一种快速有效的无源传感器跟踪数据关联方法

Changning Tong, Yue-Song Lin, Yun-fei Guo, Y. Zuo
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引用次数: 0

摘要

数据关联是多传感器多目标跟踪的关键和难点问题之一。经典的多维分配算法通常采用拉格朗日松弛算法来解决无源传感器在杂波、虚警等情况下获取的角度数据的关联问题。子梯度用于拉格朗日乘子的更新,但经典算法需要在每次迭代时最小化所有子问题才能求解对偶解。这导致计算时间长,实时性差。针对这一问题,本文提出了一种基于拉格朗日松弛算法的改进数据关联算法。它使用代理修改的子梯度来更新拉格朗日乘法器。仿真结果表明,与经典算法相比,新算法的计算时间更短,关联精度更高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Fast and Efficient Data Association of Passive Sensor Tracking
Data association is one of the key and difficult problems for multisensor-multitarget tracking. The classic multidimensional assignment algorithm often uses Lagrange relaxation algorithm to solve association problem with the angle only data obtained by passive sensors in presence of clutter, false alarm condition. The sub gradient is applied to update the Lagrange multipliers, but it needs to minimize all the sub problems at every iterative time to solve the dual solution in the classic algorithm. This leads to long compute time and bad real-time performance. Aimed at the problem, an improved data association algorithm based on the Lagrange relaxation algorithm is introduced in this paper. It uses the surrogate modified sub gradient to update the Lagrange multipliers. Compared with the classical algorithm, new algorithm has less compute time and higher association accuracy via simulation.
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