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5G Utility Pole Planner Using Google Street View and Mask R-CNN

机译:使用Google Street View和Mask R-CNN的5G Utility Pole Planner

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With the advances of fifth-generation (5G) [1] cellular networks technology, many studies and work have been carried out on how to build 5G networks for smart cities. In the previous research, street lighting poles and smart light poles are capable of being a 5G access point[2]. In order to determine the position of the points, this paper discusses a new way to identify poles based on Mask R-CNN[3], which extends Fast R-CNNs[4] by making it employ recursive Bayesian filtering and perform proposal propagation and reuse. The dataset contains 3,000 high-resolution images from google map. To make training faster, we used a very efficient GPU implementation of the convolution operation. We achieved a train error rate of 7.86% and a test error rate of 32.03%. At last, we used the immune algorithm [5] [6] to set 5G poles in the smart cities.
机译:随着第五代(5G)[1]蜂窝网络技术的进步,已经开展了如何为智能城市建立5G网络的研究和工作。在以前的研究中,街道照明杆和智能光杆能够成为5G接入点[2]。为了确定要点的位置,本文讨论了基于掩模R-CNN [3]识别极点的新方法,其通过使其雇用递归贝叶斯滤波并执行提案传播来扩展FAST R-CNNS [4]。重复使用。 DataSet包含Google地图的3,000张高分辨率图像。为了更快地进行培训,我们使用了一个非常高效的GPU实现卷积操作。我们达到了7.86的火车误差率 测试错误率为32.03%。最后,我们使用免疫算法[5] [6]在智能城市中设置5G杆。

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