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Hardware Trojans classification for gate-level netlists based on machine learning

机译:基于机器学习的门级网级师的硬件特洛伊木马分类

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Recently, we face a serious risk that malicious third-party vendors can very easily insert hardware Trojans into their IC products but it is very difficult to analyze huge and complex ICs. In this paper, we propose a hardware-Trojan classification method to identify hardware-Trojan infected nets (or Trojan nets) using a support vector machine (SVM). Firstly, we extract the five hardware-Trojan features in each net in a netlist. Secondly, since we cannot effectively give the simple and fixed threshold values to them to detect hardware Trojans, we represent them to be a five-dimensional vector and learn them by using SVM. Finally, we can successfully classify a set of all the nets in an unknown netlist into Trojan ones and normal ones based on the learned SVM classifier. We have applied our SVM-based hardware-Trojan classification method to Trust-HUB benchmarks and the results demonstrate that our method can much increase the true positive rate compared to the existing state-of-the-art results in most of the cases. In some cases, our method can achieve the true positive rate of 100%, which shows that all the Trojan nets in a netlist are completely detected by our method.
机译:最近,我们面临严重的风险,恶意的第三方供应商可以很容易地将硬件特洛伊木马插入其IC产品,但很难分析巨大和复杂的IC。在本文中,我们提出了一种使用支持​​向量机(SVM)来识别硬件 - 特洛伊木马分类方法来识别硬件 - 特洛伊木马感染的网(或木马网)。首先,我们在网列表中提取每个网络中的五个硬件 - 木马功能。其次,由于我们不能有效地向他们提供简单和固定的阈值来检测硬件特洛伊木马,因此我们将它们表示为五维向量,并通过使用SVM来学习它们。最后,我们可以将未知网列表中的一组所有网集分类为基于学习的SVM分类器的特洛伊木马和普通网。我们已将基于SVM的硬件 - 特洛伊木马分类方法应用于Trust-Hub基准,结果表明,与大多数情况下,我们的方法可以增加真正的阳性率。在某些情况下,我们的方法可以达到100%的真正阳性率,这表明我们的方法完全检测到网列表中的所有特洛伊木网。

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