In this paper, we study the localization problem in dense urban settings. In such environments, Global Navigation Satellite Systems fail to provide good accuracy due to low likelihood of line-of-sight (LOS) links between the receiver (Rx) to be located and the satellites, due to the presence of obstacles like the buildings. Thus, one has to resort to other technologies, which can reliably operate under non-line-of-sight (NLOS) conditions. Recently, we proposed a Received Signal Strength (RSS) fingerprint and convolutional neural network-based algorithm, LocUNet, and demonstrated its state-of-the-art localization performance with respect to the widely adopted k-nearest neighbors (kNN) algorithm, and to state-of-the-art time of arrival (ToA) ranging-based methods. In the current work, we first recognize LocUNet's ability to learn the underlying prior distribution of the Rx position or Rx and transmitter (Tx) association preferences from the training data, and attribute its high performance to these. Conversely, we demonstrate that classical methods based on probabilistic approach, can greatly benefit from an appropriate incorporation of such prior information. Our studies also numerically prove LocUNet's close to optimal performance in many settings, by comparing it with the theoretically optimal formulations.
翻译:在本文中,我们研究了密集城市环境中的本地化问题。在这种环境中,全球导航卫星系统未能提供良好的准确性,原因是由于建筑物等障碍的存在,接收器(Rx)与卫星之间视线连接的可能性较低,因此,必须使用其他技术,这些技术可以在非视线条件下可靠运行。最近,我们提议从培训数据中获取信号强度指纹和动态神经网络算法、LocUNet,并展示了其在广泛采用的K近邻(kNNN)算法方面最先进的本地化表现,以及基于建筑的到达时间。在目前的工作中,我们首先认识到LocUNet有能力了解Rx或Rx和发报机(Tx)先前的基本分布情况,并将其高性能归因于这些。相反,我们证明,基于稳度方法的经典方法在广泛采用K-近邻(kNNN)算法方面表现最先进的本地本地化,通过将我们的最佳性业绩与最优性能的模型进行密切的对比,从而大大地将我们的最佳性业绩与最优化的模型化纳入。