively propagates, in a Bayes-closed sense, a set of sufficient statistics which approximate the true posterior density of the target parameter vector. The approximation is based on minimizing the Kullback-Leibler distance between the true posterior density and the approximating density. In previous work this density was a Gaussian mixture, while here scale functions are used to approximate the posterior density from which an approximate minimum variance estimate can be calculated. As the tracking progresses the posterior density is estimated on an increasingly finer scale. In order to reduce the number of scale functions, however, a pruning process is necessary. In this way, the number of scale functions approximating the density increases in areas for which the true density is significant while scale functions which approximate the density over regions where it is insignificant are ignored. Results are presented for simulations carried out in which the algorithm is applied to tracking an aircraft based on a sequence of synthetic images.
机译:用于跟踪使用成像阵列数据扩展目标的非线性估算算法的改良版本被呈现。该算法被应用到其中存在所述目标的图像没有闭合形式功能表示的情况。基于R Kulhavy,算法递归地传播,在贝叶斯封闭感,一组充分统计量近似于目标参数向量的真实后验密度的降低的足够的统计方法。该近似基于最小化的真实后验密度和近似密度之间的的Kullback-Leibler距离。在以前的工作此密度为高斯混合,而在这里比例函数来逼近从中可以计算近似的最小方差估计的后验密度。作为跟踪进展后密度估计上越来越细的规模。为了减少的比例函数的数量,然而,一个修剪过程是必要的。通过这种方式,规模接近的功能区中的密度增加的数量,其真密度而大规模的功能近似于在区域的密度它是微不足道的被忽略是显著。结果表示为进行模拟,其中所述算法被应用于跟踪基于合成图像的序列的飞行器。

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