基于深度学习的室内环境摄像头主动物理层切换

Khanh Nam Nguyen, Kenichi Takizawa
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引用次数: 0

摘要

在室内动态 60 GHz 无线电信道中,以主动方式实现了基于摄像头辅助预测的切换。在这里,我们提出的深度学习模型被用来预测阻塞导致的信号质量下降。与使用最先进的 ResNet-18 和 ResNet-50 深度学习架构的模型相比,该预测模型显示出同等的准确性和更快的训练时间,这是因为它适用于在拟议的切换实验中获得的数据。因此,我们提出了一种基于链路质量预测的主动物理层切换方法。从更长的连接时间可以看出,该方法优于被动切换方法,证明了其保持无缝连接的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning-Based Proactive Physical Layer Handover using Cameras for Indoor Environment
Camera-assisted prediction-based handover has been implemented in a proactive manner for an indoor dynamic 60 GHz radio channel. Here, our proposed deep learning model is utilized to forecast the decline in signal quality caused by blockage. The predictive model shows equivalent accuracy and faster training time in comparison with models using state-of-the-art deep learning architectures of ResNet-18 and ResNet-50, owing to its suitability to the data obtained in the proposed handover experiment. Accordingly, a proactive physical layer handover method is proposed, which is based on the link quality prediction. This method outperforms handover in a reactive man-ner, as evidenced by longer connected duration, demonstrating its feasibility of malntaining a seamless connection.
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