This paper deals with the problem of localization in a cellular network in a dense urban scenario. Global Navigation Satellite Systems (GNSS) typically perform poorly in urban environments, where the likelihood of line-of-sight conditions is low, and thus alternative localization methods are required for good accuracy. We present LocUNet: A deep learning method for localization, based merely on Received Signal Strength (RSS) from Base Stations (BSs), which does not require any increase in computation complexity at the user devices with respect to the device standard operations, unlike methods that rely on time of arrival or angle of arrival information. In the proposed method, the user to be localized reports the RSS from BSs to a Central Processing Unit (CPU), which may be located in the cloud. Alternatively, the localization can be performed locally at the user. Using estimated pathloss radio maps of the BSs, LocUNet can localize users with state-of-the-art accuracy and enjoys high robustness to inaccuracies in the radio maps. The proposed method does not require pre-sampling of the environment; and is suitable for real-time applications, thanks to the RadioUNet, a neural network-based radio map estimator. We also introduce two datasets that allow numerical comparisons of RSS and Time of Arrival (ToA) methods in realistic urban environments.
翻译:本文仅介绍LocUNet:一个仅根据基地站收到的信号强度(RSS)进行本地化的深层次学习方法,该方法不需要在设备标准操作方面提高用户设备的计算复杂性,与依赖到达时间或抵达角度信息的方法不同。在拟议方法中,用户一般在城市环境中表现差强人意,即视线条件的可能性较低,因此需要有其他的本地化方法,以便准确无误。我们介绍LocUNet:仅根据基地站收到的信号强度(RSS)进行本地化的深层次学习方法,该方法不需要在设备标准操作方面增加用户设备的计算复杂性,而不需要在到达时间或到达角度信息上使用的方法。在拟议方法中,用户将RSS从BS报告到中央处理股(CPU)进行本地化报告,而中央处理股可能位于云层中。或者,本地化方法可以在用户中进行本地化。使用BSIS的估计路径无线电频率分布图,LocUNet可以将用户与无线电地图不准确性高度匹配的用户本地化。拟议方法不需要预先勘测环境;并且适合实时进行实时的无线电定位应用,我们的无线电定位网络,因此允许将数字网络用于城市环境。