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ResLoc: Deep residual sharing learning for indoor localization with CSI tensors

机译:ResLoc:深度残差共享学习,可使用CSI张量进行室内定位

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Wi-Fi based indoor localization has attracted great interest due to its ubiquitous access in many indoor environments. In this paper, we propose ResLoc, a deep residual sharing learning based system for indoor localization with channel state information (CSI) tensor data. We first introduce CSI data in wireless systems and show how to build CSI tensors for indoor localization. Then, we present the design of ResLoc, which employs dual-channel, bi-modal CSI tensor data to train the deep network using the proposed deep residual sharing learning in the offline phase. In the online test phase, we use newly received CSI tensor data to estimate the location of the mobile device based on an enhanced probabilistic method. The experimental results show that the proposed ResLoc system can obtain submeter level accuracy with a single access point.
机译:基于Wi-Fi的室内本地化由于在许多室内环境中无处不在而引起了极大的兴趣。在本文中,我们提出了ResLoc,这是一种基于深度残差共享学习的系统,用于使用信道状态信息(CSI)张量数据进行室内定位。我们首先介绍无线系统中的CSI数据,并展示如何为室内定位构建CSI张量。然后,我们提出ResLoc的设计,该技术使用双通道,双模式CSI张量数据在离线阶段使用建议的深度残差共享学习来训练深度网络。在在线测试阶段,我们使用新接收到的CSI张量数据,基于增强的概率方法来估计移动设备的位置。实验结果表明,所提出的ResLoc系统可以通过单个接入点获得亚米级精度。

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