Asynchronous Bioplausible Neuron for Spiking Neural Networks for Event-Based Vision

Hussain Sajwani, Dimitrios Makris, Yahya Prof. Zweiri, Fariborz Baghaei Naeini, Sanket Mr Kachole* ;

Abstract


"Spiking Neural Networks (SNNs) offer a biologically inspired approach to computer vision that can lead to more efficient processing of visual data with reduced energy consumption. However, maintaining homeostasis within SNNs is challenging, as it requires continuous adjustment of neural responses to preserve equilibrium and optimal processing efficiency amidst diverse and often unpredictable input signals. In response to these challenges, we propose the Asynchronous Bioplausible Neuron (ABN), a dynamic spike firing mechanism that offers a simple yet potent auto-adjustment to variations in input signals. Its parameters, Membrane Gradient (MG), Threshold Retrospective Gradient (TRG), and Spike Efficiency (SE), make it stand out for its easy implementation, significant effectiveness, and proven reduction in power consumption, a key innovation demonstrated in our experiments. Comprehensive evaluation across various datasets demonstrates ABN’s enhanced performance in image classification and segmentation, maintenance of neural equilibrium, and energy efficiency."

Related Material


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