SAMSEM -- A Generic and Scalable Approach for IC Metal Line Segmentation
Christian Gehrmann, Jonas Ricker, Simon Damm, Deruo Cheng, Julian Speith, Yiqiong Shi, Asja Fischer, Christof Paar

TL;DR
SAMSEM is a scalable, domain-adapted segmentation model based on SAM2 that accurately detects IC metal lines across diverse SEM images, aiding hardware verification in untrusted manufacturing environments.
Contribution
The paper introduces SAMSEM, a novel multi-scale, topology-aware segmentation approach adapted from SAM2, capable of generalizing across various IC technologies and imaging conditions.
Findings
Achieves error rates as low as 0.72% on known ICs.
Maintains error rates below 6% on unseen ICs.
Demonstrates high generalization with 0.62% error when trained on all data.
Abstract
In light of globalized hardware supply chains, the assurance of hardware components has gained significant interest, particularly in cryptographic applications and high-stakes scenarios. Identifying metal lines on scanning electron microscope (SEM) images of integrated circuits (ICs) is one essential step in verifying the absence of malicious circuitry in chips manufactured in untrusted environments. Due to varying manufacturing processes and technologies, such verification usually requires tuning parameters and algorithms for each target IC. Often, a machine learning model trained on images of one IC fails to accurately detect metal lines on other ICs. To address this challenge, we create SAMSEM by adapting Meta's Segment Anything Model 2 (SAM2) to the domain of IC metal line segmentation. Specifically, we develop a multi-scale segmentation approach that can handle SEM images of…
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Taxonomy
TopicsPhysical Unclonable Functions (PUFs) and Hardware Security · Integrated Circuits and Semiconductor Failure Analysis · Digital Media Forensic Detection
