Creating Incremental Models of Indoor Environments through Omnidirectional Imaging

In this work, an incremental clustering approach to obtain compact hierarchical models of an environment is developed and evaluated. This process is performed using an omnidirectional vision sensor as the only source of information. The method is structured in two loop closure levels. First, the Nod...

Full description

Bibliographic Details
Main Authors: Vicente Román, Luis Payá, Sergio Cebollada, Óscar Reinoso
Format: Article
Language:English
Published: MDPI AG 2020-09-01
Series:Applied Sciences
Subjects:
Online Access:https://www.mdpi.com/2076-3417/10/18/6480
id doaj-57e27a7f269442cdad7d06debb5f5024
record_format Article
spelling doaj-57e27a7f269442cdad7d06debb5f50242020-11-25T03:32:32ZengMDPI AGApplied Sciences2076-34172020-09-01106480648010.3390/app10186480Creating Incremental Models of Indoor Environments through Omnidirectional ImagingVicente Román0Luis Payá1Sergio Cebollada2Óscar Reinoso3Department of Systems Engineering and Automation, Miguel Hernández University, 03202 Elche, SpainDepartment of Systems Engineering and Automation, Miguel Hernández University, 03202 Elche, SpainDepartment of Systems Engineering and Automation, Miguel Hernández University, 03202 Elche, SpainDepartment of Systems Engineering and Automation, Miguel Hernández University, 03202 Elche, SpainIn this work, an incremental clustering approach to obtain compact hierarchical models of an environment is developed and evaluated. This process is performed using an omnidirectional vision sensor as the only source of information. The method is structured in two loop closure levels. First, the Node Level Loop Closure process selects the candidate nodes with which the new image can close the loop. Second, the Image Level Loop Closure process detects the most similar image and the node with which the current image closed the loop. The algorithm is based on an incremental clustering framework and leads to a topological model where the images of each zone tend to be clustered in different nodes. In addition, the method evaluates when two nodes are similar and they can be merged in a unique node or when a group of connected images are different enough to the others and they should constitute a new node. To perform the process, omnidirectional images are described with global appearance techniques in order to obtain robust descriptors. The use of such technique in mapping and localization algorithms is less extended than local features description, so this work also evaluates the efficiency in clustering and mapping techniques. The proposed framework is tested with three different public datasets, captured by an omnidirectional vision system mounted on a robot while it traversed three different buildings. This framework is able to build the model incrementally, while the robot explores an unknown environment. Some relevant parameters of the algorithm adapt their value as the robot captures new visual information to fully exploit the features’ space, and the model is updated and/or modified as a consequence. The experimental section shows the robustness and efficiency of the method, comparing it with a batch spectral clustering algorithm.https://www.mdpi.com/2076-3417/10/18/6480mappingincremental clusteringmobile robotsglobal-appearance descriptorsomnidirectional imagescomputer vision
collection DOAJ
language English
format Article
sources DOAJ
author Vicente Román
Luis Payá
Sergio Cebollada
Óscar Reinoso
spellingShingle Vicente Román
Luis Payá
Sergio Cebollada
Óscar Reinoso
Creating Incremental Models of Indoor Environments through Omnidirectional Imaging
Applied Sciences
mapping
incremental clustering
mobile robots
global-appearance descriptors
omnidirectional images
computer vision
author_facet Vicente Román
Luis Payá
Sergio Cebollada
Óscar Reinoso
author_sort Vicente Román
title Creating Incremental Models of Indoor Environments through Omnidirectional Imaging
title_short Creating Incremental Models of Indoor Environments through Omnidirectional Imaging
title_full Creating Incremental Models of Indoor Environments through Omnidirectional Imaging
title_fullStr Creating Incremental Models of Indoor Environments through Omnidirectional Imaging
title_full_unstemmed Creating Incremental Models of Indoor Environments through Omnidirectional Imaging
title_sort creating incremental models of indoor environments through omnidirectional imaging
publisher MDPI AG
series Applied Sciences
issn 2076-3417
publishDate 2020-09-01
description In this work, an incremental clustering approach to obtain compact hierarchical models of an environment is developed and evaluated. This process is performed using an omnidirectional vision sensor as the only source of information. The method is structured in two loop closure levels. First, the Node Level Loop Closure process selects the candidate nodes with which the new image can close the loop. Second, the Image Level Loop Closure process detects the most similar image and the node with which the current image closed the loop. The algorithm is based on an incremental clustering framework and leads to a topological model where the images of each zone tend to be clustered in different nodes. In addition, the method evaluates when two nodes are similar and they can be merged in a unique node or when a group of connected images are different enough to the others and they should constitute a new node. To perform the process, omnidirectional images are described with global appearance techniques in order to obtain robust descriptors. The use of such technique in mapping and localization algorithms is less extended than local features description, so this work also evaluates the efficiency in clustering and mapping techniques. The proposed framework is tested with three different public datasets, captured by an omnidirectional vision system mounted on a robot while it traversed three different buildings. This framework is able to build the model incrementally, while the robot explores an unknown environment. Some relevant parameters of the algorithm adapt their value as the robot captures new visual information to fully exploit the features’ space, and the model is updated and/or modified as a consequence. The experimental section shows the robustness and efficiency of the method, comparing it with a batch spectral clustering algorithm.
topic mapping
incremental clustering
mobile robots
global-appearance descriptors
omnidirectional images
computer vision
url https://www.mdpi.com/2076-3417/10/18/6480
work_keys_str_mv AT vicenteroman creatingincrementalmodelsofindoorenvironmentsthroughomnidirectionalimaging
AT luispaya creatingincrementalmodelsofindoorenvironmentsthroughomnidirectionalimaging
AT sergiocebollada creatingincrementalmodelsofindoorenvironmentsthroughomnidirectionalimaging
AT oscarreinoso creatingincrementalmodelsofindoorenvironmentsthroughomnidirectionalimaging
_version_ 1724567613957210112