Channel Path Loss Prediction Using Satellite Images: A Deep Learning Approach

Chenlong Wang;Bo Ai;Ruisi He;Mi Yang;Shun Zhou;Long Yu;Yuxin Zhang;Zhicheng Qiu;Zhangdui Zhong;Jianhua Fan
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Abstract

With the advancement of communication technology, there is a higher demand for high-precision and high-generalization channel path loss models as it is fundamental to communication systems. For traditional stochastic and deterministic models, it is difficult to strike a balance between prediction accuracy and generalizability. This paper proposes a novel deep learning-based path loss prediction model using satellite images. In order to efficiently extract environment features from satellite images, residual structure, attention mechanism, and spatial pyramid pooling layer are developed in the network based on expert knowledge. Using a convolutional network activation visualization method, the interpretability of the proposed model is improved. Finally, the proposed model achieves a prediction accuracy with a root mean square error of 5.05 dB, demonstrating an improvement of 3.07 dB over a reference empirical propagation model.
利用卫星图像预测信道路径损耗:深度学习方法
随着通信技术的发展,人们对高精度和高泛化的信道路径损耗模型提出了更高的要求,因为它是通信系统的基础。对于传统的随机和确定性模型,很难在预测精度和泛化能力之间取得平衡。本文利用卫星图像提出了一种基于深度学习的新型路径损耗预测模型。为了有效地从卫星图像中提取环境特征,基于专家知识在网络中开发了残差结构、注意机制和空间金字塔池化层。利用卷积网络激活可视化方法,提高了所提模型的可解释性。最后,提出的模型达到了预测精度,均方根误差为 5.05 dB,比参考经验传播模型提高了 3.07 dB。
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