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基于计算机视觉传感技术的林业安防监测无线信号传播预测。

Wireless Signal Propagation Prediction Based on Computer Vision Sensing Technology for Forestry Security Monitoring.

机构信息

School of Mechanical Electronic & Information Engineering, China University of Mining & Technology, Beijing 100083, China.

Beijing Aerocim Technology Co., Ltd., Beijing 102308, China.

出版信息

Sensors (Basel). 2021 Aug 24;21(17):5688. doi: 10.3390/s21175688.

Abstract

In this paper, Computer Vision (CV) sensing technology based on Convolutional Neural Network (CNN) is introduced to process topographic maps for predicting wireless signal propagation models, which are applied in the field of forestry security monitoring. In this way, the terrain-related radio propagation characteristic including diffraction loss and shadow fading correlation distance can be predicted or extracted accurately and efficiently. Two data sets are generated for the two prediction tasks, respectively, and are used to train the CNN. To enhance the efficiency for the CNN to predict diffraction losses, multiple output values for different locations on the map are obtained in parallel by the CNN to greatly boost the calculation speed. The proposed scheme achieved a good performance in terms of prediction accuracy and efficiency. For the diffraction loss prediction task, 50% of the normalized prediction error was less than 0.518%, and 95% of the normalized prediction error was less than 8.238%. For the correlation distance extraction task, 50% of the normalized prediction error was less than 1.747%, and 95% of the normalized prediction error was less than 6.423%. Moreover, diffraction losses at 100 positions were predicted simultaneously in one run of CNN under the settings in this paper, for which the processing time of one map is about 6.28 ms, and the average processing time of one location point can be as low as 62.8 us. This paper shows that our proposed CV sensing technology is more efficient in processing geographic information in the target area. Combining a convolutional neural network to realize the close coupling of a prediction model and geographic information, it improves the efficiency and accuracy of prediction.

摘要

本文介绍了基于卷积神经网络(CNN)的计算机视觉(CV)传感技术,用于处理地形地图以预测无线信号传播模型,这些模型应用于林业安全监测领域。通过这种方式,可以准确、高效地预测或提取与地形相关的无线电传播特性,包括衍射损耗和阴影衰落相关距离。为了这两个预测任务分别生成了两个数据集,并使用这些数据集来训练 CNN。为了提高 CNN 预测衍射损耗的效率,通过 CNN 并行获得地图上不同位置的多个输出值,从而大大提高了计算速度。所提出的方案在预测精度和效率方面都取得了良好的性能。对于衍射损耗预测任务,50%的归一化预测误差小于 0.518%,95%的归一化预测误差小于 8.238%。对于相关距离提取任务,50%的归一化预测误差小于 1.747%,95%的归一化预测误差小于 6.423%。此外,在本文设置下,CNN 可以同时预测 100 个位置的衍射损耗,每张地图的处理时间约为 6.28ms,每个位置点的平均处理时间可以低至 62.8us。本文表明,所提出的 CV 传感技术在处理目标区域的地理信息方面更加高效。通过结合卷积神经网络实现预测模型和地理信息的紧密耦合,提高了预测的效率和准确性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/36d1/8433789/62a44523b908/sensors-21-05688-g001.jpg

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