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PILC: Passive Indoor Localization Based on Convolutional Neural Networks

机译:Pilc:基于卷积神经网络的被动室内定位

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Nowadays, an increasing number of location-based services are included in security systems and mobile applications. Various localization mechanisms have been developed, including outdoor satellite navigation system and indoor received signal strength (RSS) based on WiFi and BLE Beacon. However, they can only localize the target while being equipped with a receiver. Instead, passive indoor localization is the device-free technique that can localize a target without carrying any electronic devices in a selected region. In this paper, a scheme for operating passive indoor localization is proposed. In the scheme, the location images are constructed by utilizing channel state information (CSI) while the localization model is built and trained by using deep learning. With the help of convolutional neural networks (CNN), this scheme only requires original CSI amplitude instead of manual extraction of features. We demonstrate the accuracy of this scheme in two typical indoor scenarios. The experimental results show that the proposed scheme achieves an accuracy of more than an average of 94% and 96% respectively in the scenario of the office and the corridory.
机译:如今,安全系统和移动应用程序中包含了越来越多的基于位置的服务。已经开发了各种本地化机制,包括基于WiFi和Ble灯塔的户外卫星导航系统和室内接收的信号强度(RSS)。但是,它们只能在配备接收器时本地化目标。相反,被动室内定位是可以在不携带所选区域中携带任何电子设备的设备本地化目标的无设备技术。本文提出了一种用于操作被动室内定位的方案。在该方案中,通过利用信道状态信息(CSI)来构造位置图像,而通过使用深度学习构建和培训本地化模型。在卷积神经网络(CNN)的帮助下,该方案仅需要原始的CSI幅度而不是手动提取功能。我们在两个典型的室内情景中展示了该方案的准确性。实验结果表明,该方案分别在办公室和管道方案中实现了94%和96%平均平均94%和96%的准确性。

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