Kramer Kathleen A, Stubberud Stephen C
Department of Engineering, University of San Diego, San Diego, CA, USA.
Int J Neural Syst. 2006 Feb;16(1):1-13. doi: 10.1142/S0129065706000457.
Having a better motion model in the state estimator is one way to improve target tracking performance. Since the motion model of the target is not known a priori, either robust modeling techniques or adaptive modeling techniques are required. The neural extended Kalman filter is a technique that learns unmodeled dynamics while performing state estimation in the feedback loop of a control system. This coupled system performs the standard estimation of the states of the plant while estimating a function to approximate the difference between the given state-coupling function model and the behavior of the true plant dynamics. At each sample step, this new model is added to the existing model to improve the state estimate. The neural extended Kalman filter has also been investigated as a target tracking estimation routine. Implementation issues for this adaptive modeling technique, including neural network training parameters, were investigated and an analysis was made of the quality of performance that the technique can have for tracking maneuvering targets.
在状态估计器中拥有更好的运动模型是提高目标跟踪性能的一种方法。由于目标的运动模型事先未知,因此需要鲁棒建模技术或自适应建模技术。神经扩展卡尔曼滤波器是一种在控制系统的反馈回路中进行状态估计时学习未建模动态的技术。这个耦合系统在估计一个函数以近似给定状态耦合函数模型与真实工厂动态行为之间的差异时,执行工厂状态的标准估计。在每个采样步骤,这个新模型被添加到现有模型中以改进状态估计。神经扩展卡尔曼滤波器也已作为一种目标跟踪估计程序进行了研究。研究了这种自适应建模技术的实现问题,包括神经网络训练参数,并分析了该技术在跟踪机动目标时的性能质量。