An attentional model for intelligent robotics agents

As the field of autonomous robotics grows and its applications broaden up, an enormous amount of sensors and actuators, sometimes redundant, have been added to mobile robots. These now fully equipped entities are expected to perceive and act in their surrounding world in a human-like fashion, throug...

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Bibliographic Details
Main Author: Esther Luna Colombini
Other Authors: Carlos Henrique Costa Ribeiro
Format: Others
Language:English
Published: Instituto Tecnológico de Aeronáutica 2014
Subjects:
Online Access:http://www.bd.bibl.ita.br/tde_busca/arquivo.php?codArquivo=3201
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spelling ndltd-IBICT-oai-agregador.ibict.br.BDTD_ITA-oai-ita.br-32012019-01-22T03:14:20Z An attentional model for intelligent robotics agents Esther Luna Colombini Carlos Henrique Costa Ribeiro Controle automático Inteligência artificial Robótica Controle adaptativo Robôs Arquitetura (computadores) Controle Computação As the field of autonomous robotics grows and its applications broaden up, an enormous amount of sensors and actuators, sometimes redundant, have been added to mobile robots. These now fully equipped entities are expected to perceive and act in their surrounding world in a human-like fashion, through perception, reasoning, planning and decision making processes. The higher complexity level of the resulting system and the nature of the environments where autonomous robots are usually expected to operate - continuous, partially unknown and usually unpredictable - demand the application of techniques to deal with this overload of data. In humans, that face the same problem when sounds, images and smells are presented to their sensors in a daily scene, a natural filter is applied: Attention. Although there are many computational models that apply attentive systems to Robotics, they usually are restricted to two classes of systems: a) those that have complex biologically-based attentional visual systems and b) those that have simpler attentional mechanisms with a larger variety of sensors. In order to evaluate an attentional system that operates with other robotics sensors than visual ones, this work presents a biologically inspired computational attentional model that can handle both top-down and bottom-up attention and that is able to learn how to re-distribute its limited resources over time and space. Experiments performed on a high fidelity simulator demonstrates the feasibility of the proposed attentional model and its capability on performing decision making and learning processes over attentional modulated data. The proposed system promotes a significant reduction on the original state space (96%) that was created over multiple sensory systems. 2014-05-16 info:eu-repo/semantics/publishedVersion info:eu-repo/semantics/doctoralThesis http://www.bd.bibl.ita.br/tde_busca/arquivo.php?codArquivo=3201 eng info:eu-repo/semantics/openAccess application/pdf Instituto Tecnológico de Aeronáutica reponame:Biblioteca Digital de Teses e Dissertações do ITA instname:Instituto Tecnológico de Aeronáutica instacron:ITA
collection NDLTD
language English
format Others
sources NDLTD
topic Controle automático
Inteligência artificial
Robótica
Controle adaptativo
Robôs
Arquitetura (computadores)
Controle
Computação
spellingShingle Controle automático
Inteligência artificial
Robótica
Controle adaptativo
Robôs
Arquitetura (computadores)
Controle
Computação
Esther Luna Colombini
An attentional model for intelligent robotics agents
description As the field of autonomous robotics grows and its applications broaden up, an enormous amount of sensors and actuators, sometimes redundant, have been added to mobile robots. These now fully equipped entities are expected to perceive and act in their surrounding world in a human-like fashion, through perception, reasoning, planning and decision making processes. The higher complexity level of the resulting system and the nature of the environments where autonomous robots are usually expected to operate - continuous, partially unknown and usually unpredictable - demand the application of techniques to deal with this overload of data. In humans, that face the same problem when sounds, images and smells are presented to their sensors in a daily scene, a natural filter is applied: Attention. Although there are many computational models that apply attentive systems to Robotics, they usually are restricted to two classes of systems: a) those that have complex biologically-based attentional visual systems and b) those that have simpler attentional mechanisms with a larger variety of sensors. In order to evaluate an attentional system that operates with other robotics sensors than visual ones, this work presents a biologically inspired computational attentional model that can handle both top-down and bottom-up attention and that is able to learn how to re-distribute its limited resources over time and space. Experiments performed on a high fidelity simulator demonstrates the feasibility of the proposed attentional model and its capability on performing decision making and learning processes over attentional modulated data. The proposed system promotes a significant reduction on the original state space (96%) that was created over multiple sensory systems.
author2 Carlos Henrique Costa Ribeiro
author_facet Carlos Henrique Costa Ribeiro
Esther Luna Colombini
author Esther Luna Colombini
author_sort Esther Luna Colombini
title An attentional model for intelligent robotics agents
title_short An attentional model for intelligent robotics agents
title_full An attentional model for intelligent robotics agents
title_fullStr An attentional model for intelligent robotics agents
title_full_unstemmed An attentional model for intelligent robotics agents
title_sort attentional model for intelligent robotics agents
publisher Instituto Tecnológico de Aeronáutica
publishDate 2014
url http://www.bd.bibl.ita.br/tde_busca/arquivo.php?codArquivo=3201
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