AnguLoc: Concurrent Angle of Arrival Estimation for Indoor Localization with UWB Radios

Milad Heydariaan, Hossein Dabirian, O. Gnawali
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引用次数: 30

Abstract

The angle of arrival (AoA) estimation is one of the commonly used techniques for indoor localization. Ultrawideband (UWB) radios facilitate AoA estimation through the measurement of the phase difference of arrival (PDoA) at multiple receiver antennas. Concurrent transmissions in UWB radios aim to increase the efficiency of localization systems by exploiting wireless interference. This paper first investigates the feasibility of AoA estimation with UWB radios in a concurrent scheme. State-of-the-art UWB indoor localization solutions use time difference of arrival (TDoA) in a concurrent scheme. These solutions rely on accurate timestamping of the concurrently received packets. However, due to the scheduling uncertainty of the UWB transmitter platform used in this area, an unavoidable timing jitter of 8 ns causes up to 2.4 m of the localization error. Therefore, the accuracy of solutions based on concurrent TDoA relies on additional timestamp correction, which adds to the complexity of the system. Our results show that concurrent AoA estimation remains unaffected by the transmitter scheduling uncertainties. AoA-based localization techniques face two main challenges: (1) front-back ambiguity of AoA for antenna array of size two; and (2) AoA measurement device’s unknown tilting. This paper then presents AnguLoc, an efficient and scalable indoor localization system that makes use of concurrent AoA estimation to reduce the number of required packet exchanges. AnguLoc uses an Angle Difference of Arrival (ADoA) technique, also generalizable to sequential AoA, to overcome the front-back angle measurement ambiguity problem, and to work with unknown tag tilting. We evaluate AnguLoc in an office environment on a recently introduced platform, Decawave PDoA node (DWM1002). Our results show that AnguLoc is 4 times faster than sequential AoA and improves the localization accuracy by up to 44.33% compared to state-of-the-art concurrency-based indoor localization solutions without relying on additional timestamp correction.
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超宽频无线电室内定位的同步到达角估计
到达角估计是室内定位中常用的技术之一。超宽带(UWB)无线电通过测量多个接收天线的到达相位差(PDoA)来促进AoA估计。超宽带无线电中的并发传输旨在利用无线干扰来提高定位系统的效率。本文首先研究了并发方案下UWB无线电AoA估计的可行性。最先进的超宽带室内定位解决方案在并发方案中使用到达时差(TDoA)。这些解决方案依赖于并发接收的数据包的准确时间戳。然而,由于该地区使用的UWB发射机平台调度的不确定性,不可避免的8 ns的时序抖动会导致高达2.4 m的定位误差。因此,基于并发TDoA的解的准确性依赖于额外的时间戳校正,这增加了系统的复杂性。结果表明,并发AoA估计不受发射机调度不确定性的影响。基于AoA的定位技术面临两个主要挑战:(1)对于尺寸为2的天线阵,AoA存在前后模糊性;(2) AoA测量装置的未知倾斜。本文提出了一种高效、可扩展的室内定位系统AnguLoc,该系统利用并发AoA估计来减少所需的分组交换数量。AnguLoc使用角到达差(ADoA)技术,也可推广到顺序AoA,以克服前后角度测量模糊问题,并处理未知标签倾斜。我们在最近推出的Decawave PDoA节点(DWM1002)的办公环境中对AnguLoc进行了评估。我们的研究结果表明,与最先进的基于并发的室内定位解决方案相比,AnguLoc比顺序AoA快4倍,并且在不依赖额外时间戳校正的情况下,将定位精度提高了44.33%。
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