NECVNCFeb 12, 2020

Synaptic Integration of Spatiotemporal Features with a Dynamic Neuromorphic Processor

arXiv:2002.04924v23 citations
AI Analysis

This work addresses efficient neuromorphic computing for feature detection, but it is incremental as it builds on prior concepts of dynamic synapses.

The paper tackled the problem of spatiotemporal feature detection in neuromorphic processors by using dynamic synapses on point-neurons in the DYNAP-SE, achieving biologically relevant EPSP delays with variability of about 10 milliseconds per neuron and enabling selective responses to specific spike patterns for tasks like visual feature tuning.

Spiking neurons can perform spatiotemporal feature detection by nonlinear synaptic and dendritic integration of presynaptic spike patterns. Multicompartment models of non-linear dendrites and related neuromorphic circuit designs enable faithful imitation of such dynamic integration processes, but these approaches are also associated with a relatively high computing cost or circuit size. Here, we investigate synaptic integration of spatiotemporal spike patterns with multiple dynamic synapses on point-neurons in the DYNAP-SE neuromorphic processor, which offers a complementary resource-efficient, albeit less flexible, approach to feature detection. We investigate how previously proposed excitatory--inhibitory pairs of dynamic synapses can be combined to integrate multiple inputs, and we generalize that concept to a case in which one inhibitory synapse is combined with multiple excitatory synapses. We characterize the resulting delayed excitatory postsynaptic potentials (EPSPs) by measuring and analyzing the membrane potentials of the neuromorphic neuronal circuits. We find that biologically relevant EPSP delays, with variability of order 10 milliseconds per neuron, can be realized in the proposed manner by selecting different synapse combinations, thanks to device mismatch. Based on these results, we demonstrate that a single point-neuron with dynamic synapses in the DYNAP-SE can respond selectively to presynaptic spikes with a particular spatiotemporal structure, which enables, for instance, visual feature tuning of single neurons.

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