Neural network-based robot localization using visual features
This paper outlines the development of a module capable of constructing a map-building algorithm using inertial odometry and visual features. It incorporates an object recognition module that leverages local features and unsupervised artificial neural networks to identify non-dynamic elements in a...
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Language: | English |
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Universidad Politécnica Salesiana
2024-10-01
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Series: | Ingenius: Revista de Ciencia y Tecnología |
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Online Access: | https://revistas.ups.edu.ec/index.php/ingenius/article/view/8052 |
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author | Felipe Trujillo-Romero |
author_facet | Felipe Trujillo-Romero |
author_sort | Felipe Trujillo-Romero |
collection | DOAJ |
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This paper outlines the development of a module capable of constructing a map-building algorithm using inertial odometry and visual features. It incorporates an object recognition module that leverages local features and unsupervised artificial neural networks to identify non-dynamic elements in a room and assign them positions. The map is modeled using a neural network, where each neuron corresponds to an absolute position in the room. Once the map is constructed, capturing just a couple of images of the environment is sufficient to estimate the robot's location. The experiments were conducted using both simulation and a real robot. The Webots environment with the virtual humanoid robot NAO was used for the simulations. Concurrently, results were obtained using a real NAO robot in a setting with various objects. The results demonstrate notable precision in localization within the two-dimensional maps, achieving an accuracy of ± (0.06, 0.1) m in simulations contrasted with the natural environment, where the best value achieved was ± (0.25, 0.16) m.
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format | Article |
id | doaj-art-acef715a5a7541e1b21542c24666fd6f |
institution | Kabale University |
issn | 1390-650X 1390-860X |
language | English |
publishDate | 2024-10-01 |
publisher | Universidad Politécnica Salesiana |
record_format | Article |
series | Ingenius: Revista de Ciencia y Tecnología |
spelling | doaj-art-acef715a5a7541e1b21542c24666fd6f2025-02-07T16:30:14ZengUniversidad Politécnica SalesianaIngenius: Revista de Ciencia y Tecnología1390-650X1390-860X2024-10-013210.17163/ings.n32.2024.08Neural network-based robot localization using visual featuresFelipe Trujillo-Romero0https://orcid.org/0000-0003-3755-2637Universidad de Guanajuato This paper outlines the development of a module capable of constructing a map-building algorithm using inertial odometry and visual features. It incorporates an object recognition module that leverages local features and unsupervised artificial neural networks to identify non-dynamic elements in a room and assign them positions. The map is modeled using a neural network, where each neuron corresponds to an absolute position in the room. Once the map is constructed, capturing just a couple of images of the environment is sufficient to estimate the robot's location. The experiments were conducted using both simulation and a real robot. The Webots environment with the virtual humanoid robot NAO was used for the simulations. Concurrently, results were obtained using a real NAO robot in a setting with various objects. The results demonstrate notable precision in localization within the two-dimensional maps, achieving an accuracy of ± (0.06, 0.1) m in simulations contrasted with the natural environment, where the best value achieved was ± (0.25, 0.16) m. https://revistas.ups.edu.ec/index.php/ingenius/article/view/8052Visual FeaturesBidimensional MapsInertial OdometryHumanoid Robot NAOA-KAZE descriptorGrowing Cell Structure |
spellingShingle | Felipe Trujillo-Romero Neural network-based robot localization using visual features Ingenius: Revista de Ciencia y Tecnología Visual Features Bidimensional Maps Inertial Odometry Humanoid Robot NAO A-KAZE descriptor Growing Cell Structure |
title | Neural network-based robot localization using visual features |
title_full | Neural network-based robot localization using visual features |
title_fullStr | Neural network-based robot localization using visual features |
title_full_unstemmed | Neural network-based robot localization using visual features |
title_short | Neural network-based robot localization using visual features |
title_sort | neural network based robot localization using visual features |
topic | Visual Features Bidimensional Maps Inertial Odometry Humanoid Robot NAO A-KAZE descriptor Growing Cell Structure |
url | https://revistas.ups.edu.ec/index.php/ingenius/article/view/8052 |
work_keys_str_mv | AT felipetrujilloromero neuralnetworkbasedrobotlocalizationusingvisualfeatures |