Signature Biometric based Authentication of IP Cores for Secure Electronic Systems

Mahendra Rathor, A. Sengupta
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引用次数: 1

Abstract

Intellectual property (IP) piracy has emerged as a potential hardware security threat in the last few decades. Growing usage of electronic systems in critical applications such as military and healthcare entails integrating only authentic functional blocks or IP cores into the system-on-chips (SoCs). The usage of only authentic IP cores can be ensured by detecting the designer’s secret information hidden into the IP core designs, thereby protecting from the pirated or fake IPs. This paper proposes first time the designer’s handwritten signature biometric based authentication of IP cores. In this paper, a digest of the designer’s signature biometric is generated using the proposed approach. Further, the digest of the signature biometric is mapped into the corresponding hardware security constraints to be implanted into the IP core design during the behavioral synthesis process. The presence of designer’s signature biometric into the IP core design ensures unique identification of the genuine vendor during authentication. The robustness of the proposed approach has been measured using a probability of coincidence metric based security analysis. Finally, the results reveal that the proposed approach yields higher security at negligible cost overhead.
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基于签名生物特征的安全电子系统IP核认证
在过去的几十年里,知识产权盗版已经成为一个潜在的硬件安全威胁。在军事和医疗保健等关键应用中,电子系统的使用越来越多,这需要将真正的功能块或IP核集成到片上系统(soc)中。通过检测隐藏在IP核设计中的设计者的秘密信息,确保只使用正版IP核,从而防止盗版或假冒IP。本文首次提出了基于设计师手写签名的IP核生物识别认证。在本文中,使用所提出的方法生成了设计师签名生物特征的摘要。在行为合成过程中,将签名生物特征的摘要映射到相应的硬件安全约束中,植入IP核设计中。设计师的签名生物识别技术存在于IP核设计中,确保在身份验证期间对真正的供应商进行唯一识别。所提出的方法的鲁棒性已经使用基于符合概率度量的安全分析来衡量。最后,结果表明所提出的方法在可以忽略不计的成本开销下产生更高的安全性。
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