Cargando…

A New Texture Spectrum Based on Parallel Encoded Texture Unit and Its Application on Image Classification: A Potential Prospect for Vision Sensing

In industrial applications based on texture classification, efficient and fast classifiers are extremely useful for quality control of industrial processes. The classifier of texture images has to satisfy two requirements: It must be efficient and fast. In this work, a texture unit is coded in paral...

Descripción completa

Detalles Bibliográficos
Autores principales: Guillen Bonilla, José Trinidad, Franco Rodríguez, Nancy Elizabeth, Guillen Bonilla, Héctor, Guillen Bonilla, Alex, Rodríguez Betancourtt, Verónica María, Jiménez Rodríguez, Maricela, Sánchez Morales, María Eugenia, Blanco Alonso, Oscar
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10610789/
https://www.ncbi.nlm.nih.gov/pubmed/37896461
http://dx.doi.org/10.3390/s23208368
_version_ 1785128339256639488
author Guillen Bonilla, José Trinidad
Franco Rodríguez, Nancy Elizabeth
Guillen Bonilla, Héctor
Guillen Bonilla, Alex
Rodríguez Betancourtt, Verónica María
Jiménez Rodríguez, Maricela
Sánchez Morales, María Eugenia
Blanco Alonso, Oscar
author_facet Guillen Bonilla, José Trinidad
Franco Rodríguez, Nancy Elizabeth
Guillen Bonilla, Héctor
Guillen Bonilla, Alex
Rodríguez Betancourtt, Verónica María
Jiménez Rodríguez, Maricela
Sánchez Morales, María Eugenia
Blanco Alonso, Oscar
author_sort Guillen Bonilla, José Trinidad
collection PubMed
description In industrial applications based on texture classification, efficient and fast classifiers are extremely useful for quality control of industrial processes. The classifier of texture images has to satisfy two requirements: It must be efficient and fast. In this work, a texture unit is coded in parallel, and using observation windows larger than [Formula: see text] , a new texture spectrum called Texture Spectrum based on the Parallel Encoded Texture Unit (TS_PETU) is proposed, calculated, and used as a characteristic vector in a multi-class classifier, and then two image databases are classified. The first database contains images from the company Interceramic(®®) and the images were acquired under controlled conditions, and the second database contains tree stems and the images were acquired in natural environments. Based on our experimental results, the TS_PETU satisfied both requirements (efficiency and speed), was developed for binary images, and had high efficiency, and its compute time could be reduced by applying parallel coding concepts. The classification efficiency increased by using larger observational windows, and this one was selected based on the window size. Since the TS_PETU had high efficiency for Interceramic(®®) tile classification, we consider that the proposed technique has significant industrial applications.
format Online
Article
Text
id pubmed-10610789
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-106107892023-10-28 A New Texture Spectrum Based on Parallel Encoded Texture Unit and Its Application on Image Classification: A Potential Prospect for Vision Sensing Guillen Bonilla, José Trinidad Franco Rodríguez, Nancy Elizabeth Guillen Bonilla, Héctor Guillen Bonilla, Alex Rodríguez Betancourtt, Verónica María Jiménez Rodríguez, Maricela Sánchez Morales, María Eugenia Blanco Alonso, Oscar Sensors (Basel) Article In industrial applications based on texture classification, efficient and fast classifiers are extremely useful for quality control of industrial processes. The classifier of texture images has to satisfy two requirements: It must be efficient and fast. In this work, a texture unit is coded in parallel, and using observation windows larger than [Formula: see text] , a new texture spectrum called Texture Spectrum based on the Parallel Encoded Texture Unit (TS_PETU) is proposed, calculated, and used as a characteristic vector in a multi-class classifier, and then two image databases are classified. The first database contains images from the company Interceramic(®®) and the images were acquired under controlled conditions, and the second database contains tree stems and the images were acquired in natural environments. Based on our experimental results, the TS_PETU satisfied both requirements (efficiency and speed), was developed for binary images, and had high efficiency, and its compute time could be reduced by applying parallel coding concepts. The classification efficiency increased by using larger observational windows, and this one was selected based on the window size. Since the TS_PETU had high efficiency for Interceramic(®®) tile classification, we consider that the proposed technique has significant industrial applications. MDPI 2023-10-10 /pmc/articles/PMC10610789/ /pubmed/37896461 http://dx.doi.org/10.3390/s23208368 Text en © 2023 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Guillen Bonilla, José Trinidad
