Interpreting Emergent Features in Deep Learning-based Side-channel Analysis
- AAML
Main:9 Pages
23 Figures
Bibliography:4 Pages
1 Tables
Appendix:9 Pages
Abstract
Side-channel analysis (SCA) poses a real-world threat by exploiting unintentional physical signals to extract secret information from secure devices. Evaluation labs also use the same techniques to certify device security. In recent years, deep learning has emerged as a prominent method for SCA, achieving state-of-the-art attack performance at the cost of interpretability. Understanding how neural networks extract secrets is crucial for security evaluators aiming to defend against such attacks, as only by understanding the attack can one propose better countermeasures.
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