从众包GNSS Skyview数据中提取3D地图

João G. P. Rodrigues, Ana Aguiar
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引用次数: 6

摘要

城市环境的三维地图在蜂窝网络规划、城市规划和气候学等各个领域都很有用。这些模型通常使用昂贵的技术构建,例如使用3D建模工具手动注释,从卫星或航空摄影推断,或使用带有深度传感设备的专用硬件。在这项工作中,我们通过分析接收到的被障碍物(如建筑物)衰减的卫星信号,展示了可以从标准GNSS数据中提取3D城市地图。此外,我们还表明,这些模型可以从低精度的GNSS数据中提取,并在用户不受控制的日常通勤旅程中从标准智能手机中机会性地众包,从而释放出将该原理应用于更广泛领域的潜力。我们的建议在计算中考虑了位置不准确性,并适应了卫星信号信噪比的不同变异性。利用众包GNSS位置收集条件的多样性来减轻数据的偏差和噪声。使用来自900多个用户的众包数据,对二元分类模型进行了训练和评估。我们的研究结果表明,在典型的城市环境中,随机森林分类器在4米宽的体素上的泛化精度在79%到91%之间,这表明了所提出的方法在广泛的城市地区构建3D地图的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Extracting 3D Maps from Crowdsourced GNSS Skyview Data
3D maps of urban environments are useful in various fields ranging from cellular network planning to urban planning and climatology. These models are typically constructed using expensive techniques such as manual annotation with 3D modeling tools, extrapolated from satellite or aerial photography, or using specialized hardware with depth sensing devices. In this work, we show that 3D urban maps can be extracted from standard GNSS data, by analyzing the received satellite signals that are attenuated by obstacles, such as buildings. Furthermore, we show that these models can be extracted from low-accuracy GNSS data, crowdsourced opportunistically from standard smartphones during their user's uncontrolled daily commute trips, unleashing the potential of applying the principle to wide areas. Our proposal incorporates position inaccuracies in the calculations, and accommodates different sources of variability of the satellite signals' SNR. The diversity of collection conditions of crowdsourced GNSS positions is used to mitigate bias and noise from the data. A binary classification model is trained and evaluated on multiple urban scenarios using data crowdsourced from over 900 users. Our results show that the generalization accuracy for a Random Forest classifier in typical urban environments lies between 79% and 91% on 4 m wide voxels, demonstrating the potential of the proposed method for building 3D maps for wide urban areas.
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