Basic Study of Map Image Processing for Simple Path Loss Prediction Using CNN

K. Itoi, H. Nakabayashi
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Abstract

Many models have been proposed for path loss in mobile communications. Conventionally, multiple regression analysis and theoretical formulas have been used, but in recent years, methods using machine learning have been proposed to solve these problems. We analyzed the parameters of the conventional typical propagation model and proposed to effectively merge the conventional models to predict the path loss by machine learning before. The prediction accuracy for Narashino-shi by proposed method is 4.39 dB in root mean square error (RMSE). In this report, we propose a prediction method using convolutional neural network (CNN) with only image input. For the purpose, we examined the structure of the map image input to CNN and the initial value of CNN training. The prediction accuracy 4.09 dB in RMSE was obtained.
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基于CNN的简单路径损失预测地图图像处理基础研究
针对移动通信中的路径损耗,人们提出了许多模型。传统上,使用多元回归分析和理论公式,但近年来,使用机器学习的方法被提出来解决这些问题。分析了传统典型传播模型的参数,提出了利用机器学习之前有效合并传统模型来预测路径损失的方法。该方法预测Narashino-shi的均方根误差(RMSE)为4.39 dB。在本报告中,我们提出了一种仅使用图像输入的卷积神经网络(CNN)预测方法。为此,我们检查了输入到CNN的地图图像的结构和CNN训练的初始值。RMSE预测精度为4.09 dB。
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