Cai Zhijia, Li Zehao, Chen Zikai, Zhuo Hongyang, Zheng Lei, Wu Xianda, Liu Yong
School of Electronics and Communication Engineering, Guangzhou University, Guangzhou 510006, China.
School of Information and Optoelectronic Science and Engineering, South China Normal University, Guangzhou 510006, China.
Sensors (Basel). 2024 May 25;24(11):3414. doi: 10.3390/s24113414.
By integrating sensing capability into wireless communication, wireless sensing technology has become a promising contactless and non-line-of-sight sensing paradigm to explore the dynamic characteristics of channel state information (CSI) for recognizing human behaviors. In this paper, we develop an effective device-free human gesture recognition (HGR) system based on WiFi wireless sensing technology in which the complementary CSI amplitude and phase of communication link are jointly exploited. To improve the quality of collected CSI, a linear transform-based data processing method is first used to eliminate the phase offset and noise and to reduce the impact of multi-path effects. Then, six different time and frequency domain features are chosen for both amplitude and phase, including the mean, variance, root mean square, interquartile range, energy entropy and power spectral entropy, and a feature selection algorithm to remove irrelevant and redundant features is proposed based on filtering and principal component analysis methods, resulting in the construction of a feature subspace to distinguish different gestures. On this basis, a support vector machine-based stacking algorithm is proposed for gesture classification based on the selected and complementary amplitude and phase features. Lastly, we conduct experiments under a practical scenario with one transmitter and receiver. The results demonstrate that the average accuracy of the proposed HGR system is 98.3% and that the F1-score is over 97%.
通过将传感能力集成到无线通信中,无线传感技术已成为一种很有前景的非接触式和非视距传感范式,用于探索信道状态信息(CSI)的动态特性以识别人类行为。在本文中,我们基于WiFi无线传感技术开发了一种有效的免设备人体手势识别(HGR)系统,该系统联合利用了通信链路的互补CSI幅度和相位。为了提高采集到的CSI的质量,首先使用一种基于线性变换的数据处理方法来消除相位偏移和噪声,并减少多径效应的影响。然后,针对幅度和相位选择了六种不同的时域和频域特征,包括均值、方差、均方根、四分位距、能量熵和功率谱熵,并基于滤波和主成分分析方法提出了一种特征选择算法来去除不相关和冗余的特征,从而构建一个特征子空间来区分不同的手势。在此基础上,基于所选的互补幅度和相位特征,提出了一种基于支持向量机的堆叠算法用于手势分类。最后,我们在一个有一个发射器和一个接收器的实际场景下进行了实验。结果表明,所提出的HGR系统的平均准确率为98.3%,F1分数超过97%。