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Published in: Neural Computing and Applications 12/2021

05-11-2020 | Original Article

Window of multistability and its control in a simple 3D Hopfield neural network: application to biomedical image encryption

Authors: Zeric Tabekoueng Njitacke, Sami Doubla Isaac, Tsafack Nestor, Jacques Kengne

Published in: Neural Computing and Applications | Issue 12/2021

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Abstract

In this contribution, the problem of multistability control in a simple model of 3D HNNs as well as its application to biomedical image encryption is addressed. The space magnetization is justified by the coexistence of up to six disconnected attractors including both chaotic and periodic. The linear augmentation method is successfully applied to control the multistable HNNs into a monostable network. The control of the coexisting four attractors including a pair of chaotic attractors and a pair of periodic attractors is made through three crises that enable the chaotic attractors to be metamorphosed in a monostable periodic attractor. Also, the control of six coexisting attractors (with two pairs of chaotic attractors and a pair of periodic one) is made through five crises enabling all the chaotic attractors to be metamorphosed in a monostable periodic attractor. Note that this controlled HNN is obtained for higher values of the coupling strength. These interesting results are obtained using nonlinear analysis tools such as the phase portraits, bifurcations diagrams, graph of maximum Lyapunov exponent, and basins of attraction. The obtained results have been perfectly supported using the PSPICE simulation environment. Finally, a simple encryption scheme is designed jointly using the sequences of the proposed HNNs and the sequences of real/imaginary values of the Julia fractals set. The obtained cryptosystem is validated using some well-known metrics. The proposed method achieved entropy of 7.9992, NPCR of 99.6299, and encryption time of 0.21 for the 256*256 sample 1 image.

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Metadata
Title
Window of multistability and its control in a simple 3D Hopfield neural network: application to biomedical image encryption
Authors
Zeric Tabekoueng Njitacke
Sami Doubla Isaac
Tsafack Nestor
Jacques Kengne
Publication date
05-11-2020
Publisher
Springer London
Published in
Neural Computing and Applications / Issue 12/2021
Print ISSN: 0941-0643
Electronic ISSN: 1433-3058
DOI
https://doi.org/10.1007/s00521-020-05451-z

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