Mobile Path Loss Prediction with Image Segmentation and Classification

S. Phaiboon, P. Phokharatkul, P. Kittithamavongs
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引用次数: 2

Abstract

This paper presents an intelligent radio wave propagation prediction model by using the 2-dimension aerial image which is taken from the actual area. An suburban area is used as examples. The prediction procedure is done in three steps. First, the image segmentation is employed to divide the area image into subgroups by using Maximum Likelihood algorithm. The second step uses the subgroup images from step 1 to determine the parameters for the fuzzy model that we use to classify the propagation areas. The final step is to plot the path loss contour on the image so the cellular cell site can be chosen. The research results show that the proposed segmentation provides an accuracy of 80-90% compared with the actual area. Therefore, cell site selection can be designed on the 2-dimension aerial map with the error less than 8 dB.
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基于图像分割和分类的移动路径损失预测
本文提出了一种利用实际区域的二维航拍图像进行无线电波传播的智能预测模型。以郊区为例。预测过程分三步完成。首先,采用最大似然算法对区域图像进行分组;第二步使用第一步的子组图像来确定模糊模型的参数,我们使用模糊模型来对传播区域进行分类。最后一步是在图像上绘制路径损失轮廓,以便选择蜂窝细胞位置。研究结果表明,所提出的分割方法与实际面积的分割精度达到80-90%。因此,可以在二维航空地图上设计小区选址,误差小于8db。
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