Framework and implications of virtual neurorobotics

Despite decades of societal investment in artificial learning systems, truly “intelligent” systems have yet to be realized. These traditional models are based on input-output pattern optimization and/or cognitive production rule modeling. One response has been social robotics, us...

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Format: Article
Language:English
Published: Frontiers Media S.A. 2008-07-01
Series:Frontiers in Neuroscience
Subjects:
Online Access:http://journal.frontiersin.org/Journal/10.3389/neuro.01.007.2008/full
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spelling doaj-0663146efa5646f493bdffccc9d5764f2020-11-24T23:28:54ZengFrontiers Media S.A.Frontiers in Neuroscience1662-453X2008-07-01210.3389/neuro.01.007.2008255Framework and implications of virtual neuroroboticsDespite decades of societal investment in artificial learning systems, truly “intelligent” systems have yet to be realized. These traditional models are based on input-output pattern optimization and/or cognitive production rule modeling. One response has been social robotics, using the interaction of human and robot to capture important cognitive dynamics such as cooperation and emotion; to date, these systems still incorporate traditional learning algorithms. More recently, investigators are focusing on the core assumptions of the brain “algorithm” itself—trying to replicate uniquely “neuromorphic” dynamics such as action potential spiking and synaptic learning. Only now are large-scale neuromorphic models becoming feasible, due to the availability of powerful supercomputers and an expanding supply of parameters derived from research into the brain’s interdependent electrophysiological, metabolomic and genomic networks. Personal computer technology has also led to the acceptance of computer-generated humanoid images, or “avatars”, to represent intelligent actors in virtual realities. In a recent paper, we proposed a method of virtual neurorobotics (VNR) in which the approaches above (social-emotional robotics, neuromorphic brain architectures, and virtual reality projection) are hybridized to rapidly forward-engineer and develop increasingly complex, intrinsically intelligent systems. In this paper, we synthesize our research and related work in the field and provide a framework for VNR, with wider implications for research and practical applications.http://journal.frontiersin.org/Journal/10.3389/neuro.01.007.2008/fullneuroroboticsReinforcementvirtualartificial intelligenceepigenetic roboticshuman robot interfacesocial robotics
collection DOAJ
language English
format Article
sources DOAJ
title Framework and implications of virtual neurorobotics
spellingShingle Framework and implications of virtual neurorobotics
Frontiers in Neuroscience
neurorobotics
Reinforcement
virtual
artificial intelligence
epigenetic robotics
human robot interface
social robotics
title_short Framework and implications of virtual neurorobotics
title_full Framework and implications of virtual neurorobotics
title_fullStr Framework and implications of virtual neurorobotics
title_full_unstemmed Framework and implications of virtual neurorobotics
title_sort framework and implications of virtual neurorobotics
publisher Frontiers Media S.A.
series Frontiers in Neuroscience
issn 1662-453X
publishDate 2008-07-01
description Despite decades of societal investment in artificial learning systems, truly “intelligent” systems have yet to be realized. These traditional models are based on input-output pattern optimization and/or cognitive production rule modeling. One response has been social robotics, using the interaction of human and robot to capture important cognitive dynamics such as cooperation and emotion; to date, these systems still incorporate traditional learning algorithms. More recently, investigators are focusing on the core assumptions of the brain “algorithm” itself—trying to replicate uniquely “neuromorphic” dynamics such as action potential spiking and synaptic learning. Only now are large-scale neuromorphic models becoming feasible, due to the availability of powerful supercomputers and an expanding supply of parameters derived from research into the brain’s interdependent electrophysiological, metabolomic and genomic networks. Personal computer technology has also led to the acceptance of computer-generated humanoid images, or “avatars”, to represent intelligent actors in virtual realities. In a recent paper, we proposed a method of virtual neurorobotics (VNR) in which the approaches above (social-emotional robotics, neuromorphic brain architectures, and virtual reality projection) are hybridized to rapidly forward-engineer and develop increasingly complex, intrinsically intelligent systems. In this paper, we synthesize our research and related work in the field and provide a framework for VNR, with wider implications for research and practical applications.
topic neurorobotics
Reinforcement
virtual
artificial intelligence
epigenetic robotics
human robot interface
social robotics
url http://journal.frontiersin.org/Journal/10.3389/neuro.01.007.2008/full
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