The millimeter wave (mmWave) bands have attracted considerable attention for high precision localization applications due to the ability to capture high angular and temporal resolution measurements. This paper explores mmWave-based positioning for a target localization problem where a fixed target broadcasts mmWave signals and a mobile robotic agent attempts to capture the signals to locate and navigate to the target. A three-stage procedure is proposed: First, the mobile agent uses tensor decomposition methods to detect the multipath channel components and estimate their parameters. Second, a machine-learning trained classifier is then used to predict the link state, meaning if the strongest path is line-of-sight (LOS) or non-LOS (NLOS). For the NLOS case, the link state predictor also determines if the strongest path arrived via one or more reflections. Third, based on the link state, the agent either follows the estimated angles or uses computer vision or other sensor to explore and map the environment. The method is demonstrated on a large dataset of indoor environments supplemented with ray tracing to simulate the wireless propagation. The path estimation and link state classification are also integrated into a state-of-the-art neural simultaneous localization and mapping (SLAM) module to augment camera and LIDAR-based navigation. It is shown that the link state classifier can successfully generalize to completely new environments outside the training set. In addition, the neural-SLAM module with the wireless path estimation and link state classifier provides rapid navigation to the target, close to a baseline that knows the target location.
翻译:毫米波(mmWave)波段吸引了对高精密本地化应用的极大关注,这是因为能够捕捉高角和时间分辨率测量。本文探讨了在固定目标广播毫米Wave信号和移动机器人代理剂试图捕捉信号以定位和导航到目标的情况下,目标定位问题的目标本地化问题的以毫米Wave为基础的定位定位定位定位定位。建议了一个三阶段程序:首先,移动剂使用高光分解方法检测多路频道组件并估计其参数。第二,然后使用机器学习的经过培训的分类器来预测链接状态,这意味着如果最强的路径是观察线(LOS)或非LOS(NLOS)。对于 NLOS 案例,链接状态预测器还确定最强的路径是否通过一个或多个反映射到达目标方。第三,根据链接状态,该代理器要么遵循估计角度,要么使用计算机视觉或其他传感器来探索和测绘环境。该方法在大型室内环境数据集中演示,辅之以模拟无线传播的光追踪。路径估计和连接状态的内线(线)也将路径和内置的内置目标链接到外的内置目标链路路路路路路路路路路路路路路路路路路路路路路路段,然后显示整个和内路路路路路路路路路路路路路路路路路路路路路路路路路段,使总路路路路路段路段到整个。