Authors
Haoyu Yang, Jing Su, Yi Zou, Bei Yu, Evangeline FY Young
Publication date
2017/6/18
Book
Proceedings of the 54th Annual Design Automation Conference 2017
Pages
1-6
Description
Detecting layout hotspots is one of the key problems in physical verification flow. Although machine learning solutions show benefits over lithography simulation and pattern matching based methods, it is still hard to select a proper model for large scale problems and it is inevitable that performance degradation will occur. To overcome these issues, in this paper we develop a deep learning framework for high performance and large scale hotspot detection. First, feature tensor generation is proposed to extract representative layout features that fit well with convolutional neural networks while keeping the spatial relationship of the original layout pattern with minimal information loss. Second, we propose a biased learning algorithm to train the convolutional neural network to further improve detection accuracy with small false alarm penalties. Experimental results show that our framework outperforms previous machine …
Total citations
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Scholar articles
H Yang, J Su, Y Zou, B Yu, EFY Young - Proceedings of the 54th Annual Design Automation …, 2017