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HTDet: A clustering method using information entropy for hardware Trojan detection

机译:htdet:使用信息熵进行硬件特洛伊木马检测的聚类方法

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摘要

Hardware Trojans (HTs) have drawn increasing attention in both academia and industry because of their significant potential threat. In this paper, we propose HTDet, a novel HT detection method using information entropy-based clustering. To maintain high concealment, HTs are usually inserted in the regions with low controllability and low observability, which will result in that Trojan logics have extremely low transitions during the simulation. This implies that the regions with the low transitions will provide much more abundant and more important information for HT detection. The HTDet applies information theory technology and a density-based clustering algorithm called Density-Based Spatial Clustering of Applications with Noise (DBSCAN) to detect all suspicious Trojan logics in the circuit under detection. The DBSCAN is an unsupervised learning algorithm, that can improve the applicability of HTDet. In addition, we develop a heuristic test pattern generation method using mutual information to increase the transitions of suspicious Trojan logics. Experiments on circuit benchmarks demonstrate the effectiveness of HTDet.
机译:硬件特洛伊木马(HTS)由于其显着潜在威胁,在学术界和工业中都会增加了越来越关注。在本文中,我们提出了一种使用信息熵的聚类的新型HT检测方法。为了保持高隐藏性,HTS通常在具有低可控性和低可观测性的区域中插入区域中,这将导致在模拟过程中的特洛伊木马逻辑具有极低的过渡。这意味着具有低转换的区域将为HT检测提供更丰富和更重要的信息。 HTDET应用信息理论技术和基于密度的聚类算法,称为基于密度的空间聚类应用,具有噪声(DBSCAN)来检测在检测下的电路中的所有可疑特洛伊木马逻辑。 DBSCAN是一种无人监督的学习算法,可以提高HTDET的适用性。此外,我们使用相互信息开发启发式测试模式生成方法,以增加可疑特洛伊木马逻辑的转换。电路基准测试实验证明了HTDET的有效性。

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