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Neural network-based state fusion and adaptive tracking for maneuvering targets

机译:基于神经网络的状态融合和机动目标自适应跟踪

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摘要

An adaptive algorithm for tracking maneuvering targets is proposed. This algorithm is implemented with two filters and a multilayer feedforward neural network using state fusion, together with the current statistic model and adaptive filtering. The neural network fuses automatically all the state information of the two filters and tunes adaptively the system variance for one of the two filters to adapt to different target maneuvers when the two filters track the same maneuvering target in parallel. Simulation results show that the adaptive algorithm tracks very well maneuvering targets over a wide range of maneuvers with high precision, in both one and three-dimensional cases.
机译:提出了一种跟踪机动目标的自适应算法。该算法由两个滤波器和使用状态融合的多层前馈神经网络以及当前的统计模型和自适应滤波实现。当两个过滤器并行跟踪相同的操纵目标时,神经网络会自动融合两个过滤器的所有状态信息,并自适应地调整两个过滤器之一的系统方差,以适应不同的目标操纵。仿真结果表明,在一维和三维情况下,自适应算法都能在很大范围的机动中以很高的精度跟踪很好的机动目标。

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