Using Path Features for Hardware Trojan Detection Based on Machine Learning Techniques

Chia-Heng Yen, Jung-Che Tsai, Kai-Chiang Wu
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引用次数: 1

Abstract

As the outsourcing process in the design and fabrication to third parties becomes more popular in the IC industry, the consciousness of hardware security has been rising these years. In this paper, we propose a novel method for hardware Trojan detection using specific path features at the gate level. In the training flow, path classifiers can be trained with SVM and RF algorithms using the path features from the trained circuits. In the classifying flow, an average of 0.96 on the F1-score in the results of the path classification demonstrates that logical paths can be easily classified into Trojan paths and Trojan-free paths with the trained path classifiers. In the localizing flow, the intersections between the logical paths can be favorable for precisely localizing the Trojan gates. As the FPRs are kept low to prevent normal gates from misclassifying into the Trojan gates, the high TPRs can be obtained for localizing the Trojan gates with the proposed scoring method.
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基于机器学习技术的路径特征硬件木马检测
近年来,随着集成电路行业设计制造外包的日益普及,硬件安全意识日益增强。在本文中,我们提出了一种在门级使用特定路径特征进行硬件木马检测的新方法。在训练流程中,路径分类器可以使用SVM和RF算法根据训练电路的路径特征进行训练。在分类流程中,路径分类结果的f1得分平均为0.96,说明使用训练好的路径分类器可以很容易地将逻辑路径划分为木马路径和无木马路径。在定位流程中,逻辑路径之间的交集有利于特洛伊门的精确定位。为了防止正常门被误分类为特洛伊门,将fpr保持在较低的水平,利用所提出的评分方法可以获得较高的tpr,用于定位特洛伊门。
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