New discretization method applied to NBV problem: Semioctree.

This paper presents a discretization methodology applied to the NBV (Next Best View) problem, which consists of determining the heuristical best position of the next scan. This new methodology is a hybrid process between a homogenous voxelization and an octree structure that preserves the advantages...

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Main Authors: L M González-deSantos, J Martínez-Sánchez, H González-Jorge, L Díaz-Vilariño, B Riveiro
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2018-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC6211679?pdf=render
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spelling doaj-0f3ae4f616df419cace427a84174959b2020-11-25T01:19:26ZengPublic Library of Science (PLoS)PLoS ONE1932-62032018-01-011311e020625910.1371/journal.pone.0206259New discretization method applied to NBV problem: Semioctree.L M González-deSantosJ Martínez-SánchezH González-JorgeL Díaz-VilariñoB RiveiroThis paper presents a discretization methodology applied to the NBV (Next Best View) problem, which consists of determining the heuristical best position of the next scan. This new methodology is a hybrid process between a homogenous voxelization and an octree structure that preserves the advantages of both methods. An octree structure is not directly applicable to the NBV problem: as the point cloud grows with every successive scanning, the limits and position of the discretization, octree structure must coincide, in order to transfer the information from one scan to the next. This problem is solved by applying a first coarse voxelization, followed by the division of each voxel in an octree structure. In addition, a previous methodology for solving the NBV problem has been adapted to make use of this novel approach. Results show that the new method is three times faster than the homogenous voxelization for a maximum resolution of 0.2m. For this target resolution of 0.2m, the number of voxels/octants in the discretization is reduced approximately by a 400%, from 35.360 to 8.937 for the study case presented.http://europepmc.org/articles/PMC6211679?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author L M González-deSantos
J Martínez-Sánchez
H González-Jorge
L Díaz-Vilariño
B Riveiro
spellingShingle L M González-deSantos
J Martínez-Sánchez
H González-Jorge
L Díaz-Vilariño
B Riveiro
New discretization method applied to NBV problem: Semioctree.
PLoS ONE
author_facet L M González-deSantos
J Martínez-Sánchez
H González-Jorge
L Díaz-Vilariño
B Riveiro
author_sort L M González-deSantos
title New discretization method applied to NBV problem: Semioctree.
title_short New discretization method applied to NBV problem: Semioctree.
title_full New discretization method applied to NBV problem: Semioctree.
title_fullStr New discretization method applied to NBV problem: Semioctree.
title_full_unstemmed New discretization method applied to NBV problem: Semioctree.
title_sort new discretization method applied to nbv problem: semioctree.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2018-01-01
description This paper presents a discretization methodology applied to the NBV (Next Best View) problem, which consists of determining the heuristical best position of the next scan. This new methodology is a hybrid process between a homogenous voxelization and an octree structure that preserves the advantages of both methods. An octree structure is not directly applicable to the NBV problem: as the point cloud grows with every successive scanning, the limits and position of the discretization, octree structure must coincide, in order to transfer the information from one scan to the next. This problem is solved by applying a first coarse voxelization, followed by the division of each voxel in an octree structure. In addition, a previous methodology for solving the NBV problem has been adapted to make use of this novel approach. Results show that the new method is three times faster than the homogenous voxelization for a maximum resolution of 0.2m. For this target resolution of 0.2m, the number of voxels/octants in the discretization is reduced approximately by a 400%, from 35.360 to 8.937 for the study case presented.
url http://europepmc.org/articles/PMC6211679?pdf=render
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