Ma Xiaolin, Zhao Running, Liu Xinhua, Kuang Hailan, Al-Qaness Mohammed A A
Key Laboratory of Fiber Optical Sensing Technology and Information Processing, Ministry of Education, and Hubei Key Laboratory of Broadband Wireless Communication and Sensor Networks, School of Information Engineering, Wuhan University of Technology, Wuhan 430070, China.
School of Computer Science, Wuhan University, Wuhan 430072, China.
Sensors (Basel). 2019 Jun 7;19(11):2598. doi: 10.3390/s19112598.
Human motion classification based on micro-Doppler effect has been widely used in various fields. However, the motion classification performance would be greatly degraded if the wireless environment has non-target micro-motion interference. In this case, the interference signal aliases with the signal of target human motions and then generates cross-terms, making the signals hard to be used to identify target human motions. Existing methods do not consider this non-target micro-motion interference and have poor resistance to such interference. In this paper, we propose a target human motion classification system that can work in the scenarios with non-target micro-motion interference. Specifically, we build a continuous wave radar transceiver working in a low-frequency radar band using the software defined radio equipment Universal Software Radio Peripheral (USRP) N210 to collect signals. Moreover, we use Empirical Mode Decomposition and S-transform successively to remove non-target micro-motion interference and improve the time-frequency resolution of the raw signal. Then, an Energy Aggregation method based on S-method is proposed, which can suppress cross-terms and background noise. Furthermore, we extract a set of features and classify four human motions by adopting Bagged Trees. Extensive experiments using the test-bed show that under the scenarios with non-target micro-motion interference, 97.3% classification accuracy can be achieved.
基于微多普勒效应的人体运动分类已在各个领域得到广泛应用。然而,如果无线环境存在非目标微运动干扰,运动分类性能将大幅下降。在这种情况下,干扰信号与目标人体运动信号产生混叠,进而产生交叉项,使得信号难以用于识别目标人体运动。现有方法未考虑这种非目标微运动干扰,对其抗干扰能力较差。本文提出了一种能在存在非目标微运动干扰的场景中工作的目标人体运动分类系统。具体而言,我们使用软件定义无线电设备通用软件无线电外设(USRP)N210构建了一个工作在低频雷达频段的连续波雷达收发器来采集信号。此外,我们先后使用经验模态分解和S变换来去除非目标微运动干扰并提高原始信号的时频分辨率。然后,提出了一种基于S方法的能量聚集方法,该方法可以抑制交叉项和背景噪声。此外,我们提取了一组特征,并采用袋装树对四种人体运动进行分类。使用测试平台进行的大量实验表明,在存在非目标微运动干扰的场景下,分类准确率可达97.3%。