E-Eye: Hidden Electronics Recognition through mmWave Nonlinear Effects

Zhengxiong Li, Zhuolin Yang, Chen Song, Changzhi Li, Zhengyu Peng, Wenyao Xu
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引用次数: 36

Abstract

While malicious attacks on electronic devices (e-devices) have become commonplace, the use of e-devices themselves for malicious attacks has increased (e.g., explosives and eavesdropping). Modern e-devices (e.g., spy cameras, bugs or concealed weapons) can be sealed in parcels/boxes, hidden under clothing or disguised with cardboard to conceal their identities (named as hidden e-devices hereafter), which brings challenges in security screening. Inspection equipment (e.g., X-ray machines) is bulky and expensive. Moreover, screening reliability still rests on human performance, and the throughput in security screening of passengers and luggages is very limited. To this end, we propose to develop a low-cost and practical hidden e-device recognition technique to enable efficient screenings for threats of hidden electronic devices in daily life. First, we investigate and model the characteristics of nonlinear effects, a special passive response of electronic devices under millimeter-wave (mmWave) sensing. Based on this theory and our preliminary experiments, we design and implement, E-Eye, an end-to-end portable hidden electronics recognition system. E-Eye comprises a low-cost (i.e., under $100), portable (i.e., 11.8cm by 4.5cm by 1.8cm) and light-weight (i.e., 45.5g) 24GHz mmWave probe and a smartphone-based e-device recognizer. To validate the E-Eye performance, we conduct experiments with 46 commodity electronic devices under 39 distinct categories. Results show that E-Eye can recognize hidden electronic devices in parcels/boxes with an accuracy of more than 99% and has an equal error rate (EER) approaching 0.44% under a controlled lab setup. Moreover, we evaluate the reliability, robustness and performance variation of E-Eye under various real-world circumstances, and E-Eye can still achieve accuracy over 97%. Intensive evaluation indicates that E-Eye is a promising solution for hidden electronics recognition in daily life.
电子眼:毫米波非线性效应下的隐藏电子识别
虽然对电子设备(电子设备)的恶意攻击已经变得司空见惯,但利用电子设备本身进行恶意攻击的情况也有所增加(例如,爆炸和窃听)。现代电子设备(如间谍相机、窃听器或隐藏武器)可以密封在包裹/盒子内、隐藏在衣服下或用纸板伪装以隐藏其身份(下文称为隐藏电子设备),这给安全检查带来挑战。检查设备(如x光机)体积庞大,价格昂贵。此外,安检的可靠性仍然取决于人的表现,旅客和行李的安检吞吐量非常有限。为此,我们建议开发一种低成本和实用的隐藏电子设备识别技术,以有效筛查日常生活中隐藏电子设备的威胁。首先,我们研究了毫米波(mmWave)传感下电子器件的一种特殊被动响应——非线性效应的特性并建立了模型。基于这一理论和初步实验,我们设计并实现了端到端便携式隐藏电子识别系统E-Eye。E-Eye包括一个低成本(即100美元以下),便携式(即11.8cm × 4.5cm × 1.8cm)和轻量级(即45.5g) 24GHz毫米波探头和一个基于智能手机的电子设备识别器。为了验证E-Eye的性能,我们对39个不同类别的46种商品电子设备进行了实验。结果表明,E-Eye识别包裹/盒子中隐藏的电子设备的准确率超过99%,在受控的实验室设置下,相等错误率(EER)接近0.44%。此外,我们评估了E-Eye在各种现实环境下的可靠性、鲁棒性和性能变化,E-Eye仍然可以达到97%以上的准确率。深入评估表明,E-Eye是一种很有前途的解决方案,用于日常生活中的隐藏电子识别。
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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