GAN4IP:用于硬件 IP 安全的基于 GAN 和逻辑锁的统一流水线

Jugal Gandhi, Diksha Shekhawat, M Santosh, Jai Gopal Pandey
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摘要

知识产权(IP)安全已成为半导体行业的一个关键问题。在硬件知识产权安全领域,逻辑锁定是防止未经授权访问知识产权的常用技术。本文提出了一种概念管道,利用生成模型和逻辑锁定概念(GAN4IP)来增强硬件 IP 安全。所提出的方法以统一的方式使用逻辑锁定和生成对抗网络(GAN)的概念来设计安全的硬件 IP。GAN 架构使用深度学习技术和基于图的数字电路表示法来构建混淆设计,可以预测锁定网表的行为并生成安全设计。所提出的透视方法为进一步研究高度安全的电子系统设计开辟了新途径,并有可能对硬件 IP 安全领域产生重大影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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GAN4IP: A unified GAN and logic locking-based pipeline for hardware IP security

Intellectual property (IP) security has emerged as a critical concern in semiconductor industries. In the domain of hardware IP security, logic locking is a commonly used technique to prevent unauthorized access to IPs. This article proposes a conceptual pipeline to enhance the hardware IP security by leveraging generative models and logic locking concepts (GAN4IP) for hardware IP security. The proposed approach uses the concept of logic locking and generative adversarial networks (GANs) in a unified fashion to design secure hardware IPs. The GAN architecture uses deep learning techniques and graph-based representations of digital circuits to build obfuscated designs that can predict the behavior of locked netlists and generate secure designs. The proposed perspective method opens up new avenues for further investigation of highly secure electronic system design and has the potential to significantly impact the field of hardware IP security.

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