用一对商品Wi-Fi设备实现低成本的被动运动跟踪

Wei Guo;Lei Jing
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引用次数: 1

摘要

随着Wi-Fi设备的普及和物联网的发展,基于Wi-Fi的被动运动跟踪引起了人们的极大关注。大多数现有的工作利用信道状态信息(CSI)的到达角(AoA)、飞行时间(ToF)和多普勒频移(DFS)来跟踪人体运动。然而,它们通常需要多对Wi-Fi设备和广泛的数据训练才能获得准确的结果,这在实际应用中是不现实的。在本文中,我们提出了Wi-Fi运动跟踪(WiMT),这是一种基于单对商品Wi-Fi设备的低成本被动运动跟踪系统。WiMT使用从具有一个天线的发射机和具有三个天线的接收机获得的CSI来计算多普勒速度和相位差。针对目标静止时多普勒速度的随机噪声,提出了零速度识别与校准算法。我们以多普勒速度作为测量值,并使用粒子滤波器来估计运动轨迹。为了消除置信度低的粒子,提出了一种基于相位差信息的粒子权重更新方法。在真实室内环境中的实验结果表明,WiMT具有良好的性能,运动跟踪中值误差为7.28cm,非运动识别准确率为92.6%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Toward Low-Cost Passive Motion Tracking With One Pair of Commodity Wi-Fi Devices
With the popularity of Wi-Fi devices and the development of the Internet of Things (IoT), Wi-Fi-based passive motion tracking has attracted significant attention. Most existing works utilize the Angle of Arrival (AoA), Time of Flight (ToF), and Doppler Frequency Shift (DFS) of the Channel State Information (CSI) to track human motions. However, they usually require multiple pairs of Wi-Fi devices and extensive data training to achieve accurate results, which is unrealistic in practical applications. In this article, we propose Wi -Fi M otion T racking ( WiMT ), a low-cost passive motion tracking system based on a single pair of commodity Wi-Fi devices. WiMT calculates the Doppler velocity and phase difference using the CSI obtained from the transmitter with one antenna and the receiver with three antennas. The Z ero V elocity I dentification and C alibration ( ZVIC ) algorithm is proposed to remove the random noise of Doppler velocity when the target is stationary. We take the Doppler velocity as the measurement and employ a particle filter to estimate the motion trajectory. A particle weight update method based on phase difference information is developed to eliminate particles with low confidence. Experimental results in real indoor environment show that WiMT achieves great performance with a motion tracking median error of 7.28 cm and a nonmoving recognition accuracy of 92.6%.
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