Towards Multi-Person Gesture Recognition using Commodity Wi-Fi

Xiaozhuang Liu, Zhenxing Niu, Wenye Wang
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Abstract

Comparing the recognition of human gestures using cameras, radar, or LiDAR, a WiFi-based gesture recognition system has distinct advantages, such as being low-cost, being device-free, and having much less privacy leakage. Recently, there have been advancements in WiFi-based gesture recognition, but most of the research has primarily focused on single-person gesture recognition. However, in real-world scenarios like e-learning, it is common for multiple individuals to engage in different actions simultaneously. To this end, this paper focuses on multi-person gesture recognition, which presents two major challenges, that is, the recognition accuracy due to the WiFi signal interference, and the processing time for real-time applications. Multi-person gesture recognition is more challenging than single-person scenario due to the interference caused by the superposition of WiFi signals induced by multiple moving individuals. In this paper, we define a concept of super-gesture and propose a WiFi-based Super-Gesture recognition (WiSG) method. Through the decomposition of the super-gesture's DFS spectrogram by Multi-Motion Trajectory algorithm, we extract modified signals of each person. Moreover, a novel feature called Field Motion Velocity is proposed by fully exploiting the advantages of our multiple transmitter-receiver WiFi sensing system. The proposed feature is not significantly affected by domains such as position, orientation, and other factors irrelevant to gestures. As a result, our approach can effectively recognize gestures across different domains. Evaluation results show that the cross-domain recognition accuracy of our WiSG can achieve up to 89% in multi-person scenario. Moreover, our approach can reduce processing time by 20 times against Widar3.0, which satisfies the requirements of most real-time applications.
利用商用Wi-Fi实现多人手势识别
与使用摄像头、雷达或激光雷达识别人类手势相比,基于wifi的手势识别系统具有明显的优势,例如成本低、不需要设备、隐私泄露少得多。最近,基于wifi的手势识别已经取得了一些进展,但大多数研究主要集中在单人手势识别上。然而,在像电子学习这样的现实场景中,多个个体同时参与不同的操作是很常见的。为此,本文重点研究了多人手势识别技术,该技术面临着两大挑战,即WiFi信号干扰对识别精度的影响,以及实时应用的处理时间。多人手势识别比单人场景更具挑战性,因为多人移动会引起WiFi信号的叠加干扰。本文定义了超级手势的概念,提出了一种基于wifi的超级手势识别(WiSG)方法。通过多运动轨迹算法对超级手势的DFS谱图进行分解,提取每个人的修正信号。此外,通过充分利用我们的多收发WiFi传感系统的优势,提出了一种称为场运动速度的新功能。所提出的特征不受位置、方向和其他与手势无关的因素等域的显著影响。因此,我们的方法可以有效地识别不同领域的手势。评估结果表明,在多人场景下,WiSG的跨域识别准确率可达到89%。与Widar3.0相比,我们的方法可以将处理时间缩短20倍,满足大多数实时应用的要求。
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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