Physically Unclonable Functions (PUFs) are vulnerable to modelling attacks that exploit correlations between inputs and outputs. The proposed Mixture-of-PUF-Experts (MoPE) structure enables successful attacks on diverse PUF types with minimal adversarial knowledge. The study highlights the importance of a universal tool to evaluate PUF security.
The research addresses lightweight device authentication challenges in the IoT era, emphasizing the efficiency and robustness of delay-based Arbiter PUFs against malicious attacks. By presenting a generic framework for attacking multiple PUFs simultaneously, the study contributes to enhancing security measures in device authentication systems.
The analysis delves into machine learning modelling attacks on Strong PUFs, showcasing successful predictions of challenge-response pairs using various ML algorithms. The proposed Multi-gate Mixture-of-Experts Model aims to improve model quality and efficiency by exploiting commonalities across different tasks.
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by Hongming Fei... om arxiv.org 03-04-2024
https://arxiv.org/pdf/2403.00464.pdfDiepere vragen