Target tracking by neural network maneuver detection and input estimation

F. Amoozegar, S. Sadati
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引用次数: 7

Abstract

Although the Kalman filter is a powerful linear estimator for a continuous random process, it may fail to converge in the presence of sharp measurement discontinuities which may be caused by clutter or sudden target maneuvers. On the other hand, conventional models for the detection and compensation of target maneuvers are primarily based on a linear mapping of the innovation process onto an artificial noise process which is used to further adjust the covariance matrices of the Kalman filter. The nonlinear mapping capabilities of trained neural networks are employed to generate an estimate of the input noise through parallel processing of the Doppler information, the innovation process, and heading change estimate of a maneuvering target in clutter. It is shown that a neural network in conjunction with the Kalman filter can better resolve the bias caused by target maneuvers.
基于神经网络机动检测和输入估计的目标跟踪
对于连续随机过程,卡尔曼滤波器是一种强大的线性估计器,但在杂波或突然目标机动引起的测量不连续情况下,卡尔曼滤波器可能无法收敛。另一方面,传统的目标机动检测和补偿模型主要是基于创新过程到人工噪声过程的线性映射,该过程用于进一步调整卡尔曼滤波器的协方差矩阵。利用训练后的神经网络的非线性映射能力,对杂波条件下机动目标的多普勒信息、创新过程和航向变化估计进行并行处理,产生输入噪声估计。结果表明,结合卡尔曼滤波的神经网络能较好地解决目标机动引起的偏差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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