Deep learning-based radar-assisted beam prediction

Yifu. Liu, Quan Zhou, Xia Jing
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Abstract

Beam selection in millimeter wave (mmWave) communication systems rely on information about the environment surrounding the communication target, and the use of deep learning methods to analyze sensing data acquired by low-cost radar sensors can effectively reduce communication overhead. In this paper, we further investigate the radar-based beam selection problem using deep learning methods. The beam selection performance of the Feature Pyramid Network (FPN) network and an optimized version of the Residual Networks (Resnet) network is evaluated for a large-scale real-world dataset, DeepSense 6G, and a targeted network is proposed for beam selection. The experimental results show that the accuracy of beam selection is improved by 18.5% compared to the original Lenet network.
基于深度学习的雷达辅助波束预测
毫米波(mmWave)通信系统中的波束选择依赖于通信目标周围环境的信息,利用深度学习方法分析低成本雷达传感器获取的传感数据可以有效降低通信开销。在本文中,我们使用深度学习方法进一步研究了基于雷达的波束选择问题。针对大规模真实数据集DeepSense 6G,评估了特征金字塔网络(FPN)网络和优化版本的残余网络(Resnet)网络的波束选择性能,并提出了波束选择的目标网络。实验结果表明,与原有的Lenet网络相比,该网络的波束选择精度提高了18.5%。
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