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Cooperative localization and tracking in wireless sensor networks

机译:无线传感器网络中的合作本地化和跟踪

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摘要

Cooperative localization has attracted great attention in recent years. However, in some scenarios, localization precision is challenging and does not meet the application requirements. In this paper, Kalman and Particle filters (KF and PF) are considered for cooperative localization scenarios purpose. We propose to apply these techniques to cooperative localization approaches that we investigated in previous papers: Evolved Variational Message Passing algorithm (E-VMP) and Cooperative Robust Geometric Positioning Algorithm (C-RGPA). The main added value of distributed tracking filters is to guarantee dynamic versions of these two algorithms. The proposed techniques are evaluated and compared by means of real heterogeneous measurements carried out using ZigBee and OFDM devices and where location-dependent parameters such as RSSI and RTD are exploited. Experiments and realistic simulations reveal that the proposed techniques exhibit better localization accuracy for very low complexity and cost. Moreover, the comparative study shows that distributed particle filter (DPF) provides better performance than KF in terms of positioning accuracy and root-mean square error.
机译:近年来,合作本地化引起了极大的关注。但是,在某些情况下,本地化精度是具有挑战性的,并且不符合应用要求。在本文中,考虑了卡尔曼和粒子过滤器(KF和PF),用于协作定位方案目的。我们建议将这些技术应用于我们在先前论文中调查的合作定位方法:进化变分数通过算法(E-VMP)和协作鲁棒几何定位算法(C-RGPA)。分布式跟踪滤波器的主要附加值是保证这两个算法的动态版本。通过使用ZigBee和OFDM设备执行的真实异构测量来评估和比较所提出的技术,并且利用诸如RSSI和RTD的位置相关的参数。实验和现实模拟表明,该技术具有更低的复杂性和成本的定位精度更好。此外,比较研究表明,在定位精度和根均方误差方面,分布式粒子滤波器(DPF)提供比KF更好的性能。

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