Deep Neural Network에 대한 클럭 글리치 기반 오류 주입 공격

Vol. 34, No. 5, pp. 855-863, 10월. 2024
10.13089/JKIISC.2024.34.5.855, Full Text:
Keywords: Artificial Intelligent Security, deep neural network, Fault injection attack, Clock Glitch-based Fault Injection, Hardware Security
Abstract

The use of Deep Neural Network (DNN) is gradually increasing in various fields due to their high efficiency in data analysis and prediction. However, as the use of deep neural networks becomes more frequent, the security threats associated with them are also increasing. In particular, if a fault occurs in the forward propagation process and activation function that can directly affect the prediction of deep neural network, it can have a fatal damage on the prediction accuracy of the model. In this paper, we performed some fault injection attacks on the forward propagation process of each layer except the input layer in a deep neural network and the Softmax function used in the output layer, and analyzed the experimental results. As a result of fault injection on the MNIST dataset using a glitch clock, we confirmed that faut injection on into the iteration statements can conduct deterministic misclassification depending on the network parameters.

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Cite this article
[IEEE Style]
강효주, 하재철, 홍성우, 이영주, "Clock Glitch-based Fault Injection Attack on Deep Neural Network," Journal of The Korea Institute of Information Security and Cryptology, vol. 34, no. 5, pp. 855-863, 2024. DOI: 10.13089/JKIISC.2024.34.5.855.

[ACM Style]
강효주, 하재철, 홍성우, and 이영주. 2024. Clock Glitch-based Fault Injection Attack on Deep Neural Network. Journal of The Korea Institute of Information Security and Cryptology, 34, 5, (2024), 855-863. DOI: 10.13089/JKIISC.2024.34.5.855.