Aggressive time-to-market constraints and enormous hardware design and fabrication costs have pushed the semiconductor industry toward hardware Intellectual Properties (IP) core design. However, the globalization of the integrated circuits (IC) supply chain exposes IP providers to theft and illegal redistribution of IPs. Watermarking and fingerprinting are proposed to detect IP piracy. Nevertheless, they come with additional hardware overhead and cannot guarantee IP security as advanced attacks are reported to remove the watermark, forge, or bypass it. In this work, we propose a novel methodology, GNN4IP, to assess similarities between circuits and detect IP piracy. We model the hardware design as a graph and construct a graph neural network model to learn its behavior using the comprehensive dataset of register transfer level codes and gate-level netlists that we have gathered. GNN4IP detects IP piracy with 96% accuracy in our dataset and recognizes the original IP in its obfuscated version with 100% accuracy.
翻译:然而,集成电路供应链的全球化使知识产权供应商面临盗窃和非法再分配知识产权的风险。建议进行水标识和指纹鉴定,以侦查知识产权盗版。然而,由于据报有先进的袭击去除水标、伪造或绕过水标、伪造或绕过水标,它们带来了额外的硬件管理费,无法保证知识产权安全。在这项工作中,我们提出了一种新颖的方法,即GNN4IP,以评估电路之间的相似之处并发现知识产权盗版。我们用图表来模拟硬件设计,并构建一个图形神经网络模型,以便利用我们收集的登记册传输级别代码和门级网络清单的综合数据集来了解其行为。GNN4IP在我们的数据集中以96%的准确度检测了知识产权盗版,并承认其原始版本的IP具有100%的准确度。