Al-Qaness Mohammed A A, Abd Elaziz Mohamed, Kim Sunghwan, Ewees Ahmed A, Abbasi Aaqif Afzaal, Alhaj Yousif A, Hawbani Ammar
School of Computer Science, Wuhan University, Wuhan 430072, China.
Department of Mathematics, Faculty of Science, Zagazig University, Zagazig 44519, Egypt.
Sensors (Basel). 2019 Jul 29;19(15):3329. doi: 10.3390/s19153329.
Human motion detection and activity recognition are becoming vital for the applications in smart homes. Traditional Human Activity Recognition (HAR) mechanisms use special devices to track human motions, such as cameras (vision-based) and various types of sensors (sensor-based). These mechanisms are applied in different applications, such as home security, Human-Computer Interaction (HCI), gaming, and healthcare. However, traditional HAR methods require heavy installation, and can only work under strict conditions. Recently, wireless signals have been utilized to track human motion and HAR in indoor environments. The motion of an object in the test environment causes fluctuations and changes in the Wi-Fi signal reflections at the receiver, which result in variations in received signals. These fluctuations can be used to track object (i.e., a human) motion in indoor environments. This phenomenon can be improved and leveraged in the future to improve the internet of things (IoT) and smart home devices. The main Wi-Fi sensing methods can be broadly categorized as Received Signal Strength Indicator (RSSI), Wi-Fi radar (by using Software Defined Radio (SDR)) and Channel State Information (CSI). CSI and RSSI can be considered as device-free mechanisms because they do not require cumbersome installation, whereas the Wi-Fi radar mechanism requires special devices (i.e., Universal Software Radio Peripheral (USRP)). Recent studies demonstrate that CSI outperforms RSSI in sensing accuracy due to its stability and rich information. This paper presents a comprehensive survey of recent advances in the CSI-based sensing mechanism and illustrates the drawbacks, discusses challenges, and presents some suggestions for the future of device-free sensing technology.
人体运动检测和活动识别对于智能家居中的应用正变得至关重要。传统的人体活动识别(HAR)机制使用特殊设备来跟踪人体运动,例如摄像头(基于视觉)和各种类型的传感器(基于传感器)。这些机制被应用于不同的应用场景,如家庭安全、人机交互(HCI)、游戏和医疗保健。然而,传统的HAR方法需要大量安装,并且只能在严格的条件下工作。最近,无线信号已被用于在室内环境中跟踪人体运动和进行HAR。测试环境中物体的运动会导致接收器处Wi-Fi信号反射的波动和变化,从而导致接收信号的变化。这些波动可用于在室内环境中跟踪物体(即人体)的运动。这种现象在未来可以得到改进和利用,以改善物联网(IoT)和智能家居设备。主要的Wi-Fi传感方法大致可分为接收信号强度指示(RSSI)、Wi-Fi雷达(通过使用软件定义无线电(SDR))和信道状态信息(CSI)。CSI和RSSI可被视为无需设备的机制,因为它们不需要繁琐的安装,而Wi-Fi雷达机制需要特殊设备(即通用软件无线电外设(USRP))。最近的研究表明,由于其稳定性和丰富的信息,CSI在传感精度方面优于RSSI。本文对基于CSI的传感机制的最新进展进行了全面综述,阐述了其缺点,讨论了挑战,并对无设备传感技术的未来提出了一些建议。