Department of Science and Technology, Nara Institute of Science and Technology, 8916-5 Takayama-cho, Ikoma 630-0192, Japan.
RIKEN Center for Advanced Intelligence Project AIP, 1-4-1 Nihon-bashi, Tokyo 103-0027, Japan.
Sensors (Basel). 2024 May 21;24(11):3277. doi: 10.3390/s24113277.
To provide diverse in-home services like elderly care, versatile activity recognition technology is essential. Radio-based methods, including WiFi CSI, RFID, and backscatter communication, are preferred due to their minimal privacy intrusion, reduced physical burden, and low maintenance costs. However, these methods face challenges, including environmental dependence, proximity limitations between the device and the user, and untested accuracy amidst various radio obstacles such as furniture, appliances, walls, and other radio waves. In this paper, we propose a frequency-shift backscatter tag-based in-home activity recognition method and test its feasibility in a near-real residential setting. Consisting of simple components such as antennas and switches, these tags facilitate ultra-low power consumption and demonstrate robustness against environmental noise because a context corresponding to a tag can be obtained by only observing frequency shifts. We implemented a sensing system consisting of SD-WiFi, a software-defined WiFi AP, and physical switches on backscatter tags tailored for detecting the movements of daily objects. Our experiments demonstrate that frequency shifts by tags can be detected within a 2 m range with 72% accuracy under the line of sight (LoS) conditions and achieve a 96.0% accuracy (F-score) in recognizing seven typical daily living activities with an appropriate receiver/transmitter layout. Furthermore, in an additional experiment, we confirmed that increasing the number of overlaying packets enables frequency shift-detection even without LoS at distances of 3-5 m.
为了提供多样化的居家服务,如老年人护理,需要多功能的活动识别技术。基于无线电的方法,包括 WiFi CSI、RFID 和反向散射通信,由于其隐私入侵最小、物理负担降低和维护成本低而受到青睐。然而,这些方法面临着一些挑战,包括对环境的依赖、设备和用户之间的接近限制,以及在各种无线电障碍物(如家具、电器、墙壁和其他无线电波)中未经测试的准确性。在本文中,我们提出了一种基于频移反向散射标签的居家活动识别方法,并在近乎真实的住宅环境中测试了其可行性。这些标签由天线和开关等简单组件组成,可实现超低功耗,并且由于可以通过仅观察频率偏移来获得与标签对应的上下文,因此具有对环境噪声的鲁棒性。我们实现了一个由 SD-WiFi、软件定义的 WiFi AP 和反向散射标签上的物理开关组成的传感系统,专门用于检测日常物品的运动。我们的实验表明,在视距 (LoS) 条件下,标签的频率偏移可以在 2m 的范围内以 72%的准确率检测到,并在适当的接收器/发射器布局下以 96.0%的准确率(F 分数)识别出七种典型的日常生活活动。此外,在另一个实验中,我们证实通过增加重叠数据包的数量,即使在没有 LoS 的情况下,也可以在 3-5m 的距离处检测到频率偏移。