Litcius/Paper detail

Spiking Neuron-Astrocyte Networks for Image Recognition

Jhunlyn Lorenzo, Juan‐Antonio Rico‐Gallego, S. Binczak, Sabir Jacquir

2025Neural Computation9 citationsDOIOpen Access PDF

Abstract

From biological and artificial network perspectives, researchers have started acknowledging astrocytes as computational units mediating neural processes. Here, we propose a novel biologically inspired neuron-astrocyte network model for image recognition, one of the first attempts at implementing astrocytes in spiking neuron networks (SNNs) using a standard data set. The architecture for image recognition has three primary units: the preprocessing unit for converting the image pixels into spiking patterns, the neuron-astrocyte network forming bipartite (neural connections) and tripartite synapses (neural and astrocytic connections), and the classifier unit. In the astrocyte-mediated SNNs, an astrocyte integrates neural signals following the simplified Postnov model. It then modulates the integrate-and-fire (IF) neurons via gliotransmission, thereby strengthening the synaptic connections of the neurons within the astrocytic territory. We develop an architecture derived from a baseline SNN model for unsupervised digit classification. The spiking neuron-astrocyte networks (SNANs) display better network performance with an optimal variance-bias trade-off than SNN alone. We demonstrate that astrocytes promote faster learning, support memory formation and recognition, and provide a simplified network architecture. Our proposed SNAN can serve as a benchmark for future researchers on astrocyte implementation in artificial networks, particularly in neuromorphic systems, for its simplified design.

Topics & Concepts

NeuronAstrocyteNeuroscienceArtificial intelligencePattern recognition (psychology)Computer scienceArtificial neural networkImage (mathematics)PsychologyCentral nervous systemNeural dynamics and brain functionAdvanced Memory and Neural ComputingNeuroscience and Neural Engineering