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首页> 外文期刊>Aerospace and Electronic Systems, IEEE Transactions on >Performance prediction of feature-aided track-to-track association
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Performance prediction of feature-aided track-to-track association

机译:特征辅助轨迹间关联的性能预测

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摘要

This paper describes analytic and semianalytic methods for predicting performance of track-to-track association, in terms of correct association probability, by an optimal assignment algorithm. The focus of this paper is to quantify how much feature or attribute information may improve association performance over the standard kinematic-only track-to-track association. Our goal is to obtain an analytical formula to predict the association performance as a function of a set of key parameters that quantify the quality of feature information. The result extends our previous development of an exponential law for predicting association performance, by including the effects of the additional generally non-Gaussian feature or attribute information.
机译:本文介绍了一种解析和半解析方法,通过一种最佳分配算法,可以根据正确的关联概率来预测轨道间的关联性能。本文的重点是量化与标准的仅运动轨迹之间的关联相比,多少特征或属性信息可以提高关联性能。我们的目标是获得一个分析公式,以根据一组量化特征信息质量的关键参数来预测关联性能。结果包括了附加的一般非高斯特征或属性信息的影响,从而扩展了我们先前用于预测关联性能的指数定律的开发。

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