A Physics-Constrained, Design-Driven Methodology for Defect Dataset Generation in Optical Lithography
Yuehua Hu, Jiyeong Kong, Dong-yeol Shin, Jaekyun Kim, Kyung-Tae Kang

TL;DR
This paper introduces a physics-constrained, design-driven methodology to generate large-scale, high-quality defect datasets with pixel-level annotations for optical lithography, enhancing AI-based defect inspection accuracy.
Contribution
It presents a novel defect dataset generation approach combining physics-based layout synthesis and high-fidelity fabrication, enabling robust AI training for semiconductor defect inspection.
Findings
Constructed a dataset of 3,530 micrographs with 13,365 defect annotations.
Mask R-CNN significantly outperforms Faster R-CNN in defect detection accuracy.
Demonstrated the feasibility of physics-constrained dataset generation for AI in lithography.
Abstract
The efficacy of Artificial Intelligence (AI) in micro/nano manufacturing is fundamentally constrained by the scarcity of high-quality and physically grounded training data for defect inspection. Lithography defect data from semiconductor industry are rarely accessible for research use, resulting in a shortage of publicly available datasets. To address this bottleneck in lithography, this study proposes a novel methodology for generating large-scale, physically valid defect datasets with pixel-level annotations. The framework begins with the ab initio synthesis of defect layouts using controllable, physics-constrained mathematical morphology operations (erosion and dilation) applied to the original design-level layout. These synthesized layouts, together with their defect-free counterparts, are fabricated into physical samples via high-fidelity digital micromirror device (DMD)-based…
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Taxonomy
TopicsIndustrial Vision Systems and Defect Detection · Advancements in Photolithography Techniques · Advanced Neural Network Applications
