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LOS/NLOS Identification for Indoor UWB Positioning Based on Morlet Wavelet Transform and Convolutional Neural Networks

机译:基于Morlet小波变换和卷积神经网络的室内UWB定位LOS / NLOS识别

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摘要

In indoor ultra-wideband (UWB) positioning systems, positioning accuracy can be improved by determining the conditions of line-of-sight (LOS) and non-line-of-sight (NLOS) propagation and taking appropriate measures. The existing methods, such as support vector machine (SVM), decision tree (DT), k-Nearest Neighbor (KNN), identify LOS/NLOS mainly using time-domain characteristics. However, using only time-domain characteristics cannot achieve satisfactory performance. In this letter, we propose a LOS/NLOS identification method based on Morlet wave transform and convolutional neural networks (MWT-CNN). MWT-CNN is capable of identifying LOS/NLOS in the time-frequency domain. Our simulations are based on the 802.15.4a UWB model and an open-source dataset. The simulation results show that MWT-CNN achieves an accuracy of 100% in the office scenario, 99.89% in the industrial scenario, 96.10% in the residential scenario, and 98.84% in a real experimental scenario. Further simulation results show that MWT-CNN is more suitable to be deployed in static scenarios.
机译:在室内超宽带(UWB)定位系统中,通过确定视线(LOS)和非视线(NLOS)传播的条件并采取适当措施,可以提高定位精度。现有方法,例如支持向量机(SVM),决策树(DT),K最近邻(KNN),主要使用时域特征来识别LOS / NLO。但是,仅使用时域特征无法实现令人满意的性能。在这封信中,我们提出了一种基于Morlet波变换和卷积神经网络(MWT-CNN)的LOS / NLOS识别方法。 MWT-CNN能够在时频域中识别LOS / NLO。我们的模拟基于802.15.4a UWB模型和开源数据集。模拟结果表明,MWT-CNN在办公场景中实现了100%的准确性,在工业方案中99.89%,住宅方案96.10%,实际实验情况下98.84%。进一步的仿真结果表明,MWT-CNN更适合于静态场景部署。

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