Proceedings of the 16th ACM Workshop on Artificial Intelligence and Security 2023
DOI: 10.1145/3605764.3623903
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When Side-Channel Attacks Break the Black-Box Property of Embedded Artificial Intelligence

Benoît Coqueret,
Mathieu Carbone,
Olivier Sentieys
et al.

Abstract: Artificial intelligence, and specifically deep neural networks (DNNs), has rapidly emerged in the past decade as the standard for several tasks from specific advertising to object detection. The performance offered has led DNN algorithms to become a part of critical embedded systems, requiring both efficiency and reliability. In particular, DNNs are subject to malicious examples designed in a way to fool the network while being undetectable to the human observer: the adversarial examples. While previous studie… Show more

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