Analysis of the effects of bearings-only sensors on the performance of the neural extended kalman filter tracking system

S. Stubberud, K. Kramer, J. A. Geremia
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引用次数: 3

Abstract

The neural extended Kalman filter (NEKF) has proven to be a quality maneuver target tracking system when the sensors provide a fully observable measurement, such as a radarpsilas range-bearing measurement or a position report. As with any state estimation technique, the NEKF requires observability in order to estimate the target track states. Observability is needed as well to train the weights of the neural network, since the neural network training paradigm is coupled to the target states. Passive sensor systems, such as electronic surveillance measures and passive sonar arrays, provide an angle-only measurement. Such bearings-only measurements make the tracking system an unobservable system. For a Kalman filter estimator, this will result in the eigenvalues of the error covariance matrix to grow without bound. For the NEKF, since both the target state and the weights of the neural network are affected by the lack of observability, the results could be more pronounced. In this paper, the application of the NEKF in bearings-only tracking problems is analyzed to determine the effects on performance. The analyzed cases look at a single sensor platform in four important scenarios: a stationary platform and straight-line target, a stationary platform and a maneuvering target, a maneuvering platform and a straight-line target, and a maneuvering platform and a maneuvering target.
纯轴承传感器对神经扩展卡尔曼滤波跟踪系统性能的影响分析
神经扩展卡尔曼滤波(NEKF)已被证明是一种高质量的机动目标跟踪系统,当传感器提供完全可观察的测量时,如雷达测距测量或位置报告。与任何状态估计技术一样,NEKF需要可观测性来估计目标航迹状态。由于神经网络的训练范式是与目标状态相耦合的,因此训练神经网络的权值也需要可观察性。被动传感器系统,如电子监视措施和被动声纳阵列,提供一个角度测量。这种只考虑方位的测量使跟踪系统成为不可观测系统。对于卡尔曼滤波估计器,这将导致误差协方差矩阵的特征值无界增长。对于NEKF,由于目标状态和神经网络的权重都受到缺乏可观测性的影响,因此结果可能更加明显。本文分析了NEKF在纯轴承跟踪问题中的应用,以确定其对性能的影响。所分析的案例着眼于单个传感器平台在四种重要场景下的情况:静止平台和直线目标、静止平台和机动目标、机动平台和直线目标、机动平台和机动目标。
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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