Efficient visual object representation using a biologically plausible spike-latency code and winner-take-all inhibition

05/20/2022
by   Melani Sanchez-Garcia, et al.
0

Deep neural networks have surpassed human performance in key visual challenges such as object recognition, but require a large amount of energy, computation, and memory. In contrast, spiking neural networks (SNNs) have the potential to improve both the efficiency and biological plausibility of object recognition systems. Here we present a SNN model that uses spike-latency coding and winner-take-all inhibition (WTA-I) to efficiently represent visual stimuli from the Fashion MNIST dataset. Stimuli were preprocessed with center-surround receptive fields and then fed to a layer of spiking neurons whose synaptic weights were updated using spike-timing-dependent-plasticity (STDP). We investigate how the quality of the represented objects changes under different WTA-I schemes and demonstrate that a network of 150 spiking neurons can efficiently represent objects with as little as 40 spikes. Studying how core object recognition may be implemented using biologically plausible learning rules in SNNs may not only further our understanding of the brain, but also lead to novel and efficient artificial vision systems.

READ FULL TEXT

page 2

page 3

page 4

research
03/10/2017

Convolutional Spike Timing Dependent Plasticity based Feature Learning in Spiking Neural Networks

Brain-inspired learning models attempt to mimic the cortical architectur...
research
12/06/2019

A Neural Spiking Approach Compared to Deep Feedforward Networks on Stepwise Pixel Erasement

In real world scenarios, objects are often partially occluded. This requ...
research
02/27/2019

Biologically plausible deep learning -- but how far can we go with shallow networks?

Training deep neural networks with the error backpropagation algorithm i...
research
11/30/2021

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

The event-driven nature of spiking neural networks makes them biological...
research
02/03/2016

Unsupervised Regenerative Learning of Hierarchical Features in Spiking Deep Networks for Object Recognition

We present a spike-based unsupervised regenerative learning scheme to tr...
research
06/02/2016

A Spiking Network that Learns to Extract Spike Signatures from Speech Signals

Spiking neural networks (SNNs) with adaptive synapses reflect core prope...
research
11/03/2019

eBrainII: A 3 kW Realtime Custom 3D DRAM integrated ASIC implementation of a Biologically Plausible Model of a Human Scale Cortex

The Artificial Neural Networks (ANNs) like CNN/DNN and LSTM are not biol...

Please sign up or login with your details

Forgot password? Click here to reset