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Adaptive Interacting Multiple Model Algorithm Based on Information-Weighted Consensus for Maneuvering Target Tracking

机译:基于信息加权共识的机动目标跟踪自适应交互多模型算法

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摘要

Networked multiple sensors are used to solve the problem of maneuvering target tracking. To avoid the linearization of nonlinear dynamic functions, and to obtain more accurate estimates for maneuvering targets, a novel adaptive information-weighted consensus filter for maneuvering target tracking is proposed. The pseudo measurement matrix is computed with unscented transform to utilize the information form of measurements, which is necessary for consensus iterations. To improve the maneuvering target tracking accuracy and get a unified estimation in each sensor node across the entire network, the adaptive current statistical model is exploited to update the estimate, and the information-weighted consensus protocol is applied among neighboring nodes for each dynamic model. Based on posterior probabilities of multiple models, the final estimate of each sensor is acquired with weighted combination of model-conditioned estimates. Experimental results illustrate the superior performance of the proposed algorithm with respect tracking accuracy and agreement of estimates in the whole network.
机译:联网的多个传感器用于解决机动目标跟踪的问题。为了避免非线性动态函数的线性化,并获得更精确的机动目标估计值,提出了一种新颖的自适应信息加权共识滤波器,用于机动目标跟踪。伪测量矩阵通过无味变换计算,以利用测量的信息形式,这对于共识迭代是必需的。为了提高机动目标的跟踪精度并在整个网络的每个传感器节点中获得统一的估计,利用自适应电流统计模型来更新估计,并且针对每个动态模型在相邻节点之间应用信息加权共识协议。基于多个模型的后验概率,使用模型条件估计值的加权组合来获取每个传感器的最终估计值。实验结果说明了该算法在整个网络中跟踪精度和估计一致性方面的优越性能。

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