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Multiple-model algorithms for distributed tracking of a maneuvering target

机译:用于机动目标分布式跟踪的多模型算法

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The paper deals with distributed tracking of a maneuvering target by means of a network of heterogeneous sensors and communication nodes. To effectively cope with target maneuvers, multiple-model filtering is adopted after being extended to a fully distributed processing framework by means of suitable consensus techniques. Novel Distributed first-order Generalized Pseudo Bayesian (DGPB1) and Distributed Interacting Multiple Model (DIMM) algorithms are presented. Simulation experiments on critical tracking case studies involving a highly maneuvering target and sensor networks characterized by weak connectivity and target observability properties demonstrate the effectiveness of the proposed distributed multiple-model filters.
机译:本文通过异构传感器和通信节点网络处理机动目标的分布式跟踪。为了有效地应对目标机动,在通过适当的共识技术将多模型过滤扩展到完全分布式的处理框架之后,采用了多模型过滤。提出了新颖的分布式一阶广义伪贝叶斯算法(DGPB1)和分布式交互多模型(DIMM)算法。关键跟踪案例研究的仿真实验涉及机动性强的目标和以弱连接性和目标可观察性为特征的传感器网络,证明了所提出的分布式多模型滤波器的有效性。

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