WiMeasure:毫米级物体尺寸测量与商品WiFi设备

Xuanzhi Wang, Kai Niu, Anlan Yu, Jie Xiong, Zhiyu Yao, Junzhe Wang, Wenwei Li
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引用次数: 1

摘要

在过去的几年里,大量的无线信号如WiFi、RFID、UWB和毫米波被用于传感目的。在这些无线传感方式中,WiFi传感受到了广泛的关注,因为WiFi基础设施在我们周围环境中无处不在。虽然WiFi传感在捕获目标从粗粒度的活动和手势到细粒度的生命体征的运动信息方面取得了很大的成功,但由于WiFi信号的低频和小带宽,在精确获取目标尺寸方面仍然存在困难。即使毫米波雷达也只能实现非常粗粒度的尺寸测量。高精度物体尺寸传感需要使用高频波段(如太赫兹波段)的射频信号。在本文中,我们利用低频WiFi信号,在不需要任何学习和训练的情况下,实现精确的物体尺寸测量。关键的洞察力是,当一个物体在一对WiFi收发器之间移动时,WiFi CSI的变化包含奇异点(即奇点),我们观察到一个令人兴奋的机会,利用奇点的数量来测量物体的大小。在这项工作中,我们模拟了物体在靠近LoS路径时物体大小和奇点数量之间的关系,这为所提出的系统的工作奠定了理论基础。通过解决多重挑战,我们首次在商用WiFi卡上实现了基于WiFi的物体尺寸测量,并实现了2.6毫米的低中值误差。我们相信这项工作是WiFi传感的重要缺失部分,并为使用低成本低频射频信号进行尺寸测量打开了大门。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
WiMeasure: Millimeter-level Object Size Measurement with Commodity WiFi Devices
In the past few years, a large range of wireless signals such as WiFi, RFID, UWB and Millimeter Wave were utilized for sensing purposes. Among these wireless sensing modalities, WiFi sensing attracts a lot of attention owing to the pervasiveness of WiFi infrastructure in our surrounding environments. While WiFi sensing has achieved a great success in capturing the target’s motion information ranging from coarse-grained activities and gestures to fine-grained vital signs, it still has difficulties in precisely obtaining the target size owing to the low frequency and small bandwidth of WiFi signals. Even Millimeter Wave radar can only achieve a very coarse-grained size measurement. High precision object size sensing requires using RF signals in the extremely high-frequency band (e.g., Terahertz band). In this paper, we utilize low-frequency WiFi signals to achieve accurate object size measurement without requiring any learning or training. The key insight is that when an object moves between a pair of WiFi transceivers, the WiFi CSI variations contain singular points (i.e., singularities) and we observe an exciting opportunity of employing the number of singularities to measure the object size. In this work, we model the relationship between the object size and the number of singularities when an object moves near the LoS path, which lays the theoretical foundation for the proposed system to work. By addressing multiple challenges, for the first time, we make WiFi-based object size measurement work on commodity WiFi cards and achieve a surprisingly low median error of 2.6 mm. We believe this work is an important missing piece of WiFi sensing and opens the door to size measurement using low-cost low-frequency RF signals.
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