eXCube1: Explainable Neuromorphic Framework for Modelling Conscious Perception of Stimuli from fMRI Data
Can artificial systems form internal representations that resemble conscious perception? Here we introduce eXCube1, a brain-inspired spiking neural network (BI-SNN) framework that learns evolving spatio-temporal associative memories (ESTAMs) from fMRI data. ESTAMs provide an interpretable, causal account of how neural activity propagates across space and time, bridging statistical neuroimaging analysis and mechanistic modelling. We show that eXCube1 learns discriminative ESTAMs that separate meaningful from meaningless visual and auditory stimuli without access to semantic content. Across two fMRI case […]