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High-Efficiency Urban 3D Radio Map Estimation Based on Sparse Measurements

CoRR(2024)

Cited 0|Views18
Abstract
Recent widespread applications for unmanned aerial vehicles (UAVs) – from infrastructure inspection to urban logistics – have prompted an urgent need for high-accuracy three-dimensional (3D) radio maps. However, existing methods designed for two-dimensional radio maps face challenges of high measurement costs and limited data availability when extended to 3D scenarios. To tackle these challenges, we first build a real-world large-scale 3D radio map dataset, covering over 4.2 million m^3 and over 4 thousand data points in complex urban environments. We propose a Gaussian Process Regression-based scheme for 3D radio map estimation, allowing us to realize more accurate map recovery with a lower RMSE than state-of-the-art schemes by over 2.5 dB. To further enhance data efficiency, we propose two methods for training point selection, including an offline clustering-based method and an online maximum a posterior (MAP)-based method. Extensive experiments demonstrate that the proposed scheme not only achieves full-map recovery with only 2 sheds light on future studies on 3D radio maps.
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3D radio map,Unmanned aerial vehicle (UAV),Gaussian Process Regression (GPR),sparse measurements
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要点】:论文提出了一种基于高斯过程回归的3D无线电地图估计方法,通过稀疏测量实现了高效的城市3D无线电地图估算,并显著降低了均方根误差(RMSE)超过2.5 dB。

方法】:作者采用高斯过程回归方案,并结合离线聚类和在线最大后验概率(MAP)方法进行训练点选择,以提高数据效率。

实验】:实验在一个覆盖超过4.2百万立方米、包含超过4000个数据点的实际大规模3D无线电地图数据集上进行,结果表明所提方法能在仅使用2%的数据点实现全图恢复,展示了方法的效率和准确性。