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T-BFA: Targeted Bit-Flip Adversarial Weight Attack

Machine Learning 2021-01-11 v3 Cryptography and Security Machine Learning

Abstract

Traditional Deep Neural Network (DNN) security is mostly related to the well-known adversarial input example attack. Recently, another dimension of adversarial attack, namely, attack on DNN weight parameters, has been shown to be very powerful. As a representative one, the Bit-Flip-based adversarial weight Attack (BFA) injects an extremely small amount of faults into weight parameters to hijack the executing DNN function. Prior works of BFA focus on un-targeted attack that can hack all inputs into a random output class by flipping a very small number of weight bits stored in computer memory. This paper proposes the first work of targeted BFA based (T-BFA) adversarial weight attack on DNNs, which can intentionally mislead selected inputs to a target output class. The objective is achieved by identifying the weight bits that are highly associated with classification of a targeted output through a class-dependent weight bit ranking algorithm. Our proposed T-BFA performance is successfully demonstrated on multiple DNN architectures for image classification tasks. For example, by merely flipping 27 out of 88 million weight bits of ResNet-18, our T-BFA can misclassify all the images from 'Hen' class into 'Goose' class (i.e., 100 % attack success rate) in ImageNet dataset, while maintaining 59.35 % validation accuracy. Moreover, we successfully demonstrate our T-BFA attack in a real computer prototype system running DNN computation, with Ivy Bridge-based Intel i7 CPU and 8GB DDR3 memory.

Keywords

Cite

@article{arxiv.2007.12336,
  title  = {T-BFA: Targeted Bit-Flip Adversarial Weight Attack},
  author = {Adnan Siraj Rakin and Zhezhi He and Jingtao Li and Fan Yao and Chaitali Chakrabarti and Deliang Fan},
  journal= {arXiv preprint arXiv:2007.12336},
  year   = {2021}
}
R2 v1 2026-06-23T17:22:02.033Z