mmLock:用户离开检测,通过高质量毫米波雷达成像防止数据盗窃

Jiawei Xu, Ziqian Bi, Amit Singha, Tao Li, Yimin Chen, Yanchao Zhang
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引用次数: 0

摘要

智能设备,如智能手机、平板电脑和笔记本电脑的使用在过去十年中飞速增长。这些设备支持无处不在的娱乐、通信、生产力和医疗保健应用程序,但也引起了对用户隐私和数据安全的严重担忧。除了各种认证技术之外,基于用户离开检测的自动、即时设备锁定是保证设备安全不可或缺的手段。目前的用户离开检测技术主要依赖于声测距,在多运动目标环境下效果不佳。在本文中,我们提出了mmLock,一个能够在动态环境中更快、更准确地检测用户离开的系统。mmLock使用毫米波FMCW雷达捕捉用户的3D网格,并通过混合PointNet-LSTM模型从3D人体网格数据中检测离开手势。基于可解释的用户点云,mmLock比现有的只能识别原始信号模式的手势识别系统更健壮。我们使用商用现货(COTS) TI毫米波雷达在多种环境和场景中实施和评估mmLock。我们从超过1tb的毫米波信号数据中训练PointNet-LSTM模型,并在大多数情况下实现100%的真阳性率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
mmLock: User Leaving Detection Against Data Theft via High-Quality mmWave Radar Imaging
The use of smart devices such as smartphones, tablets, and laptops skyrocketed in the last decade. These devices enable ubiquitous applications for entertainment, communication, productivity, and healthcare but also introduce big concern about user privacy and data security. In addition to various authentication techniques, automatic and immediate device locking based on user leaving detection is an indispensable way to secure the devices. Current user leaving detection techniques mainly rely on acoustic ranging and do not work well in environments with multiple moving objects. In this paper, we present mmLock, a system that enables faster and more accurate user leaving detection in dynamic environments. mmLock uses a mmWave FMCW radar to capture the user's 3D mesh and detects the leaving gesture from the 3D human mesh data with a hybrid PointNet-LSTM model. Based on explainable user point clouds, mmLock is more robust than existing gesture recognition systems which can only identify the raw signal patterns. We implement and evaluate mmLock with a commercial off-the-shelf (COTS) TI mmWave radar in multiple environments and scenarios. We train the PointNet-LSTM model out of over 1 TB mmWave signal data and achieve 100% true-positive rate in most scenarios.
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