Franco Rodríguez, Nancy Elizabeth
Guillen Bonilla, Héctor
Guillen Bonilla, Alex
Rodríguez Betancourtt, Verónica María
Jiménez Rodríguez, Maricela
Sánchez Morales, María Eugenia
Blanco Alonso, Oscar
A New Texture Spectrum Based on Parallel Encoded Texture Unit and Its Application on Image Classification: A Potential Prospect for Vision Sensing
title A New Texture Spectrum Based on Parallel Encoded Texture Unit and Its Application on Image Classification: A Potential Prospect for Vision Sensing
title_full A New Texture Spectrum Based on Parallel Encoded Texture Unit and Its Application on Image Classification: A Potential Prospect for Vision Sensing
title_fullStr A New Texture Spectrum Based on Parallel Encoded Texture Unit and Its Application on Image Classification: A Potential Prospect for Vision Sensing
title_full_unstemmed A New Texture Spectrum Based on Parallel Encoded Texture Unit and Its Application on Image Classification: A Potential Prospect for Vision Sensing
title_short A New Texture Spectrum Based on Parallel Encoded Texture Unit and Its Application on Image Classification: A Potential Prospect for Vision Sensing
title_sort new texture spectrum based on parallel encoded texture unit and its application on image classification: a potential prospect for vision sensing
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10610789/
https://www.ncbi.nlm.nih.gov/pubmed/37896461
http://dx.doi.org/10.3390/s23208368
work_keys_str_mv AT guillenbonillajosetrinidad anewtexturespectrumbasedonparallelencodedtextureunitanditsapplicationonimageclassificationapotentialprospectforvisionsensing
AT francorodrigueznancyelizabeth anewtexturespectrumbasedonparallelencodedtextureunitanditsapplicationonimageclassificationapotentialprospectforvisionsensing
AT guillenbonillahector anewtexturespectrumbasedonparallelencodedtextureunitanditsapplicationonimageclassificationapotentialprospectforvisionsensing
AT guillenbonillaalex anewtexturespectrumbasedonparallelencodedtextureunitanditsapplicationonimageclassificationapotentialprospectforvisionsensing
AT rodriguezbetancourttveronicamaria anewtexturespectrumbasedonparallelencodedtextureunitanditsapplicationonimageclassificationapotentialprospectforvisionsensing
AT jimenezrodriguezmaricela anewtexturespectrumbasedonparallelencodedtextureunitanditsapplicationonimageclassificationapotentialprospectforvisionsensing
AT sanchezmoralesmariaeugenia anewtexturespectrumbasedonparallelencodedtextureunitanditsapplicationonimageclassificationapotentialprospectforvisionsensing
AT blancoalonsooscar anewtexturespectrumbasedonparallelencodedtextureunitanditsapplicationonimageclassificationapotentialprospectforvisionsensing
AT guillenbonillajosetrinidad newtexturespectrumbasedonparallelencodedtextureunitanditsapplicationonimageclassificationapotentialprospectforvisionsensing
AT francorodrigueznancyelizabeth newtexturespectrumbasedonparallelencodedtextureunitanditsapplicationonimageclassificationapotentialprospectforvisionsensing
AT guillenbonillahector newtexturespectrumbasedonparallelencodedtextureunitanditsapplicationonimageclassificationapotentialprospectforvisionsensing
AT guillenbonillaalex newtexturespectrumbasedonparallelencodedtextureunitanditsapplicationonimageclassificationapotentialprospectforvisionsensing
AT rodriguezbetancourttveronicamaria newtexturespectrumbasedonparallelencodedtextureunitanditsapplicationonimageclassificationapotentialprospectforvisionsensing
AT jimenezrodriguezmaricela newtexturespectrumbasedonparallelencodedtextureunitanditsapplicationonimageclassificationapotentialprospectforvisionsensing
AT sanchezmoralesmariaeugenia newtexturespectrumbasedonparallelencodedtextureunitanditsapplicationonimageclassificationapotentialprospectforvisionsensing
AT blancoalonsooscar newtexturespectrumbasedonparallelencodedtextureunitanditsapplicationonimageclassificationapotentialprospectforvisionsensing