A Novel Clustering Algorithm for Faster Passive Sensor Measurement Association

Hari Sankar Rokkam
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引用次数: 1

Abstract

This paper proposes a novel clustering algorithm for static passive sensor measurement association. The algorithm clusters line of sight (LOS) measurements based on the valid solutions of pairwise triangulation between measurements of different sensors. Each valid triangulation solution will give a range value along the LOS as possible target location. Clusters are formed based on the pairwise distance between these range values. The criteria for the validity of a triangulation solution and cluster formation depend on the measurement noise of sensors and geometry of possible target and sensor locations. Intensity of space intersection and association cost of each cluster are used to select association solutions among available clusters. Several algorithms for passive sensor measurement association exist in literature like S-D assignment, Seq(2-D), $\mathrm{S}_{o}-\mathrm{D}+\text{Seq}(2-\mathrm{D})$ and algorithms based on intensity of space intersection, however, they are still cumbersome to be implemented in real time. An effort has been made through this novel algorithm to reduce computation time for a feasible real time implementation.
一种新的无源传感器快速测量关联聚类算法
提出了一种新的静态无源传感器测量关联聚类算法。该算法基于不同传感器测量值之间的成对三角剖分的有效解对视距测量值进行聚类。每个有效的三角测量解决方案将沿着LOS给出一个范围值,作为可能的目标位置。聚类是基于这些范围值之间的成对距离形成的。三角解和聚类形成的有效性准则取决于传感器的测量噪声以及可能目标和传感器位置的几何形状。利用空间相交强度和各聚类的关联代价在可用聚类之间选择关联解。文献中存在S-D赋值、Seq(2-D)、$\mathrm{S}_{o}-\mathrm{D}+\text{Seq}(2-\mathrm{D})$等几种无源传感器测量关联算法和基于空间交点强度的算法,但这些算法在实时实现中仍然比较繁琐。通过这种新颖的算法,减少了计算时间,实现了一种可行的实时实现。
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