Experience-driven formation of parts-based representations in a model of layered visual memory
Growing neuropsychological and neurophysiological evidence suggests that the visual cortex uses parts-based representations to encode, store and retrieve relevant objects. In such a scheme, objects are represented as a set of spatially distributed local features, or parts, arranged in stereotypical...
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doaj-9f80563430114bea97805618af22e7032020-11-24T22:29:01ZengFrontiers Media S.A.Frontiers in Computational Neuroscience1662-51882009-09-01310.3389/neuro.10.015.2009636Experience-driven formation of parts-based representations in a model of layered visual memoryJenia Jitsev0Jenia Jitsev1Christoph V. Der Malsburg2Frankfurt Institute for Advanced StudiesJohann Wolfgang Goethe UniversityFrankfurt Institute for Advanced StudiesGrowing neuropsychological and neurophysiological evidence suggests that the visual cortex uses parts-based representations to encode, store and retrieve relevant objects. In such a scheme, objects are represented as a set of spatially distributed local features, or parts, arranged in stereotypical fashion. To encode the local appearance and to represent the relations between the constituent parts, there has to be an appropriate memory structure formed by previous experience with visual objects. Here, we propose a model how a hierarchical memory structure supporting efficient storage and rapid recall of parts-based representations can be established by an experience-driven process of self-organization. The process is based on the collaboration of slow bidirectional synaptic plasticity and homeostatic unit activity regulation, both running at the top of fast activity dynamics with winner-take-all character modulated by an oscillatory rhythm. These neural mechanisms lay down the basis for cooperation and competition between the distributed units and their synaptic connections. Choosing human face recognition as a test task, we show that, under the condition of open-ended, unsupervised incremental learning, the system is able to form memory traces for individual faces in a parts-based fashion. On a lower memory layer the synaptic structure is developed to represent local facial features and their interrelations, while the identities of different persons are captured explicitly on a higher layer. An additional property of the resulting representations is the sparseness of both the activity during the recall and the synaptic patterns comprising the memory traces.http://journal.frontiersin.org/Journal/10.3389/neuro.10.015.2009/fullself-organizationcortical columnvisual memorycompetitive learningunsupervised learningactivity homeostasis |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Jenia Jitsev Jenia Jitsev Christoph V. Der Malsburg |
spellingShingle |
Jenia Jitsev Jenia Jitsev Christoph V. Der Malsburg Experience-driven formation of parts-based representations in a model of layered visual memory Frontiers in Computational Neuroscience self-organization cortical column visual memory competitive learning unsupervised learning activity homeostasis |
author_facet |
Jenia Jitsev Jenia Jitsev Christoph V. Der Malsburg |
author_sort |
Jenia Jitsev |
title |
Experience-driven formation of parts-based representations in a model of layered visual memory |
title_short |
Experience-driven formation of parts-based representations in a model of layered visual memory |
title_full |
Experience-driven formation of parts-based representations in a model of layered visual memory |
title_fullStr |
Experience-driven formation of parts-based representations in a model of layered visual memory |
title_full_unstemmed |
Experience-driven formation of parts-based representations in a model of layered visual memory |
title_sort |
experience-driven formation of parts-based representations in a model of layered visual memory |
publisher |
Frontiers Media S.A. |
series |
Frontiers in Computational Neuroscience |
issn |
1662-5188 |
publishDate |
2009-09-01 |
description |
Growing neuropsychological and neurophysiological evidence suggests that the visual cortex uses parts-based representations to encode, store and retrieve relevant objects. In such a scheme, objects are represented as a set of spatially distributed local features, or parts, arranged in stereotypical fashion. To encode the local appearance and to represent the relations between the constituent parts, there has to be an appropriate memory structure formed by previous experience with visual objects. Here, we propose a model how a hierarchical memory structure supporting efficient storage and rapid recall of parts-based representations can be established by an experience-driven process of self-organization. The process is based on the collaboration of slow bidirectional synaptic plasticity and homeostatic unit activity regulation, both running at the top of fast activity dynamics with winner-take-all character modulated by an oscillatory rhythm. These neural mechanisms lay down the basis for cooperation and competition between the distributed units and their synaptic connections. Choosing human face recognition as a test task, we show that, under the condition of open-ended, unsupervised incremental learning, the system is able to form memory traces for individual faces in a parts-based fashion. On a lower memory layer the synaptic structure is developed to represent local facial features and their interrelations, while the identities of different persons are captured explicitly on a higher layer. An additional property of the resulting representations is the sparseness of both the activity during the recall and the synaptic patterns comprising the memory traces. |
topic |
self-organization cortical column visual memory competitive learning unsupervised learning activity homeostasis |
url |
http://journal.frontiersin.org/Journal/10.3389/neuro.10.015.2009/full |
work_keys_str_mv |
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