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Provedor de dados:  Nature Precedings
País:  United Kingdom
Título:  A Biomimetic Model of the Outer Plexiform Layer by Incorporating Memristive Devices
Autores:  Andras Gelencser
Themistoklis Prodromakis
Christofer Toumazou
Tamas Roska
Data:  2011-12-03
Ano:  2011
Palavras-chave:  Neuroscience
Bioinformatics
Resumo:  In this paper we present a biorealistic model for the first part of the early vision processing by incorporating memristive nanodevices. The architecture of the proposed network is based on the organisation and functioning of the outer plexiform layer (OPL) in the vertebrate retina. We demonstrate that memristive devices are indeed a valuable building block for neuromorphic architectures, as their highly non-linear and adaptive response could be exploited for establishing ultra-dense networks with similar dynamics to their biological counterparts. We particularly show that hexagonal memristive grids can be employed for faithfully emulating the smoothing-effect occurring at the OPL for enhancing the dynamic range of the system. In addition, we employ a memristor-based thresholding scheme for detecting the edges of grayscale images, while the proposed system is also evaluated for its adaptation and fault tolerance capacity against different light or noise conditions as well as distinct device yields.
Tipo:  Manuscript
Identificador:  http://precedings.nature.com/documents/6664/version/1

oai:nature.com:10101/npre.2011.6664.1

http://hdl.handle.net/10101/npre.2011.6664.1
Fonte:  Nature Precedings
Direitos:  Creative Commons Attribution 3.0 License
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