Neuromorphic Configurable Architecture for Robust Motion Estimation

The robustness of the human visual system recovering motion estimation in almost any visual situation is enviable, performing enormous calculation tasks continuously, robustly, efficiently, and effortlessly. There is obviously a great deal we can learn from our own visual system. Currently, there ar...

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Main Authors: Guillermo Botella, Manuel Rodríguez, Antonio García, Eduardo Ros
Format: Article
Language:English
Published: Hindawi Limited 2008-01-01
Series:International Journal of Reconfigurable Computing
Online Access:http://dx.doi.org/10.1155/2008/428265
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spelling doaj-0f484051e74849aeac480d1bb26ba3a92020-11-24T22:34:27ZengHindawi LimitedInternational Journal of Reconfigurable Computing1687-71951687-72092008-01-01200810.1155/2008/428265428265Neuromorphic Configurable Architecture for Robust Motion EstimationGuillermo Botella0Manuel Rodríguez1Antonio García2Eduardo Ros3Department of Computer Architecture and Automation, Complutense University of Madrid, 28040 Madrid, SpainDepartment of Computer Architecture and Technology, University of Granada, 18071 Granada, SpainDepartment of Electronics and Computer Technology, University of Granada, 18071 Granada, SpainDepartment of Computer Architecture and Technology, University of Granada, 18071 Granada, SpainThe robustness of the human visual system recovering motion estimation in almost any visual situation is enviable, performing enormous calculation tasks continuously, robustly, efficiently, and effortlessly. There is obviously a great deal we can learn from our own visual system. Currently, there are several optical flow algorithms, although none of them deals efficiently with noise, illumination changes, second-order motion, occlusions, and so on. The main contribution of this work is the efficient implementation of a biologically inspired motion algorithm that borrows nature templates as inspiration in the design of architectures and makes use of a specific model of human visual motion perception: Multichannel Gradient Model (McGM). This novel customizable architecture of a neuromorphic robust optical flow can be constructed with FPGA or ASIC device using properties of the cortical motion pathway, constituting a useful framework for building future complex bioinspired systems running in real time with high computational complexity. This work includes the resource usage and performance data, and the comparison with actual systems. This hardware has many application fields like object recognition, navigation, or tracking in difficult environments due to its bioinspired and robustness properties.http://dx.doi.org/10.1155/2008/428265
collection DOAJ
language English
format Article
sources DOAJ
author Guillermo Botella
Manuel Rodríguez
Antonio García
Eduardo Ros
spellingShingle Guillermo Botella
Manuel Rodríguez
Antonio García
Eduardo Ros
Neuromorphic Configurable Architecture for Robust Motion Estimation
International Journal of Reconfigurable Computing
author_facet Guillermo Botella
Manuel Rodríguez
Antonio García
Eduardo Ros
author_sort Guillermo Botella
title Neuromorphic Configurable Architecture for Robust Motion Estimation
title_short Neuromorphic Configurable Architecture for Robust Motion Estimation
title_full Neuromorphic Configurable Architecture for Robust Motion Estimation
title_fullStr Neuromorphic Configurable Architecture for Robust Motion Estimation
title_full_unstemmed Neuromorphic Configurable Architecture for Robust Motion Estimation
title_sort neuromorphic configurable architecture for robust motion estimation
publisher Hindawi Limited
series International Journal of Reconfigurable Computing
issn 1687-7195
1687-7209
publishDate 2008-01-01
description The robustness of the human visual system recovering motion estimation in almost any visual situation is enviable, performing enormous calculation tasks continuously, robustly, efficiently, and effortlessly. There is obviously a great deal we can learn from our own visual system. Currently, there are several optical flow algorithms, although none of them deals efficiently with noise, illumination changes, second-order motion, occlusions, and so on. The main contribution of this work is the efficient implementation of a biologically inspired motion algorithm that borrows nature templates as inspiration in the design of architectures and makes use of a specific model of human visual motion perception: Multichannel Gradient Model (McGM). This novel customizable architecture of a neuromorphic robust optical flow can be constructed with FPGA or ASIC device using properties of the cortical motion pathway, constituting a useful framework for building future complex bioinspired systems running in real time with high computational complexity. This work includes the resource usage and performance data, and the comparison with actual systems. This hardware has many application fields like object recognition, navigation, or tracking in difficult environments due to its bioinspired and robustness properties.
url http://dx.doi.org/10.1155/2008/428265
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AT manuelrodriguez neuromorphicconfigurablearchitectureforrobustmotionestimation
AT antoniogarcia neuromorphicconfigurablearchitectureforrobustmotionestimation
AT eduardoros neuromorphicconfigurablearchitectureforrobustmotionestimation
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