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
A Cellular Nonlinear Network (CNN) based on uncoupled nonlinear oscillators is proposed for image pr...
in this paper, a realization of the Cellular Neural Network (CNN) using Current Feedback Operational...
In this paper, a realization of the State Controlled Cellular Neural Network (SC-CNN)-based circuit ...
We propose the design of Physically Unclonable Functions (PUFs) exploiting the nonlinear behavior of...
We propose to exploit a two-neurons Cellular Neural Network (CNN) to design a basic 1-bit Physically...
We present a demonstration circuit implementing four instances of 1-bit Physically Unclonable Functi...
We discuss the design of an area-efficient CMOS analog core-cell implementing a PUF derived from a t...
Adopting a nonlinear dynamical system analysis point of view, we discuss the design of a low-complex...
This project proposes an hardware implementation of a CNN (Cellular Neural Network), a type of neura...
The dissemination of edge devices drives new requirements for security primitives for privacy protec...
In this work, we study the realization and bifurcation of Boolean functions of four variables via a ...
Cellular Neural Networks are characterized by simplicity of operation. The network consists of a lar...
In this paper, a realization of the State Controlled Cellular Neural Network (SC-CNN)-based circuit ...
The work carried out is oriented to extend classical topologies of Cellular Neural Networks (CNN) to...
This paper proposes a multi-functional cellular neu-ral network (CNN) circuit based on arbitrary non...
A Cellular Nonlinear Network (CNN) based on uncoupled nonlinear oscillators is proposed for image pr...
in this paper, a realization of the Cellular Neural Network (CNN) using Current Feedback Operational...
In this paper, a realization of the State Controlled Cellular Neural Network (SC-CNN)-based circuit ...
We propose the design of Physically Unclonable Functions (PUFs) exploiting the nonlinear behavior of...
We propose to exploit a two-neurons Cellular Neural Network (CNN) to design a basic 1-bit Physically...
We present a demonstration circuit implementing four instances of 1-bit Physically Unclonable Functi...
We discuss the design of an area-efficient CMOS analog core-cell implementing a PUF derived from a t...
Adopting a nonlinear dynamical system analysis point of view, we discuss the design of a low-complex...
This project proposes an hardware implementation of a CNN (Cellular Neural Network), a type of neura...
The dissemination of edge devices drives new requirements for security primitives for privacy protec...
In this work, we study the realization and bifurcation of Boolean functions of four variables via a ...
Cellular Neural Networks are characterized by simplicity of operation. The network consists of a lar...
In this paper, a realization of the State Controlled Cellular Neural Network (SC-CNN)-based circuit ...
The work carried out is oriented to extend classical topologies of Cellular Neural Networks (CNN) to...
This paper proposes a multi-functional cellular neu-ral network (CNN) circuit based on arbitrary non...
A Cellular Nonlinear Network (CNN) based on uncoupled nonlinear oscillators is proposed for image pr...
in this paper, a realization of the Cellular Neural Network (CNN) using Current Feedback Operational...
In this paper, a realization of the State Controlled Cellular Neural Network (SC-CNN)-based circuit ...