Through-Wall Human Pose Estimation Using Radio Signals

Mingmin Zhao, Tianhong Li, Mohammad Abu Alsheikh, Yonglong Tian, Hang Zhao, A. Torralba, D. Katabi
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引用次数: 435

Abstract

This paper demonstrates accurate human pose estimation through walls and occlusions. We leverage the fact that wireless signals in the WiFi frequencies traverse walls and reflect off the human body. We introduce a deep neural network approach that parses such radio signals to estimate 2D poses. Since humans cannot annotate radio signals, we use state-of-the-art vision model to provide cross-modal supervision. Specifically, during training the system uses synchronized wireless and visual inputs, extracts pose information from the visual stream, and uses it to guide the training process. Once trained, the network uses only the wireless signal for pose estimation. We show that, when tested on visible scenes, the radio-based system is almost as accurate as the vision-based system used to train it. Yet, unlike vision-based pose estimation, the radio-based system can estimate 2D poses through walls despite never trained on such scenarios. Demo videos are available at our website.
利用无线电信号的穿墙人体姿态估计
本文演示了通过墙壁和遮挡的准确人体姿态估计。我们利用WiFi频率的无线信号穿过墙壁并被人体反射的事实。我们引入了一种深度神经网络方法来解析这些无线电信号来估计二维姿态。由于人类无法注释无线电信号,我们使用最先进的视觉模型来提供跨模态监督。具体来说,在训练过程中,系统使用同步的无线和视觉输入,从视觉流中提取姿势信息,并用它来指导训练过程。经过训练后,网络只使用无线信号进行姿态估计。我们表明,当在可见场景中进行测试时,基于无线电的系统几乎与用于训练它的基于视觉的系统一样准确。然而,与基于视觉的姿势估计不同,基于无线电的系统可以隔着墙壁估计2D姿势,尽管从未接受过此类场景的训练。演示视频可以在我们的网站上找到。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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