Performance of Global-Appearance Descriptors in Map Building and Localization Using Omnidirectional Vision

Map building and localization are two crucial abilities that autonomous robots must develop. Vision sensors have become a widespread option to solve these problems. When using this kind of sensors, the robot must extract the necessary information from the scenes to build a representation of the envi...

Full description

Bibliographic Details
Main Authors: Luis Payá, Francisco Amorós, Lorenzo Fernández, Oscar Reinoso
Format: Article
Language:English
Published: MDPI AG 2014-02-01
Series:Sensors
Subjects:
Online Access:http://www.mdpi.com/1424-8220/14/2/3033
id doaj-00cb585ac5f54d2b977d8a50eba08ef9
record_format Article
spelling doaj-00cb585ac5f54d2b977d8a50eba08ef92020-11-24T21:06:34ZengMDPI AGSensors1424-82202014-02-011423033306410.3390/s140203033s140203033Performance of Global-Appearance Descriptors in Map Building and Localization Using Omnidirectional VisionLuis Payá0Francisco Amorós1Lorenzo Fernández2Oscar Reinoso3Departamento de Ingeniería de Sistemas y Automática, Miguel Hernández University, Avda. de la Universidad s/n, Elche (Alicante), SpainDepartamento de Ingeniería de Sistemas y Automática, Miguel Hernández University, Avda. de la Universidad s/n, Elche (Alicante), SpainDepartamento de Ingeniería de Sistemas y Automática, Miguel Hernández University, Avda. de la Universidad s/n, Elche (Alicante), SpainDepartamento de Ingeniería de Sistemas y Automática, Miguel Hernández University, Avda. de la Universidad s/n, Elche (Alicante), SpainMap building and localization are two crucial abilities that autonomous robots must develop. Vision sensors have become a widespread option to solve these problems. When using this kind of sensors, the robot must extract the necessary information from the scenes to build a representation of the environment where it has to move and to estimate its position and orientation with robustness. The techniques based on the global appearance of the scenes constitute one of the possible approaches to extract this information. They consist in representing each scene using only one descriptor which gathers global information from the scene. These techniques present some advantages comparing to other classical descriptors, based on the extraction of local features. However, it is important a good configuration of the parameters to reach a compromise between computational cost and accuracy. In this paper we make an exhaustive comparison among some global appearance descriptors to solve the mapping and localization problem. With this aim, we make use of several image sets captured in indoor environments under realistic working conditions. The datasets have been collected using an omnidirectional vision sensor mounted on the robot.http://www.mdpi.com/1424-8220/14/2/3033omnidirectional vision sensorglobal appearance descriptorsmap buildinglocalizationimage recoveringparticle filter
collection DOAJ
language English
format Article
sources DOAJ
author Luis Payá
Francisco Amorós
Lorenzo Fernández
Oscar Reinoso
spellingShingle Luis Payá
Francisco Amorós
Lorenzo Fernández
Oscar Reinoso
Performance of Global-Appearance Descriptors in Map Building and Localization Using Omnidirectional Vision
Sensors
omnidirectional vision sensor
global appearance descriptors
map building
localization
image recovering
particle filter
author_facet Luis Payá
Francisco Amorós
Lorenzo Fernández
Oscar Reinoso
author_sort Luis Payá
title Performance of Global-Appearance Descriptors in Map Building and Localization Using Omnidirectional Vision
title_short Performance of Global-Appearance Descriptors in Map Building and Localization Using Omnidirectional Vision
title_full Performance of Global-Appearance Descriptors in Map Building and Localization Using Omnidirectional Vision
title_fullStr Performance of Global-Appearance Descriptors in Map Building and Localization Using Omnidirectional Vision
title_full_unstemmed Performance of Global-Appearance Descriptors in Map Building and Localization Using Omnidirectional Vision
title_sort performance of global-appearance descriptors in map building and localization using omnidirectional vision
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2014-02-01
description Map building and localization are two crucial abilities that autonomous robots must develop. Vision sensors have become a widespread option to solve these problems. When using this kind of sensors, the robot must extract the necessary information from the scenes to build a representation of the environment where it has to move and to estimate its position and orientation with robustness. The techniques based on the global appearance of the scenes constitute one of the possible approaches to extract this information. They consist in representing each scene using only one descriptor which gathers global information from the scene. These techniques present some advantages comparing to other classical descriptors, based on the extraction of local features. However, it is important a good configuration of the parameters to reach a compromise between computational cost and accuracy. In this paper we make an exhaustive comparison among some global appearance descriptors to solve the mapping and localization problem. With this aim, we make use of several image sets captured in indoor environments under realistic working conditions. The datasets have been collected using an omnidirectional vision sensor mounted on the robot.
topic omnidirectional vision sensor
global appearance descriptors
map building
localization
image recovering
particle filter
url http://www.mdpi.com/1424-8220/14/2/3033
work_keys_str_mv AT luispaya performanceofglobalappearancedescriptorsinmapbuildingandlocalizationusingomnidirectionalvision
AT franciscoamoros performanceofglobalappearancedescriptorsinmapbuildingandlocalizationusingomnidirectionalvision
AT lorenzofernandez performanceofglobalappearancedescriptorsinmapbuildingandlocalizationusingomnidirectionalvision
AT oscarreinoso performanceofglobalappearancedescriptorsinmapbuildingandlocalizationusingomnidirectionalvision
_version_ 1716765448076263424