Memory Organization for Invariant Object Recognition and Categorization

Using distributed representations of objects enables artificial systems to be more versatile regarding inter- and intra-category variability, improving the appearance-based modeling of visual object understanding. They are built on the hypothesis that object models are structured dynamically using r...

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Main Author: Guillermo Sebastián Donatti
Format: Article
Language:English
Published: Computer Vision Center Press 2016-11-01
Series:ELCVIA Electronic Letters on Computer Vision and Image Analysis
Subjects:
Online Access:https://elcvia.cvc.uab.es/article/view/954
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spelling doaj-26885839fd104ef8b1a2899390affec72021-09-18T12:38:38ZengComputer Vision Center PressELCVIA Electronic Letters on Computer Vision and Image Analysis1577-50972016-11-0115210.5565/rev/elcvia.954303Memory Organization for Invariant Object Recognition and CategorizationGuillermo Sebastián Donatti0Argentine Scientific Network in Germany, European Network for the Advancement of Artificial Cognitive Systems Interaction and Robotics, Graduated Students from Facultad de Matemática Astronomía y Física (FaMAF), Graduated Students from Universidad Nacional de Córdoba (UNC), Institut für Neuroinformatik, International Brain Research Organization, Marie Curie Early Stage Research Network, NovoBrain Programme, Ruhr-Universität Research School, and Society for Neuroscience.Using distributed representations of objects enables artificial systems to be more versatile regarding inter- and intra-category variability, improving the appearance-based modeling of visual object understanding. They are built on the hypothesis that object models are structured dynamically using relatively invariant patches of information arranged in visual dictionaries, which can be shared across objects from the same category. However, implementing distributed representations efficiently to support the complexity of invariant object recognition and categorization remains a research problem of outstanding significance for the biological, the psychological, and the computational approach to understanding visual perception. The present work focuses on solutions driven by top-down object knowledge. It is motivated by the idea that, equipped with sensors and processing mechanisms from the neural pathways serving visual perception, biological systems are able to define efficient measures of similarities between properties observed in objects and use these relationships to form natural clusters of object parts that share equivalent ones. Based on the comparison of stimulus-response signatures from these object-to-memory mappings, biological systems are able to identify objects and their kinds. The present work combines biologically inspired mathematical models to develop memory frameworks for artificial systems, where these invariant patches are represented with regular-shaped graphs, whose nodes are labeled with elementary features that capture texture information from object images. It also applies unsupervised clustering techniques to these graph image features to corroborate the existence of natural clusters within their data distribution and determine their composition. The properties of such computational theory include self-organization and intelligent matching of these graph image features based on the similarity and co-occurrence of their captured texture information. The performance to model invariant object recognition and categorization of feature-based artificial systems equipped with each of the developed memory frameworks is validated applying standard methodologies to well-known image libraries found in literature. Additionally, these artificial systems are cross-compared with state-of-the-art alternative solutions. In conclusion, the findings of the present work convey implications for strategies and experimental paradigms to analyze human object memory as well as technical applications for robotics and computer vision.https://elcvia.cvc.uab.es/article/view/954Computational NeuroscienceMachine LearningComputer VisionOrganic ComputingKnowledge Representation
collection DOAJ
language English
format Article
sources DOAJ
author Guillermo Sebastián Donatti
spellingShingle Guillermo Sebastián Donatti
Memory Organization for Invariant Object Recognition and Categorization
ELCVIA Electronic Letters on Computer Vision and Image Analysis
Computational Neuroscience
Machine Learning
Computer Vision
Organic Computing
Knowledge Representation
author_facet Guillermo Sebastián Donatti
author_sort Guillermo Sebastián Donatti
title Memory Organization for Invariant Object Recognition and Categorization
title_short Memory Organization for Invariant Object Recognition and Categorization
title_full Memory Organization for Invariant Object Recognition and Categorization
title_fullStr Memory Organization for Invariant Object Recognition and Categorization
title_full_unstemmed Memory Organization for Invariant Object Recognition and Categorization
title_sort memory organization for invariant object recognition and categorization
publisher Computer Vision Center Press
series ELCVIA Electronic Letters on Computer Vision and Image Analysis
issn 1577-5097
publishDate 2016-11-01
description Using distributed representations of objects enables artificial systems to be more versatile regarding inter- and intra-category variability, improving the appearance-based modeling of visual object understanding. They are built on the hypothesis that object models are structured dynamically using relatively invariant patches of information arranged in visual dictionaries, which can be shared across objects from the same category. However, implementing distributed representations efficiently to support the complexity of invariant object recognition and categorization remains a research problem of outstanding significance for the biological, the psychological, and the computational approach to understanding visual perception. The present work focuses on solutions driven by top-down object knowledge. It is motivated by the idea that, equipped with sensors and processing mechanisms from the neural pathways serving visual perception, biological systems are able to define efficient measures of similarities between properties observed in objects and use these relationships to form natural clusters of object parts that share equivalent ones. Based on the comparison of stimulus-response signatures from these object-to-memory mappings, biological systems are able to identify objects and their kinds. The present work combines biologically inspired mathematical models to develop memory frameworks for artificial systems, where these invariant patches are represented with regular-shaped graphs, whose nodes are labeled with elementary features that capture texture information from object images. It also applies unsupervised clustering techniques to these graph image features to corroborate the existence of natural clusters within their data distribution and determine their composition. The properties of such computational theory include self-organization and intelligent matching of these graph image features based on the similarity and co-occurrence of their captured texture information. The performance to model invariant object recognition and categorization of feature-based artificial systems equipped with each of the developed memory frameworks is validated applying standard methodologies to well-known image libraries found in literature. Additionally, these artificial systems are cross-compared with state-of-the-art alternative solutions. In conclusion, the findings of the present work convey implications for strategies and experimental paradigms to analyze human object memory as well as technical applications for robotics and computer vision.
topic Computational Neuroscience
Machine Learning
Computer Vision
Organic Computing
Knowledge Representation
url https://elcvia.cvc.uab.es/article/view/954
work_keys_str_mv AT guillermosebastiandonatti memoryorganizationforinvariantobjectrecognitionandcategorization
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