Cooperative group localization based on weighted factor graphs

Qimei Cui, Yulong Shi, Xuefei Zhang, Xiaoxuan Zhu
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Abstract

Multiple-target localization in ill conditions is very important in wireless location for next-generation wireless networks. The cooperative group localization (CGL) has indicated the effectiveness on performance gain and simultaneous multiple-target localization for the ill-conditioned localization problem. However, two inherent difficulties exist in the CGL: the strict demand for CGL topology and the high complexity. In order to solve the above rub, we propose a novel weighted factor graph CGL algorithm by formulating the location problem into the factor graph (FG) framework. Belief information (BI) is iteratively passed in node-FG and inter-FG to realize the proposed algorithm. Simulation results show that the proposed algorithm not only achieves high accuracy, but also enjoys low complexity in ill conditions.
基于加权因子图的合作群体定位
恶劣条件下的多目标定位是下一代无线网络无线定位的重要内容。对于病态定位问题,合作群体定位(CGL)在性能提升和多目标同步定位方面具有显著的效果。然而,CGL存在两个固有的困难:对CGL拓扑的严格要求和高复杂性。为了解决上述问题,我们提出了一种新的加权因子图CGL算法,将定位问题转化为因子图(FG)框架。在节点fg和节点fg之间迭代传递信念信息(BI)来实现该算法。仿真结果表明,该算法不仅具有较高的精度,而且在恶劣条件下具有较低的复杂度。
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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