| Hardware Trojan Detection at LUT: Where Structural Features Meet Behavioral Characteristics | |
|---|---|
| Author | |
| Abstract |
This work proposes a novel hardware Trojan detection method that leverages static structural features and behavioral characteristics in field programmable gate array (FPGA) netlists. Mapping of hardware design sources to look-up-table (LUT) networks makes these features explicit, allowing automated feature extraction and further effective Trojan detection through machine learning. Four-dimensional features are extracted for each signal and a random forest classifier is trained for Trojan net classification. Experiments using Trust-Hub benchmarks show promising Trojan detection results with accuracy, precision, and F1-measure of 99.986\%, 100\%, and 99.769\% respectively on average. |
| Year of Publication |
2022
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| Date Published |
jun
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| Publisher |
IEEE
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| Conference Location |
McLean, VA, USA
|
| ISBN Number |
978-1-66548-532-6
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| URL |
https://ieeexplore.ieee.org/document/9840276/
|
| DOI |
10.1109/HOST54066.2022.9840276
|
| Google Scholar | BibTeX | DOI | |