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Dynamic Multidimensional Scaling for Low-Complexity Mobile Network Tracking

机译:低复杂度移动网络跟踪的动态多维缩放

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摘要

Cooperative localization of mobile sensor networks is a fundamental problem which becomes challenging for anchorless networks where there is no pre-existing infrastructure to rely on. Two cooperative mobile network tracking algorithms based on novel dynamic multidimensional scaling (MDS) ideas are proposed. The algorithms are also extended to operate in partially connected networks. Compared with recently proposed algorithms based on the extended and unscented Kalman filter (EKF and UKF), the proposed algorithms have a considerably lower computational complexity. Furthermore, model-independence, scalability, as well as an acceptable accuracy make our proposed algorithms a good choice for practical mobile network tracking.
机译:移动传感器网络的协作式本地化是一个基本问题,对于没有锚点基础设施的无锚网络而言,这一问题变得越来越具有挑战性。提出了两种基于新颖动态多维缩放(MDS)思想的合作移动网络跟踪算法。该算法也被扩展为在部分连接的网络中运行。与最近提出的基于扩展和无味卡尔曼滤波器(EKF和UKF)的算法相比,提出的算法具有较低的计算复杂度。此外,模型独立性,可伸缩性以及可接受的精度使我们提出的算法成为实际移动网络跟踪的不错选择。

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