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T-BFA: <u>T</u>argeted <u>B</u>it-<u>F</u>lip Adversarial Weight <u>A</u>ttack

Adnan Siraj Rakin, Zhezhi He, Jingtao Li, Fan Yao, Chaitali Chakrabarti, Deliang Fan

2021IEEE Transactions on Pattern Analysis and Machine Intelligence58 citationsDOI

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. Asa 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 attacks 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 oftargetedBFA 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 searching 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.

Topics & Concepts

Class (philosophy)Dimension (graph theory)Computer scienceAdversarial systemArtificial intelligenceDeep learningArtificial neural networkAlgorithmArithmeticCombinatoricsMathematicsAdversarial Robustness in Machine LearningIntegrated Circuits and Semiconductor Failure AnalysisPhysical Unclonable Functions (PUFs) and Hardware Security
T-BFA: <u>T</u>argeted <u>B</u>it-<u>F</u>lip Adversarial Weight <u>A</u>ttack | Litcius