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2D-Motion Detection using SNNs with Graphene-Insulator-Graphene Memristive Synapses

30 November 2021
Shubham Pande
Karthik Srinivasan
S. Balanethiram
B. Chakrabarti
A. Chakravorty
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Abstract

The event-driven nature of spiking neural networks makes them biologically plausible and more energy-efficient than artificial neural networks. In this work, we demonstrate motion detection of an object in a two-dimensional visual field. The network architecture presented here is biologically plausible and uses CMOS analog leaky integrate-and-fire neurons and ultra-low power multi-layer RRAM synapses. Detailed transistorlevel SPICE simulations show that the proposed structure can accurately and reliably detect complex motions of an object in a two-dimensional visual field.

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