This study demonstrates the feasibility of point cloud-based proactive link quality prediction for millimeter-wave (mmWave) communications. Image-based methods to quantitatively and deterministically predict future received signal strength using machine learning from time series of depth images to mitigate the human body line-of-sight (LOS) path blockage in mmWave communications have been proposed. However, image-based methods have been limited in applicable environments because camera images may contain private information. Thus, this study demonstrates the feasibility of using point clouds obtained from light detection and ranging (LiDAR) for the mmWave link quality prediction. Point clouds represent three-dimensional (3D) spaces as a set of points and are sparser and less likely to contain sensitive information than camera images. Additionally, point clouds provide 3D position and motion information, which is necessary for understanding the radio propagation environment involving pedestrians. This study designs the mmWave link quality prediction method and conducts two experimental evaluations using different types of point clouds obtained from LiDAR and depth cameras, as well as different numerical indicators of link quality, received signal strength and throughput. Based on these experiments, our proposed method can predict future large attenuation of mmWave link quality due to LOS blockage by human bodies, therefore our point cloud-based method can be an alternative to image-based methods.
翻译:这项研究表明,对毫米波(mmWave)通信进行基于点云的主动联系质量预测是可行的; 以图像为基础的方法,对以定量和决定性方式预测未来通过从时序深度图像中学习的机器学习来减轻毫米Wave通信中人的身体视线(LOS)路径阻隔,在毫米Wave通信中,利用机器从时间序列中学习来减轻人的身体视线(LOS)路径阻隔; 然而,基于图像的方法在适用环境中是有限的,因为相机图像可能包含私人信息; 因此,这项研究表明,利用光探测和测距(LiDAR)获得的点云(LiDAR)对毫米Wave链路质量预测的可行性; 点云代表三维(3D)空间,作为一组点点,是更稀少的,比摄像图像更不可能包含敏感的信息。 此外,点云云提供3D位置和运动信息,这是了解行人无线电传播环境所必要的。 本研究设计了毫米Wave质量预测方法,并利用从LIDAR和深度摄像头获得的不同类型的点云云,以及不同的链接质量、信号强度和透射度的不同数字指标。 基于这些实验,因此,我们拟议的方法可以预测未来以块质量为以云质的模型为主点。