This paper presents GoPose, a 3D skeleton-based human pose estimation system that uses WiFi devices at home. Our system leverages the WiFi signals reflected off the human body for 3D pose estimation. In contrast to prior systems that need specialized hardware or dedicated sensors, our system does not require a user to wear or carry any sensors and can reuse the WiFi devices that already exist in a home environment for mass adoption. To realize such a system, we leverage the 2D AoA spectrum of the signals reflected from the human body and the deep learning techniques. In particular, the 2D AoA spectrum is proposed to locate different parts of the human body as well as to enable environment-independent pose estimation. Deep learning is incorporated to model the complex relationship between the 2D AoA spectrums and the 3D skeletons of the human body for pose tracking. Our evaluation results show GoPose achieves around 4.7cm of accuracy under various scenarios including tracking unseen activities and under NLoS scenarios.
翻译:本文展示了基于三维骨骼的人体外观估计系统GoPose, 该系统使用家用无线网络设备。我们的系统利用人体反射的无线网络信号进行三维的估算。与以前需要专门硬件或专用传感器的系统相比,我们的系统并不要求用户穿戴或携带任何传感器,而是可以再利用家用环境中已有的无线网络设备进行大规模应用。为了实现这样一个系统,我们利用了从人体和深层学习技术中反映的2D AoA信号的2D频谱。特别是,2D AoA频谱建议定位人体的不同部分,并能够进行以环境为依存的外观估计。深度学习被纳入了2D AoA频谱和人体的3D骨架之间的复杂关系模型,以进行外观跟踪。我们的评估结果显示,GoPose在各种情景下,包括跟踪看不见的活动和NLOS情景下,实现了约4.7厘米的准确度。