集成电路逆向工程中的缺陷自动检测

A. Bette, Patrick Brus, G. Balázs, Matthias Ludwig, Alois Knoll
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引用次数: 6

摘要

在半导体工业中,逆向工程用于从微芯片中提取信息。由于技术的不断萎缩,电路提取变得越来越困难。高质量的逆向工程过程受到来自芯片制备和成像误差的各种缺陷的挑战。目前,还没有自动化的、与技术无关的缺陷检查框架。为了满足大多数手工逆向工程过程的需求,所提出的自动化框架需要处理高度不平衡的数据,以及未知和多个缺陷类。我们提出了一个由共享的基于异常的特征提取器和多个可单独训练的二元分类头组成的网络架构:HydREnet。我们在三个具有挑战性的工业数据集上评估了我们的缺陷分类器,即使对于代表性不足的类别,准确率也超过了85%。有了这个框架,人工检查的工作量可以减少到5%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated Defect Inspection in Reverse Engineering of Integrated Circuits
In the semiconductor industry, reverse engineering is used to extract information from microchips. Circuit extraction is becoming increasingly difficult due to the continuous technology shrinking. A high quality reverse engineering process is challenged by various defects coming from chip preparation and imaging errors. Currently, no automated, technology-agnostic defect inspection framework is available. To meet the requirements of the mostly manual reverse engineering process, the proposed automated frame- work needs to handle highly imbalanced data, as well as unknown and multiple defect classes. We propose a network architecture that is composed of a shared Xception- based feature extractor and multiple, individually trainable binary classification heads: the HydREnet. We evaluated our defect classifier on three challenging industrial datasets and achieved accuracies of over 85 %, even for underrepresented classes. With this framework, the manual inspection effort can be reduced down to 5 %.
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