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Improved assignment with ant colony optimization for multi-target tracking

机译:改进的蚁群优化分配功能,实现多目标跟踪

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Ankara University, Faculty of Engineering, Electronics Engineering Department, 06100 Tandogan, Ankara, Turkey;Ankara University, Faculty of Engineering, Electronics Engineering Department, 06100 Tandogan, Ankara, Turkey;%Detecting and tracking ground targets is crucial in military intelligence in battlefield surveillance. Once targets have been detected, the system used can proceed to track them where tracking can be done using Ground Moving Target Indicator (GMTI) type indicators that can observe objects moving in the area of interest. However, when targets move close to each other in formation as a convoy, then the problem of assigning measurements to targets has to be addressed first, as it is an important step in target tracking. With the increasing computational power, it became possible to use more complex association logic in tracking algorithms. Although its optimal solution can be proved to be an NP hard problem, the multidimensional assignment enjoyed a renewed interest mostly due to Lagrangian relaxation approaches to its solution. Recently, it has been reported that randomized heuristic approaches surpassed the performance of Lagrangian relaxation algorithm especially in dense problems. In this paper, impelled from the success of randomized heuristic methods, we investigate a different stochastic approach, namely, the biologically inspired ant colony optimization to solve the NP hard multidimensional assignment problem for tracking multiple ground targets.
机译:土耳其安卡拉大学工程学院电子工程系,安卡拉06100 Tandogan;土耳其安卡拉大学工程学院电子工程系,安卡拉06100 Tandogan;%地面目标的检测和跟踪对战场监视中的军事情报至关重要。一旦检测到目标,所使用的系统就可以继续跟踪它们,在其中可以使用地面移动目标指示器(GMTI)类型的指示器进行跟踪,该指示器可以观察在目标区域中移动的物体。但是,当目标作为护卫队在编队中彼此靠近时,则必须首先解决将测量分配给目标的问题,因为这是目标跟踪的重要步骤。随着计算能力的提高,在跟踪算法中使用更复杂的关联逻辑成为可能。尽管可以证明其最优解是一个NP难题,但多维分配却重新引起了人们的兴趣,这主要归功于拉格朗日松弛法的求解。最近,据报道,随机启发式方法的性能超过了拉格朗日松弛算法的性能,特别是在密集问题中。在成功启发了随机启发式方法的基础上,本文研究了一种不同的随机方法,即通过生物启发式蚁群算法来解决NP多维多维分配问题的跟踪问题。

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