A neuromorphic architecture for object recognition and motion anticipation using burst-STDP.

In this work we investigate the possibilities offered by a minimal framework of artificial spiking neurons to be deployed in silico. Here we introduce a hierarchical network architecture of spiking neurons which learns to recognize moving objects in a visual environment and determine the correct mot...

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Main Authors: Andrew Nere, Umberto Olcese, David Balduzzi, Giulio Tononi
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2012-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC3352850?pdf=render
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spelling doaj-072034cc651d42a088c751d290ae063e2020-11-25T01:12:16ZengPublic Library of Science (PLoS)PLoS ONE1932-62032012-01-0175e3695810.1371/journal.pone.0036958A neuromorphic architecture for object recognition and motion anticipation using burst-STDP.Andrew NereUmberto OlceseDavid BalduzziGiulio TononiIn this work we investigate the possibilities offered by a minimal framework of artificial spiking neurons to be deployed in silico. Here we introduce a hierarchical network architecture of spiking neurons which learns to recognize moving objects in a visual environment and determine the correct motor output for each object. These tasks are learned through both supervised and unsupervised spike timing dependent plasticity (STDP). STDP is responsible for the strengthening (or weakening) of synapses in relation to pre- and post-synaptic spike times and has been described as a Hebbian paradigm taking place both in vitro and in vivo. We utilize a variation of STDP learning, called burst-STDP, which is based on the notion that, since spikes are expensive in terms of energy consumption, then strong bursting activity carries more information than single (sparse) spikes. Furthermore, this learning algorithm takes advantage of homeostatic renormalization, which has been hypothesized to promote memory consolidation during NREM sleep. Using this learning rule, we design a spiking neural network architecture capable of object recognition, motion detection, attention towards important objects, and motor control outputs. We demonstrate the abilities of our design in a simple environment with distractor objects, multiple objects moving concurrently, and in the presence of noise. Most importantly, we show how this neural network is capable of performing these tasks using a simple leaky-integrate-and-fire (LIF) neuron model with binary synapses, making it fully compatible with state-of-the-art digital neuromorphic hardware designs. As such, the building blocks and learning rules presented in this paper appear promising for scalable fully neuromorphic systems to be implemented in hardware chips.http://europepmc.org/articles/PMC3352850?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Andrew Nere
Umberto Olcese
David Balduzzi
Giulio Tononi
spellingShingle Andrew Nere
Umberto Olcese
David Balduzzi
Giulio Tononi
A neuromorphic architecture for object recognition and motion anticipation using burst-STDP.
PLoS ONE
author_facet Andrew Nere
Umberto Olcese
David Balduzzi
Giulio Tononi
author_sort Andrew Nere
title A neuromorphic architecture for object recognition and motion anticipation using burst-STDP.
title_short A neuromorphic architecture for object recognition and motion anticipation using burst-STDP.
title_full A neuromorphic architecture for object recognition and motion anticipation using burst-STDP.
title_fullStr A neuromorphic architecture for object recognition and motion anticipation using burst-STDP.
title_full_unstemmed A neuromorphic architecture for object recognition and motion anticipation using burst-STDP.
title_sort neuromorphic architecture for object recognition and motion anticipation using burst-stdp.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2012-01-01
description In this work we investigate the possibilities offered by a minimal framework of artificial spiking neurons to be deployed in silico. Here we introduce a hierarchical network architecture of spiking neurons which learns to recognize moving objects in a visual environment and determine the correct motor output for each object. These tasks are learned through both supervised and unsupervised spike timing dependent plasticity (STDP). STDP is responsible for the strengthening (or weakening) of synapses in relation to pre- and post-synaptic spike times and has been described as a Hebbian paradigm taking place both in vitro and in vivo. We utilize a variation of STDP learning, called burst-STDP, which is based on the notion that, since spikes are expensive in terms of energy consumption, then strong bursting activity carries more information than single (sparse) spikes. Furthermore, this learning algorithm takes advantage of homeostatic renormalization, which has been hypothesized to promote memory consolidation during NREM sleep. Using this learning rule, we design a spiking neural network architecture capable of object recognition, motion detection, attention towards important objects, and motor control outputs. We demonstrate the abilities of our design in a simple environment with distractor objects, multiple objects moving concurrently, and in the presence of noise. Most importantly, we show how this neural network is capable of performing these tasks using a simple leaky-integrate-and-fire (LIF) neuron model with binary synapses, making it fully compatible with state-of-the-art digital neuromorphic hardware designs. As such, the building blocks and learning rules presented in this paper appear promising for scalable fully neuromorphic systems to be implemented in hardware chips.
url http://europepmc.org/articles/PMC3352850?pdf=render
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