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首页> 外文期刊>Circuits and Systems I: Regular Papers, IEEE Transactions on >Physically Unclonable Functions Derived From Cellular Neural Networks
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Physically Unclonable Functions Derived From Cellular Neural Networks

机译:细胞神经网络派生的物理上不可克隆的功能

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摘要

We propose the design of Physically Unclonable Functions (PUFs) exploiting the nonlinear behavior of Cellular Neural Networks (CNNs). Our work derives from some theoretical results achieved within the theory of CNNs, adapted to a simpler case. The theoretical analysis discussed in this work has a general validity, whereas the presented basic hardware solution (i.e., the PUF electronic implementation) has to be understood as a reference demonstrating circuit to be further optimized and developed for a profitable use of the proposed approach. Theoretical results have been validated experimentally.
机译:我们提出利用细胞神经网络(CNN)的非线性行为设计物理上不可克隆的函数(PUF)。我们的工作源自CNN理论中的一些理论结果,适用于更简单的情况。这项工作中讨论的理论分析具有一般有效性,而提出的基本硬件解决方案(即PUF电子实现)必须被理解为参考演示电路,需要进一步优化和开发,才能从所建议的方法中获利。理论结果已通过实验验证。

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