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Computationally efficient tracking of multiple targets by probabilistic data association using neural networks

机译:使用神经网络通过概率数据关联以计算方式高效地跟踪多个目标

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The joint probabilistic data association (JPDA) algorithm previously reported by T.E. Fortmann et al. (1983) for tracking multiple targets in the presence of clutter has the drawback that its complexity increases rapidly with the number of targets and returns. An approximation of the JPDA is suggested that solves this problem by using an analog computational network to solve the data association problem. The problem is viewed as that of optimizing a suitably chosen objective function. Simple neural-network structures for the approximate minimization of such functions have been proposed by other researchers. The analog network used here offers a significant degree of parallelism and thus can compute the association probabilities more rapidly. Computer simulations indicate the ability of the algorithm to track many targets simultaneously in the presence of moderate density clutter.
机译:T.E.先前报告的联合概率数据关联(JPDA)算法。 Fortmann等。 (1983)在有杂波的情况下跟踪多个目标的缺点是随着目标数量和收益的增加,它的复杂性迅速增加。建议使用JPDA的近似值,该近似值可以通过使用模拟计算网络来解决数据关联问题来解决此问题。该问题被认为是该优化适当选择的目标函数。其他研究者已经提出了用于使这些功能近似最小化的简单神经网络结构。此处使用的模拟网络提供了很高的并行度,因此可以更快地计算关联概率。计算机仿真表明,在存在中等密度杂波的情况下,该算法能够同时跟踪许多目标。

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