2024
DOI: 10.21203/rs.3.rs-3894862/v1
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A Siamese Deep Learning Framework for Efficient Hardware Trojan Detection Using Power Side-Channel Data

Abdurrahman Nasr,
khalil mohamed,
Ayman El shenawy
et al.

Abstract: Hardware Trojans (HTs) are malicious alterations to the circuitry of integrated circuits (ICs), enabling unauthorized access, data theft, operational disruptions, or even physical harm. Detecting Hardware Trojans (HTD) is paramount for ensuring IC security. This paper introduces a novel Siamese neural network (SNN) framework for non-destructive HTD. The proposed framework can detect HTs by processing power side-channel signals without the need for a golden model of the IC. To obtain the best results, different… Show more

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