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A Novel Adaptive Tracking Algorithm for Maneuvering Targets Based on Information Fusion by Neural Network

机译:基于神经网络信息融合的机动目标自适应跟踪算法

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The current statistical model and adaptive filtering (CSMAF) algorithm is one of the most effective methods for tracking the maneuvering targets. However, it is still worthy to investigate the characteristics of the CSMAF algorithm, which has a higher precision in tracking the maneuvering targets with larger accelerations while it has a lower precision in tracking the maneuvering targets with smaller acceleration. In this paper a novel adaptive tracking algorithm for maneuvering targets is proposed. To overcome the disadvantage of the CSMAF algorithm, a simple multi-layer feedforward neural network (NN) is used. By introducing NN, two sources of information of the filter are fused while its output adjusts the covariance process noise. Simulation results show that the proposed scheme can improve the precision of the CSMAF algorithm significantly. Moreover, it exhibits much better performance in estimating the position, velocity and acceleration of a target in a wide range of maneuvers.
机译:当前的统计模型和自适应滤波(CSMAF)算法是跟踪机动目标的最有效方法之一。然而,研究CSMAF算法的特征仍然值得高,在跟踪具有较大加速度的机动目标时具有更高的精度,而在跟踪具有较小加速度的机动目标时具有较低的精度。本文提出了一种用于操纵目标的新型自适应跟踪算法。为了克服CSMAF算法的缺点,使用简单的多层前馈神经网络(NN)。通过介绍NN,滤波器的两个信息源在其输出调整协方差过程噪声时融合。仿真结果表明,该方案可以显着提高CSMAF算法的精度。此外,它在估计各种机动中目标的位置,速度和加速度方面表现出更好的性能。

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