Imperceptible Misclassification Attack on Deep Learning Accelerator by Glitch Injection

Wenye Liu, Chip-Hong Chang, Fan Zhang, Xiaoxuan Lou
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引用次数: 24

Abstract

The convergence of edge computing and deep learning empowers endpoint hardwares or edge devices to perform inferences locally with the help of deep neural network (DNN) accelerator. This trend of edge intelligence invites new attack vectors, which are methodologically different from the well-known software oriented deep learning attacks like the input of adversarial examples. Current studies of threats on DNN hardware focus mainly on model parameters interpolation. Such kind of manipulation is not stealthy as it will leave non-erasable traces or create conspicuous output patterns. In this paper, we present and investigate an imperceptible misclassification attack on DNN hardware by introducing infrequent instantaneous glitches into the clock signal. Comparing with falsifying model parameters by permanent faults, corruption of targeted intermediate results of convolution layer(s) by disrupting associated computations intermittently leaves no trace. We demonstrated our attack on nine state-of-the-art ImageNet models running on Xilinx FPGA based deep learning accelerator. With no knowledge about the models, our attack can achieve over 98% misclassification on 8 out of 9 models with only 10% glitches launched into the computation clock cycles. Given the model details and inputs, all the test images applied to ResNet50 can be successfully misclassified with no more than 1.7% glitch injection.
边缘计算和深度学习的融合使端点硬件或边缘设备能够在深度神经网络(DNN)加速器的帮助下在本地执行推理。这种边缘智能的趋势引发了新的攻击向量,这些攻击向量在方法上不同于众所周知的面向软件的深度学习攻击,比如对抗性示例的输入。目前对深度神经网络硬件威胁的研究主要集中在模型参数插值方面。这种操作不是隐形的,因为它会留下不可擦除的痕迹或产生明显的输出模式。在本文中,我们提出并研究了通过在时钟信号中引入罕见的瞬时故障来对DNN硬件进行难以察觉的错误分类攻击。与用永久故障伪造模型参数相比,通过间歇性地破坏相关计算来破坏卷积层的目标中间结果不会留下痕迹。在不了解模型的情况下,我们的攻击可以在9个模型中的8个模型上实现超过98%的错误分类,只有10%的故障启动到计算时钟周期中。在给定模型细节和输入的情况下,应用于ResNet50的所有测试图像都可以成功误分类,误差不超过1.7%。
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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