Uncertainty-Aware Hardware Trojan Detection Using Multimodal Deep Learning

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#Hardware Trojan; Multimodal Deep Learning; Uncertainty Quantification

The risk of hardware Trojans in zero-trust chip production is rising. Using GANs for data augmentation and a multimodal deep learning approach enhances detection, validated by fusion strategies and uncertainty metrics.

The risk of hardware Trojans being inserted at various stages of chip production has increased in a zero-trust fabless era. To counter this, various machine learning solutions have been developed for the detection of hardware Trojans. While most of the focus has been on either a statistical or deep learning approach, the limited number of Trojan-infected benchmarks affects the detection accuracy and restricts the possibility of detecting zero-day Trojans. To close the gap, we first employ generative adversarial networks to amplify our data in two alternative representation modalities: a graph and a tabular, which ensure a representative distribution of the dataset. Further, we propose a multimodal deep learning approach to detect hardware Trojans and evaluate the results from both early fusion and late fusion strategies. We also estimate the uncertainty quantification metrics of each prediction for risk-aware decision-making. The results not only validate the effectiveness of our suggested hardware Trojan detection technique but also pave the way for future studies utilizing multimodality and uncertainty quantification to tackle other hardware security problems.

The risk of hardware Trojans in zero-trust chip production is rising. Using GANs for data augmentation and a multimodal deep learning approach enhances detection, validated by fusion strategies and uncertainty metrics.

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