A Human-in-the-Middle Attack Against Object Detection Systems

Han Wu;Sareh Rowlands;Johan Wahlström
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Abstract

Object detection systems using deep learning models have become increasingly popular in robotics thanks to the rising power of central processing units (CPUs) and graphics processing units (GPUs) in embedded systems. However, these models are susceptible to adversarial attacks. While some attacks are limited by strict assumptions on access to the detection system, we propose a novel hardware attack inspired by Man-in-the-Middle attacks in cryptography. This attack generates a universal adversarial perturbations (UAPs) and injects the perturbation between the universal serial bus (USB) camera and the detection system via a hardware attack. Besides, prior research is misled by an evaluation metric that measures the model accuracy rather than the attack performance. In combination with our proposed evaluation metrics, we significantly increased the strength of adversarial perturbations. These findings raise serious concerns for applications of deep learning models in safety-critical systems, such as autonomous driving.
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针对物体检测系统的中间人攻击
由于嵌入式系统中中央处理器(CPU)和图形处理器(GPU)的性能不断提升,使用深度学习模型的物体检测系统在机器人领域越来越受欢迎。然而,这些模型容易受到恶意攻击。有些攻击受限于访问检测系统的严格假设,而我们提出的新型硬件攻击则受密码学中的 "中间人 "攻击启发。这种攻击会产生一种通用对抗扰动(UAPs),并通过硬件攻击将扰动注入通用串行总线(USB)摄像头和检测系统之间。此外,先前的研究还受到了衡量模型准确性而非攻击性能的评估指标的误导。结合我们提出的评估指标,我们大大提高了对抗性扰动的强度。这些发现引起了人们对深度学习模型在自动驾驶等安全关键系统中应用的严重担忧。
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