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Device-Free Hand Gesture Recognition System Based on Commercial Wi-Fi Devices

机译:基于商用Wi-Fi设备的无设备手势识别系统

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Recently, the hand gesture recognition has attracted great interest of researchers due to its important role in human-computer interaction (HCI), smart home applications and virtual reality (VR). The conventional systems mainly utilize additional equipment, such like dedicated sensors and cameras, resulting in higher cost and limitation in application scenarios. In this paper, we present a new gesture recognition system by leveraging the channel state information (CSI) which can be extracted from commodity Wi-Fi device. We design a novel interference elimination algorithm to diminish the influence caused by the signals reflected from static objects and the signal that travels from the transmitter to the receiver directly. After interference elimination, the system can capture the signal reflected from the hand and sample this signal. Then, the sample values are used to construct a virtual antenna array to estimate the moving trajectory of hand. At last, we use Support Vector Machine (SVM) to classify the trajectories and complete the gesture recognition. The extensive analytical and experimental results demonstrate our system can achieve an average accuracy of 0.97 for designed 6 single-hand gestures. Moreover, the system is capable of performing two-hand gesture recognition and it can reach an average accuracy of 0.95 for designed 3 two-hand gestures.
机译:最近,由于在人机交互(HCI),智能家庭应用和虚拟现实(VR)中的重要作用,手势识别引起了研究人员的极大兴趣。传统系统主要利用附加设备,例如专用传感器和摄像机,从而提高应用方案的成本更高和限制。在本文中,我们通过利用可以从商品Wi-Fi设备中提取的信道状态信息(CSI)来提出新的手势识别系统。我们设计一种新颖的干扰消除算法,以减少由静态对象反射的信号和直接从发射机传输到接收器的信号引起的影响。在干扰消除之后,系统可以捕获从手中反射的信号并采样该信号。然后,采样值用于构造虚拟天线阵列以估计手的移动轨迹。最后,我们使用支持向量机(SVM)来分类轨迹并完成手势识别。广泛的分析和实验结果表明,对于设计的6个单手手势,我们的系统可以实现0.97的平均精度。此外,该系统能够执行两手手势识别,并且对于所设计的3双手势手势,它可以达到0.95的平均精度。

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