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Position and LIDAR-Aided mmWave Beam Selection using Deep Learning

机译:使用深度学习进行位置和激光雷达辅助的毫米波光束选择

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Modern communication systems may benefit from the availability of sensor data leveraged by sophisticated machine learning algorithms. We recently described how LIDAR (light detection and ranging) on a vehicle can be used for line-of-sight detection and to reduce the overhead associated with link configuration in millimeter wave communication systems. LIDAR is used in autonomous driving for high resolution mapping and positioning. In this paper, we present new LIDAR-based features for machine learning and compare the previously proposed distributed architecture with two centralized schemes: using a single LIDAR located at the base station (BS) and fusing LIDAR data from neighboring vehicles at the BS. We also quantify the advantages of LIDAR-based solutions over solutions based on connected vehicles informing their positions. We use deep convolutional neural networks to process images composed of LIDAR data and/or positions. Using co-simulation of communications and LIDAR in a vehicle-to-infrastructure (V2I) scenario, we find that the distributed LIDAR-based architecture provides robust performance irrespective of car penetration rate, outperforming the single LIDAR at BS and position-based solutions. Under the simulated conditions, the benefits of a centralized data fusion over distributed processing are not significant, meaning that machine learning for line-of-sight detection and beam selection can be conveniently executed at vehicles equipped with LIDAR.
机译:现代通信系统可能会受益于复杂的机器学习算法所利用的传感器数据的可用性。我们最近描述了如何将车辆上的LIDAR(光检测和测距)用于视线检测并减少与毫米波通信系统中的链路配置相关的开销。 LIDAR用于自动驾驶,可进行高分辨率地图绘制和定位。在本文中,我们提出了基于LIDAR的机器学习新功能,并将先前提出的分布式体系结构与两种集中式方案进行了比较:使用位于基站(BS)的单个LIDAR并融合来自BS的相邻车辆的LIDAR数据。我们还量化了基于LIDAR的解决方案相对于基于互联车辆通知其位置的解决方案的优势。我们使用深度卷积神经网络来处理由LIDAR数据和/或位置组成的图像。通过在车对基础设施(V2I)场景中使用通信和LIDAR的协同仿真,我们发现基于分布式LIDAR的体系结构无论汽车穿透率如何都具有强大的性能,其性能优于BS上的单个LIDAR和基于位置的解决方案。在模拟条件下,集中数据融合优于分布式处理的优势并不明显,这意味着可以在配备LIDAR的车辆上方便地执行用于视线检测和光束选择的机器学习。

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