An Improved Approach of Mesh Segmentation to Extract Feature Regions.

The objective of this paper is to extract concave and convex feature regions via segmenting surface mesh of a mechanical part whose surface geometry exhibits drastic variations and concave-convex features are equally important when modeling. Referring to the original approach based on the minima rul...

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Main Authors: Minghui Gu, Liming Duan, Maolin Wang, Yang Bai, Hui Shao, Haoyu Wang, Fenglin Liu
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2015-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC4593599?pdf=render
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spelling doaj-ba71d4c8f01e4bf68ca3a4932d93bff42020-11-25T01:19:30ZengPublic Library of Science (PLoS)PLoS ONE1932-62032015-01-011010e013948810.1371/journal.pone.0139488An Improved Approach of Mesh Segmentation to Extract Feature Regions.Minghui GuLiming DuanMaolin WangYang BaiHui ShaoHaoyu WangFenglin LiuThe objective of this paper is to extract concave and convex feature regions via segmenting surface mesh of a mechanical part whose surface geometry exhibits drastic variations and concave-convex features are equally important when modeling. Referring to the original approach based on the minima rule (MR) in cognitive science, we have created a revised minima rule (RMR) and presented an improved approach based on RMR in the paper. Using the logarithmic function in terms of the minimum curvatures that are normalized by the expectation and the standard deviation on the vertices of the mesh, we determined the solution formulas for the feature vertices according to RMR. Because only a small range of the threshold parameters was selected from in the determined formulas, an iterative process was implemented to realize the automatic selection of thresholds. Finally according to the obtained feature vertices, the feature edges and facets were obtained by growing neighbors. The improved approach overcomes the inherent inadequacies of the original approach for our objective in the paper, realizes full automation without setting parameters, and obtains better results compared with the latest conventional approaches. We demonstrated the feasibility and superiority of our approach by performing certain experimental comparisons.http://europepmc.org/articles/PMC4593599?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Minghui Gu
Liming Duan
Maolin Wang
Yang Bai
Hui Shao
Haoyu Wang
Fenglin Liu
spellingShingle Minghui Gu
Liming Duan
Maolin Wang
Yang Bai
Hui Shao
Haoyu Wang
Fenglin Liu
An Improved Approach of Mesh Segmentation to Extract Feature Regions.
PLoS ONE
author_facet Minghui Gu
Liming Duan
Maolin Wang
Yang Bai
Hui Shao
Haoyu Wang
Fenglin Liu
author_sort Minghui Gu
title An Improved Approach of Mesh Segmentation to Extract Feature Regions.
title_short An Improved Approach of Mesh Segmentation to Extract Feature Regions.
title_full An Improved Approach of Mesh Segmentation to Extract Feature Regions.
title_fullStr An Improved Approach of Mesh Segmentation to Extract Feature Regions.
title_full_unstemmed An Improved Approach of Mesh Segmentation to Extract Feature Regions.
title_sort improved approach of mesh segmentation to extract feature regions.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2015-01-01
description The objective of this paper is to extract concave and convex feature regions via segmenting surface mesh of a mechanical part whose surface geometry exhibits drastic variations and concave-convex features are equally important when modeling. Referring to the original approach based on the minima rule (MR) in cognitive science, we have created a revised minima rule (RMR) and presented an improved approach based on RMR in the paper. Using the logarithmic function in terms of the minimum curvatures that are normalized by the expectation and the standard deviation on the vertices of the mesh, we determined the solution formulas for the feature vertices according to RMR. Because only a small range of the threshold parameters was selected from in the determined formulas, an iterative process was implemented to realize the automatic selection of thresholds. Finally according to the obtained feature vertices, the feature edges and facets were obtained by growing neighbors. The improved approach overcomes the inherent inadequacies of the original approach for our objective in the paper, realizes full automation without setting parameters, and obtains better results compared with the latest conventional approaches. We demonstrated the feasibility and superiority of our approach by performing certain experimental comparisons.
url http://europepmc.org/articles/PMC4593599?pdf=render
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