Loading [MathJax]/extensions/MathMenu.js
R-HTDetector: Robust Hardware-Trojan Detection Based on Adversarial Training | IEEE Journals & Magazine | IEEE Xplore

R-HTDetector: Robust Hardware-Trojan Detection Based on Adversarial Training


Abstract:

Hardware Trojans (HTs) have become a serious problem, and extermination of them is strongly required for enhancing the security and safety of integrated circuits. An effe...Show More

Abstract:

Hardware Trojans (HTs) have become a serious problem, and extermination of them is strongly required for enhancing the security and safety of integrated circuits. An effective solution is to identify HTs at the gate level via machine learning techniques. However, machine learning has specific vulnerabilities, such as adversarial examples. In reality, it has been reported that adversarial modified HTs greatly degrade the performance of a machine learning-based HT detection method. Therefore, we propose a robust HT detection method using adversarial training (R-HTDetector). We formally describe the robustness of R-HTDetector in modifying HTs. Our work gives the world-first adversarial training for HT detection with theoretical backgrounds. We show through experiments with Trust-HUB benchmarks that R-HTDetector overcomes adversarial examples while maintaining its original accuracy.
Published in: IEEE Transactions on Computers ( Volume: 72, Issue: 2, 01 February 2023)
Page(s): 333 - 345
Date of Publication: 14 November 2022

ISSN Information:

Funding Agency:


References

References is not available for this document.