Bias Busters: Robustifying DL-Based Lithographic Hotspot Detectors Against Backdooring Attacks

IEEE Transactions on Computer-Aided Design of Integrated Circuits and Systems(2021)

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摘要
Deep learning (DL) offers potential improvements throughout the CAD tool-flow, one promising application being lithographic hotspot detection. However, DL techniques have been shown to be especially vulnerable to inference and training time adversarial attacks. Recent work has demonstrated that a small fraction of malicious physical designers can stealthily “backdoor” a DL-based hotspot detector d...
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关键词
Training,Training data,Layout,Robustness,Detectors,Solid modeling,Lithography
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