Towards Unsupervised SEM Image Segmentation for IC Layout Extraction

Nils Rothaug, Simon Klix, Nicole Auth, Sinan Boecker,Endres Puschner,Steffen Becker,Christof Paar

PROCEEDINGS OF THE 2023 WORKSHOP ON ATTACKS AND SOLUTIONS IN HARDWARE SECURITY, ASHES 2023(2023)

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摘要
This paper presents a novel approach towards unsupervised SEM image segmentation for IC layout extraction. Existing methods typically rely on supervised machine learning with manually labeled training data, requiring re-training and partial annotation when applying them to new datasets. To address this issue, we propose a SEM image segmentation algorithm based on unsupervised deep learning, eliminating the need for manual labeling. We train and evaluate our approach on a real-world dataset comprising 648 SEM images of metal-1 and metal-2 layers from a commercial IC, achieving competitive segmentation error rates well below 1%. Releasing our dataset and algorithm implementations, we allow researchers to apply our approach to their own datasets and evaluate their methods against our dataset, facilitating reproducibility in the field.
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关键词
IC layout extraction,SEM image segmentation,unsupervised deep learning,open-source dataset
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