异构传感器的多传感器-多目标数据关联算法

S. Deb, K. Pattipati, Y. Bar-Shalom
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引用次数: 80

摘要

本文提出了一种算法来解决从三个空间分布的异构传感器中关联数据的静态问题,每个传感器同时具有一组检测。传感器可以是主动的(3D或2D雷达)或被动的(EO传感器测量源的方位角和仰角)。检测的源可以是一个真实的目标,在这种情况下,测量是目标的真实观测变量加上测量噪声,或者是一个虚假的目标,即虚警。此外,传感器可能具有非统一检测概率。问题是将来自传感器的测量结果联系起来,以识别“真实”目标,并获得它们的位置估计。在数学上,这种(静态)测量-目标关联问题导致广义的三维(3-D)匹配问题,这被称为NP-hard。在本文中,我们提出了一种快速的、接近最优的三维匹配算法,适用于实时应用中密集集群中大量目标(50)的位置估计。给出了算法求解的几个代表性测试用例的性能结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Multisensor-Multitarget Data Association Algorithm for Heterogeneous Sensors
In this paper we present an algorithm to solve the static problem of associating data from three spatially distributed heterogeneous sensors, each with a set of detections at the same time. The sensors could be active (3D or 2D radars) or passive (EO sensors measuring the azimuth and elevation angles of the source). The source of a detection can be either a real target, in which case the measurement is the true observation variable of the target plus measurement noise, or a spurious one, i.e., a false alarm. In addition, the sensors may have nonunity detection probabilities. The problem is to associate the measurements from the sensors to identify the "real" targets, and to obtain their position estimates. Mathematically, this (static) measurement-target association problem leads to a generalized three-dimensional (3-D) matching problem, which is known to be NP-hard. In this paper, we present a fast, but near-optimal 3-D matching algorithm suited for estimating the positions of a large number of targets (≫50) in a dense cluster for real-time applications. Performance results on several representative test cases solved by the algorithm are presented.
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