Global Navigation Satellite Systems typically perform poorly in urban environments, where the likelihood of line-of-sight conditions between devices and satellites is low. Therefore, alternative location methods are required to achieve good accuracy. We present LocUNet: A convolutional, end-to-end trained neural network (NN) for the localization task, which is able to estimate the position of a user from the received signal strength (RSS) of a small number of Base Stations (BS). Using estimations of pathloss radio maps of the BSs and the RSS measurements of the users to be localized, LocUNet can localize users with state-of-the-art accuracy and enjoys high robustness to inaccuracies in the estimations of radio maps. The proposed method does not require generating RSS fingerprints of each specific area where the localization task is performed and is suitable for real-time applications. Moreover, two novel datasets that allow for numerical evaluations of RSS and ToA methods in realistic urban environments are presented and made publicly available for the research community. By using these datasets, we also provide a fair comparison of state-of-the-art RSS and ToA-based methods in the dense urban scenario and show numerically that LocUNet outperforms all the compared methods.
翻译:在城市环境中,全球导航卫星系统(GNSS)通常表现不佳,因为设备和卫星之间的视线条件不够理想。因此,需要采用替代位置方法以实现良好的准确性。我们提出一种卷积、端到端训练的神经网络(NN)LocUNet,用于定位任务,能够从少量基站(BS)的接收信号强度(RSS)估计用户位置。使用BS的路径损耗射频图的估计和要定位的用户的RSS测量,LocUNet能够以最先进的准确性定位用户,并对射频图的估计不准确性具有高鲁棒性。所提出的方法不需要为执行定位任务的每个特定区域生成RSS指纹,并且适用于实时应用。此外,我们提供了两个新的数据集,允许在现实城市环境中进行RSS和ToA方法的数字评估,并向研究社区公开提供这些数据集。通过使用这些数据集,我们还在密集城市场景中进行了状态最新的RSS和ToA基于方法的公平比较,并数值证明LocUNet优于所有的比较方法。