An Image Segmentation by BFV and TLBO

This paper presents the establishing of a biconvex fuzzy variational (BFV) method with teaching learning based optimization (TLBO) for geometric image segmentation (GIS). Firstly, a biconvex object function is adopted to process GIS. Then, TLBO is introduced to maximally optimize the length penalty...

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Main Author: Mohammad Heidari
Format: Article
Language:English
Published: Wiley 2016-01-01
Series:Advances in Fuzzy Systems
Online Access:http://dx.doi.org/10.1155/2016/8109686
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author Mohammad Heidari
author_facet Mohammad Heidari
author_sort Mohammad Heidari
collection DOAJ
description This paper presents the establishing of a biconvex fuzzy variational (BFV) method with teaching learning based optimization (TLBO) for geometric image segmentation (GIS). Firstly, a biconvex object function is adopted to process GIS. Then, TLBO is introduced to maximally optimize the length penalty item (LPI), which will be changed under teaching and learner phase of TLBO, making the LPI closer to the target boundary. Afterward, the LPI can be adjusted based on fitness function, namely, the evaluation standards of image quality. Finally, the LP is combined item with the numerical order to get better results. Different GIS strategies are compared with various fitness functions in terms of accuracy. Simulations show that the presented method is more effective in this area.
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series Advances in Fuzzy Systems
spelling doaj-art-e7ddc9cab5d44ad4a5bdae20b4a908852025-08-20T03:21:02ZengWileyAdvances in Fuzzy Systems1687-71011687-711X2016-01-01201610.1155/2016/81096868109686An Image Segmentation by BFV and TLBOMohammad Heidari0Department of Mechanical Engineering, Abadan Branch, Islamic Azad University, Abadan, IranThis paper presents the establishing of a biconvex fuzzy variational (BFV) method with teaching learning based optimization (TLBO) for geometric image segmentation (GIS). Firstly, a biconvex object function is adopted to process GIS. Then, TLBO is introduced to maximally optimize the length penalty item (LPI), which will be changed under teaching and learner phase of TLBO, making the LPI closer to the target boundary. Afterward, the LPI can be adjusted based on fitness function, namely, the evaluation standards of image quality. Finally, the LP is combined item with the numerical order to get better results. Different GIS strategies are compared with various fitness functions in terms of accuracy. Simulations show that the presented method is more effective in this area.http://dx.doi.org/10.1155/2016/8109686
spellingShingle Mohammad Heidari
An Image Segmentation by BFV and TLBO
Advances in Fuzzy Systems
title An Image Segmentation by BFV and TLBO
title_full An Image Segmentation by BFV and TLBO
title_fullStr An Image Segmentation by BFV and TLBO
title_full_unstemmed An Image Segmentation by BFV and TLBO
title_short An Image Segmentation by BFV and TLBO
title_sort image segmentation by bfv and tlbo
url http://dx.doi.org/10.1155/2016/8109686
work_keys_str_mv AT mohammadheidari animagesegmentationbybfvandtlbo
AT mohammadheidari imagesegmentationbybfvandtlbo