They See Me Rollin’: Inherent Vulnerability of the Rolling Shutter in CMOS Image Sensors

S. Köhler, Giulio Lovisotto, S. Birnbach, Richard Baker, I. Martinovic
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引用次数: 19

Abstract

In this paper, we describe how the electronic rolling shutter in CMOS image sensors can be exploited using a bright, modulated light source (e.g., an inexpensive, off-the-shelf laser), to inject fine-grained image disruptions. We demonstrate the attack on seven different CMOS cameras, ranging from cheap IoT to semi-professional surveillance cameras, to highlight the wide applicability of the rolling shutter attack. We model the fundamental factors affecting a rolling shutter attack in an uncontrolled setting. We then perform an exhaustive evaluation of the attack’s effect on the task of object detection, investigating the effect of attack parameters. We validate our model against empirical data collected on two separate cameras, showing that by simply using information from the camera’s datasheet the adversary can accurately predict the injected distortion size and optimize their attack accordingly. We find that an adversary can hide up to 75% of objects perceived by state-of-the-art detectors by selecting appropriate attack parameters. We also investigate the stealthiness of the attack in comparison to a naïve camera blinding attack, showing that common image distortion metrics can not detect the attack presence. Therefore, we present a new, accurate and lightweight enhancement to the backbone network of an object detector to recognize rolling shutter attacks. Overall, our results indicate that rolling shutter attacks can substantially reduce the performance and reliability of vision-based intelligent systems.
他们看到我在滚动:CMOS图像传感器中滚动快门的固有漏洞
在本文中,我们描述了CMOS图像传感器中的电子卷帘门如何使用明亮的调制光源(例如,廉价的现成激光器)来注入细粒度的图像中断。我们演示了对七种不同CMOS摄像机的攻击,从廉价的物联网到半专业的监控摄像机,以突出滚动快门攻击的广泛适用性。我们模拟了在不受控制的环境中影响滚动快门攻击的基本因素。然后,我们对攻击对目标检测任务的影响进行了详尽的评估,调查了攻击参数的影响。我们根据在两个单独的相机上收集的经验数据验证了我们的模型,表明通过简单地使用相机数据表中的信息,攻击者可以准确地预测注入的扭曲大小并相应地优化他们的攻击。我们发现,通过选择适当的攻击参数,攻击者可以隐藏高达75%的最先进的探测器所感知到的物体。我们还研究了与naïve相机致盲攻击相比攻击的隐身性,表明常见的图像失真指标无法检测到攻击的存在。因此,我们提出了一种新的、准确的、轻量级的增强目标检测器骨干网络来识别滚动快门攻击。总的来说,我们的研究结果表明,滚动快门攻击会大大降低基于视觉的智能系统的性能和可靠性。
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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