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MulTLoc: RF Hologram Tensor Filtering and Upscaling for Locating Multiple RFID Tags

机译:MultLoC:RF全息图张滤波器和Upscaling用于定位多个RFID标签

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In this paper, we present MulTLoc, a deep learning based indoor localization system for localizing multiple ultra-high frequency (UHF) passive RFID tags with RF hologram tensor filtering and upscaling. The proposed system leverages the RF hologram tensor as the input of the deep convolutional networks. The RF hologram tensor exhibits a strong relationship between the observation and the spatial location, which enhances the robustness of the system to the dynamic environment and equipment. To sanitize the RF hologram tensor, two architectures of deep networks are newly proposed. The hologram filter network suppresses the fake peaks resulting from the multipath and phase wrapping by leveraging the spatial relationship between tags. The tensor upscaling network recovers the high resolution hologram tensor from the output of the previous network, which enhances the localization accuracy of the system further. Comparing with the fingerprinting based localization systems using deep networks as the classifier, the networks in the MulTLoc system treat the localization problem as the regression problem, in which the ambiguity between fingerprints is reserved. To avoid the inherent errors in the fingerprinting based localization systems, the location estimation is given by intuitive peak finding algorithms using the recovered RF hologram tensor. We implement the proposed MulTLoc system with commodity RFID devices and verify its performance with extensive experiments.
机译:在本文中,我们呈现MultLoC,一种基于深度学习的室内定位系统,用于定位具有RF全息图张滤波和Upscaling的多个超高频(UHF)无源RFID标签。所提出的系统利用RF全息图张量作为深度卷积网络的输入。 RF全息图张量在观察和空间位置之间表现出强烈的关系,这提高了系统对动态环境和设备的鲁棒性。为了消毒RF全息图张量,新提出了两种深网络建筑。全息图滤波器网络通过利用标签之间的空间关系来抑制由多径和相位包装产生的假峰值。张量Upscaling网络从先前网络的输出中恢复了高分辨率全息图张量,这提高了系统的本地化精度。与使用深网络作为分类器的指纹识别本地化系统相比,MultloC系统中的网络将本地化问题视为回归问题,其中保留了指纹之间的模糊性。为了避免基于指纹的定位系统中的固有误差,通过使用恢复的RF全息图张量的直观峰值发现算法给出位置估计。我们使用商品RFID设备实施提议的MullCoC系统,并通过广泛的实验验证其性能。

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