隐式信道制图及其在无人机辅助定位中的应用

Pham Q. Viet, Daniel Romero
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引用次数: 1

摘要

传统的基于到达时间差等特征的定位算法受到非视距传播的影响,对距离估计的一致性产生不利影响。相反,指纹定位对这些传播条件具有鲁棒性,但需要昂贵的大型数据集收集。为了减轻这些限制,本文利用最近提出的通道图表的概念来学习包含要定位的节点收集的通道状态信息(CSI)测量的空间的几何形状。该算法利用深度神经网络,利用测量的CSI来学习节点对之间的距离。与标准信道制图方法不同,该算法直接处理物理几何,因此只隐式地学习无线电域的几何。仿真结果表明,该算法优于同类算法,能够在无人机紧急情况下实现精确定位。
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Implicit Channel Charting with Application to UAV-aided Localization
Traditional localization algorithms based on features such as time difference of arrival are impaired by non-line of sight propagation, which negatively affects the consistency that they expect among distance estimates. Instead, fingerprinting localization is robust to these propagation conditions but requires the costly collection of large data sets. To alleviate these limitations, the present paper capitalizes on the recently-proposed notion of channel charting to learn the geometry of the space that contains the channel state information (CSI) measurements collected by the nodes to be localized. The proposed algorithm utilizes a deep neural network that learns distances between pairs of nodes using their measured CSI. Unlike standard channel charting approaches, this algorithm directly works with the physical geometry and therefore only implicitly learns the geometry of the radio domain. Simulation results demonstrate that the proposed algorithm outperforms its competitors and allows accurate localization in emergency scenarios using an unmanned aerial vehicle.
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