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A memristive autapse-synapse neural network: application to image encryption

Xi Zhang, Donghua Jiang, Jean De Dieu Nkapkop, Zeric Tabekoueng Njitacke, Musheer Ahmad, Liya Zhu, Nestor Tsafack

2023Physica Scripta21 citationsDOI

Abstract

Abstract With the advent of the physical memristor, various memristive neural network models have been designed and analyzed to mimic some human brain functions. However, there is a realistic issue because many works reported the coupling of neuron models using either memristive synapse or memristive autapse, whereas in the real brain, a neuron can interact with both another neuron (memristive synapse) and with itself (memristive autapse). Two main ideas are developed in this work. First, we investigate the dynamics of two different neurons coupled via memristive synapse and memristive autapse. The analyses indicate that the global dynamics of this highly relies on the neuron’s coupling strength. Second, a cryptographic scheme based on both S-Box driven block compressive sensing and the memristive autapse synapse model is proposed. Performance analyses indicate that the coupling strength of the proposed neural network model can be adjusted to increase or decrease the security of medical data.

Topics & Concepts

SynapseMemristorArtificial neural networkComputer scienceCoupling (piping)NeuronPhysical neural networkBiological neuron modelBiological neural networkNeuroscienceTopology (electrical circuits)Artificial intelligenceElectronic engineeringMaterials scienceTime delay neural networkTypes of artificial neural networksBiologyElectrical engineeringMachine learningEngineeringMetallurgyAdvanced Memory and Neural ComputingPhotoreceptor and optogenetics researchstochastic dynamics and bifurcation
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