Person re-identification (Re-ID) has become increasingly important as it supports a wide range of security applications. Traditional person Re-ID mainly relies on optical camera-based systems, which incur several limitations due to the changes in the appearance of people, occlusions, and human poses. In this work, we propose a WiFi vision-based system, 3D-ID, for person Re-ID in 3D space. Our system leverages the advances of WiFi and deep learning to help WiFi devices see, identify, and recognize people. In particular, we leverage multiple antennas on next-generation WiFi devices and 2D AoA estimation of the signal reflections to enable WiFi to visualize a person in the physical environment. We then leverage deep learning to digitize the visualization of the person into 3D body representation and extract both the static body shape and dynamic walking patterns for person Re-ID. Our evaluation results under various indoor environments show that the 3D-ID system achieves an overall rank-1 accuracy of 85.3%. Results also show that our system is resistant to various attacks. The proposed 3D-ID is thus very promising as it could augment or complement camera-based systems.
翻译:传统个人再识别(Re-ID)已变得日益重要,因为它支持了广泛的安全应用。传统的人再识别(Re-ID)已变得日益重要,因为它支持了广泛的安全应用。传统的人再识别(Re-ID)主要依赖光学摄像系统,这些系统由于人们的外观、隐蔽性和人造面的变化而受到若干限制。在这项工作中,我们提议为3D空间的人再识别(Re-ID)建立一个WiFi基于视觉的系统(3D-ID)。我们的系统利用WiFi系统的进步和深层学习帮助WiFi设备看到、识别和识别人们。特别是,我们利用下一代WiFi设备上的多个天线和2D AoA对信号反射的估算使WiFi能够将一个人在物理环境中的视觉化。我们随后利用深层次的学习,将一个人的视觉化数字化为3D体表示,并提取个人再识别(ID)的静态体形状和动态行走模式。我们在不同室内环境中的评估结果显示,3D-ID系统的总级-1准确率为85.3%。结果还表明我们的系统对各种攻击具有抵抗力。拟议的3D-ID非常有希望,因为它可以增强或补充摄像机系统。