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A Low Complexity Gaussian Parametric Message Passing Based Cooperative Localization Algorithm

机译:基于合作定位算法的低复杂性高斯参数消息

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Based on the theory of factor graph and belief propagation, a low complexity cooperative localization algorithm with Gaussian parametric message passing is proposed to improve the performance where the non-cooperative localization methods failed due to the insufficient coverage of anchors. The system model is established according to the Bayesian rule. Weighted samples are used to represent the salient characteristics of the local message, and a Gaussian parametric message passing rule is designed to reduce the burden of the network traffic. By constructing a relative spatial relationship between the target and its neighbour nodes, a novel message initialization method is put forward to concentrate the samples where the messages have significant mass. In order to facilitate efficient computation of peer-to-peer messages, the nonlinear observation equation is linearized approximately by exploiting the Taylor expansion. Then the expression of the message updating is deduced and the detailed flow of the algorithm is shown. Simulation results show that the proposed algorithm leads to an excellent performance at the communication overhead and computational complexity, with losing negligible localization accuracy.
机译:基于因子图和信仰传播的理论,提出了一种低复杂性协作定位算法,具有高斯参数消息传递,提高了由于锚的覆盖不足而导致的非协作定位方法失效的性能。系统模型是根据贝叶斯规则建立的。加权样本用于表示本地消息的突出特性,并且设计了高斯参数传递规则以减少网络流量的负担。通过构造目标及其邻居节点之间的相对空间关系,提出了一种新的消息初始化方法以集中消息具有大量质量的样本。为了便于对等消息的有效计算,通过利用泰勒膨胀,非线性观察方程大致地线性化。然后推导出消息更新的表达,并示出了算法的详细流程。仿真结果表明,该算法在通信开销和计算复杂性方面导致具有出色的性能,失去了可忽略不计的本地化精度。

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