基于摄像头的目标识别系统的远程感知攻击及对策

IF 2 Q3 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Yanmao Man, Ming Li, Ryan M. Gerdes
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引用次数: 0

摘要

在基于视觉的物体识别系统中,成像传感器感知环境,然后出于决策目的对物体进行检测和分类;例如在障碍物周围操纵自动车辆或在监视设置中对入侵者发出警报。在这项工作中,我们展示了如何通过将对抗性图案远程投影到相机中,利用光学成像系统中的两种常见效果,即镜头闪光/重影效果和自动曝光控制,不引人注目地操纵基于相机的感知,使攻击者能够创建虚假对象或更改现有对象。为了提高攻击的鲁棒性,我们通过将对抗性机器学习技术与经过训练的端到端信道模型相结合来生成最优模式。我们在三个不同的相机上,在不同的环境下,使用低成本的投影仪,通过实验演示我们的攻击。结果表明,根据攻击距离的不同,包括在有针对性的条件下,攻击成功率可以高达100%。我们开发了一种对策,将检测基于重影的攻击的问题减少到验证是否存在与检测到的对象重叠的重影。我们利用时空一致性来消除误报。对实验数据的评估提供了5%的最坏情况等误差率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Remote Perception Attacks against Camera-based Object Recognition Systems and Countermeasures
In vision-based object recognition systems imaging sensors perceive the environment and then objects are detected and classified for decision-making purposes; e.g., to maneuver an automated vehicle around an obstacle or to raise alarms for intruders in surveillance settings. In this work we demonstrate how camera-based perception can be unobtrusively manipulated to enable an attacker to create spurious objects or alter an existing object, by remotely projecting adversarial patterns into cameras, exploiting two common effects in optical imaging systems, viz., lens flare/ghost effects and auto-exposure control. To improve the robustness of the attack, we generate optimal patterns by integrating adversarial machine learning techniques with a trained end-to-end channel model. We experimentally demonstrate our attacks using a low-cost projector on three different cameras, and under different environments. Results show that, depending on the attack distance, attack success rates can reach as high as 100%, including under targeted conditions. We develop a countermeasure that reduces the problem of detecting ghost-based attacks into verifying whether there is a ghost overlapping with a detected object. We leverage spatiotemporal consistency to eliminate false positives. Evaluation on experimental data provides a worst-case equal error rate of 5%.
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来源期刊
ACM Transactions on Cyber-Physical Systems
ACM Transactions on Cyber-Physical Systems COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS-
CiteScore
5.70
自引率
4.30%
发文量
40
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