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RoArray: Towards More Robust Indoor Localization Using Sparse Recovery with Commodity WiFi

机译:RoArray:使用商品WiFi进行稀疏恢复,实现更强大的室内本地化

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With the multi-antenna design of WiFi interfaces, phased array has become a promising mechanism for accurate WiFi localization. State-of-the-art WiFi-based solutions using Angle-of-Arrival (AoA), however, face a number of critical challenges. First, their localization accuracy degrades dramatically due to low Signal-to-Noise Ratio (SNR) and incoherent processing. Second, they tend to produce outliers when the available number of packets is low. Moreover, the prior phase calibration schemes are not multipath robust and accurate enough. All of the above degrade the robustness of localization systems. In this paper, we present ROArray, a RObust Array based system that accurately localizes a target even with low SNRs. The key insight of ROArray is to use sparse recovery and coherent processing across all available domains, including time, frequency, and spatial domains. Specifically, in the spatial domain, ROArray can produce sharp AoA spectrums by parameterizing the steering vector based on a sparse grid. Then, to expand into the frequency domain, it jointly estimates the Time-of-Arrival (ToAs) and AoAs of all the paths using multi-subcarrier OFDM measurements. Furthermore, through a novel multi-packet fusion scheme, ROArray is enabled to perform coherent estimation over multiple packets. Such coherent processing not only increases the virtual aperture size, which enlarges the number of maximum resolvable paths but also improves the system robustness to noise. In addition, ROArray includes an online phase calibration technique that can eliminate random phase offsets while keeping communication uninterrupted. Our implementation using off-the-shelf WiFi cards demonstrates that, with low SNRs, ROArray significantly outperforms state-of-the-art solutions in terms of localization accuracy; when medium or high SNRs are present, it achieves comparable accuracy.
机译:随着WiFi接口的多天线设计,相控阵已成为一种用于精确WiFi定位的有前途的机制。然而,使用到达角(AoA)的基于WiFi的最新解决方案面临许多关键挑战。首先,由于低的信噪比(SNR)和不连贯的处理,它们的定位精度急剧下降。其次,当可用数据包数量较少时,它们往往会产生异常值。此外,现有的相位校准方案还不够多径鲁棒性和准确性。所有上述所有降低了定位系统的鲁棒性。在本文中,我们介绍了ROArray,这是一种基于RObust Array的系统,即使在低SNR的情况下也可以精确地定位目标。 ROArray的关键见解是在所有可用域(包括时间,频率和空间域)上使用稀疏恢复和相干处理。具体而言,在空间域中,ROArray可以通过基于稀疏网格对转向矢量进行参数化来生成清晰的AoA频谱。然后,为了扩展到频域,它使用多子载波OFDM测量来联合估计所有路径的到达时间(ToAs)和AoA。此外,通过新颖的多数据包融合方案,ROArray可以对多个数据包执行相干估计。这种相干处理不仅增加了虚拟孔径的大小,从而增加了最大可分辨路径的数量,而且还提高了系统对噪声的鲁棒性。另外,ROArray包含在线相位校准技术,该技术可以消除随机相位偏移,同时保持通信不中断。我们使用现成的WiFi卡实现的结果表明,在低SNR的情况下,ROArray在定位精度方面明显优于最新解决方案。当存在中等或高SNR时,它可以达到可比的精度。

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