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A low-power and flexible bioinspired artificial sensory neuron capable of tactile perceptual and associative learning

Qing Xia, Yuxiang Qin, Anbo Zheng, Peilun Qiu

2022Journal of Materials Chemistry B19 citationsDOI

Abstract

W), remarkable uniformity, a large memory window of 500 and excellent plasticity. Remarkably, the pattern recognition simulation based on a neuromorphic network is conducted with a high recognition accuracy of ∼89.81%. In the constructed system, the artificial synapse could be activated by the electrical information from the E-skin induced by an external pressure, to generate excitatory postsynaptic currents. The system shows functions of perception and memory functions, and it also enables tactile associative learning. The present work is important for the development of empowering robots and prostheses with the capability of perceptual learning, and it provides a paradigm for next-generation artificial sensory systems with low-power, wearable and low-cost features.

Topics & Concepts

Neuromorphic engineeringArtificial neuronTactile sensorComputer scienceMemristorArtificial intelligenceSensory systemContent-addressable memoryArtificial neural networkSynapseHaptic technologyWearable computerMaterials scienceBiomimeticsRobotPerceptionNeuroscienceElectronic engineeringEmbedded systemEngineeringBiologyAdvanced Memory and Neural ComputingNeuroscience and Neural EngineeringAdvanced Sensor and Energy Harvesting Materials
A low-power and flexible bioinspired artificial sensory neuron capable of tactile perceptual and associative learning | Litcius