Millimeter wave (mmWave) localization algorithms exploit the quasi-optical propagation of mmWave signals, which yields sparse angular spectra at the receiver. Geometric approaches to angle-based localization typically require to know the map of the environment and the location of the access points. Thus, several works have resorted to automated learning in order to infer a device's location from the properties of the received mmWave signals. However, collecting training data for such models is a significant burden. In this work, we propose a shallow neural network model to localize mmWave devices indoors. This model requires significantly fewer weights than those proposed in the literature. Therefore, it is amenable for implementation in resource-constrained hardware, and needs fewer training samples to converge. We also propose to relieve training data collection efforts by retrieving (inherently imperfect) location estimates from geometry-based mmWave localization algorithms. Even in this case, our results show that the proposed neural networks perform as good as or better than state-of-the-art algorithms.
翻译:毫米波(mmWave)本地化算法利用毫米Wave信号的准光学传播,在接收器中产生稀疏的角光谱。以角度为基础的本地化的几何方法通常需要了解环境图和接入点的位置。因此,若干工作采用自动学习的方法,以便从接收的毫米Wave信号的特性中推断出设备的位置。然而,为这些模型收集培训数据是一个沉重的负担。在这项工作中,我们提议一个浅神经网络模型,在室内将毫米Wave设备本地化。这一模型需要的重量大大低于文献中提议的重量。因此,它便于在资源控制硬件中实施,需要的训练样本较少,以汇集。我们还提议通过重新(完全不完善)基于几何的毫米Wave本地化算法来减少培训数据收集工作。即使在这种情况下,我们的结果显示,拟议的神经网络的表现好于或好于标准算法。