Calibrating Time-variant, Device-specific Phase Noise for COTS WiFi Devices

Jincao Zhu, Youngbin Im, Shivakant Mishra, Sangtae Ha
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引用次数: 15

Abstract

Current COTS WiFi based work on wireless motion sensing extracts human movements such as keystroking and hand motion mainly from amplitude training to classify different types of motions, as obtaining meaningful phase values is very challenging due to time-varying phase noises occurred with the movement. However, the methods based only on amplitude training are not very practical since their accuracy is not environment and location independent. This paper proposes an effective phase noise calibration technique which can be broadly applicable to COTS WiFi based motion sensing. We leverage the fact that multi-path for indoor environment contains certain static paths, such as reflections from wall or static furniture, as well as dynamic paths due to human hand and arm movements. When a hand moves, the phase value of the signal from the hand rotates as the path length changes and causes the superposition of signals over static and dynamic paths in antenna and frequency domain. To evaluate the effectiveness of the proposed technique, we experiment with a prototype system that can track hand gestures in a non-intrusive manner, i.e. users are not equipped with any device, using COTS WiFi devices. Our evaluation shows that calibrated phase values provide much rich, yet robust information on motion tracking -- 80th percentile angle estimation error up to 14 degrees, 80th percentile tracking error up to 15 cm, and its robustness to the environment and the speed of movement.
校正时变,设备特定的相位噪声为COTS WiFi设备
目前基于COTS WiFi的无线体感工作主要是从振幅训练中提取人体动作,如击键和手部动作,对不同类型的动作进行分类,因为运动中会出现时变的相位噪声,很难获得有意义的相位值。然而,仅基于幅度训练的方法不太实用,因为它们的精度与环境和位置无关。本文提出了一种有效的相位噪声标定技术,可广泛应用于基于COTS WiFi的运动传感中。我们利用这样一个事实,即室内环境的多路径包含某些静态路径,例如来自墙壁或静态家具的反射,以及由于人的手和手臂运动而产生的动态路径。当手移动时,来自手的信号的相位值随着路径长度的变化而旋转,导致信号在天线域和频域的静态路径和动态路径上叠加。为了评估所提出技术的有效性,我们实验了一个原型系统,该系统可以以非侵入式的方式跟踪手势,即用户不配备任何设备,使用COTS WiFi设备。我们的评估表明,校准的相位值为运动跟踪提供了丰富而稳健的信息——第80百分位角度估计误差可达14度,第80百分位跟踪误差可达15厘米,并且其对环境和运动速度的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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