街角雷达:基于射频的室内角落定位

Shichao Yue, Hao He, Peng-Xia Cao, Kaiwen Zha, Masayuki Koizumi, D. Katabi
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引用次数: 5

摘要

无人机器人越来越多地在工厂、商场和酒店等人类周围使用。当它们在我们的空间中穿行时,重要的是要确保这些机器人不会与转弯时突然出现的人发生碰撞。然而,目前还没有切实可行的解决方案来将人们定位到各个角落。光学解决方案试图通过地板或侧壁上的可见阴影来追踪隐藏的人,但它们很容易失败,这取决于周围的光线和环境。最近的工作考虑使用射频(RF)信号来跟踪街角的人和车辆。然而,过去基于射频的建议依赖于一个简单的光线追踪模型,在实际的室内场景中失败。本文介绍了一种基于射频的精确室内转角定位方法——街角雷达。CornerRadar解决了过去工作中使用的光线追踪模型的局限性。它通过一种新颖的编码来实现射频信号如何在墙壁和遮挡物上反射。编码,我们称之为提示图,然后与无线电信号一起被馈送到神经网络,以定位拐角处的人。在56个室内环境中对拐角处移动的人进行的经验评估表明,与过去基于射频的解决方案相比,在拐角处定位人员时,CornerRadar的中位数误差要小3到12倍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CornerRadar: RF-Based Indoor Localization Around Corners
Unmanned robots are increasingly used around humans in factories, malls, and hotels. As they navigate our space, it is important to ensure that such robots do not collide with people who suddenly appear as they turn a corner. Today, however, there is no practical solution for localizing people around corners. Optical solutions try to track hidden people through their visible shadows on the floor or a sidewall, but they can easily fail depending on the ambient light and the environment. More recent work has considered the use of radio frequency (RF) signals to track people and vehicles around street corners. However, past RF-based proposals rely on a simplistic ray-tracing model that fails in practical indoor scenarios. This paper introduces CornerRadar, an RF-based method that provides accurate around-corner indoor localization. CornerRadar addresses the limitations of the ray-tracing model used in past work. It does so through a novel encoding of how RF signals bounce off walls and occlusions. The encoding, which we call the hint map , is then fed to a neural network along with the radio signals to localize people around corners. Empirical evaluation with people moving around corners in 56 indoor environments shows that CornerRadar achieves a median error that is 3x to 12x smaller than past RF-based solutions for localizing people around corners.
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