College of Electronic and Information Engineering, Shandong University of Science and Technology, Qingdao 266590, China.
Sensors (Basel). 2022 Nov 11;22(22):8738. doi: 10.3390/s22228738.
With the increasing demand for human-computer interaction and health monitoring, human behavior recognition with device-free patterns has attracted extensive attention. The fluctuations of the Wi-Fi signal caused by human actions in a Wi-Fi coverage area can be used to precisely identify the human skeleton and pose, which effectively overcomes the problems of the traditional solution. Although many promising results have been achieved, no survey summarizes the research progress. This paper aims to comprehensively investigate and analyze the latest applications of human behavior recognition based on channel state information (CSI) and the human skeleton. First, we review the human profile perception and skeleton recognition progress based on wireless perception technologies. Second, we summarize the general framework of precise pose recognition, including signal preprocessing methods, neural network models, and performance results. Then, we classify skeleton model generation methods into three categories and emphasize the crucial difference among these typical applications. Furthermore, we discuss two aspects, such as experimental scenarios and recognition targets. Finally, we conclude the paper by summarizing the issues in typical systems and the main research directions for the future.
随着人机交互和健康监测需求的不断增加,基于无设备模式的人体行为识别引起了广泛关注。人体在 Wi-Fi 覆盖范围内的动作引起的 Wi-Fi 信号波动可用于精确识别人体骨架和姿势,从而有效地克服了传统解决方案的问题。尽管已经取得了许多有前途的成果,但没有调查总结研究进展。本文旨在全面调查和分析基于信道状态信息 (CSI) 和人体骨骼的最新人体行为识别应用。首先,我们回顾了基于无线感知技术的人体轮廓感知和骨架识别进展。其次,我们总结了精确姿势识别的一般框架,包括信号预处理方法、神经网络模型和性能结果。然后,我们将骨架模型生成方法分为三类,并强调这些典型应用之间的关键区别。此外,我们讨论了实验场景和识别目标这两个方面。最后,我们总结了典型系统中的问题和未来的主要研究方向。