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Robust GNSS Shadow Matching for Smartphones in Urban Canyons

机译:强大的GNSS阴影匹配城市峡谷的智能手机

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摘要

GNSS is being widely used in different applications in navigation. However, GNSS positioning is greatly challenged by notorious multipath effects and non-line-of-sight (NLOS) receptions. The signal blockage and reflection by buildings cause these effects. In other words, the more urbanized the city is, the more challenge on the GNSS positioning. The conventional multipath mitigation approaches, such as the sophisticated design of GNSS receiver correlator, can efficiently mitigate the most of multipath effects. However, it has less capability against NLOS reception, potentially leading to several tens of positioning errors. Therefore, the 3D mapping aided (3DMA) GNSS positioning is introduced to exclude or even use the NLOS signal. Shadow matching is to make use of the similarity between building geometry and satellite visibility to improve the positioning performance. This paper introduces a machine learning intelligent classifier with features to distinguish LOS and NLOS. With the NLOS reception classification, the positioning accuracy of shadow matching can be increased. In addition, this paper develops several indicators to label the unreliable solution of shadow matching. These indicators are to examine the complexity of the surrounding environment, which is the key factor relating to the proposed shadow matching performance. Several designed experiments were done in Hong Kong to evaluate the proposed method. With the intelligent classifier, the average positioning accuracy is about 15m and 6m on 2D and the across-street direction, respectively. Simultaneously, the reliability evaluation rules can exclude unreliable epoch and improve the positioning results, especially on smartphone data.
机译:GNSS广泛用于导航中的不同应用中。然而,GNSS定位受到臭名昭着的多径效应和非视线(NLOS)接收的挑战。建筑物的信号堵塞和反射会导致这些效果。换句话说,这座城市的城市越多,对GNSS定位的挑战越多。传统的多径缓解方法,例如GNSS接收器相关器的复杂设计,可以有效地减轻大多数多径效应。然而,它具有对NLOS接收的能力较少,可能导致几十个定位误差。因此,引入了3D映射辅助(3DMA)GNSS定位以排除甚至使用NLOS信号。阴影匹配是利用建筑物几何和卫星可视性之间的相似性来提高定位性能。本文介绍了一种机器学习智能分类器,具有区分LOS和NLO的功能。利用NLOS接收分类,可以增加阴影匹配的定位精度。此外,本文开发了若干指标,以标记阴影匹配的不可靠解决方案。这些指标是检查周围环境的复杂性,这是与所提出的阴影匹配性能有关的关键因素。在香港进行了几项设计的实验,以评估所提出的方法。利用智能分级器,平均定位精度分别在2D和横向方向上约为15米和6米。同时,可靠性评估规则可以排除不可靠的时期并改善定位结果,特别是在智能手机数据上。

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